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Journal ArticleOpen Access

BehavDT: A Behavioral Decision Tree Learning to Build User-Centric Context-Aware Predictive Model

Author Affiliations
Chittagong University of Engineering & Technology, Swinburne University of Technology, King Abdulaziz University, Khalifa University of Science and Technology
Published InMobile Networks and Applications
Year2019
Citations125

Abstract

This paper formulates the problem of building a context-aware predictive model based on user diverse behavioral activities with smartphones. In the area of machine learning and data science, a tree-like model as that of decision tree is considered as one of the most popular classification techniques, which can be used to build a data-driven predictive model. The traditional decision tree model typically creates a number of leaf nodes as decision nodes that represent context-specific rigid decisions, and consequently may cause overfitting problem in behavior modeling. However, in many practical scenarios within the context-aware environment, the generalized outcomes could play an important role to effectively capture user behavior. In this paper, we propose a behavioral decision tree, “BehavDT” context-aware model that…
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