Evaluation of context awareness algorithms for recommending mobile content

Context-aware recommender systems (CARSs) gradually play a crucial role in modern information systems. Previous studies showed that they had great influence to users’ behaviors of information retrieval and decision making process. With the fast growth of mobile systems (e.g., smart phones), context-...

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Main Author: Dong, Hong Liang
Other Authors: Goh Hoe Lian, Dion
Format: Theses and Dissertations
Language:English
Published: 2014
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Online Access:http://hdl.handle.net/10356/61662
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-616622019-12-10T14:51:37Z Evaluation of context awareness algorithms for recommending mobile content Dong, Hong Liang Goh Hoe Lian, Dion Wee Kim Wee School of Communication and Information DRNTU::Engineering::Computer science and engineering::Information systems::Information storage and retrieval Context-aware recommender systems (CARSs) gradually play a crucial role in modern information systems. Previous studies showed that they had great influence to users’ behaviors of information retrieval and decision making process. With the fast growth of mobile systems (e.g., smart phones), context-aware recommendation on mobile content became a hot trend in the academic studies and industrial applications. These systems are also known as mobile context-aware recommender systems (MCARSs). The various approaches in context-aware recommender systems were categorized into three approaches: pre-filtering, post-filtering, and contextual modelling. There are numbers of algorithms in each approach. These approaches and algorithms extended their usage from web based to mobile context-aware recommender systems. However, most of previous studies focused on the web based context-aware recommender systems, and there were few evaluations on the context-awareness recommendation algorithms for mobile content. The richness and dynamic of contextual information on mobile devices makes mobile context-aware recommender systems specific to web based ones. This study purposes to fill the gap of evaluating context-awareness algorithms for recommending mobile content. This dissertation aims to address a problem: which context-awareness recommendation algorithm is appropriate for the mobile context-aware applications, between the two targeted algorithms: generalized pre-filtering and weight post-filtering. The objectives of this study are to summarize the ways of systematic evaluation on context-awareness algorithms for mobile applications, and to provide advices on algorithm utilization for mobile content recommendations. In this study, I reviewed the definitions and concepts related to mobile context-aware recommendation: context, context-awareness, mobile context-awareness, recommender systems, context-aware recommender systems, mobile context-aware recommender systems, and approaches used in context-aware recommendation processes. And I also discussed the methodologies and guidelines of evaluating mobile context-aware recommender systems. I summarized the three types of experiments and the three measures of prediction accuracy for recommender systems. After modelling contextual information of the dataset, an offline experiment was implemented for the two selected algorithms. The experiment results indicated that the location-based generalized pre-filtering algorithm has higher accuracy than weight post-filtering algorithm; and for generalized pre-filtering, accuracy of usage increases when the range of generalized location increases reasonably. The findings and the way of systematic evaluation on mobile context-aware recommender system would benefit the selection process of context-awareness recommendation algorithms for mobile content. Master of Science (Information Studies) 2014-07-17T06:58:51Z 2014-07-17T06:58:51Z 2014 2014 Thesis http://hdl.handle.net/10356/61662 en Nanyang Technological University 85 p. application/pdf
institution Nanyang Technological University
building NTU Library
country Singapore
collection DR-NTU
language English
topic DRNTU::Engineering::Computer science and engineering::Information systems::Information storage and retrieval
spellingShingle DRNTU::Engineering::Computer science and engineering::Information systems::Information storage and retrieval
Dong, Hong Liang
Evaluation of context awareness algorithms for recommending mobile content
description Context-aware recommender systems (CARSs) gradually play a crucial role in modern information systems. Previous studies showed that they had great influence to users’ behaviors of information retrieval and decision making process. With the fast growth of mobile systems (e.g., smart phones), context-aware recommendation on mobile content became a hot trend in the academic studies and industrial applications. These systems are also known as mobile context-aware recommender systems (MCARSs). The various approaches in context-aware recommender systems were categorized into three approaches: pre-filtering, post-filtering, and contextual modelling. There are numbers of algorithms in each approach. These approaches and algorithms extended their usage from web based to mobile context-aware recommender systems. However, most of previous studies focused on the web based context-aware recommender systems, and there were few evaluations on the context-awareness recommendation algorithms for mobile content. The richness and dynamic of contextual information on mobile devices makes mobile context-aware recommender systems specific to web based ones. This study purposes to fill the gap of evaluating context-awareness algorithms for recommending mobile content. This dissertation aims to address a problem: which context-awareness recommendation algorithm is appropriate for the mobile context-aware applications, between the two targeted algorithms: generalized pre-filtering and weight post-filtering. The objectives of this study are to summarize the ways of systematic evaluation on context-awareness algorithms for mobile applications, and to provide advices on algorithm utilization for mobile content recommendations. In this study, I reviewed the definitions and concepts related to mobile context-aware recommendation: context, context-awareness, mobile context-awareness, recommender systems, context-aware recommender systems, mobile context-aware recommender systems, and approaches used in context-aware recommendation processes. And I also discussed the methodologies and guidelines of evaluating mobile context-aware recommender systems. I summarized the three types of experiments and the three measures of prediction accuracy for recommender systems. After modelling contextual information of the dataset, an offline experiment was implemented for the two selected algorithms. The experiment results indicated that the location-based generalized pre-filtering algorithm has higher accuracy than weight post-filtering algorithm; and for generalized pre-filtering, accuracy of usage increases when the range of generalized location increases reasonably. The findings and the way of systematic evaluation on mobile context-aware recommender system would benefit the selection process of context-awareness recommendation algorithms for mobile content.
author2 Goh Hoe Lian, Dion
author_facet Goh Hoe Lian, Dion
Dong, Hong Liang
format Theses and Dissertations
author Dong, Hong Liang
author_sort Dong, Hong Liang
title Evaluation of context awareness algorithms for recommending mobile content
title_short Evaluation of context awareness algorithms for recommending mobile content
title_full Evaluation of context awareness algorithms for recommending mobile content
title_fullStr Evaluation of context awareness algorithms for recommending mobile content
title_full_unstemmed Evaluation of context awareness algorithms for recommending mobile content
title_sort evaluation of context awareness algorithms for recommending mobile content
publishDate 2014
url http://hdl.handle.net/10356/61662
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