Learning to rank for spatiotemporal search

B. Shaw, Jon Shea, Siddhartha Sinha, A. Hogue
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引用次数: 97

Abstract

In this article we consider the problem of mapping a noisy estimate of a user's current location to a semantically meaningful point of interest, such as a home, restaurant, or store. Despite the poor accuracy of GPS on current mobile devices and the relatively high density of places in urban areas, it is possible to predict a user's location with considerable precision by explicitly modeling both places and users and by combining a variety of signals about a user's current context. Places are often simply modeled as a single latitude and longitude when in fact they are complex entities existing in both space and time and shaped by the millions of people that interact with them. Similarly, models of users reveal complex but predictable patterns of mobility that can be exploited for this task. We propose a novel spatial search algorithm that infers a user's location by combining aggregate signals mined from billions of foursquare check-ins with real-time contextual information. We evaluate a variety of techniques and demonstrate that machine learning algorithms for ranking and spatiotemporal models of places and users offer significant improvement over common methods for location search based on distance and popularity.
学习对时空搜索进行排序
在本文中,我们考虑将用户当前位置的噪声估计映射到语义上有意义的兴趣点(如家、餐馆或商店)的问题。尽管当前移动设备上的GPS精度较差,而且城市地区的地点密度相对较高,但通过明确地对地点和用户进行建模,并结合有关用户当前环境的各种信号,可以相当精确地预测用户的位置。地点通常被简单地建模为单一的纬度和经度,而事实上,它们是存在于空间和时间中的复杂实体,由与它们互动的数百万人塑造。类似地,用户模型揭示了可用于此任务的复杂但可预测的移动性模式。我们提出了一种新的空间搜索算法,通过结合从数十亿次foursquare签到中挖掘的汇总信号和实时上下文信息来推断用户的位置。我们评估了各种技术,并证明了用于地点和用户的排名和时空模型的机器学习算法比基于距离和受欢迎程度的位置搜索的常用方法提供了显着改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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