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Required a presentation in educational psychology field. You have an attachement that has several questions that you have to answer from the attached articles.

NOTE: You do not have to use all of them. You can only those you find answers on them.

1. Also, you will have to answer each question in different slides. Each question should be 2-3 slides, not less but you can do more if you needed. You can not do 2

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2. You will have to answer each single question clearly and completely. I need enough details and explanation on the slides because ((( I will read from the slides

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n Illinois University Carbondale
OpenSIUC
Book Chapters Department of Medical Education
1996
Paradigm Shifts and Instructional Technology
Timothy Koschmann
Southern Illinois University Carbondale
Follow this and additional works at: http://opensiuc.lib.siu.edu/meded_books
In CSCL: Theory and Practice of an Emerging Paradigm (pp. 1–23). Mahwah, NJ: Lawrence Erlbaum
Associates, 1996.
This Article is brought to you for free and open access by the Department of Medical Education at OpenSIUC. It has been accepted for inclusion in
Book Chapters by an authorized administrator of OpenSIUC. For more information, please contact opensiuc@lib.siu.edu.
Recommended Citation
Koschmann, Timothy, “Paradigm Shifts and Instructional Technology” (1996). Book Chapters. Paper 4.
http://opensiuc.lib.siu.edu/meded_books/4
C h a p t e r 1
Paradigm Shifts and Instructional Technology:
An Introduction
Timothy Koschmann
Southern Illinois University
In his well-known essay on the nature of scientific revolutions, Kuhn (1972) theorized
that scientific research proceeds through long, relatively stable periods of normal
science intermittently punctuated by briefer, more tumultuous times in which new
paradigms for research may emerge. He characterized normal science as “research
firmly based upon one or more past scientific achievements, achievements that some
particular scientific community acknowledges for a time as supplying the foundation
for its further practice” (p. 10).
A scientific achievement represents a paradigm for Kuhn if it raises a compelling set
of researchable questions and attracts a following of workers intent on pursuing those
questions. The paradigm supplies its practitioners with “topics, tools, methodologies,
and premises” (Lehnert, 1984, p. 22). It provides purchase in attacking what might
previously have been considered intractable problems. A paradigm is not fixed,
however, but is refined and extended through use. In Kuhn’s words, it becomes “an
object for further articulation and specification under new and stringent conditions”
(1972, p. 23). Over time, competing paradigms may emerge, potentially leading to one
paradigm’s abandonment in favor of another. Such shifts are always revolutionary
occurrences. As Kuhn observed, “the transition between competing paradigms cannot
be made a step at a time, forced by logic and neutral experience. Like the gestalt switch,
it must occur all at once (though not necessarily in an instant) or not at all” (1972, p.
150).
One interesting feature of Kuhn’s theory of scientific revolutions is what he referred
to as the “incommensurability of the pre- and post-revolutionary normal-scientific
traditions” (1972, p. 148). Adherents to a new paradigm adopt an altered
Weltunanschauung, prescribing a new way of observing, reflecting on, and describing
Koschmann Paradigm Shifts and Instructional Technology
CSCL: Theory and Practice of an Emerging Paradigm 2
the world. Though the notion of incommensurability is a source of controversy among
philosophers of science ( Biagioli, 1990; Kitcher, 1978), Kuhn held that the effect of a
paradigm shift is to produce a divided community of researchers no longer able to
debate their respective positions, owing to fundamental differences in terminology,
conceptual frameworks, and views on what constitutes the legitimate questions of
science.
In this chapter I argue that, seen from a Kuhnian perspective, instructional
technology (IT) has undergone several such paradigmatic shifts in its relatively brief
history. As a result of these shifts, the field has been balkanized into a number of
smaller communities, each utilizing different research practices and espousing largely
incommensurable views of learning and instruction. I argue further that there now
appears to be a new paradigm emerging within IT, arising from yet another perspective
on these same issues. This developing paradigm, for which the acronym CSCL has
been coined (Koschmann, 1994a), focuses on the use of technology as a mediational tool
within collaborative methods of instruction. Before pursing this analysis, however, let
me address some potential concerns about the legitimacy of applying Kuhn’s theories to
the body of work devoted to the uses of technology in instruction.
First in this regard is the issue of natural versus artificial science. In Sciences of the
Artificial, Simon (1969) defined natural science as “a body of knowledge about some
class of things—objects or phenomena—in the world; about the characteristics and
properties that they have; about how they behave and interact with each other” (p. 1).
The historical events on which Kuhn focused, such as Lavoisier’s discovery of oxygen
and Copernicus’ development of a new model of the solar system, were clearly
examples of this type of endeavor. The central thrust of work in IT, on the other hand,
has been to produce practical artifacts to support instruction rather than to discover
new principles about the natural world. Simon proposed an alternative category of
scientific inquiry (i.e., artificial science) for work in areas devoted to the production of
teleological objects designed to serve a particular goal or purpose. The issue, therefore,
is whether or not it is appropriate to generalize Kuhn’s descriptions of conduct within
the natural sciences to work within an artificial science, such as IT.
A second, and related, concern has to do with the role of theory in the emergence
and dissolution of research paradigms. Thagard (1992) has argued that although there
have been noteworthy conceptual shifts in the social sciences, such as the shift in
psychology from behaviorism to more cognitive approaches, they are different from the
revolutionary shifts that have occurred in the natural sciences. He made a critical
distinction between theories and approaches. Thagard defines a theory as a “coherent
Koschmann Paradigm Shifts and Instructional Technology
CSCL: Theory and Practice of an Emerging Paradigm 3
collection of hypotheses, [which] serve to explain a broad range of empirical
generalizations and facts” and an approach as “a general collection of experimental
methods and explanatory styles” (1992, p. 225). He concluded that because the social
sciences have failed to produce any broad, unifying theories comparable to Newton’s
theories of mechanics or Darwin’s theory of natural selection, the conceptual shifts that
have marked past research in these fields were “more the result of methodological
considerations than evaluations of explanatory coherence” (p. 225). Thagard’s position
is of interest here because I argue that the shifts that have occurred in IT were in fact
driven by shifts in underlying psychological theories of learning and instruction.
Whereas it is quite true that instructional technology, as a field of study, is different
in many respects from the scientific disciplines described by Kuhn, this does not mean
that it could not be productively studied by the same means. Although the practices of
research and standards of evidence utilized within a field such as IT may be quite
different from those employed within the natural sciences, there is no reason to believe
that the cultural factors that organize and lend structure to the field would be any
different from the analogous factors operating within the disciplines studied by Kuhn.
By the same token, Thagard’s distinction between theories and approaches, although
important to his typology of conceptual shifts, does not preclude an historical analysis
of work within IT. Although the underlying theories of learning and instruction that I
argue have informed work in IT do not meet Thagard’s standard for a “theory”, the fact
that they have resulted in paradigmatic shifts in practice is the important issue here.
Whether we choose to call the fundamental reconceptualizations underlying these shifts
“changes in theory” or ‘”changes in approach” is of little consequence to this discussion.
Conducting a Kuhnian analysis of IT is an instructive exercise, requiring a
reexamination of the theories that have motivated work in the field and the practices by
which technological innovations are designed and evaluated. Focusing on foundational
theories and research practices, as opposed to the form and intended role of the
designed artifacts, represents a novel way of conceptualizing past (and future) work. I
begin this analysis by looking briefly at some of the past paradigms for research in the
field. This serves as background to the more central question of this chapter; that is,
does the emerging body of work devoted to CSCL constitute a new paradigm for
research in IT?
Past Paradigms of Instructional Technology
There are many ways of using technology to support instruction. Before computers, a
number of other forms of technology—film, radio, and television—had been introduced
Koschmann Paradigm Shifts and Instructional Technology
CSCL: Theory and Practice of an Emerging Paradigm 4
into the classroom with varying degrees of success (Cuban, 1986). It was not until the
advent of computers, however, that instructional technology came into its own as a
broad area of study and my analysis, therefore, focuses on the use of computer-based
technologies.1 One can identify several past paradigms for the instructional use of
technology, both within and outside of the classroom. In this section, I describe three—
Computer-Assisted Instruction (CAI), Intelligent Tutoring Systems (ITSs), and the
Logo-as-Latin Paradigm.
Because the paradigms we are about to consider are paradigms in educational
technology, I will endeavor to address four questions for each—two theory-based and
two relating to practice. First, what is the implicit theory of learning upon which the
paradigm was constructed? Formulating an answer to this question will in many cases
entail an exploration of the paradigm’s epistemological commitments and its
underlying philosophy of mind (Ernest, 1995). Second, what is the theory of pedagogy,;
that is, the underlying model of instruction implicit to the paradigm? Of particular
interest here, of course, is the role of technology within this model. Shifting to the
practical aspects of the paradigm, the third question explores its research methodology
(i.e., How are claims warranted? What counts as scientific evidence? What are the
methods by which this evidence is gathered?). The fourth and final question concerns
what Kuhn called the “legitimate” (1972, p.10) research problems of the paradigm, that
is, what are the important research questions that the paradigm was established to
address?
Developing an historical analysis of past paradigms for research in IT is an
ambitious project to which a full book could be devoted. Since the focus of this volume
is on the development of CSCL as an emerging area of work, I only provide a cursory
sketch of the paradigms that have come before.2 An exploration of this background

