Mining Human Mobility in Location-Based Social Networks (Synthesis Lectures on Data Mining and Knowledge Discover)
Huiji Gao, Haun Liu
- 出版商: Morgan & Claypool
- 出版日期: 2015-04-01
- 售價: $1,590
- 貴賓價: 9.5 折 $1,511
- 語言: 英文
- 頁數: 115
- 裝訂: Paperback
- ISBN: 162705412X
- ISBN-13: 9781627054126
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相關分類:
Data-mining
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商品描述
In recent years, there has been a rapid growth of location-based social networking services, such as Foursquare and Facebook Places, which have attracted an increasing number of users and greatly enriched their urban experience. Typical location-based social networking sites allow a user to ""check in"" at a real-world POI (point of interest, e.g., a hotel, restaurant, theater, etc.), leave tips toward the POI, and share the check-in with their online friends. The check-in action bridges the gap between real world and online social networks, resulting in a new type of social networks, namely location-based social networks (LBSNs). Compared to traditional GPS data, location-based social networks data contains unique properties with abundant heterogeneous information to reveal human mobility, i.e., ""when and where a user (who) has been to for what,"" corresponding to an unprecedented opportunity to better understand human mobility from spatial, temporal, social, and content aspects. The mining and understanding of human mobility can further lead to effective approaches to improve current location-based services from mobile marketing to recommender systems, providing users more convenient life experience than before. This book takes a data mining perspective to offer an overview of studying human mobility in location-based social networks and illuminate a wide range of related computational tasks. It introduces basic concepts, elaborates associated challenges, reviews state-of-the-art algorithms with illustrative examples and real-world LBSN datasets, and discusses effective evaluation methods in mining human mobility. In particular, we illustrate unique characteristics and research opportunities of LBSN data, present representative tasks of mining human mobility on location-based social networks, including capturing user mobility patterns to understand when and where a user commonly goes (location prediction), and exploiting user preferences and location profiles to investigate where and when a user wants to explore (location recommendation), along with studying a user's check-in activity in terms of why a user goes to a certain location.
商品描述(中文翻譯)
近年來,基於地理位置的社交網絡服務(如Foursquare和Facebook Places)迅速增長,吸引了越來越多的用戶,並極大豐富了他們的城市體驗。典型的基於地理位置的社交網絡站點允許用戶在現實世界的POI(興趣點,例如酒店、餐廳、劇院等)進行“簽到”,對POI留下提示,並與線上朋友分享簽到信息。簽到行為彌合了現實世界和線上社交網絡之間的差距,從而產生了一種新型的社交網絡,即基於地理位置的社交網絡(LBSNs)。與傳統的GPS數據相比,基於地理位置的社交網絡數據具有獨特的特性,包含豐富的異質信息,可以揭示人類的移動性,即“用戶何時何地去了哪裡”,從空間、時間、社交和內容等方面提供了前所未有的機會來更好地理解人類的移動性。對人類移動性的挖掘和理解可以進一步提供有效的方法,從移動營銷到推薦系統,改進當前的基於地理位置的服務,為用戶提供比以前更便利的生活體驗。本書從數據挖掘的角度提供了研究基於地理位置的社交網絡中人類移動性的概述,並闡明了相關的計算任務。它介紹了基本概念,詳細說明相關挑戰,回顧了具有示例和真實世界LBSN數據集的最新算法,並討論了在挖掘人類移動性方面的有效評估方法。特別是,我們介紹了LBSN數據的獨特特性和研究機會,介紹了在基於地理位置的社交網絡上挖掘人類移動性的代表性任務,包括捕捉用戶的移動模式以了解用戶通常何時何地去(位置預測),以及利用用戶的偏好和位置檔案來研究用戶想要探索何時何地(位置推薦),以及研究用戶的簽到活動,了解用戶為什麼去某個地方。