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Tag Embedding and Well-defined Intermediate Representation improve Auto-Formulation of Problem Description
Published 7 Dec 2022 in cs.CL | (2212.03575v1)
Abstract: In this report, I address auto-formulation of problem description, the task of converting an optimization problem into a canonical representation. I first simplify the auto-formulation task by defining an intermediate representation, then introduce entity tag embedding to utilize a given entity tag information. The ablation study demonstrate the effectiveness of the proposed method, which finally took second place in NeurIPS 2022 NL4Opt competition subtask 2.
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