A Frame Work for Preserving Privacy in Social Media using Generalized Gaussian Mixture Model

Abstract

Social networking sites helps in developing virtual communities for people to share their thoughts, interest activities or to increase their horizon of camaraderie. Social networking sites come under few of the most frequently browsed categories websites in the world. Nevertheless Social Networking sites are also vulnerable to various problems, threats and attacks such as disclosure of information, identity thefts etc. Privacy practice in social networking sites often come into sight, as information sharing stands in conflict with the disclosure-related misuse. Face book is one such most popular and widely used Social Networking sites which have its own robust set of Privacy mechanisms. Yet they are also prone to various privacy issues and attacks. The impulse in this paper lies in proposing a novel approach for improving the privacy among the social networking sites .The article presents the issues by a novel approach based on tagging and a model based technique based on generalized Gaussian Mixture Model.

Authors and Affiliations

P Anuradha, Y. Srinivas, MHM Prasad

Keywords

Related Articles

Performance Analysis of Route Redistribution among Diverse Dynamic Routing Protocols based on OPNET Simulation

Routing protocols are the fundamental block of selecting the optimal path from a source node to a destination node in internetwork. Due to emerge the large networks in business aspect thus; they operate diverse routing p...

Implicit Thinking Knowledge Injection Framework for Agile Requirements Engineering

Agile has become commonly used as a software development methodology and its success depends on face-to-face communication of software developers and the faster software product delivery. Implicit thinking knowledge has...

Methodology for Selecting the Preferred Networked Computer System Solution for Dynamic Continuous Defense Missions

This paper presents a methodology for addressing the challenges and opportunities in defining and selecting the preferred Networked Computer System (NCS) solution in response to specified United States Defense mission pl...

Impact Propagation of Human Errors on Software Requirements Volatility

Requirements volatility (RV) is one of the key risk sources in software development and maintenance projects because of the frequent changes made to the software. Human faults and errors are major factors contributing to...

Towards an SOA Architectural Model for AAL-Paas Design and Implimentation Challenges

Ambient Assisted Living (AAL) systems main purpose is to improve the quality of life of special groups of people, including the elderly and people with physical disabilities. Driven by the critical ongoing changes in all...

Download PDF file
  • EP ID EP100715
  • DOI 10.14569/IJACSA.2015.060711
  • Views 111
  • Downloads 0

How To Cite

P Anuradha, Y. Srinivas, MHM Prasad (2015). A Frame Work for Preserving Privacy in Social Media using Generalized Gaussian Mixture Model. International Journal of Advanced Computer Science & Applications, 6(7), 68-71. https://europub.co.uk/articles/-A-100715