International Journal of Computer Applications |
Foundation of Computer Science (FCS), NY, USA |
Volume 144 - Number 11 |
Year of Publication: 2016 |
Authors: Majid Bashir Malik, M. Asger, Rashid Ali, Tasleem Arif |
10.5120/ijca2016910290 |
Majid Bashir Malik, M. Asger, Rashid Ali, Tasleem Arif . Fuzzy Framework for Preserving Privacy in Neural Networks Classification. International Journal of Computer Applications. 144, 11 ( Jun 2016), 5-10. DOI=10.5120/ijca2016910290
Data mining is an automated process of excavating useful information that is previously unknown, from huge and enormous volumes of data. This information is used in banking, agriculture, medical diagnosis, telecommunication, intrusion detection, genetic engineering, education, marketing, investments, weather forecasting etc. Classification is one of the most important data mining techniques. Many real world problems are being solved using this approach. Neural networks, as a classification technique has emerged as an important soft computing based approach in data mining. It is being used widely in healthcare for prediction and analysis. But there are some apprehensions regarding privacy of the individuals to whom the data originally belongs. In this paper, a methodology has been developed to resolve the privacy issue by integrating fuzzy logic in the process of NN classification and at the same time the accuracy of the results of the NN classification has been preserved as in the absence of integrated privacy constraints.