1The term computer should be construed broadly enough, however, to include
emerging technologies such as high-bandwidth networks, wireless telecommunications,
interactive television, and video conferencing.
2For the reader interested in exploring this body of work in greater detail, there are a
number of references that could serve as points of departure. O’Shea and Self (1983)
provided an excellent overview of early work done within the CAI tradition. Larkin
and Chabay (1992) highlighted some of the connections among more recent work in
CAI and ongoing work within the ITS tradition. Wenger (1987) provides a very
thoughtful analysis of work within the ITS tradition. The contrast between
constructivist theory and more traditional approaches to instructional design are taken
Koschmann Paradigm Shifts and Instructional Technology
CSCL: Theory and Practice of an Emerging Paradigm 5
material is essential, however, to developing an understanding of the context within
which work in CSCL arises.
CAI Paradigm.
Because the term Computer-Assisted Instruction (CAI), along with related terms such
as Computer-Based Instruction and Computer-Aided Learning, is used in a variety of ways
in the IT literature, some clarification is required. In the early literature, CAI was used
generically as a blanket term for all uses of computers in education (e.g., Steinberg,
1991). Later, it came to represent a default background against which other more
specific approaches were contrasted (e.g., Wenger, 1987). In the current discussion,
however, I use the term in a more specific sense to refer to a particular paradigm in the
design and evaluation of instructional technologies. I have chosen IBM’s release of
Coursewriter I, the first CAI authoring tool (Suppes & Macken, 1978), in 1960 to serve
as the inaugural event for the emergence of this paradigm.3 The advent of courseware
building tools made it possible for individuals without formal training in programming
or computer science to develop their own computer-based teaching aids. Because many
CAI developers have backgrounds in teaching (Larkin & Chabay, 1992), applications
developed under this paradigm tend to be straight forward and practical instructional
tools designed around the identified needs of the classroom.4

