CLAug 22, 2018

The Gap of Semantic Parsing: A Survey on Automatic Math Word Problem Solvers

arXiv:1808.07290v2146 citations
Originality Synthesis-oriented
AI Analysis

This is an incremental survey that identifies gaps in existing methods for solving math word problems, which is a key task for advancing general AI.

The paper surveys automatic math word problem solvers, highlighting the challenge of bridging the semantic gap between human language and machine logic, and notes that current methods fail to achieve high precision on large, diverse datasets despite claims of success on smaller ones.

Solving mathematical word problems (MWPs) automatically is challenging, primarily due to the semantic gap between human-readable words and machine-understandable logics. Despite the long history dated back to the1960s, MWPs have regained intensive attention in the past few years with the advancement of Artificial Intelligence (AI). Solving MWPs successfully is considered as a milestone towards general AI. Many systems have claimed promising results in self-crafted and small-scale datasets. However, when applied on large and diverse datasets, none of the proposed methods in the literature achieves high precision, revealing that current MWP solvers still have much room for improvement. This motivated us to present a comprehensive survey to deliver a clear and complete picture of automatic math problem solvers. In this survey, we emphasize on algebraic word problems, summarize their extracted features and proposed techniques to bridge the semantic gap and compare their performance in the publicly accessible datasets. We also cover automatic solvers for other types of math problems such as geometric problems that require the understanding of diagrams. Finally, we identify several emerging research directions for the readers with interests in MWPs.

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