Using a concept mapping software as a knowledge
construction tool in a graduate online course
Josianne Basque, Béatrice Pudelko
To cite this version:
Josianne Basque, Béatrice Pudelko. Using a concept mapping software as a knowledge construction tool in a graduate online course. D. Lassner and C. McNaught. Wold Conference on
Educational Multimedia (ED-MEDIA) 2003, 2003, Honolulu, United States. Association for
the Advancement of Computing in Education (AACE), pp.2268-2274, vol. 2003, No1. <hal00190659>
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Basque, J., Pudelko, B. (2003). Using a concept mapping software as a knowledge construction tool in a graduate online course. In D.
Lassner, C. McNaught (Eds), Proceedings of ED-MEDIA 2003, World Conference on Educational Multimedia, Hypermedia &
Telecommunications, Honolulu, June 23-28, 2003 (pp. 2268-2264). Norfolk, VA: AACE.
Used with permission from the Assn. for the Advancement of Computing in Education: www.aace.org
Using a concept mapping software as a knowledge construction tool in a
graduate online course
Josianne Basque, Ph.D.
LICEF Research Center
Télé-université
Canada
jbasque@teluq.uquebec.ca
Béatrice Pudelko
Université Paris VIII and LICEF Research Center
Télé-université
Canada
bpudelko@licef.teluq.uquebec.ca
Abstract: Stemming from a twenty-month pedagogical experience using a concept
mapping software for higher education students in an online course, this paper reports
findings from what became an exploratory study. The objectives were to support the
students’ knowledge construction process and to stimulate metacognitive reflection. After
having read some instructional texts, students used an object-oriented modeling tool
(called MOT) to graphically represent a network of at least fifteen knowledge units of
their choice. They also had to “explain” their concept map in a narrative format. Based on
questionnaire data, comments expressed spontaneously by students in the online forums,
and the analysis of their concept maps, the following themes are discussed: (1) students’
attitudes toward concept mapping, (2) how they executed the concept mapping task, and
(3) characteristics of the maps produced. In conclusion, some research issues are
outlined.
Introduction
Research and development have flourished in recent years in the domain of telelearning and eLearning.
Nevertheless, the majority of existing web-based learning environments can still be characterized as
follows: essentially text-based, limited in terms of assistance provided to students (either by human or
machine), and demanding for students in terms of autonomy and metacognition. Thus, many researchers in
educational technology and distance education stress the need to provide telelearners with powerful
“cognitive tools” aiming at supporting their knowledge construction process, text comprehension and
reflection (Lin, Hmelo, Kinzer, & Secules, 1999; Ruelland & Brisebois, 2002).
For nearly twenty years, concept mapping (CM) has been suggested as one of those powerful cognitive
tools that can support active knowledge construction and enhance significant learning (Holley &
Dansereau, 1984a; Jonassen & Marra, 1994, Jonassen, Reeves, Hong, Harvey, & Peters, 1997; McAleese,
1998); Novak & Gowin, 1984; Wandersee, 1990). The emergence of computer-based concept mapping
software in the last decade has provoked a renewed interest in the construction of concept maps by students
as a learning activity. Compared to paper-and-pencil, these software tools have much more to offer in
facilitating the CM task, especially revision and formatting of the maps (Anderson-Inman & Ditson, 1999;
Bruillard & Baron, 2000). Those functionalities encourage users to elaborate and revise their maps and,
consequently, help them self-monitor their knowledge construction process (McAleese, 1994). Moreover,
based on the assumption that external knowledge representation is governed by semantic and syntactic
rules, some CM software put constraints on the types of knowledge units and links that can be represented
graphically. Developers hypothesize that this helps the user in elaborating and structuring concept maps.
Much research has been done on educational applications of concept mapping (Dansereau & Holley, 1982;
Horton et al., 1993; Novak, 1998), but few of them have been conducted in a distance education context
(e.g. De Simone, Schmid, & McEven, http), and very few have investigated the effect on learning and
metacognition of imposing a representational syntax (e.g. Holley & Dansereau, 1984b).
Since May 2001, graduate distance learners have been using a CM software in an online course. The
software includes a syntax that can be used to distinguish graphically the types of knowledge and links
represented in the concept maps. The experience is described in the paper, followed by a description of the
research issues that evolved.
The course
The CM activity is integrated into a distance course delivered on the web, entitled Cognitive science and
learning. This 135-hour course is offered every semester on a 15-week basis at Télé-Université, a FrenchCanadian university devoted exclusively to distance education. Since the first delivery of the course in May
2001, thirty-four students registered to the course held in small online groups (between 5 and 16 students).
