深度跨领域时尚推荐

Shatha Jaradat
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引用次数: 40

摘要

随着网上购物服务的增加、用户数量的增加以及网络上视觉和文本信息的数量的增加,迫切需要智能推荐系统来分析用户在多个领域中的行为,帮助他们在不需要搜索的情况下找到想要的信息。然而,对于涉及多领域知识转移的复杂推荐场景的研究却很少。当涉及的数据源在可抓取数据的数量和质量方面受到限制时,这个问题尤其具有挑战性。本文的目标是研究视觉和文本输入之间的联系,以便更好地分析某个领域,并检查从复杂领域转移知识的可能性,以实现有效的推荐。本研究采用的方法包括架构设计和使用深度学习技术的算法,以分析深度逐像素语义分割和文本集成对推荐质量的影响。我们计划在时尚领域开发一个实用的测试环境。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Cross-Domain Fashion Recommendation
With the increasing number of online shopping services, the number of users and the quantity of visual and textual information on the Internet, there is a pressing need for intelligent recommendation systems that analyze the user's behavior amongst multiple domains and help them to find the desirable information without the burden of search. However, there is little research that has been done on complex recommendation scenarios that involve knowledge transfer across multiple domains. This problem is especially challenging when the involved data sources are complex in terms of the limitations on the quantity and quality of data that can be crawled. The goal of this paper is studying the connection between visual and textual inputs for better analysis of a certain domain, and to examine the possibility of knowledge transfer from complex domains for the purpose of efficient recommendations. The methods employed to achieve this study include both design of architecture and algorithms using deep learning technologies to analyze the effect of deep pixel-wise semantic segmentation and text integration on the quality of recommendations. We plan to develop a practical testing environment in a fashion domain.
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