4.6 Article

Characterization inference based on joint-optimization of multi-layer semantics and deep fusion matching network

期刊

PEERJ COMPUTER SCIENCE
卷 8, 期 -, 页码 -

出版社

PEERJ INC
DOI: 10.7717/peerj-cs.908

关键词

Joint-Optimization of Multi-layer semantics; Deep fusion matching network; Meta-learning; Characterization inference; Natural language reasoning

资金

  1. Sichuan Science and Technology Program [2021YFQ0003]

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This paper proposes a joint optimization method based on multi-layer semantics to explore the influence of sentence representation and reasoning models on reasoning performance. The experiments show that this method outperforms existing methods. The optimization of sentence representation and reasoning models have different impacts on reasoning results and there is a mutual constraint between them.
The whole sentence representation reasoning process simultaneously comprises a sentence representation module and a semantic reasoning module. This paper combines the multi-layer semantic representation network with the deep fusion matching network to solve the limitations of only considering a sentence representation module or a reasoning model. It proposes a joint optimization method based on multi-layer semantics called the Semantic Fusion Deep Matching Network (SCF-DMN) to explore the influence of sentence representation and reasoning models on reasoning performance. Experiments on text entailment recognition tasks show that the joint optimization representation reasoning method performs better than the existing methods. The sentence representation optimization module and the improved optimization reasoning model can promote reasoning performance when used individually. However, the optimization of the reasoning model has a more significant impact on the final reasoning results. Furthermore, after comparing each module's performance, there is a mutual constraint between the sentence representation module and the reasoning model. This condition restricts overall performance, resulting in no linear superposition of reasoning performance. Overall, by comparing the proposed methods with other existed methods that are tested using the same database, the proposed method solves the lack of in-depth interactive information and interpretability in the model design which would be inspirational for future improving and studying of natural language reasoning.

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