up in a book edited by Duffy and Jonassen (1992). Finally, three edited collections
(1987; Jones & Winne, 1992; LaJoie & Derry, 1993; Rutkowska, & Crook) straddle the
division between constructivist theories of education and traditional ITS research.
3In providing an historical account of past work in IT, I have identified specific events to
mark the emergence of each of the paradigms described. By coincidence, each of these
selected events occurred at or near the beginning of a new decade. This pattern was
quite accidental, however, and not meant to imply that a shift in paradigms need be
expected every ten years. Indeed, each selection was somewhat arbitrary and for every
chosen event there were alternatives, before and after, that could have served in its
place. Selecting alternative events would not only change the dates on which some of
the shifts occurred, but could in some cases change the order of their emergence. This
type of historical gerrymandering, however, would in no way alter the central claim of
the chapter, namely that shifts in research practice have occurred in instructional
technology, resulting in the creation of several distinct communities of practice.
4At least this has been the intent. Cuban (1986) has argued that the failure of various
technology-driven initiatives to achieve an appreciable impact has been due largely to a
Koschmann Paradigm Shifts and Instructional Technology
CSCL: Theory and Practice of an Emerging Paradigm 6
Because of these close ties between CAI developers and education practitioners,
CAI applications tend to reflect the beliefs and attitudes of the general education
community. Cuban (1993) described what he referred to as the “dominant cultural
norms” with respect to learning, instruction, and the nature of knowledge. These
beliefs, though rarely made explicit, are pervasive within the education world and are
embraced by students, teachers, school administrators, and members of the
surrounding community. In this view, learning is seen as the passive acquisition or
absorption of an established (and often rigidly defined) body of information. The
teacher’s role is to “acquire formal knowledge, find efficient ways of sharing it, and
determine whether pupils have learned what was taught” (Cuban, 1993, p. 248).
Instruction, then, becomes a process of transmission or delivery. Reflecting the
influence of prior work in programmed instruction (Skinner, 1968) and instructional
design (Gagné, 1968), CAI applications utilize a strategy of identifying a specific set of
learning goals, decomposing these goals into a set of simpler component tasks, and,
finally, developing a sequence of activities designed to eventually lead to the
achievement of the original learning objectives.
Evaluative research in education has been, and to a large extent continues to be,
dominated by a tradition that is both behavioristic and experimentalist (Lagemann,
1989). Work in CAI can be seen as upholding this tradition (Blaisdell, 1976). Sharing
the positivist’s distrust of non-public, mentalistic phenomena, CAI researchers construe
learning as a measurable difference in displayed proficiency. Learning, so defined,
serves as a dependent variable in CAI research while the introduction of some form of
technological innovation represents the experimental intervention. The use of control
conditions is common in CAI studies—either through actual matched samples or
through the use of pre- and post-treatment testing in which experimental subjects serve
as their own control.
CAI studies are designed to address the question: What are the instructional
benefits of an introduced technology? Research under this paradigm, therefore, has had
as a central concern the issue of instructional efficacy. The paradigm itself has
undergone some refinement over the years. Early work related to programmed
instruction focused on parameters of reinforcement and their effects on learning (e.g.,
Coulsen, Estavan, Melaragno, and Silberman, 1962; Gilman, 1967). These were carefully
controlled laboratory studies very much in the style of the behavioristic school (Skinner,

failure on the part of the designers to fully appreciate the expectations and
requirements of classroom practitioners.
Koschmann Paradigm Shifts and Instructional Technology
CSCL: Theory and Practice of an Emerging Paradigm 7
1968). Later work (e.g., Merrill, Schneider, & Fletcher, 1980) has attended to other kinds
of variables and adopted a “systems” orientation (Dick, 1987) involving testing in more
authentic contexts and the use of multiple dependent variables. Throughout its history,
the tradition has favored technology-driven research in which the emergence of some
form of technology (e.g., microcomputers [More & Ralph, 1992], hypertext, CD ROMs
[Riding & Chambers, 1992]) stimulates a research to evaluate its effects on learning
outcomes.
Though CAI is the oldest paradigm for work in IT, it is by no means an abandoned
one. Applications designed under this paradigm range from early drill-and-practice
programs to more recent network-based World Wide Web documents.5 They account
for the bulk of instructional software now in actual classroom use, and evaluating the
instructional effects of such applications continues to be an active area of research.
ITS Paradigm.
The emergence of the next paradigm was the direct result of an immigration, which
began in the early 1970s, of workers from the field of Artificial Intelligence (AI) research
into the educational arena. Carbonell’s thesis defense (1970) was cited by Wenger (1987)
as the event that marked the onset of this influx. Research in AI is founded upon the
conjecture that cognition is, in some sense, a computational process that can be studied
through the construction of “intelligent” systems that serve as functional models of the
otherwise inaccessible processes of the human mind (Pylyshyn, 1989). If machines can
be programmed to display intelligent behavior, there is no reason, at least in principle,
that systems could not be designed to assume the role of a skilled teacher. Since oneon-one
tutoring is commonly considered the gold standard against which other
methods of instruction are measured (Bloom, 1984), the paradigm is founded on the
proposition that education could be globally improved by providing every student with
a personal (albeit machine-based) tutor (Lepper, Woolverton, Mumme, & Gurtner,
1993).
Information Processing Theory (Simon, 1979) served as one of the founding
premises for work in AI. It held that problemsolving (human and otherwise) could be

