Inferring User Context from Spatio-Temporal Pattern Mining for Mobile Application Services

Daniel Pereira, L. Loyola
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引用次数: 2

Abstract

Recent research on geographical data mining that focuses on user behavior is lacking some fundamental aspects, measurements rely on large quantities of geographic data and lack contextual information. This work introduces a novel knowledge discovery architecture that brings together machine learning techniques with readily available information from popular Location Social Networks, in order to enrich geographical locations with context and add meaning to user behavior. Results show that through analysis of context enriched data we are capable of inferring context for detected user points of interest and patterns, such as where the user lives, works and spends his free time, without a large quantity of information or prior knowledge of the user and his private data.
从移动应用服务的时空模式挖掘推断用户上下文
目前的地理数据挖掘研究主要集中在用户行为方面,缺乏一些基本的方面,测量依赖于大量的地理数据,缺乏上下文信息。这项工作引入了一种新的知识发现架构,该架构将机器学习技术与来自流行位置社交网络的现成信息结合在一起,以便通过上下文丰富地理位置,并为用户行为增加意义。结果表明,通过分析上下文丰富的数据,我们能够推断出检测到的用户兴趣点和模式的上下文,例如用户住在哪里,在哪里工作,在哪里度过他的空闲时间,而不需要大量的信息或事先了解用户及其私人数据。
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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