Abstract

Extracting the roots (stemming) of Arabic words is one of the most challenging skills taught to Arabic language learners. To address this challenge, this paper proposes the Arabic word Root extraction Tutor (ART). ART is a cognitive tutor intended to teach students production rules needed for Arabic word root extraction. In the passive mode, ART accepts an input word and generates its root with explanation. In the active mode, on the other hand, words are generated by ART and the student is prompted to provide the correct roots. ART integrates several techniques for enhanced tutoring. It provides a positive feedback for a correct answer and a negative one otherwise. In the latter case, Prompting Answer Strategy (PAS) is employed, where the student is guided to detect the error by integrating scaffolding and self-explanation. Scaffolding prompts the student to apply the relevant production rule step by step. In each step, a number of options are given to the student to select the correct one via self-explanation. If the error persists, the correct answer is generated with explanation. In addition to generating real words, artificial words are generated using the production rules. This novel technique is intended to ensure that the student applies the production rules rather than memorizes the roots of common words. Evaluation has shown the effectiveness of ART tutoring process and suggests artificial word generation as a promising technique in language tutoring.

Highlights

  • Intelligent Tutoring Systems (ITS) aim at tutoring students in the absence of or in addition to human tutoring

  • This paper presented Arabic word Root extraction Tutor (ART), an ITS of Arabic word root extraction

  • ART is a cognitive tutor intended to teach students production rules needed for the extraction processes

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Summary

Introduction

Intelligent Tutoring Systems (ITS) aim at tutoring students in the absence of or in addition to human tutoring. Cognitive tutors are suitable for domains in which human experts' knowledge and how they solve problems can be represented using a set of If- production rules. The student can input a word and the system responds by generating the root and an explanation of the relevant production rule. This mode can be used by the student for self-paced learning. ART employs several techniques to help in tutoring the student in the active mode It generates a positive feedback in case of a correct answer and a gentle negative feedback otherwise. Integrating positive and negative feedback, PAS, scaffolding and self-explanation for effective tutoring of Arabic word root extraction.

Related Work
ART Production Rules
Some Characteristics of the Arabic Language
Word Generation in ART
Model Tracing in ART
Overview of ART
Empirical Evaluation
Evaluation of ART Model Tracing
Evaluation of the Effect of Artificial Word Generation
Discussion of Results
Conclusion
10 Authors
Full Text
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