5I by no means wish to suggest by this that all Web applications should be viewed as
extensions of the CAI paradigm. The World Wide Web is very much a work in
progress and I only wish to observe that at least some of its current applications, in
their design and methodologies of evaluation, are consistent with the traditions of CAI
research.
Koschmann Paradigm Shifts and Instructional Technology
CSCL: Theory and Practice of an Emerging Paradigm 8
seen as a process of defining a representation of a problem space consisting of an initial
state, a goal state, and a set of operations for moving from one state to another. By this
view, representation became a central issue for understanding both problem-solving
and cognition in general. Learning, in this light, becomes the process by which the
problemsolver acquires a proper representation of a problem space. Instruction, then,
consists of activities designed to facilitate the acquisition of such a representation by the
learner. The role of technology in this process is really not so different from the role
that it assumes within the CAI paradigm. The differences are more in degree than in
kind. In both cases, the designed application serves instruction by posing problems and
by providing feedback to the learner. The difference is that ITSs aspire to do this in a
more interactive fashion and with respect to a more complex set of skills.
Much more striking differences are seen, however, in the evaluative methods which
comprise the paradigms. Unlike the CAI paradigm which reflects the standards and
methods of the general educational research community, the ITS paradigm applies an
approach adopted from research in AI. AI research is dedicated to the task of providing
an account, in computational terms (i.e., algorithms and representational schemes), of
various aspects of human cognition. The process by which this is accomplished was
described by Lehnert (1984) as follows:
1. Propose a theory to explain the phenomenon.
2. Implement the theory in a computer program designed to simulate the
phenomenon.
3. Run the program.
4. Analyze the program’s output. (p. 24)
When I refer to the ITS paradigm, therefore, I am referring to work that applies the
methods of AI research to the task of understanding skilled tutoring in complex
domains. Competent tutoring in such domains raises several problems in
representation—how to represent the knowledge of an expert in the domain, how to
represent the pedagogical expertise of the tutor, and how to represent the (possibly
faulty) understanding of the student user (Wenger, 1987).
Research conducted under this paradigm leads to the generation of a different set of
research questions from those addressed within the CAI tradition. Whereas
instructional efficacy is the sine qua non for CAI researchers, the critical issue for ITS
researchers is instructional competence; that is, does the application faithfully emulate the
behavior of a skilled tutor? The focus, therefore, is on the fidelity of the system’s
Koschmann Paradigm Shifts and Instructional Technology
CSCL: Theory and Practice of an Emerging Paradigm 9
performance, rather than its effect on student learning outcomes.
6 This shift in
priorities has been a source of misunderstanding among researchers working within the
two paradigms. To an ITS researcher, a completed program serves as an existence
proof for a theory, whereas to a CAI researcher, no project is complete until the
application’s value has been demonstrated in the classroom.
In the end, however, these two paradigms have more in common than is usually
appreciated. Although one is implicitly behavioristic in its approach and the other
explicitly cognitive, both assume an epistemological stance that is realist and absolutist
(Doerry, 1994; Ernest, 1995). Both reflect prevailing notions of knowledge as given and
of teachers as the final authority (Schommer, 1990). There is an implicit commitment to
the existence of a “correct” representation and a view of the tutor as an agent for
effecting the learner’s acquisition of this representation. Furthermore, like the CAI
developers before them, ITS researchers embrace a rather conventional view of teaching
as delivery, what has been termed a transmission model of instruction (Pea, Chapter 7).
Wenger (1987), for example, argued that “the ability to cause and/or support the
acquisition of one’s knowledge by someone else, via a restricted set of communication
operations” was the central problem of ITS design (p. 7). As we see, however, later
paradigms represent a departure from these received norms, both in their underlying
epistemological frame of reference and in their models of instruction.
Logo-as-Latin Paradigm.
The next paradigm arose from an epistemological perspective that holds
knowledge to be acquired through “a process of subjective construction on the part of
the experiencing organism rather than a discovering of ontological reality” (von
Glasersfeld, 1979, p. 109). This view of learning, which is explicitly relativistic and

6This is not to say that there has been no research on the efficacy of Intelligent Tutoring
Systems. However, most research within the ITS paradigm (as I have defined it here)
has concerned itself with issues other than efficacy (e.g., what accounts for expertise
[Koedinger & Anderson, 1990], how to provide plausible explanations to the student
[Clancey, 1983], how to represent the student’s faulty understanding [VanLehn, 1982],
the pragmatics of student/tutor interaction [Woolf & McDonald, 1984]). Although
recent research in instructional design (e.g., “structural learning” [Scandura, 1995], ID2
[Merrill, Lin, & Jones, 1990]) is reminiscent of earlier ITS work in its emphasis on
knowledge representation, its behavioristic evaluative traditions aligns it more
comfortably with the CAI paradigm.
Koschmann Paradigm Shifts and Instructional Technology
CSCL: Theory and Practice of an Emerging Paradigm 10
fallibilist (Ernest, 1995), is referred to as constructivism.
7 It had its origins in the work of
the developmental psychologist Piaget who introduced a theory of learning whereby
new information interacts with prior knowledge through a process of assimilation and
accommodation (Piaget, 1985). This constructivist view of learning inspired the
development of a number of instructional methods (e.g., “learning by discovery”
[Shulman & Keisler, 1966]; Open-Classroom Learning, [Kohl, 1969]; Experiential
Learning, (Kolb, 1984); Inquiry Learning [Bateman, 1990]) all dedicated to the
proposition that learning occurs most propitiously under circumstances of personal
inquiry and discovery.
Papert (1980) argued that the activity of programming computers could play an
important role in constructivist learning.8 Computer programs are particularly
interesting artifacts for a learner to construct because, unlike term papers and other
traditional class projects, they are executable. In building an executable artifact, such as
a microworld or a computer-based simulation, the learner in effect “teaches” the
computer, thus providing a new role for technology in learning. Instead of serving as a
stand-in for the teacher, as was the case in the CAI and ITS paradigms, the computer
becomes “tutee” (Taylor, 1980) allowing the learner to assume the role of teacher. The
assumption here is that by engaging in the activities of programming—designing,
building, and debugging programs—the learner acquires cognitive benefits that extend
beyond simply learning to code in a particular language. A substantial research
literature has accumulated that addresses the question of just what these benefits might
be (Mayer, 1988; Pea & Kurland, 1987; Palumbo, 1990; Salomon & Perkins, 1987). Much
of this research involves learning to program in Logo, a powerful programming
language designed by Wally Feurzeig in the mid-1960s for use by young children
(Papert, 1980). Because much of this work focuses on learning to program in the service

