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Discovering Items with Potential Popularity on Social Media
Abbas, Khushnood1; Xin, Luo2; Mingsheng, Shang2
2016
摘要Predicting the future popularity of online content is highly important in many applications. Under preferential attachment influence popular items get more popular thereby resulting in long tailed distribution problem. Consequently, new items which can be popular (potential ones), are suppressed by the already popular items. This paper proposes a novel model which is able to identify potential items. It identifies the potentially popular items by considering the number of links or ratings it has received in recent past along with it's popularity decay. For obtaining an efficient model we consider only temporal features of the content, avoiding the cost of extracting other features. Prediction accuracy is measured on three industrial data sets namely Movielens, Netflix and Facebook wall post. We have found the recent gain in link formation are a good predictor for future link formation as compare to total links, in other words we can say people follow the recent behaviours of their peers, considering the fact that collective attention makes something popular. Experimental results show that compare to state-of-the-art model our model have better prediction accuracy. © 2016 IEEE.
语种英语
DOI10.1109/DASC-PICom-DataCom-CyberSciTec.2016.91
会议(录)名称14th IEEE International Conference on Dependable, Autonomic and Secure Computing, DASC 2016, 14th IEEE International Conference on Pervasive Intelligence and Computing, PICom 2016, 2nd IEEE International Conference on Big Data Intelligence and Computing, DataCom 2016 and 2016 IEEE Cyber Science and Technology Congress, CyberSciTech 2016, DASC-PICom-DataCom-CyberSciTech 2016
页码459-466
收录类别EI
会议地点Auckland, New zealand
会议日期August 8, 2016 - August 10, 2016