作为文本到文本任务的产品标题到属性

Gilad Fuchs, Yoni Acriche
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引用次数: 1

摘要

在线市场使用属性值对,如品牌、尺寸、尺寸类型、颜色等,来帮助定义关于商品列表的重要和相关事实。这有助于买家使用属性过滤来管理他们的搜索结果,并创造更丰富的体验。尽管它们对商品的可发现性至关重要,但让卖家为每个商品输入数十个不同的属性值对成本很高,而且往往会导致信息缺失。当买家根据属性值进行过滤时,这可能会导致从搜索结果中不必要地删除相关列表。在本文中,我们演示了使用文本到文本分层多标签排名模型框架来预测每个列表最相关的属性,以及它们的期望值,使用历史用户行为数据。这个解决方案可以帮助卖家专注于验证买家可能使用的属性信息,从而提高他们的清单的预期召回率。具体到eBay的案例,我们表明,与目前高度优化的生产系统相比,使用该模型可以将属性提取过程的相关性提高33.2%。除了经验贡献之外,本文中提出的框架的高度一般化性质使其与许多高容量搜索驱动的网站相关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Product Titles-to-Attributes As a Text-to-Text Task
Online marketplaces use attribute-value pairs, such as brand, size, size type, color, etc. to help define important and relevant facts about a listing. These help buyers to curate their search results using attribute filtering and overall create a richer experience. Although their critical importance for listings’ discoverability, getting sellers to input tens of different attribute-value pairs per listing is costly and often results in missing information. This can later translate to the unnecessary removal of relevant listings from the search results when buyers are filtering by attribute values. In this paper we demonstrate using a Text-to-Text hierarchical multi-label ranking model framework to predict the most relevant attributes per listing, along with their expected values, using historic user behavioral data. This solution helps sellers by allowing them to focus on verifying information on attributes that are likely to be used by buyers, and thus, increase the expected recall for their listings. Specifically for eBay’s case we show that using this model can improve the relevancy of the attribute extraction process by 33.2% compared to the current highly-optimized production system. Apart from the empirical contribution, the highly generalized nature of the framework presented in this paper makes it relevant for many high-volume search-driven websites.
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