7This is admittedly a bit of a gloss—constructivism is more a shared orientation than a
unified school of thought. Within the community of workers collectively labeled as
“constructivists” can be found a number of competing perspectives including radical
constructivism (von Glaserfeld, 1979), ecological constructivism (Steier, 1995), social
constructivism (Bauersfeld, 1995), and advocates of Cognitive Flexibility Theory (see
chapter 2, this volume), sometimes labeled information-processing constructivists (Steffe &
Gale, 1995).
8Because of its important role in stimulating later research, I have selected the
publication of Papert’s Mindstorms as the inaugural event for the emergence of this
paradigm.
Koschmann Paradigm Shifts and Instructional Technology
CSCL: Theory and Practice of an Emerging Paradigm 11
of more general educational objectives, I have termed this research approach the Logoas-Latin
Paradigm (Koschmann, in press).
Exploring the cognitive benefits of programming can be seen as one part of a
broader movement in educational psychology to identify mechanisms for fostering the
development of general skills for learning and problem-solving (Bruer, 1993; Segal,
Chipman, & Glaser, 1985). As a consequence, researchers working within this
paradigm have utilized the standard research methods of educational psychology in
assessing the cognitive benefits of learning to program. Whereas research under the
CAI Paradigm is concerned with instructional efficacy, Logo-as-Latin research focuses
more specifically on the issue of instructional transfer. Programming instruction is
treated as the experimental intervention, and subsequent performance on other related
tasks serves as the dependent variable. The use of control groups is common. Studies,
so constructed, have investigated the effect of learning to program on planning (De
Corte, Vershaffel, & Schrooten, 1992), metacognition (Clements & Gullo, 1984), and
other aspects of cognitive performance (Lehrer & Littlefield, 1993).9
Constructivist research takes as its central concern the issue of cognitive selforganization
(Cobb, 1994). In so doing, it adopts the view of mind as a phenomenon
residing within the head of the individual. This is a view that is deeply steeped in
western philosophical traditions and that is foundational to most current research in
psychology and education. It is not universally held, however. There are competing
views that place the mind within the surrounding sociocultural environment. As we
see in the next section, these alternate views have important implications for education
and the use of technology therein.
CSCL: An Emerging Paradigm in IT

9It is worth noting that not all Logo-as-Latin research is based on Logo; nor does all
research involving programming in Logo necessarily represent Logo-as-Latin research.
There have been, for example, related studies exploring the cognitive benefits of
programming in Prolog (Scherz, Goldberg, & Fund, 1990; Verzoni & Swan, 1995).
Conversely, there is considerable research using Logo that is not concerned with the
issue of transfer. This is true, for example, of much of the research done by Papert and
his associates (e.g., Harel & Papert, 1991). Following in the tradition of classical
Piagetian research, much of Papert’s work with Logo has tended to consist of case
studies designed to document children’s achievements while working with computers.
Koschmann Paradigm Shifts and Instructional Technology
CSCL: Theory and Practice of an Emerging Paradigm 12
I argue in this section that we are currently witnessing the emergence of a new
paradigm in IT research; one that is based on different assumptions about the nature of
learning and one that incorporates a new set of research practices. Although there is a
noted lack of agreement among the previously described paradigms with respect to
their theories of learning and pedagogy, all three approach learning and instruction as a
psychological matter (be it viewed behavioristically or cognitively) and, as such,
researchable by the traditional methods of psychological experimentation. This newly
emerging paradigm, on the other hand, is built upon the research traditions of those
disciplines—anthropology, sociology, linguistics, communication science—that are
devoted to understanding language, culture, and other aspects of the social setting (cf.,
Scott, Cole, & Engel, 1992). As a result, it reflects a different view of learning and
instruction, one that brings these social issues into the foreground as the central
phenomena for study (Hutchins, 1993). This perspective has been influenced by a
number of recent movements in the socially-oriented (as opposed to the psychological)
sciences. I briefly describe three, although there were certainly others that have
contributed to this Zeitgeist.
10
Socially Oriented Constructivist Viewpoints.
Constructivism originally arose out of Piaget’s research in developmental
psychology and has developed into an important perspective in educational research
(cf. Steffe & Gale, 1995). Within the constructivist camp, there is a growing interest in

