结合语义搜索和双产品分类识别语音购物中可购买物品

Dieu-Thu Le, Verena Weber, Melanie Bradford
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引用次数: 0

摘要

通过语音命令的网上购物系统的准确性尤为重要,可能对客户信任产生很大影响。本文主要研究在一个由意图分类器和槽检测器组成的典型的口语理解体系结构中,如何检测一个话语是否包含实际的和可购买的产品,从而引用与购物相关的意图。在数十亿的产品中进行搜索,以检查检测到的插槽是否是可购买的物品,这是一项非常昂贵的工作。为了克服这个问题,我们提出了一个框架:(1)使用一个检索模块来返回与检测到的插槽最相关的产品,(2)将其与一个孪生网络相结合,该网络决定检测到的插槽是否确实是一个可购买的项目。通过各种实验,我们表明该架构优于典型的槽检测器方法,精度增益为+81%,F1分数为+41%。
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Combining semantic search and twin product classification for recognition of purchasable items in voice shopping
The accuracy of an online shopping system via voice commands is particularly important and may have a great impact on customer trust. This paper focuses on the problem of detecting if an utterance contains actual and purchasable products, thus referring to a shopping-related intent in a typical Spoken Language Understanding architecture consist- ing of an intent classifier and a slot detec- tor. Searching through billions of products to check if a detected slot is a purchasable item is prohibitively expensive. To overcome this problem, we present a framework that (1) uses a retrieval module that returns the most rele- vant products with respect to the detected slot, and (2) combines it with a twin network that decides if the detected slot is indeed a pur- chasable item or not. Through various exper- iments, we show that this architecture outper- forms a typical slot detector approach, with a gain of +81% in accuracy and +41% in F1 score.
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Product Review Translation: Parallel Corpus Creation and Robustness towards User-generated Noisy Text Exploring Inspiration Sets in a Data Programming Pipeline for Product Moderation Combining semantic search and twin product classification for recognition of purchasable items in voice shopping Unsupervised Class-Specific Abstractive Summarization of Customer Reviews SupportNet: Neural Networks for Summary Generation and Key Segment Extraction from Technical Support Tickets
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