Title :
Analyzing and predicting Lifetime of trends using social networks
Author :
Sundar, D. Sam ; Kankanala, Mila
Author_Institution :
SSN Coll. of Eng., Chennai, India
Abstract :
Trending topics in any social networking site are those specific trends that are most popular and talked about at that point in time. The emergence, survival and eventual fading away of a trend are a function of various factors. In this paper, an exhaustive list of determinants is pioneered with respect to the survival of a trend. Using the first determinant, Interest Over Time, and utilizing sentiment analysis over the textual data associated with the trend, the longevity of a trend is predicted. Additionally, a modified and more accurate mathematical equation for Trend Survival Score is formulated where Predictive Analysis and Modeling with First Order Differential Equations is done with the other two determinants. In order to map the Lifetime Score to a timeframe relevant to real-world scenario, K-nearest neighbor approach is used (using k=3) considering how lifetime score of a trend converts to actual lifetime in the training data.
Keywords :
differential equations; information analysis; social networking (online); first order differential equations; interest-over-time determinant; lifetime score; predictive analysis; sentiment analysis; social networks; trend survival; trend survival score; trending topics; trends lifetime analysis; trends lifetime prediction; Computers; Informatics; Market research; Mathematical model; Sentiment analysis; Twitter; Predictive Analysis; Trend Survival Score; determinants; sentiment analysis; text mining; trends;
Conference_Titel :
Computer Communication and Informatics (ICCCI), 2015 International Conference on
Conference_Location :
Coimbatore
Print_ISBN :
978-1-4799-6804-6
DOI :
10.1109/ICCCI.2015.7218090