语音购物空查询的查询重写

Iftah Gamzu, Marina Haikin, N. Halabi
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引用次数: 3

摘要

使用自然语言的语音购物带来了与客户查询相关的新挑战,比如处理发音错误、表达错误和误解的查询。语音空查询,导致没有优惠,对客户的购物体验产生负面影响。查询重写(QR)尝试用产生相关结果的替代方法自动替换空查询。提出了一种基于语音购物空查询的预检索QR算法。我们提出的QR框架首先使用基于搜索索引的方法生成替代查询,该方法针对语音查询中的不同潜在故障。然后,机器学习组件对这些备选项进行排序,并由选定的备选项修改原始查询。我们基于商业语音助手和电子商务网站的数据日志对我们的方法进行了实验评估,证明它比几个基线高出22%以上。我们的评估还突出了一个有趣的现象,表明网络购物空查询与语音查询有很大的不同,而且显然更容易修复。这进一步证实了语音域专用机制的使用。我们认为,我们提出的框架,将尾查询映射到头查询,是独立的兴趣,因为它可以扩展和应用到其他领域。
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Query Rewriting for Voice Shopping Null Queries
Voice shopping using natural language introduces new challenges related to customer queries, like handling mispronounced, misexpressed, and misunderstood queries. Voice null queries, which result in no offers, have negative impact on customers shopping experience. Query rewriting (QR) attempts to automatically replace null queries with alternatives that lead to relevant results. We present a new approach for pre-retrieval QR of voice shopping null queries. Our proposed QR framework first generates alternative queries using a search index-based approach that targets different potential failures in voice queries. Then, a machine-learning component ranks these alternatives, and the original query is amended by the selected alternative. We provide an experimental evaluation of our approach based on data logs of a commercial voice assistant and an e-commerce website, demonstrating that it outperforms several baselines by more than $22%$. Our evaluation also highlights an interesting phenomenon, showing that web shopping null queries are considerably different, and apparently easier to fix, than voice queries. This further substantiates the use of specialized mechanisms for the voice domain. We believe that our proposed framework, mapping tail queries to head queries, is of independent interest since it can be extended and applied to other domains.
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