利用SBERT在社区问答中寻找相似问题

Thi-Thanh Ha, V. Nguyen, Kiem-Hieu Nguyen, K. Nguyen, Q. Than
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引用次数: 6

摘要

BERT模型经过微调,可以在句子对回归中给出最先进的结果。然而,这个模型要求两个问题都输入到网络中,这导致了巨大的计算开销。提出了SBERT算法,通过计算一个查询问题来学习句子表示,而不是对n对句子进行计算。该模型已被证明能有效地处理语义文本相似度(STS)。在本文中,我们探索了社区问答中问题检索的SBERT模型。结果表明,与BERT4ECOMMERCE相比,SBERT的性能略有下降。然而,该模型在保持BERT的准确性的同时,将寻找最相似问题的时间从BERT的795秒减少到SBERT的约0.828秒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Utilizing SBERT For Finding Similar Questions in Community Question Answering
The BERT model was fine-tuned to give state-of-the-art results in sentence-pair regressions. However, this model requires that both questions are fed into the network, which leads to a massive computational overhead. Instead of computing on n pairs of sentences, SBERT was proposed to learn sentence representation by computing on only one query question. This model was proven to work effectively on semantic textual similarity (STS). In this paper, we explore SBERT model for question retrieval in Community Question Answering. Results show that SBERT decreases slightly in performance compared to BERT4ECOMMERCE. However, This model reduces the effort for finding the most similar question from 795 seconds with BERT to about 0.828 seconds with SBERT, while maintaining the accuracy from BERT.
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