Visible to the public A Web Application for Prevention of Inference Attacks using Crowd Sourcing in Social Networks

TitleA Web Application for Prevention of Inference Attacks using Crowd Sourcing in Social Networks
Publication TypeConference Paper
Year of Publication2021
AuthorsKalai Chelvi, T., Ramapraba, P. S., Sathya Priya, M., Vimala, S., Shobarani, R., Jeshwanth, N L, Babisha, A.
Conference Name2021 2nd International Conference on Smart Electronics and Communication (ICOSEC)
KeywordsAdaptive based algorithms, Classification algorithms, Clustering algorithms, composability, compositionality, Crowd Sourcing, data loss, Data Sanitization, Education, Human Behavior, inference attacks, Limiting, Peer-to-peer computing, privacy, pubcrawl, resilience, Resiliency, social networking (online), social networks
AbstractMany people are becoming more reliant on internet social media sites like Facebook. Users can utilize these networks to reveal articles to them and engage with your peers. Several of the data transmitted from these connections is intended to be confidential. However, utilizing publicly available data and learning algorithms, it is feasible to forecast concealed informative data. The proposed research work investigates the different ways to initiate deduction attempts on freely released photo sharing data in order to envisage concealed informative data. Next, this research study offers three distinct sanitization procedures that could be used in a range of scenarios. Moreover, the effectualness of all these strategies and endeavor to utilize collective teaching and research to reveal important bits of the data set are analyzed. It shows how, by using the sanitization methods presented here, a user may lower the accuracy by including both global and interpersonal categorization techniques.
DOI10.1109/ICOSEC51865.2021.9591847
Citation Keykalai_chelvi_web_2021