Journal ArticleUnknown
A machine learning based robust prediction model for real-life mobile phone data
Authors
Author Affiliations
Swinburne University of Technology, Chittagong University of Engineering & Technology
Published InInternet of Things
Year2019
Citations123
Abstract
Real-life mobile phone data may contain noisy instances, which is a fundamental issue for building a prediction model with many potential negative consequences. The complexity of the inferred model may increase, may arise over-fitting problem, and thereby the overall prediction accuracy of the model may decrease. In this paper, we address these issues and present a robust prediction model for real-life mobile phone data of individual users, in order to improve the prediction accuracy of the model. In our robust model, we first effectively identify and eliminate the noisy instances from the training dataset by determining a dynamic noise threshold using naive Bayes classifier and laplace estimator, which may differ from user-to-user according to their unique behavioral patterns. After that,…
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