Is getting the right answer just about choosing the right words? The role of syntactically-informed features in short answer scoring

Developments in the educational landscape have spurred greater interest in the problem of automatically scoring short answer questions. A recent shared task on this topic revealed a fundamental divide in the modeling approaches that have been applied to this problem, with the best-performing systems...

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Hauptverfasser: Higgins, Derrick, Brew, Chris, Heilman, Michael, Ziai, Ramon, Chen, Lei, Cahill, Aoife, Flor, Michael, Madnani, Nitin, Tetreault, Joel, Blanchard, Daniel, Napolitano, Diane, Lee, Chong Min, Blackmore, John
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Sprache:eng
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Zusammenfassung:Developments in the educational landscape have spurred greater interest in the problem of automatically scoring short answer questions. A recent shared task on this topic revealed a fundamental divide in the modeling approaches that have been applied to this problem, with the best-performing systems split between those that employ a knowledge engineering approach and those that almost solely leverage lexical information (as opposed to higher-level syntactic information) in assigning a score to a given response. This paper aims to introduce the NLP community to the largest corpus currently available for short-answer scoring, provide an overview of methods used in the shared task using this data, and explore the extent to which more syntactically-informed features can contribute to the short answer scoring task in a way that avoids the question-specific manual effort of the knowledge engineering approach.
DOI:10.48550/arxiv.1403.0801