Identifying Informatively Easy and Informatively Hard Concepts

Author:

Wiegand R. Paul1,Bucci Anthony2,Kumar Amruth N.3,Albert Jennifer4,Gaspar Alessio5

Affiliation:

1. Winthrop University, Rock Hill, SC, USA

2. Independent, Cambridge, MA, USA

3. Ramapo College of New Jersey, Mahwah, NJ, USA

4. The Citadel, Charleston, SC, USA

5. University of South Florida, Tampa, FL, USA

Abstract

In this article, we leverage ideas from the theory of coevolutionary computation to analyze interactions of students with problems. We introduce the idea of informatively easy or hard concepts. Our approach is different from more traditional analyses of problem difficulty such as item analysis in the sense that we consider Pareto dominance relationships within the multidimensional structure of student–problem performance data rather than average performance measures. This method allows us to uncover not just the problems on which students are struggling but also the variety of difficulties different students face. Our approach is to apply methods from the Dimension Extraction Coevolutionary Algorithm to analyze problem-solving logs of students generated when they use an online software tutoring suite for introductory computer programming called problets . The results of our analysis not only have implications for how to scale up and improve adaptive tutoring software but also have the promise of contributing to the identification of common misconceptions held by students and thus, eventually, to the construction of a concept inventory for introductory programming.

Funder

National Science Foundation

Publisher

Association for Computing Machinery (ACM)

Subject

Education,General Computer Science

Reference84 articles.

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2. 37 Million Compilations

3. L. W. Anderson D. R. Krathwohl P. W. Airasian K. A. Cruikshank R. E. Mayer P. R. Pintrich J. Raths and M. C. Wittrock. 2001. A Taxonomy for Learning Teaching and Assessing: A Revision of Bloom’ Taxonomy of Educational Objectives . Longman New York.

4. Controversy and the rasch model: A characteristic of incompatible paradigms?;Andrich D.;Med. Care,2004

5. F. Baker. 2001. The Basics of Item Response Theory . ERIC Madison WI.

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1. Taking Stock of Concept Inventories in Computing Education: A Systematic Literature Review;Proceedings of the 2023 ACM Conference on International Computing Education Research V.1;2023-08-07

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