Highlighting Named Entities in Input for Auto-Formulation of Optimization Problems

Neeraj Gangwar, N. Kani
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引用次数: 4

Abstract

Operations research deals with modeling and solving real-world problems as mathematical optimization problems. While solving mathematical systems is accomplished by analytical software, formulating a problem as a set of mathematical operations has been typically done manually by domain experts. Recent machine learning methods have shown promise in converting textual problem descriptions to corresponding mathematical formulations. This paper presents an approach that converts linear programming word problems into mathematical formulations. We leverage the named entities in the input and augment the input to highlight these entities. Our approach achieves the highest accuracy among all submissions to the NL4Opt Competition, securing first place in the generation track.
在优化问题的自动表述中突出显示输入中的命名实体
运筹学处理建模和解决现实世界的问题作为数学优化问题。虽然解决数学系统是由分析软件完成的,但将问题表述为一组数学运算通常是由领域专家手动完成的。最近的机器学习方法在将文本问题描述转换为相应的数学公式方面显示出了希望。本文提出了一种将线性规划问题转化为数学公式的方法。我们利用输入中的命名实体并增强输入以突出显示这些实体。我们的方法在NL4Opt竞赛的所有提交中达到了最高的准确性,确保了生成轨道的第一名。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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