Journal ArticleOpen Access
ContextPCA: Predicting Context-Aware Smartphone Apps Usage Based On Machine Learning Techniques
Author Affiliations
Chittagong University of Engineering & Technology, Swinburne University of Technology, King Abdulaziz University
Published InSymmetry
Year2020
Citations57
Abstract
This paper mainly formulates the problem of predicting context-aware smartphone apps usage based on machine learning techniques. In the real world, people use various kinds of smartphone apps differently in different contexts that include both the user-centric context and device-centric context. In the area of artificial intelligence and machine learning, decision tree model is one of the most popular approaches for predicting context-aware smartphone usage. However, real-life smartphone apps usage data may contain higher dimensions of contexts, which may cause several issues such as increases model complexity, may arise over-fitting problem, and consequently decreases the prediction accuracy of the context-aware model. In order to address these issues, in this paper, we present an effective principal component analysis (PCA) based context-aware…
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