An Ensemble Learning Approach for Privacy-Quality-Efficiency Trade-Off in Data Analytics

Author
Keywords
Abstract

Privacy is an issue of concern in the electronic era where data has become a primary source of investment for businesses and organizations. The value generated from data is put to use in a number of ways for economic benefit. Customer profiling is one such instance, where data collected is used for targeted marketing, personalized purchase recommendations and customized product deliveries. In such applications, the risk of individual sensitive information disclosure always prevails, affecting the privacy of individuals involved. Hence privacy preserving analysis demands suppressing or transforming data before it is published for analysis, thus curbing data leak. Subsequently, data quality degrades, and operative analytics is affected. With Big data, algorithms that offer a reasonable qualityprivacy trade off need enhancements in terms of efficiency and scalability. In this paper, the work proposed uses a privacy based composite classifier model to analyze the accuracy of classification. The diverse characteristics of algorithms in the composite classifier are found to balance the classification accuracy that is likely to get affected by privacy model. Further, the model's performance with respect to execution time is then evaluated using the parallel computing framework Spark.. © 2020 IEEE.

Year of Conference
2020
Conference Name
Proceedings - International Conference on Smart Electronics and Communication, ICOSEC 2020
Number of Pages
228-235, 9215250+
Publisher
Institute of Electrical and Electronics Engineers Inc.
ISBN Number
978-172815461-9 (ISBN)
DOI
10.1109/ICOSEC49089.2020.9215250
Conference Proceedings
Download citation
Cits
1
CIT

For admissions and all other information, please visit the official website of

Cambridge Institute of Technology

Cambridge Group of Institutions

Contact

Web portal developed and administered by Dr. Subrahmanya S. Katte, Dean - Academics.

Contact the Site Admin.