Abstract: Every day twitter receives 500 million tweets with emerged as an invaluable source of news, blogs, unwanted information and more. Continuous tweet cannot show information correctly. Our proposed work consist summarization and opinion mining technique for data analysis. First collect the tweet online and historical from internet, in first technique opinion mining can show fast result and show emotion with score about online tweet by using sentiment analysis. Second technique summarization first cluster the tweet using K-means clustering algorithm ,tweet data structure represent statically known as tweet cluster vector and then formulation of incremental cluster is done. In summarization incremental tweet match with present tweet then add into the specific cluster; if not then declare it is in new cluster. By using summarization evolutes most trending topic very fast. The paper discussed study report of new approach for tweet summarization.

Keywords: Tweet stream, Summarization, Opinion mining, Topic detection.