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Research Topics1 Resource Pool InfrastructureWe plan to implement and field test Dublin Core [18], as well as elements of the IMS educational metadata standards [19] as parts of our library functionality. The applicability of these standards will be tested both in the cataloging of "legacy" material, as well as in the situation where authors catalog their own newly created resources what tools and "wizards" need to be provided to make this feasible? Are other educators finding resources based on this metadata? Royalty schemes would be relatively straightforward if resources were always used as-is: The original author sets a royalty price for the usage of a resource per course per student, the system keeps track of resource usage and enrollments, deducts a service-fee, and eventually pays the author. However, to further encourage resource re-usage and improve the quality of resources, resource consumers should be able to modify the resources for their own use, or even be "value adders". Adding value to a resource (while certainly also preserving the resource in its original form) in a way similar to Open Source Communities involves additional royalty issues in this scenario. We intend to for example explore innovative licensing schemes such as the Intellectual Capital Appreciation License put forward by the Educational Object Economy EOE [20]. How can it be assured that the material still remains affordable to the learner, in fact, that the price is comparable or lower than that of a traditional course pack? What is the business plan? Regarding the functionality aspects similar to an instructional management system, we plan to investigate issues surrounding adaptive curricula and multiple knowledge representations. How can the generation of such non-linear course sequences be facilitated using metadata? How can it be insured that learners do not "get lost" between these options and branchings? What is an acceptable review process for sub-libraries of the resource pool, out of which educators can randomly generate "standardized" online exams similar to the Force Concept Inventory [21] to objectively evaluate learning success, while insuring that one is not "teaching to the test"? What feedback, survey and statistical mechanisms do have to be implemented for educators to evaluate the effectiveness of their resources?
2 Learner-Centered EnvironmentsLearning is a complex and highly individual process, whose rate of success cannot be reduced to a function of just a few variables for all learners. Rather, the variables are numberless, and their relative weight will differ from learner to learner [29,30]. While on the one hand we do seek to gather statistical data to gauge the overall effectiveness of our tool and its contents, we believe that there is data in the statistical noise generated by each individual learner - data, however, which applies only to that particular learner. We believe that the build-in adaptivity of LON-CAPA is best utilized in connection with the system "getting to know" the individual learner, and see it as a research goal to move from single-variable pretest-posttest measures of learning success to studies of ongoing learning processes. The system can easily gather floods of data on individual usage patterns, especially as learners go through multiple steps towards solving assignments, and as they along the way choose between multiple representations of the same knowledge elements (for example, video lecture demonstrations, a derivation, a worked example, case-studies, etc). As the resource pool grows, an increasing number of such multiple content representations will be available to the learner. The system can log the nature of the representation chosen by the learner based on the resource's metadata, as well as sequence and frequency of access in relation to successful completion of an assignment. However, in the study of such patterns, we are immediately confronted with the chaotic nature and high dimensionality of the problem. To overcome this, we propose to apply Genetic Algorithms (GAs) in combination with a k-nearest neighbor (knn) classification technique to identify salient features which discriminate preclassified data. GAs are an artificial adaptive system based on a biological model of both Mendelian genetics and the theory of Darwinian evolution [31]. They have been successfully used at MSU on large feature selection problems [32,33], and have shown the ability to search very large feature spaces efficiently and effectively. Knn is a means to classify new features into groups of known samples. The hybrid GA-knn approach gauges the "importance'' of each feature for the task of discrimination, and thus identifies the features which should be used for subsequent classification. Internal to the system, each learner will have a "chromosome" representing the weights assigned to each feature. A weight of 0 effectively removes the feature from consideration, while other values modify the importance of each feature for classification. In this manner, the system is now searching for a relative weighting of features that gives optimum performance on classification of the known samples. Those weights that move towards 0 indicate that their corresponding features are not important for the discrimination task. Essentially, those features "drop out'' of the feature space and are not considered. Any weight that moves towards the maximum weight indicates that the classification process is sensitive to small changes in that feature. That is, the feature's dimension is elongated, allowing better class resolution along this feature axis. The end result of running GA feature extraction is a scaling of each of the features such that an optimal class separation can be achieved between the known classes. This technique has been used at MSU on various data sets, for example using a thousand features with many thousands of patterns, and it has been found that as few as 35 features that can discriminate the predefined classes [34]. We hope to find similar patterns of use in the data gathered from LON-CAPA, and eventually be able to make predictions as to the most-beneficial course of studies for each learner based on a limited number of variables for each individual student based on their "chromosome." Based on the current state of the learner in a learning sequence, the system could then make suggestions to the learner as to how to proceed. In system science, this type of creation of structure via selection rules and feedback loops is known as self-organized criticality. Beyond this, by comparing individual learner "chromosomes" with each other, we in addition hope to discover classes of users with similar patterns of use and similar sets of success-determining variables. We claim that the "no-significant difference phenomenon" between traditional and non-traditional teaching methods is not due to an actual lack of a difference, but rather due to inappropriate averaging over different classes of learners and the resultant canceling-out of effects: what works for one class of students does not work for another class, and might even be counter-productive for a third class.
