From ITDL to Place2Vec: Reasoning About Place Type Similarity and Relatedness by Learning Embeddings From Augmented Spatial Contexts

Bo Yan, K. Janowicz, Gengchen Mai, Song Gao
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引用次数: 134

Abstract

Understanding, representing, and reasoning about Points Of Interest (POI) types such as Auto Repair, Body Shop, Gas Stations, or Planetarium, is a key aspect of geographic information retrieval, recommender systems, geographic knowledge graphs, as well as studying urban spaces in general, e.g., for extracting functional or vague cognitive regions from user-generated content. One prerequisite to these tasks is the ability to capture the similarity and relatedness between POI types. Intuitively, a spatial search that returns body shops or even gas stations in the absence of auto repair places is still likely to satisfy some user needs while returning planetariums will not. Place hierarchies are frequently used for query expansion, but most of the existing hierarchies are relatively shallow and structured from a single perspective, thereby putting POI types that may be closely related regarding some characteristics far apart from another. This leads to the question of how to learn POI type representations from data. Models such as Word2Vec that produces word embeddings from linguistic contexts are a novel and promising approach as they come with an intuitive notion of similarity. However, the structure of geographic space, e.g., the interactions between POI types, differs substantially from linguistics. In this work, we present a novel method to augment the spatial contexts of POI types using a distance-binned, information-theoretic approach to generate embeddings. We demonstrate that our work outperforms Word2Vec and other models using three different evaluation tasks and strongly correlates with human assessments of POI type similarity. We published the resulting embeddings for 570 place types as well as a collection of human similarity assessments online for others to use.
从ITDL到Place2Vec:基于增强空间上下文学习嵌入的地点类型相似性和相关性推理
理解、表示和推理兴趣点(POI)类型,如汽车维修、车身修理店、加油站或天文馆,是地理信息检索、推荐系统、地理知识图以及一般城市空间研究的关键方面,例如,从用户生成的内容中提取功能或模糊的认知区域。这些任务的一个先决条件是能够捕获POI类型之间的相似性和相关性。直观地说,一个空间搜索返回汽车修理店,甚至加油站,在没有汽车修理店的情况下,仍然可能满足一些用户的需求,而返回天文馆则不会。位置层次结构经常用于查询扩展,但是大多数现有的层次结构相对较浅,并且从单一的角度进行结构化,从而使可能在某些特征上密切相关的POI类型与其他POI类型相距甚远。这就导致了如何从数据中学习POI类型表示的问题。Word2Vec等从语言语境中生成词嵌入的模型是一种新颖而有前途的方法,因为它们具有直观的相似性概念。然而,地理空间的结构,例如POI类型之间的相互作用,与语言学有很大的不同。在这项工作中,我们提出了一种新的方法来增加POI类型的空间上下文,使用距离分类,信息论方法来生成嵌入。通过使用三种不同的评估任务,我们证明了我们的工作优于Word2Vec和其他模型,并且与人类对POI类型相似性的评估密切相关。我们在网上发布了570个地点类型的嵌入结果,以及人类相似性评估的集合,供其他人使用。
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