IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

ConChi: Pattern Change Mining from Mobile Context-Aware Data

ConChi: Pattern Change Mining from Mobile Context-Aware Data
View Sample PDF
Author(s): Luca Cagliero (Politecnico di Torino, Italy)
Copyright: 2016
Pages: 23
Source title: Business Intelligence: Concepts, Methodologies, Tools, and Applications
Source Author(s)/Editor(s): Information Resources Management Association (USA)
DOI: 10.4018/978-1-4666-9562-7.ch042

Purchase

View ConChi: Pattern Change Mining from Mobile Context-Aware Data on the publisher's website for pricing and purchasing information.

Abstract

Mobile context-aware systems focus on adapting mobile service provisions to the actual user needs. They offer personalized services based on the context in which mobile users' requests have been submitted. Since contextual information changes over time, the application of established itemset change mining algorithms to context-aware data is an appealing research issue. Change itemset discovery focuses on discovering patterns which represent the temporal evolution of frequent itemsets in consecutive time periods. However, the sparseness of the analyzed data may bias the extraction process, because itemsets are likely to become infrequent at certain time periods. This chapter presents ConChI, a novel context-aware system that performs change itemset mining from context-aware data with the aim at supporting mobile expert decisions. To counteract data sparseness itemset change mining is driven by an analyst-provided taxonomy which allows analyzing data correlation changes at different abstraction levels. In particular, taxonomy is exploited to represent the knowledge that becomes infrequent in certain time periods by means of high level (generalized) itemsets. Experiments performed on real contextual data coming from a mobile application show the effectiveness of the proposed system in supporting mobile user and service profiling.

Related Content

Dina Darwish. © 2024. 48 pages.
Dina Darwish. © 2024. 51 pages.
Smrity Prasad, Kashvi Prawal. © 2024. 19 pages.
Jignesh Patil, Sharmila Rathod. © 2024. 17 pages.
Ganesh B. Regulwar, Ashish Mahalle, Raju Pawar, Swati K. Shamkuwar, Priti Roshan Kakde, Swati Tiwari. © 2024. 23 pages.
Pranali Dhawas, Abhishek Dhore, Dhananjay Bhagat, Ritu Dorlikar Pawar, Ashwini Kukade, Kamlesh Kalbande. © 2024. 24 pages.
Pranali Dhawas, Minakshi Ashok Ramteke, Aarti Thakur, Poonam Vijay Polshetwar, Ramadevi Vitthal Salunkhe, Dhananjay Bhagat. © 2024. 26 pages.
Body Bottom