Title :
Feature based link prediction
Author :
Aouay, Saoussen ; Jamoussi, Salma ; Gargouri, Faiez
Author_Institution :
Multimedia Inf. Syst. & Adv. Comput. Lab., Higher Inst. of Comput. Sci. & Multimedia, Sfax, Tunisia
Abstract :
Under the different searches performed to analyzing social networks, much attention has been devoted to the problem of predicting links. It is a key technique in many applications such as recommendation systems which provide suggestions of potential links between nodes. Traditional link prediction methods use a single proximity metric. In this paper, we study link prediction as a supervised learning task where we try to combine multiple features as input data for classification. To improve the accuracy of prediction, we have been applying a select attributes algorithm. Experiments have been performed on two co-authorship data sets. Results demonstrate that Random Forest, k-nearest neighbors and Principal Component Analysis yield the best performances.
Keywords :
independent component analysis; learning (artificial intelligence); random processes; social networking (online); feature based link prediction; k-nearest neighbors; principal component analysis; proximity metric; random forest; recommendation system; select attributes algorithm; social network; supervised learning task; Algorithm design and analysis; Communities; Feature extraction; Prediction algorithms; Principal component analysis; Probabilistic logic; Social network services; link prediction; machine learning algorithms; proximity feature; selection attribute; social network;
Conference_Titel :
Computer Systems and Applications (AICCSA), 2014 IEEE/ACS 11th International Conference on
DOI :
10.1109/AICCSA.2014.7073243