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A novel application of theory refinement to student modeling

TLDR
A novel application of theory refinement techniques to the problem of constructing a student model for an intelligent tutoring system (ITS) called ASSERT which uses theory refinement to introduce errors into an initially correct knowledge base so that it models incorrect student behavior.
Abstract
Theory refinement systems developed in machine learning automatically modify a knowledge base to render it consistent with a set of classified training examples. We illustrate a novel application of these techniques to the problem of constructing a student model for an intelligent tutoring system (ITS). Our approach is implemented in an ITS authoring system called ASSERT which uses theory refinement to introduce errors into an initially correct knowledge base so that it models incorrect student behavior. The efficacy of the approach has been demonstrated by evaluating a tutor developed with ASSERT with 75 students tested on a classification task covering concepts from an introductory course on the C++ programmm. g Ia nguage. The system produced reasonably accurate models and students who received feedback based on these models performed significantly better on a post test than students who received simple reteaching.

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References
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Journal ArticleDOI

Learning Logical Definitions from Relations

TL;DR: foil is a system that learns Horn clauses from data expressed as relations, based on ideas that have proved effective in attribute-value learning systems, but extends them to a first-order formalism.
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Diagnostic Models for Procedural Bugs in Basic Mathematical Skills

TL;DR: A new diagnostic modeling system for automatically synthesizing a deep-structure model of a student's misconceptions or bugs in his basic mathematical skills provides a mechanism for explaining why a student is making a mistake as opposed to simply identifying the mistake.
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AI in CAI: An Artificial-Intelligence Approach to Computer-Assisted Instruction

TL;DR: The research reported here is to show that a new and more powerful type of computer-assisted instruction (CAI), based on extensive application of artificial-intelligence (AI) techniques, is feasible, and to demonstrate some of its major capabilities.
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TL;DR: The KBANN system relaxes this constraint through the use of empirical learning methods to refine approximately correct knowledge, used to determine the structure of an artificial neural network and the weights on its links, thereby making the knowledge accessible for modification by neural learning.

Overlays: A Theory of Modelling for Computer Aided Instruction,

TL;DR: Preliminary evidence indicates that overlay modelling significantly improves the appropriateness of the tutoring program's explanations.