10Two other movements not discussed here but worthy of mention are Symbolic
Interactionism and Social Constructionism. Symbolic Interactionism has its roots in the
writings of the American Pragmatist philosophers, particularly George Herbert Mead
(Blumer, 1969). As an analytic framework, however, it shares many of the concerns of
the other approaches described here, especially the Soviet sociocultural theories and
Situated Cognition (Star, 1995). Social Constructionism is another related movement
that represents a research tradition in social psychology and sociology (Gergen, 1985;
Harré, 1986). Constructionism (the “N” word rather than the “V” word) is dedicated “to
the task of describing what the ‘inner’ life of a ‘linguistically situated person’ in a
socially constructed world is like” (Shotter, 1993, p. 161). Evidence of this inner life is
extracted from the study of day-to-day communicative activities, discursive practices,
rhetoric, and argumentation (Billig, 1987). Social Constructionists, like the socially
oriented constructivists, are explicitly nonabsolutist in their views of the nature of
knowledge.
Koschmann Paradigm Shifts and Instructional Technology
CSCL: Theory and Practice of an Emerging Paradigm 13
the social context within which learning occurs. Notable in this regard is the research of
the so-called neo-Piagetians, who have emphasized the importance of peer interaction for
cognitive development (Doise & Mugny, 1984). In educational research (particularly in
mathematics education), a school of thought known as social constructivism has emerged
(Bauersfeld, 1995; Cobb, 1994). As a constructivist perspective it takes a nonabsolutist,
fallibilist view of knowledge as constructed, but, unlike other constructivist positions,
views this construction to be an essentially social process (Ernest, 1995).
Soviet Sociocultural Theories.
Another important influence was the research of Soviet psychologists interested in
the cultural basis of human intellect. Perhaps the best known of these was Vygotsky,
who formulated the theory of cultural-historical psychology (van der Veer & Valsiner,
1991). His General Genetic Law of Cultural Development stipulates that learning always
occurs on two planes: first on the inter-psychological and only later on the intrapsychological
(Wertsch, 1985). As a mechanism for learning on the inter-psychological
plane, Vygotsky hypothesized the existence of a construct that he termed the zone of
proximal development (Vygotsky, 1978). This zone represents the enhanced capabilities of
a learner working in the presence of a more skilled coworker or teacher.
The cultural-historical approach to learning developed by Vygotsky focused largely
on the role of language in intellectual development (Brushlinsky, 1990). A related
school, represented most prominently by the Russian researchers Leont’ev (1974),
Galperin (1992), and Rubenstein (Brushlinsky, 1989), focused its attention on the role of
activity in human development.11 One articulation of the so-called “Activity Theory”
(attributed to Rubenstein (Brushlinsky, 1990) asserts that “The subject not only reveals
and manifests himself in his actions and in the acts of his independent creative activity:
he is created and defined in them. That is why the things he does can be used to
determine and mould his character” (p. 67). Activity Theory takes, as its unit of
analysis, human goal-directed activity in its cultural context (Leont’ev, 1974). It focuses,

11The Russian dyeyatyelnost is commonly translated into English as “activity”. Many
Russian scholars, however, are not completely comfortable with this translation.
German has two words, Aktivität and Tätigkeit, that both translate to “activity”. The
latter is composed from the adjective tätig , meaning busy or engaged. It is used in
expressions such as in Tätigkeit setzen, meaning to engage or put into action.
Consequently, this term comes closer to capturing the meaning of the Russian
dyeyatyelnost than the usual English translation.
Koschmann Paradigm Shifts and Instructional Technology
CSCL: Theory and Practice of an Emerging Paradigm 14
therefore, on signs, symbols, rules, methods, instruments, and other artifacts that serve
to mediate this activity.
Vygotsky’s cultural-historical psychology and the work of the later Activity
Theorists has subsequently developed a following both in educational research
(Forman, & Cazden, 1985; Griffin, & Cole, 1987; Newman, Griffin, & Cole, 1989) and in
the specialized area of computer science dealing with human/computer interaction
(Kuuti, 1996).
Theories of Situated Cognition.
The term “situated”, as in “situated learning” or “situated cognition”, has assumed a
variety of meanings in different disciplinary contexts. It refers to a specific theory in
linguistics and philosophy of language (Barwise & Perry, 1983), a reaction in the AI
community to symbolic models of cognition (Clancy, 1993; Winograd & Flores, 1986), a
program of study in anthropology (Suchman, 1987), and a way of reconceptualizing
educational practice (Brown, Collins & Duguid, 1989; Greeno, 1989; Lave & Wenger,
1991). It is the latter two senses that concern us most directly here. In theories of
situated cognition, learning is viewed as a process of entry into a community of
practice, to wit: “To learn to use tools as practitioners use them, a student, like an
apprentice, must enter that community and its culture. Thus in a significant way,
learning is, we believe, a process of enculturation” (Brown, Collins, & Dugiud, 1989, p.
33). Within this perspective, the context (both social and material) within which
learning occurs comes under careful scrutiny, arising from a view “that agent, activity,
and the world mutually constitute each other” (Lave, & Wenger, 1991, p. 33).
Taken together these perspectives—social constructivism, Soviet sociocultural
theories, and situated cognition—provide the intellectual heritage from which CSCL
has emerged as a new paradigm for research in instructional technology. Although
they arise a within a different disciplines and utilize different metaphors of social
process (Geertz, 1980), they all represent a gestalt-like shift in point of reference relative
to the views taken by the paradigms described previously. This shift in point of
reference, leading to a fore grounding of the social and cultural context as the object of
study, produces an incommensurability in theory and practice relative to the paradigms
that have come before.
The model of instruction underlying work in CSCL is termed “collaborative
learning.” Although it is easy to recognize examples of collaborative learning, it is
difficult to provide a precise definition. Bruffee (1993) describe it as “a reculturative
process that helps students become members of knowledge communities whose
Koschmann Paradigm Shifts and Instructional Technology
CSCL: Theory and Practice of an Emerging Paradigm 15
common property is different from the common property of the knowledge
communities they already belong to” (p. 3). This definition, focusing on what
collaborative learning is meant to accomplish, resonates with the view of learning as
entry into a community of practice. On the other hand, Roschelle and Behrend (1995)
described it as “the mutual engagement of participants in a coordinated effort to solve
[a] problem together” (p. 70). This latter definition highlights several facets of the
method: a commitment to learning through doing, the engagement of learners in the
cooperative (as opposed to competitive) pursuit of knowledge, the transitioning of the
instructor’s role from authority and chief source of information to facilitator and
resource guide. Examples of collaborative learning methods include Expeditionary
Learning12, Group Investigation (Sharan, 1980), Problem-Based Learning (Barrows,
1994; Barrows & Tamblyn, 1980; Koschmann, Kelson, Feltovich, & Barrows, chapter 4),
Project-Based Learning (Blumenfeld et al., 1991; Soloway, Krajcik, Blumenfeld, & Marx,
chapter 11), and other forms of small-group learning (Noddings, 1989; Webb, 1982).
Over time, interest has grown in the question of how technology might serve to
support collaborative methods of instruction (Crook, 1994; Koschmann, 1994a). There
have been a number of significant events germane to the emergence of this area of work
as a new paradigm in IT. A preliminary exploration of the issues engendered by the
use of technology in collaborative education took place in 1983 at the Conference on
Joint Problem Solving and Microcomputers held at the Laboratory of Comparative
Human Cognition (LCHC) (Cole, Miyake, & Newman, 1983). A later workshop,
conducted under the auspices of the NATO Special Program on Advanced Educational
Technology, was held in Acquafredda di Maratea, Italy in 1989 (O’Malley, 1995).
Because this was the first gathering to adopt the title “computer-supported collaborative
learning”, I have chosen this event to mark the emergence of the paradigm. Subsequent
CSCL workshops were held, one in 1991 at Southern Illinois University (Koschmann,
1992) and another at Ontario Institute for Studies in Education (OISE) in 1992
(Koschmann, Newman, Woodruff, Pea, & Rowley, 1993). The first international
conference on this topic took place at the University of Indiana in the fall of 1995
(Schnase & Cunnius, 1995) and a follow-up is planned at the University of Toronto for
1997.
As reflected in the chapters of this volume, CSCL applications assume a variety of
forms. They can be categorized on a number of dimensions, including the locus of use,