3 Evaluation of Effectiveness in the Use of Technology for Teaching and LearningEvaluation of resource material quality and effectiveness of materials for learningOne of the most challenging aspects of this project is to provide resource users with information concerning the quality and effectiveness of the various materials in the resource pool in terms of their effects on student understanding of concepts and their knowledge of procedures. These materials will include web pages, demonstrations, simulations, and individualized problems designed for use on homework assignments, quizzes, and examinations. Methods for both objective evaluation and subjective evaluation of material quality and effectiveness are proposed.
Evaluation of the LON-CAPA projectThere are several studies that report positive impact on student achievement when using technology [e.g., 36], while many indicate no significant difference [23]. We need to better understand when, where, and how the use of technology enhances education as opposed to be simply mediating it.
Evaluation of content representations and their effectiveness in different subject categoriesA large diverse resource pool, together with standardized measuring mechanisms, provides a unique opportunity to study the relative effectiveness of various media types (static web pages, graphics, audio-files, simulations, problems, ) and formats (textual, mathematical, audio-visual, ). Because a large number of instances of each type of content representation will be available (the type being identified by metadata), the investigators will be able to pool information while averaging over the specific instances. Thus, we will be able to determine whether some types of media are most effective in conveying information overall, irrespective of their specific educational content domain. In fields for which a wide range of materials have been posted into the resource pool, the question of which representation is most effective can be tested separately by content domain
Evaluation of content representations and their effectiveness for different types of studentsEducational specialists suggest that the effectiveness of content representations varies substantially from individual to individual [29,30,35]. The current proposal will allow us to study several questions concerning what types of students benefit most from various media types and formats.
The data collected from these evaluations will be made available on both a resource specific (as dynamically generated part of the individual resource metadata) and general level (as part of the general dissemination) to instructors, and will eventually facilitate the selection of appropriate material from the resource pool. At a more general level, the information gathered by these various forms of evaluation will also be published to contribute to a better understanding of the role of technology in education.
4 Sustainable Business Entity
The creation and involvement of an advisory board is crucial for two reasons. First, commercial software currently exists [5-7] to support web-based delivery of materials. While this software has been purchased by a growing number of institutions, we believe the LON-CAPA environment can provide significant enhancements. Beyond the technical enhancements (e.g., individualizing assessments, adaptivity, resource pooling and sharing, etc), the non-proprietary and open LON-CAPA environment creates the potential for a community of educators to synergistically develop and deliver the richest set of materials available to support learning. The advisory board members can provide ongoing feedback regarding the necessary and desired capabilities of LON-CAPA to ensure that it meets/exceeds expectations. Secondly, creating a learning community that can flourish necessitates embedding mechanisms into LON-CAPA that encourage educators and publishers to participate actively in the environment. Thus, the development and integration of a dynamic royalty mechanism that facilitates the creation of a critical mass of faculty, academic institutions, and publishers is critical. Further, a royalty mechanism is likely to provide added incentive for faculty/institutions to generate high quality products - a marketplace is created where different materials compete.
In order to understand the stakeholders' expectations associated with these and other issues, on-site visits, interviews, and surveys will be conducted. Initial focus will be on collecting data from stakeholders located at higher educational institutions as well as the textbook publishers. LON-CAPA must satisfy the needs of at least four different stakeholders - below are some of the issues that will need to be successfully addressed in order to satisfy these needs; the PI team and the LON-CAPA advisory board will bear responsibility for making recommendations in each of these areas:
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