Social Media Community Using Optimized Clustering

Project Code :TCMAPH20

Abstract

Social Media Community Using Optimized Clustering

Abstract

Now-a-days social media is used to introduce new issues and discussion on social media. More number of users participates in discussion via social media. Different users belong to different kind of groups. Positive and negative comments will be posted by the user and they will participate in discussion. Here we proposed a system to group different kind of users and system specifies from which category they belong to.  For example film industry, politician etc. Once the social media data such as user messages are parsed and network relationships are identified, data mining techniques can be applied to group of different types of communities. We used K-Means clustering algorithm to cluster data. In this system we detect communities by clustering messages from large streams of social data. This application is used to identify group of people who viewed the post and commented on the post. This helps to categorize the users.

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12/7 Support, Voice Conference, Video On Demand, Remote Connectivity, Customization, Live Chat Support, Toll Free Support

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