12A method utilized in a New American Schools Development Corporation (NASDC)
project undertaken by Outward Bound.
Koschmann Paradigm Shifts and Instructional Technology
CSCL: Theory and Practice of an Emerging Paradigm 16
how the use is coordinated in time, and the instructional role it was designed to serve.
Though the majority of CSCL applications are designed for student use, there is also a
need for tools to support teachers engaged in collaborative forms of instruction (see
chapter 11, chapter 5). The locus of use may be intra-, inter-, or extra-classroom
(Koschmann, & O’Malley, 1994). Applications have been designed for use within the
classroom (chapter 9, chapter 4, this volume), to connect users across classrooms
(chapter 8), and in some cases to create “virtual classrooms” (Hiltz, 1988). Users of an
application may coordinate their interaction synchronously (e.g., chat programs) or
asynchronously (e.g., e-mail). CSCL applications may serve a number of roles.
Technology, for example, can be used to present or simulate a problem for study,
helping to situate it in a real world context (e.g., chapter 4, this volume). Alternatively,
computers can be used to mediate communication within (chapter 6), and across
classrooms (chapter 8, chapter 5), or to introduce new resources into the classroom
(chapter 7). Computers can also provide archival storage for the products of group
work, thereby supporting “knowledge building” (chapter 10). Finally, computers can
support the creation of representational formalisms that enable learners to model their
shared understanding of new concepts (e.g., the Envisioning Machine described in
chapter 9).
Unlike the types of issues (i.e., instructional efficacy, instructional competence,
instructional transfer) underlying the paradigms described earlier, research in CSCL is
concerned with questions such as: how is learning reflected in the language of learners
(chapter 9)? How do social factors enter into the process of learning (chapter 3)? How
is technology actually used in collaborative settings (chapter 6)? Stated differently, the
central focus for research in CSCL is on instruction as enacted practice. Consistent with
the sociocultural outlook of its practitioners, research in CSCL tends to utilize the
research methods of the social sciences (for more on this see chapter 7, this volume).
Although the paradigm is still very much in its formative stages, several comments can
be made concerning the general analytic framework of research in this area. First,
driven by the types of research questions being asked, work in CSCL tends to focus on
process rather than outcome. Second, there is a central concern with grounding
theories in observational data (Glaser & Strauss, 1967) and in the construction of thick
descriptions (Guba & Lincoln, 1981) of the phenomena under study. As a consequence,
CSCL studies tend to be descriptive rather than experimental. A third and final aspect
of this emerging body of research is that there is an expressed interest in understanding
the process from a participant’s viewpoint. As argued by Jordan and Henderson (1995),
learning can best be understood “as a distributed, ongoing social process, where
Koschmann Paradigm Shifts and Instructional Technology
CSCL: Theory and Practice of an Emerging Paradigm 17
evidence that learning is occurring or has occurred must be found in understanding the
ways in which people collaboratively do learning and do recognizing learning as having
occurred” (p. 42, italics added). CSCL research focuses, therefore, on participants’ talk,
the artifacts that support and are produced by a team of learners, and the participants’
own accounts of their work. There are a small but growing number of studies that fit
this description (Glenn, Koschmann, & Conlee, 1995; Griffin, Belyaeva, & Soldatova,
1992; Roth, in press; Roschelle’s chapter, this volume).
It should be acknowledged that while all of the chapters in this book describe work
at the confluence of technology and classroom collaboration, not all necessarily espouse
a social theory of learning, nor do they all speak to the research issue of instruction as
enacted practice. Although this may appear problematic given the description of the
paradigm provided here, I think there are a number of ways of accounting for this
discrepancy. One possibility, for example, is that some of the current researchers in the
area continue to be influenced in their work by past paradigms; that is, that they
currently exist with a foot in both worlds. This seems quite plausible, given the relative
newness of the paradigm. Another possibility is that there may be more than one
paradigm emerging with a commitment to collaborative forms of instruction. In
addition to the paradigm described here, there may be one or more other paradigms
with a more cognitive orientation. It is difficult to know for sure. In the end, it is
always easier to provide an account of paradigms past than it is to describe a paradigm
in the process of becoming.
Koschmann Paradigm Shifts and Instructional Technology
CSCL: Theory and Practice of an Emerging Paradigm 18
Looking into the Future: Hegel versus Kuhn
The four paradigms described in this chapter are summarized in Table 1.1. No claim is
made that this list is necessarily exhaustive. Indeed, it is recognized that there are
examples of IT research that do not fit within any of the paradigms described. Some of
this work may be anomalous and does not subscribe to any particular paradigm, but the
point is readily conceded that there probably exist additional paradigms that have not
been discussed here.13
The analysis offered in this chapter provides a new scheme for categorizing work in
IT. There have been numerous past attempts to create taxonomies based on the role
that the application was designed to play in the instructional setting (Soloway, 1993;
Taylor, 1980; Wu, 1993). Taylor’s (1980) typology of tutor, tutee, and tool is probably the
best known and is one that has been adopted by a number of other authors (Crook,
1994; Dreyfus, & Dreyfus, 1986; O’Shea, & Self, 1983). It appears to have several
weaknesses, however. By focusing exclusively on the functional nature of the
application, opportunities to consider other aspects of the work—such as the theories of
learning that motivated it in the first place—are missed. Second, by trying to reduce the
diverse set of IT applications into just three categories, considerable resolution is lost.
Although more elaborate typologies have been proposed (e.g., Wu, 1993), it is not clear
that this is the best direction to be taken. By focusing exclusively on descriptive aspects
of the application, we lose the ability to discern larger shifts in philosophy and practice.
By contrast, applying a Kuhnian analysis encourages a broader view of practice, one
that encompasses underlying theories and methods of research and argumentation.
Various authors have made attempts to divine the direction that IT research might
take in the future. In many cases, this is done in the form of a dialectical analysis. This
method, developed by the Nineteenth Century philosopher Hegel, is based on the

