Voice assistants such as Alexa, Siri, and Google Assistant have become increasingly popular worldwide. However, linguistic variations, variability of speech patterns, ambient acoustic conditions, and other such factors are often correlated with the assistants misinterpreting the user's query. In order to provide better customer experience, retrieval based query reformulation (QR) systems are widely used to reformulate those misinterpreted user queries. Current QR systems typically focus on neural retrieval model training or direct entities retrieval for the reformulating. However, these methods rarely focus on query expansion and entity weighting simultaneously, which may limit the scope and accuracy of the query reformulation retrieval. In this work, we propose a novel Query Expansion and Entity Weighting method (QEEW), which leverages the relationships between entities in the entity catalog (consisting of users' queries, assistant's responses, and corresponding entities), to enhance the query reformulation performance. Experiments on Alexa annotated data demonstrate that QEEW improves all top precision metrics, particularly 6% improvement in top10 precision, compared with baselines not using query expansion and weighting; and more than 5% improvement in top10 precision compared with other baselines using query expansion and weighting.
翻译:Alexa、Siri和Google助理等语音助理在世界各地越来越受欢迎。然而,语言差异、语言模式的变异、语言模式的变异、环境声学条件和其他此类因素往往与翻译用户询问的助手有关。为了提供更好的客户经验,广泛使用基于检索的查询重订(QR)系统重编这些错误的用户查询。当前的QR系统通常侧重于神经检索模型培训或为重新编制而直接实体检索。然而,这些方法很少同时侧重于查询扩展和实体加权,这可能会限制查询重订检索的范围和准确性。在这项工作中,我们提出一种新的查询扩展和实体重估方法(QEEEW),利用实体目录中实体实体之间的关系(用户询问、助理答复和相应实体的一致)来提高查询重整工作绩效。对Alexa附加说明的数据进行实验表明,与不使用查询扩展和加权的基线相比,QEW改进了所有最高精确度指标,特别是前10精确度的6%的改进。我们提议采用新的基线,而没有使用查询和加权的扩展比最高精确度超过5%。