Journal ArticleOpen Access
Context pre-modeling: an empirical analysis for classification based user-centric context-aware predictive modeling
Authors
Author Affiliations
Chittagong University of Engineering & Technology, Swinburne University of Technology, Macquarie University, King Abdulaziz University, ...
Published InJournal Of Big Data
Year2020
Citations43
Abstract
Abstract Nowadays, machine learning classification techniques have been successfully used while building data-driven intelligent predictive systems in various application areas including smartphone apps. For an effective context-aware system, context pre-modeling is considered as a key issue and task, as the representation of contextual data directly influences the predictive models. This paper mainly explores the role of major context pre-modeling tasks, such as context vectorization by defining a good numerical measure through transformation and normalization, context generation and extraction by creating new brand principal components, context selection by taking into account a subset of original contexts according to their correlations, and eventually context evaluation , to build effective context-aware predictive models utilizing multi-dimensional contextual data. For creating models, various popular machine…
View at Publisher
BORR does not host full-text PDFs. The button above takes you to the original publisher.