The course is part of several graduate programs (at a master level) in Educational Technology, Education
and Information Technologies.
The course is composed of five learning activities, the second one being the CM activity. Instructions for
each activity are given in HTML format, with hyperlinks giving access to the learning resources and tools
(texts, software tools, guides, forums, etc.) on a just-in-time basis. The course was delivered on Explor@, a
virtual learning center developed at LICEF Research Center1 (Paquette, de la Teja, & Dufresne, 2000),
allowing students to have access at any time to the learning resources and tools using the Explor@ learning
resource manager. In Explor@, tools and resources are grouped in five spaces (Self-management,
Information, Production, Collaboration and Assistance). The CM software was accessible in the production
space. Some resources were delivered in printed format.
The concept mapping activity
In this activity, students were invited to construct a concept map after having read four texts (one being
optional), for a total of 128 pages. One text is an introduction to cognitive sciences and each of the other
texts describes a different approach to cognition (symbolic, contextual, and connectionist). Students were
asked to synthesize their understanding of the texts by representing graphically at least fifteen key
knowledge objects drawn from at least two of the instructional texts. They were asked to link each
knowledge object represented in their CM with at least one other and to label the links. They were also
asked to write an accompanying text explaining their concept maps. This work (map + text) was submitted
as a part of their summative evaluation (15 % of the total mark). The time required to complete the activity
was estimated to about 36 hours distributed over 4 weeks. A textual guide was provided, which included a
definition of concept map, examples of concept maps and a procedure to construct concept maps. Peertutoring was encouraged: students were invited to ask and answer questions and to share their experience in
the online forums all along the activity.
The concept mapping software
To construct their concept map, students were invited to use a knowledge modeling tool, called MOT
(Modélisation par objets typés), developed at LICEF (Paquette, 1996, 2002).2 In MOT, four knowledge
types can be distinguished by using different graphic shapes: concepts (rectangles), procedures (ovals),
principles (hexagons) and facts (rectangles with indented corners). Those knowledge objects can be linked
to each other by arrows, the arrowhead indicating the direction of the link. Letter labelling is used to
specify the link type: Composition, Regulation, Specialization, Precedence, Input/Product and
Instantiation. Some rules, built into the software, constrain the type of links that are possible between two
knowledge objects. For example, a specialization link can only be used between two objects of the same
type. Consequently, the specialization link is not accessible from the menu when the user is in the process
of labelling a link between two different object types. However, MOT includes a link, which is “untyped”
thus allowing the user to put his or her own labels. A specific shape is also provided for “untyped” objects.
An example of a concept map created with MOT is displayed in Figure 1. This map represents a very small
part of the knowledge related to the procedure “Driving a car”.
1 The LICEF Research Center, based at Télé-université in Quebec, Canada, is a laboratory that is dedicated to cognitive
informatics and training environments.
2 For further details on this product, refer to the LICEF Research Center website: http://www.licef.teluq.uquebec.ca
Fig. 1 - An example of a concept map created with MOT
Among the basic features of MOT count the following: creating knowledge objects by choosing graphic
icons in a menu and moving the cursor on the screen until the object is the desired size; drawing the links
between them by simply drag-and-drop; changing objects and links types by choosing in a menu; moving
objects on the screen by dragging them; modifying labels and directions of links using the mouse right
button; changing text and graphic attributes, zooming in and out as well as creating sub-maps. This
function is especially useful to simplify large maps with numerous objects and cognitively challenging
because the user must determine what knowledge units are best represented at top level and what are those
related to sub-levels.
Methodology
The first goal of this exploratory study was to identify research issues on concept mapping as a knowledge
construction tool in the context of web-based distance education. The second goal was of a more practical
nature: feedback was needed from students to help us improve the pedagogical quality of the learning
activity. Another objective was to evaluate the adequacy of concept maps as a diagnostic tool in order to
identify the main difficulties students have with understanding the instructional texts.
Different types of data have been examined (N=24):
− Spontaneous comments on the concept mapping activity made by students in the online forums;
− Data collected by a short questionnaire;
− Comments made by students in the last written course assignment requiring an analysis of the course
from a cognitivist point of view;
− The concept maps .
To obtain a whole picture of the main characteristics of the students’ concept maps, we count: (1) the
number of typed and untyped objects and links represented in the maps, (2) the number of each category of
typed objects and links and (3) the number of sub-models created. Each map was also examined to
determine if the MOT syntax was used correctly and whether students simply reproduced the hierarchical
structure of the instructional texts as shown by their subtitles or whether they constructed their own
representation of key concepts.
