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3 months ago

Generating Equation by Utilizing Operators : GEO model

{Gahgene Gweon Bugeun Kim Donggeon Lee Kyung Seo Ki}

Generating Equation by Utilizing Operators : GEO model

Abstract

Math word problem solving is an emerging research topic in Natural Language Processing. Recently, to address the math word problem-solving task, researchers have applied the encoder-decoder architecture, which is mainly used in machine translation tasks. The state-of-the-art neural models use hand-crafted features and are based on generation methods. In this paper, we propose the GEO (Generation of Equations by utilizing Operators) model that does not use hand-crafted features and addresses two issues that are present in existing neural models: 1. missing domain-specific knowledge features and 2. losing encoder-level knowledge. To address missing domain-specific feature issue, we designed two auxiliary tasks: operation group difference prediction and implicit pair prediction. To address losing encoder-level knowledge issue, we added an Operation Feature Feed Forward (OP3F) layer. Experimental results showed that the GEO model outperformed existing state-of-the-art models on two datasets, 85.1{%} in MAWPS, and 62.5{%} in DRAW-1K, and reached comparable performance of 82.1{%} in ALG514 dataset.

Benchmarks

BenchmarkMethodologyMetrics
math-word-problem-solving-on-alg514GEO
Accuracy (%): 82.1
math-word-problem-solving-on-draw-1kGEO
Accuracy (%): 62.5
math-word-problem-solving-on-mawpsGEO
Accuracy (%): 85.1

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Generating Equation by Utilizing Operators : GEO model | Papers | HyperAI