The progress in the development of data mining techniques achieved in the recent years is gigantic. The collative data mining techniques makes the privacy preserving an important issue. The ultimate aim of the privacy preserving data mining is to extract relevant information from large amount of data base while protecting the sensitive information. The togetherness in the information retrieval with privacy and data quality is crucial. A detailed survey of the present methodologies for the association rule data mining and a review of the state of art method for privacy preserving association rule mining is presented in this paper. An analysis is provided based on the association rule mining algorithm techniques, objective measures, performance metrics and results achieved. The metrics and the short comings of the various existing technologies are also analysed. Finally, the authors present various research issues which can be useful for the researchers to accomplish further research on the privacy preserving association rule data mining.
Increase in number of spam incidents is causing a very serious threat to Social Networking World which has in turn become an important means of interaction and communication between public users. It is not only dangerous to the public users, but it also covers much of the bandwidth of the Internet traffic. Most of current spam filters in use are based on the subject content of email, Facebook, twitter. Social Networking Services also provide great possibilities to take advantage of user identification and other social graphdependent features to improve classification. In this paper, the proposed System uses machine learning [3] approach for spam detection based on features extracted from social networks constructed from social networking site message metadata and logs. Flags and scores are assigned to senders based on their possibility of being a legitimate sender or spammer. Moreover, proposed System also explores various spam filtering techniques and possibilities. Social networking sites are vulnerable to mass spam incidence as well as users data theft such as credit card details, user activities and users taste for criminal purposes .Email subject headers are used to check spam email, spam on Social networking Sites is often accompanied by a wealth of data on the sender, metadata can be used to build more accurate detection mechanisms. System uses these terminologies to choose features that best differentiate spammers from legitimate users. On basis of this technique system flag user system or message as spam and legitimate messages.
scite is a Brooklyn-based organization that helps researchers better discover and understand research articles through Smart Citations–citations that display the context of the citation and describe whether the article provides supporting or contrasting evidence. scite is used by students and researchers from around the world and is funded in part by the National Science Foundation and the National Institute on Drug Abuse of the National Institutes of Health.