To refine these exploratory analyses, all maps representing knowledge related to the same topic (the human
information processing) were selected (N = 14) in order to evaluate them with a CM evaluation method
devised by our research group (Pudelko, Basque, & Legros, 2003). This method is based on the cognitive
semantics theory Jackendoff (1985) and Talmy (2000) and, more specifically, on a system analysis
approach proposed by Baudet & Denhière (1991; Denhière & Baudet, 1992) in the domain of text
comprehension. The method is based on the assumption that the construction of concept maps implies a
semantic as well as a special form of linguistic processing. The semantic representation, which determines
language representation, is the result of the activation of a network of representations of the “experienced”
world and takes the form of a mental model. This mental model is in itself determined by culture,
individual experience and knowledge. In the systems analysis approach, at the macro level, the mental
model is structured as a system being defined as a complex network of interrelated semantic units. Three
types of systems have been identified: relational systems, transformational systems and teleologic systems
(which include functional and intentional systems). At the micro level, the mental model is structured by
cognitive invariants (objects, states, events, action) and by local coherence relations (especially temporal
and causal relations). The instructional text, a description of the classical symbolic view of the human
information processing system, was analysed using this approach in order to elaborate the coding scheme
serving to evaluate the concept maps. The system described in this text was classified as a functional
system, composed of different processes in the information processing model (encoding, storing, retrieving,
etc.) and decomposed in three subsystems (sensory memory, short term memory and long term memory).
Finally, the concept maps were coded with the coding scheme to examine whether the human information
system represented by students was of the same kind.
Preliminary findings
How did students like the concept mapping activity and software?
It was expected that students would be reluctant to take the time necessary to learn how to use the CM
software, which demanded to be done on a self-instructional basis3. This assumption explains why we did
not oblige students to use MOT to construct their concept maps; they were free to choose whatever
graphical tool they wanted. Twenty out of the 24 students chose to use the MOT software. Surprisingly,
among the 4 students not using MOT, two used the MOT syntax to represent knowledge objects and links.
Data from the post questionnaire confirm that students found MOT very easy to learn, useful, simple and
user-friendly and all respondents estimated that they were at least moderately familiar with the software.
They declared having spent from half an hour to 5 hours to familiarize themselves with MOT before
beginning to construct their map. In all, they were very enthusiastic toward this software and everybody
were ready to recommend it to someone else. The majority said they would use it in the future, either in
other courses to help them learn and understand new concepts or to facilitate their work tasks.
However, concept mapping seems to appeal more to some students than to others. Some comments lead us
to believe that spatial ability and cognitive style could be important variables to consider. For example, one
student expressed that he was “more auditive than visual”, and therefore did not understand the utility of
constructing a knowledge graph to learn. Another one said that, on the contrary, “being visual, I learn
better when the concepts are structured this way”. Some research results indicate that if the CM activity is
constrained by a syntax, it would be more suited for students with less verbal abilities (Holley &
Dansereau, 1984b). A study conducted by Okebukola & Jegede (1988) demonstrates that cognitive
preference and learning mode significantly influence meaningful learning through concept mapping. The
influence of cognitive styles (auditive-visual; holistic-analytic; field dependence-independence, etc.),
verbal and spatial abilities, and learning styles and preferences on the efficacy of concept mapping for
learning would certainly be an issue for further investigation.
The MOT syntax – especially the links syntax, as Fisher (1990) already noted – appears not to be so easily
understood in general, which was confirmed by our students and further revealed by our analysis of the
maps (see further). Nevertheless, students did not complain about the built-in constraints of MOT. On a
five-level Likert scale, respondents to the questionnaire judged MOT as being more open than
3 Few students asked the tutor to have a brief introduction to MOT by phone.
constraining, probably due, in part, to the fact that MOT does allow the possibility of naming objects and
links as you wish, thus the syntax can be overruled.
Many students made positive comments on the impact of the CM activity on learning and text
comprehension, either in the questionnaire or spontaneously in the online forums as well as in their
cognitivist analysis of the course assignment: (1) “I loved to draw schemas, but now I understand better
why they are so efficient and so important for learning (…) Without them, it seems that the synthesis of
knowledge, and even the transfer of knowledge, are difficult to do.” (2) “What I found interesting in this
exercise was the ‘insight” I had at different moments in the process of discovering the links between
theoretical concepts and their applications in concrete situations”. One student qualified the concept map
as an “enlightener” of knowledge: “it is the concept map that shows us the missing elements and that
suggests where to add new concepts and new links ”.
