Semantic labeling of places based on phone usage features using supervised learning

Alejandro Rivero Rodríguez, H. Leppäkoski, R. Piché
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引用次数: 7

Abstract

Nowadays mobile applications demand higher context awareness. The applications aim to understand the user's context (e.g., home or at work) and provide services tailored to the users. The algorithms responsible for inferring the user's context are the so-called context inference algorithms, the place detection being a particular case. Our hypothesis is that people use mobile phones differently when they are located in different places (e.g. longer calls at home than at work). Therefore, the usage of the mobile phones could be an indicator of the users' current context. The objective of the work is to develop a system that can estimate the user's place label (home, work, etc.), based on phone usage. As training and validation set, we use a database containing phone usage information of 200 users over several months including phone call and SMS logs, multimedia usage, accelerometer, GPS, network information and system information. The data was split into visits, i.e., periods of uninterrupted time that the user has been in a certain place (Home, Work, Leisure, etc.). The data include information about the phone usage during the visits, and the semantic label of the place visited (Home, Work, etc.). We consider two approaches to represent this data: the first approach (so-called visits approach) saves each visit separately; the second approach (so-called places approach) combines all visits of one user to a certain place and creates place-specific information. For place detection, we used five popular classification methods, Naïve Bayes, Decision Tree, Bagged Tree, Neural Network and K-Nearest Neighbors, in both representation approaches. We evaluated their classification rates and found that: 1) Bagged Tree outperforms the other methods; 2) the places data-representation gives better results than the visits data-representation.
基于使用监督学习的手机使用特征对地点进行语义标注
如今,移动应用需要更高的上下文感知能力。这些应用程序旨在了解用户的环境(例如,家庭或工作),并为用户提供量身定制的服务。负责推断用户上下文的算法是所谓的上下文推断算法,地点检测是一个特殊的例子。我们的假设是,人们在不同的地方使用手机的方式不同(例如,在家的通话时间比在工作场所的通话时间长)。因此,手机的使用情况可以作为用户当前情境的一个指标。这项工作的目标是开发一个系统,可以根据电话使用情况估计用户的地点标签(家庭,工作等)。作为训练和验证集,我们使用了一个包含200个用户在几个月内的电话使用信息的数据库,包括电话和短信日志、多媒体使用、加速度计、GPS、网络信息和系统信息。数据被分成访问,即用户在某个地方(家庭、工作、休闲等)不间断的时间段。数据包括访问期间的电话使用信息,以及访问地点的语义标签(家庭,工作等)。我们考虑了两种方法来表示这些数据:第一种方法(所谓的访问方法)分别保存每次访问;第二种方法(所谓的地点方法)将一个用户对某个地点的所有访问组合在一起,并创建特定地点的信息。对于位置检测,我们在两种表示方法中使用了五种流行的分类方法,Naïve贝叶斯,决策树,袋装树,神经网络和k近邻。对两种方法的分类率进行了评价,发现:(1)Bagged Tree的分类率优于其他方法;2)地点数据表示优于访问数据表示。
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