13One candidate that comes immediately to mind is research related to “CSCWriting”
(Gruber, Bruce, & Peyton, 1995). There is a substantial body of work devoted to the use
of computers in composition (see the Neuwirth and Wojahn chapter for references) that
is largely invisible to the IT community because it is embedded in the literature of
writing instruction. The question of whether CSCWriting should be viewed as a special
disciplinary interest within CSCL or as a paradigm in its own right does not have a
clear answer at this point. What is clear, however, is that the two movements share
many issues and that there is much that researchers in CSCL could learn from the
accumulated experience of the composition community.
Koschmann Paradigm Shifts and Instructional Technology
CSCL: Theory and Practice of an Emerging Paradigm 19
theory that our understanding of a concept proceeds through a three-part process of
clarification—a thesis is opposed by its antithesis and is eventually supplanted by a new
synthesis (Koschmann, 1994b). For example, Larkin and Chabay (1992) and Duffy and
Jonassen (1992) contrasted work in the CAI and ITS traditions in the interest of
identifying possible directions for future work. Derry and LaJoie (1993) focused on the
contrast between ITS and constructivist-motivated research and argued that future
work would represent a synthesis of these two approaches. Most recently, Cobb (1994),
Crook (1994), and Steffe and Gale (1995) have contrasted constructivist and
sociocultural views of learning in the hopes of achieving some form of reconciliation.
The historiographic account presented in this chapter makes this dialectical
approach problematic, however. In no case did a newly emerging paradigm appear to
be the synthesis of ideas drawn from previous paradigms. The ITS paradigm was less
an adaptation of prior work in CAI research than an invasion of a new group of
workers bringing with them new standards for design and evaluation. Similarly, the
Logo-as-Latin paradigm was not presaged by the CAI or ITS paradigm; it represented
an entirely different philosophy about the use of technology in education. Finally, the
emergence of the CSCL paradigm could have been in no way predicted by the clash of
constructivist and information processing theories of learning.
Ironically, the ultimate lesson of this form of analysis is that the revolutionary
changes that Kuhn described as paradigm shifts are always difficult to foresee and, in
particular, can not be adduced from the study of past history. The ideas that have
shaped work in IT have, in general, come from outside the field. As a result, the task of
identifying the sources of future shifts is a difficult one. Kuhn, himself, despaired at the
prospect of ever providing a complete account of how a field-defining, revolutionary
idea comes to exist. He lamented, “What the nature of that final stage is—how an
individual invents (or finds he has invented) a new way of giving order to data now all
assembled—must here remain inscrutable and may be permanently so” (1972, p. 90).
And so it may be for our own efforts to foretell the future direction of research in
instructional technology.
Koschmann Paradigm Shifts and Instructional Technology
CSCL: Theory and Practice of an Emerging Paradigm 20
Acknowledgments
The author would like to thank Paul Feltovich and Alan Lesgold for reading an
earlier draft of this chapter and providing many constructive comments. The author
was supported by the Spencer Post-Doctoral Fellowship from the National Academy of
Education while preparing this chapter.
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