How do students construct their concept maps?
In the post questionnaire, students were asked to briefly describe how they executed the activity. Most of
them did the activity as prescribed, that is, essentially, following this sequence: (1) read the texts, and,
while reading, take notes and identify key concepts; (2) draw the concept map with MOT; (3) write the
accompanying text. Only one student declared having written the text before drawing the map. They spent
from 6 to 50 hours on reading the texts (mean = 18), from 2 to 20 hours on the concept map (mean =8.3)
and from 4 to 20 hours on writing the description (mean = 8.6). For the majority of students, the CM was
the least time-consuming part of the task.
Many students said they did modify their map after having produced the text. The writing activity seems to
act as a verification tool for the CM: “I realize that some knowledge appearing in my text was not
represented in my map”; “In trying to translate our concept map in a speech format, we discover errors in
our concept map. The text enlightens what we want to express in the map.” This influence between the
concept map and the written text could be reciprocal and it would be another interesting avenue to
investigate.
It is noteworthy that some students revealed having constructed a first draft of their map on paper. The
reason for this is not obvious. However, some comments indicate that their knowledge of the software
functionalities was poor. For example, a student wrote: “It is not possible to copy/paste a knowledge
object”, which is not true. The self-instructional approach to MOT proposed in this course is obviously
insufficient. It would probably be a good idea to introduce a tutor led activity on how to use the software.
Some remarks on the concept maps
An exploratory analysis of the 24 concept maps revealed the following.
There are many more knowledge units represented in the maps than the required (15). Up to 112
knowledge units was counted in a single map (mean: 42 units). From 14 to 102 links (with a mean of 42
links) were counted but the number of links varied greatly in the maps.
The most frequently represented objects in the maps of those who used the MOT syntax are the concepts
(see figure 2). Students often confounded the type of objects and type of links. For example, some concepts
have been identified with the procedure shape, and vice versa. Some students have a tendency to label some
objects with whole sentences, denoting their difficulty to isolate the objects from the links between the
objects and to formulate them in a graphical proposition.
Eleven students self-labelled some links, but only 3 did this on all their links. It was observed that some of
them used self-labelled links that are, in fact, very similar to MOT links (is composed of; is a product of; is
an example of; etc.). Some students considered that a link would be better defined as an object; for
example, Representations; Behavior; Interaction. The composition link is the most frequently used (see fig.
3). On a total of 1001 links, 111were unlabeled, which were mostly concentrated in one map counting for
82 of these.
Eleven out of 24 students elaborated sub-maps, usually extended into only two levels though.
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300
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Fig. 2 – Total number of different types of objects Fig. 3 - Total number of different types of links in the
in the 24 concept maps
24 concept maps
The systems analysis method applied to the sample of 14 CM representing the human information
processing system shows that 8 students represented this system as relational. In the systems analysis
approach, this system is described as static, with objects defined by their attributes and related by
composition and specialization links. Typically, students represented only two dynamic processes
expressing information state modifications (Register and Retrieve). This analysis demonstrated that
students neglected or were not capable of expressing many aspects of the functional system described in the
instructional text.
Conclusion
On the whole, the observations show that students generally found the concept mapping activity useful but
its full potential as a knowledge construction support tool was far from being optimized. Further research is
needed to identify best conditions for using concept mapping software as a knowledge construction tool for
telelearners. Some research questions appears to be especially relevant:
– Do certain cognitive and learning styles, learning preferences as well as verbal and spatial abilities
affect the process of constructing the maps and the quality of the maps produced? Does the fact of
being at a distance reinforce the influence of these variables?
– What is the reciprocal influence of constructing narrative and graphical representations of the same
knowledge domain?
– Why is the linking operation so difficult for students?
– What are the impacts of imposing constraints on knowledge objects and links to be used?
– What are the impacts of using CM software on metacognition?
– Which evaluation method of concept maps would be the most effective to determine students’
misconceptions of the domain knowledge? How can this evaluation serve to ameliorate instructional
documents?
– What kind of support can we provide to the learners to help them construct their maps and to activate
metacognitive reflection?
– Based on socioconstructivist assumptions, does the co-construction of concept maps at a distance with
a suitable CM software encourage metacognitive interactions and consequently enhance learning?
Our research group is particularly interested with the last three issues. Experimental data are collected to try
to put some light on these issues.
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