Litcius/Paper detail

Knowledge-Driven Distractor Generation for Cloze-Style Multiple Choice Questions

Siyu Ren, Kenny Q. Zhu

2021Proceedings of the AAAI Conference on Artificial Intelligence35 citationsDOIOpen Access PDF

Abstract

In this paper, we propose a novel configurable framework to automatically generate distractive choices for open-domain cloze-style multiple-choice questions. The framework incorporates a general-purpose knowledge base to effectively create a small distractor candidate set, and a feature-rich learning-to-rank model to select distractors that are both plausible and reliable. Experimental results on a new dataset across four domains show that our framework yields distractors outperforming previous methods both by automatic and human evaluation. The dataset can also be used as a benchmark for distractor generation research in the future.

Topics & Concepts

Benchmark (surveying)Computer scienceDomain (mathematical analysis)Set (abstract data type)Artificial intelligenceRank (graph theory)Style (visual arts)Natural language processingFeature (linguistics)Machine learningLinguisticsMathematicsMathematical analysisCombinatoricsPhilosophyGeographyProgramming languageGeodesyHistoryArchaeologyTopic ModelingSpeech and dialogue systemsAdvanced Text Analysis Techniques