HyperCARS:在情境感知推荐系统中使用双曲嵌入生成分层情境

IF 5 3区 管理学 Q1 INFORMATION SCIENCE & LIBRARY SCIENCE
Konstantin Bauman, Alexander Tuzhilin, Moshe Unger
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引用次数: 0

摘要

在情境感知推荐系统(CARS)中,情境(如周五与配偶在餐馆共进晚餐)成为一种有用的情境表示机制。先前的研究表明,使用潜在嵌入表示方法对欧几里得空间中的上下文信息进行建模具有重要优势,可以获得更好的推荐。然而,这些传统方法在构建上下文信息分层结构的适当嵌入以及解释所获得的表示方面存在重大挑战。为了解决这些问题,我们提出了 HyperCARS 方法,该方法可在潜在双曲空间中对分层上下文情况进行建模。HyperCARS 将双曲嵌入与分层聚类相结合来构建上下文情境,这使得上下文建模组件与推荐算法之间的耦合更加松散,因此可以灵活地使用各种先前开发的推荐算法。我们通过实证证明,HyperCARS 能够更好地捕捉和解释分层上下文表征,从而提供更好的上下文感知推荐。除了 CARS 之外,双曲嵌入还可用于许多其他应用,因此我们还提出了潜在嵌入表示框架,该框架系统地对以前的嵌入工作进行了分类,并确定了信息系统应用中双曲嵌入的新研究流。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HyperCARS: Using Hyperbolic Embeddings for Generating Hierarchical Contextual Situations in Context-Aware Recommender Systems
Contextual situations, such as having dinner at a restaurant on Friday with the spouse, became a useful mechanism to represent context in context-aware recommender systems (CARS). Prior research has shown important advantages of using latent embedding representation approaches to model contextual information in the Euclidean space leading to better recommendations. However, these traditional approaches have major challenges with the construction of proper embeddings of hierarchical structures of contextual information, as well as with interpretations of the obtained representations. To address these problems, we propose the HyperCARS method that models hierarchical contextual situations in the latent hyperbolic space. HyperCARS combines hyperbolic embeddings with hierarchical clustering to construct contextual situations, which allows loose coupling of the contextual modeling component with recommendation algorithms and, therefore, provides flexibility to use a broad range of previously developed recommendation algorithms. We demonstrate empirically that HyperCARS better captures and interprets hierarchical contextual representations, leading to better context-aware recommendations. Because hyperbolic embeddings can also be used in many other applications besides CARS, we also propose the latent embeddings representation framework that systematically classifies prior work on embeddings and identifies novel research streams for hyperbolic embeddings across information systems applications.
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来源期刊
CiteScore
9.10
自引率
8.20%
发文量
120
期刊介绍: ISR (Information Systems Research) is a journal of INFORMS, the Institute for Operations Research and the Management Sciences. Information Systems Research is a leading international journal of theory, research, and intellectual development, focused on information systems in organizations, institutions, the economy, and society.
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