Embedding Hierarchical Structures for Venue Category Representation

Meng Chen, Lei Zhu, Ronghui Xu, Yang Liu, Xiaohui Yu, Yilong Yin
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引用次数: 7

Abstract

Venue categories used in location-based social networks often exhibit a hierarchical structure, together with the category sequences derived from users’ check-ins. The two data modalities provide a wealth of information for us to capture the semantic relationships between those categories. To understand the venue semantics, existing methods usually embed venue categories into low-dimensional spaces by modeling the linear context (i.e., the positional neighbors of the given category) in check-in sequences. However, the hierarchical structure of venue categories, which inherently encodes the relationships between categories, is largely untapped. In this article, we propose a venue Category Embedding Model named Hier-CEM, which generates a latent representation for each venue category by embedding the Hierarchical structure of categories and utilizing multiple types of context. Specifically, we investigate two kinds of hierarchical context based on any given venue category hierarchy and show how to model them together with the linear context collaboratively. We apply Hier-CEM to three tasks on two real check-in datasets collected from Foursquare. Experimental results show that Hier-CEM is better at capturing both semantic and sequential information inherent in venues than state-of-the-art embedding methods.
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嵌入层次结构的场馆类别表示
基于位置的社交网络中使用的地点类别通常呈现层次结构,以及来自用户签到的类别序列。这两种数据模式为我们捕获这些类别之间的语义关系提供了丰富的信息。为了理解场馆语义,现有的方法通常通过在签到序列中建模线性上下文(即给定类别的位置邻居)将场馆类别嵌入到低维空间中。然而,场馆类别的层次结构,其内在编码类别之间的关系,在很大程度上是未开发的。在本文中,我们提出了一个名为Hier-CEM的场馆类别嵌入模型,该模型通过嵌入类别的层次结构和利用多种类型的上下文来生成每个场馆类别的潜在表示。具体而言,我们研究了两种基于任何给定场地类别层次结构的分层上下文,并展示了如何将它们与线性上下文协同建模。我们将her - cem应用于从Foursquare收集的两个真实签到数据集上的三个任务。实验结果表明,与最先进的嵌入方法相比,Hier-CEM在捕获场地固有的语义和顺序信息方面做得更好。
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