Generating Rich Product Descriptions for Conversational E-commerce Systems

Shashank Kedia, Aditya Mantha, Sneha R. Gupta, Stephen D. Guo, Kannan Achan
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引用次数: 2

Abstract

Through recent advancements in speech technologies and introduction of smart assistants, such as Amazon Alexa, Apple Siri and Google Home, increasing number of users are interacting with various applications through voice commands. E-commerce companies typically display short product titles on their webpages, either human-curated or algorithmically generated, when brevity is required. However, these titles are dissimilar from natural spoken language. For example, ”Lucky Charms Gluten Free Break-fast Cereal, 20.5 oz a box Lucky Charms Gluten Free” is acceptable to display on a webpage, while a similar title cannot be used in a voice based text-to-speech application. In such conversational systems, an easy to comprehend sentence, such as ”a 20.5 ounce box of lucky charms gluten free cereal” is preferred. Compared to display devices, where images and detailed product information can be presented to users, short titles for products which convey the most important information, are necessary when interfacing with voice assistants. We propose eBERT, a sequence-to-sequence approach by further pre-training the BERT embeddings on an e-commerce product description corpus, and then fine-tuning the resulting model to generate short, natural, spoken language titles from input web titles. Our extensive experiments on a real-world industry dataset, as well as human evaluation of model output, demonstrate that eBERT summarization outperforms comparable baseline models. Owing to the efficacy of the model, a version of this model has been deployed in real-world setting.
生成会话式电子商务系统的丰富产品描述
通过最近语音技术的进步和智能助手的引入,如亚马逊Alexa,苹果Siri和谷歌Home,越来越多的用户通过语音命令与各种应用程序进行交互。当需要简洁时,电子商务公司通常会在他们的网页上显示简短的产品标题,要么是人工策划的,要么是算法生成的。然而,这些头衔不同于自然的口语。例如,“Lucky Charms无麸质早餐麦片,20.5盎司一盒Lucky Charms无麸质”可以显示在网页上,而类似的标题不能用于基于语音的文本到语音应用程序。在这样的对话系统中,一个容易理解的句子,比如“一盒20.5盎司的幸运符无麸质麦片”是首选。与显示设备相比,可以向用户展示图像和详细的产品信息,在与语音助手交互时,需要为传达最重要信息的产品提供简短的标题。我们提出了eBERT,这是一种序列到序列的方法,通过在电子商务产品描述语料库上进一步预训练BERT嵌入,然后对结果模型进行微调,以从输入的网络标题中生成简短、自然的口语标题。我们在真实世界的工业数据集上进行了广泛的实验,并对模型输出进行了人工评估,结果表明,eBERT总结优于可比的基线模型。由于该模型的有效性,该模型的一个版本已在现实环境中部署。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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