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A Secure Naive Bayes Classifier for Horizontally Partitioned Data

Authors

Sumana M1 and Hareesha K S2, 1M S Ramaiah Institute of Technology, India and 2Manipal Institute of Technology, India

Abstract

In order to extract interesting patterns, data available at multiple sites has to be trained. Distributed Data mining enables sites to mine patterns based on the knowledge available at different sites. In the process of sites collaborating to develop a model, it is extremely important to protect the privacy of data or intermediate results. The features of the data maintained at each site are often similar in nature. In this paper, we design an improved privacy-preserving distributed naive Bayesian classifier to train the horizontal data. This trained model is propagated to sites involved in computation. We further analyze the security and complexity of the algorithm.

Keywords

Privacy Preservation, Naive Bayesian, Secure Sum, Classification.

Full Text  Volume 4, Number 9