Behavior-Oriented Time Segmentation for Mining Individualized Rules of Mobile Phone Users

Iqbal H. Sarker, A. Colman, M. A. Kabir, Jun Han
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引用次数: 19

Abstract

Mobile or cellular phones can record various types of context data related to a user's phone call activities. In this paper, we present an approach to discovering individualized behavior rules for mobile users from their phone call records, based on the temporal context in which a user accepts, rejects or misses a call. One of the determinants of an individual's phone behavior is the various activities undertaken at various times of a day and days of the week. In many cases, such behavior will follow temporal patterns. Currently, researchers modeling user behavior using temporal context statically segment time into arbitrary categories (e.g., morning, evening) or periods (e.g., 1 hour). However, such time categorization does not necessarily map to the patterns of individual user activity and subsequent behavior. Therefore, we propose a behavior-oriented time segmentation (BOTS) technique that dynamically identifies diverse time segments for an individual user's behaviors based on the phone call records. Experiments on real datasets show that our proposed technique better captures the user's dominant call response behavior at various times of the day and week, thereby enabling more appropriate rules to be created for the purpose of automated handling of incoming calls, in an intelligent call interruption management system.
面向行为的手机用户个性化规则挖掘时间分割
移动电话或蜂窝电话可以记录与用户通话活动相关的各种类型的上下文数据。在本文中,我们提出了一种基于用户接受、拒绝或错过电话的时间背景,从移动用户的电话记录中发现个性化行为规则的方法。一个人的手机行为的决定因素之一是在一天和一周的不同时间进行的各种活动。在许多情况下,这种行为将遵循时间模式。目前,研究人员使用时间上下文来建模用户行为,静态地将时间划分为任意类别(例如,早晨,晚上)或时间段(例如,1小时)。然而,这种时间分类并不一定映射到单个用户活动和后续行为的模式。因此,我们提出了一种基于行为导向的时间分割(BOTS)技术,该技术基于电话记录动态识别个体用户行为的不同时间段。在真实数据集上的实验表明,我们提出的技术更好地捕获了用户在一天和一周的不同时间的主要呼叫响应行为,从而能够在智能呼叫中断管理系统中创建更合适的规则,用于自动处理传入呼叫。
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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