RecencyMiner: mining recency-based personalized behavior from contextual smartphone data

Abstract Due to the advanced features in recent smartphones and context-awareness in mobile technologies, users’ diverse behavioral activities with their phones and associated contexts are recorded through the device logs. Behavioral patterns of smartphone users may vary greatly between individuals...

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Main Authors: Iqbal H. Sarker, Alan Colman, Jun Han
Format: Article
Language:English
Published: SpringerOpen 2019-06-01
Series:Journal of Big Data
Subjects:
Online Access:http://link.springer.com/article/10.1186/s40537-019-0211-6
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spelling doaj-f11a4b07085249bea3116630743ffe402020-11-25T03:20:38ZengSpringerOpenJournal of Big Data2196-11152019-06-016112110.1186/s40537-019-0211-6RecencyMiner: mining recency-based personalized behavior from contextual smartphone dataIqbal H. Sarker0Alan Colman1Jun Han2Swinburne University of TechnologySwinburne University of TechnologySwinburne University of TechnologyAbstract Due to the advanced features in recent smartphones and context-awareness in mobile technologies, users’ diverse behavioral activities with their phones and associated contexts are recorded through the device logs. Behavioral patterns of smartphone users may vary greatly between individuals in different contexts—for example, temporal, spatial, or social contexts. However, an individual’s phone usage behavior may not be static in the real-world changing over time. The volatility of usage behavior will also vary from user-to-user. Thus, an individual’s recent behavioral patterns and corresponding machine learning rules are more likely to be interesting and significant than older ones for modeling and predicting their phone usage behavior. Based on this concept of recency, in this paper, we present an approach for mining recency-based personalized behavior, and name it “RecencyMiner” for short, utilizing individual’s contextual smartphone data, in order to build a context-aware personalized behavior prediction model. The effectiveness of RecencyMiner is examined by considering individual smartphone user’s real-life contextual datasets. The experimental results show that our proposed recency-based approach better predicts individual’s phone usage behavior than existing baseline models, by minimizing the error rate in various context-aware test cases.http://link.springer.com/article/10.1186/s40537-019-0211-6Mobile data miningMachine learningAssociation rule learningData scienceUser behavior modelingContext-awareness
collection DOAJ
language English
format Article
sources DOAJ
author Iqbal H. Sarker
Alan Colman
Jun Han
spellingShingle Iqbal H. Sarker
Alan Colman
Jun Han
RecencyMiner: mining recency-based personalized behavior from contextual smartphone data
Journal of Big Data
Mobile data mining
Machine learning
Association rule learning
Data science
User behavior modeling
Context-awareness
author_facet Iqbal H. Sarker
Alan Colman
Jun Han
author_sort Iqbal H. Sarker
title RecencyMiner: mining recency-based personalized behavior from contextual smartphone data
title_short RecencyMiner: mining recency-based personalized behavior from contextual smartphone data
title_full RecencyMiner: mining recency-based personalized behavior from contextual smartphone data
title_fullStr RecencyMiner: mining recency-based personalized behavior from contextual smartphone data
title_full_unstemmed RecencyMiner: mining recency-based personalized behavior from contextual smartphone data
title_sort recencyminer: mining recency-based personalized behavior from contextual smartphone data
publisher SpringerOpen
series Journal of Big Data
issn 2196-1115
publishDate 2019-06-01
description Abstract Due to the advanced features in recent smartphones and context-awareness in mobile technologies, users’ diverse behavioral activities with their phones and associated contexts are recorded through the device logs. Behavioral patterns of smartphone users may vary greatly between individuals in different contexts—for example, temporal, spatial, or social contexts. However, an individual’s phone usage behavior may not be static in the real-world changing over time. The volatility of usage behavior will also vary from user-to-user. Thus, an individual’s recent behavioral patterns and corresponding machine learning rules are more likely to be interesting and significant than older ones for modeling and predicting their phone usage behavior. Based on this concept of recency, in this paper, we present an approach for mining recency-based personalized behavior, and name it “RecencyMiner” for short, utilizing individual’s contextual smartphone data, in order to build a context-aware personalized behavior prediction model. The effectiveness of RecencyMiner is examined by considering individual smartphone user’s real-life contextual datasets. The experimental results show that our proposed recency-based approach better predicts individual’s phone usage behavior than existing baseline models, by minimizing the error rate in various context-aware test cases.
topic Mobile data mining
Machine learning
Association rule learning
Data science
User behavior modeling
Context-awareness
url http://link.springer.com/article/10.1186/s40537-019-0211-6
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