混合会话代理不同语言层次的查询相似度

So-Eon Kim, Choong-Seon Hong, Seong-Bae Park
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引用次数: 0

摘要

基于检索的会话代理的性能受到用户查询和与用户查询相似的检索查询之间的差异的影响。之前已经有许多研究来处理这种差异,基于骨骼的反应生成是成功的方法之一。但是,在从查询-响应对的数据库中查找相似查询时,它只考虑词汇相似性,因此显示出一些有效性。因此,本文提出了一种基于cnn的模型,该模型将两个查询的神经表示与人工设计的词汇语法特征相结合,来确定查询之间的相似度。在人工构建数据集上的实验结果表明,该模型在搜索相似查询方面优于传统搜索引擎,证明了该模型的合理性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Query Similarity of Various Linguistic Levels for Hybridized Conversational Agents
The performance of retrieval-based conversational agents is affected by the discrepancy between a user query and a retrieved query similar to the user query. There have been a number of previous studies to cope with this discrepancy, and a skeleton-based response generation is one of the successful approaches. However, it shows some ineffectiveness in that it considers only the lexical similarity in finding a similar query from a database of query-response pairs. Therefore, this paper proposes a CNN-based model which uses the combination of the neural representation of two queries and manually-designed lexico-syntactic features to determine the similarity between the queries. According to the experimental results on a manually-constructed dataset, the proposed model outperforms legacy search engine in finding similar queries from the database, which proves the plausibility of the proposed model.
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