Foundation of Intelligence: Review of Math Word Problems from Human Cognition Perspective
Zhenya Huang, Jiayu Liu, Xin Lin, Zhiyuan Ma, Shangzi Xue, Tong Xiao, Qi Liu, Yee Whye Teh, Enhong Chen

TL;DR
This paper reviews the progress of math word problem solving in AI from a human cognition perspective, analyzing models and benchmarks to guide future research in reasoning abilities.
Contribution
It provides the first comprehensive taxonomy and analysis of MWP research over the past decade through the lens of human cognitive abilities.
Findings
Neural network and LLM-based solvers demonstrate key human-like reasoning abilities.
Performance comparison across five benchmarks reveals strengths and gaps in current models.
The survey offers a unified framework for understanding AI progress in MWP solving.
Abstract
Math word problem (MWP) serves as a fundamental research topic in artificial intelligence (AI) dating back to 1960s. This research aims to advance the reasoning abilities of AI by mirroring the human-like cognitive intelligence. The mainstream technological paradigm has evolved from the early rule-based methods, to deep learning models, and is rapidly advancing towards large language models. However, the field still lacks a systematic taxonomy for the MWP survey along with a discussion of current development trends. Therefore, in this paper, we aim to comprehensively review related research in MWP solving through the lens of human cognition, to demonstrate how recent AI models are advancing in simulating human cognitive abilities. Specifically, we summarize 5 crucial cognitive abilities for MWP solving, including Problem Understanding, Logical Organization, Associative Memory, Critical…
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