Journal ArticleOpen Access
Effectiveness analysis of machine learning classification models for predicting personalized context-aware smartphone usage
Authors
Author Affiliations
Chittagong University of Engineering & Technology, Swinburne University of Technology, La Trobe University
Published InJournal Of Big Data
Year2019
Citations297
Abstract
Due to the increasing popularity of recent advanced features and context-awareness in smart mobile phones, the contextual data relevant to users’ diverse activities with their phones are recorded through the device logs. Modeling and predicting individual’s smartphone usage based on contexts, such as temporal, spatial, or social information, can be used to build various context-aware personalized systems. In order to intelligently assist them, a machine learning classifier based usage prediction model for individual users’ is the key. Thus, we aim to analyze the effectiveness of various machine learning classification models for predicting personalized usage utilizing individual’s phone log data. In our context-aware analysis, we first employ ten classic and well-known machine learning classification techniques, such as ZeroR, Naive Bayes, Decision…
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