Effectively predicting whether a given post or tweet is going to become viral in online social networks is of paramount importance for several applications, such as trend and break-out forecasting. While several attempts towards this end exist, most of the current approaches rely on features extracted from the underlying network structure over which the content spreads. Recent studies have shown, however, that prediction can be effectively performed with very little structural information about the network, or even with no structural information at all. In this study we propose a novel network-agnostic approach called cAs2vEC, that models information cascades as time series and discretizes them using time slices. For the actual prediction task we have adopted a technique from the natural language processing community. The particular choice of the technique is mainly inspired by an empirical observation on the strong similarity between the distribution of discretized values occurrence i...
CAS2VEC: Network-Agnostic Cascade Prediction in Online Social Networks / Kefato, Zekarias T.; Sheikh, Nasrullah; Bahri, Leila; Soliman, Amira; Montresor, Alberto; Girdzijauskas, Sarunas. - ELETTRONICO. - (2018), pp. 72-79. ( 5th International Conference on Social Networks Analysis, Management and Security, SNAMS 2018 Spagna 2018) [10.1109/SNAMS.2018.8554730].
CAS2VEC: Network-Agnostic Cascade Prediction in Online Social Networks
Kefato, Zekarias T.;Sheikh, Nasrullah;Montresor, Alberto;
2018-01-01
Abstract
Effectively predicting whether a given post or tweet is going to become viral in online social networks is of paramount importance for several applications, such as trend and break-out forecasting. While several attempts towards this end exist, most of the current approaches rely on features extracted from the underlying network structure over which the content spreads. Recent studies have shown, however, that prediction can be effectively performed with very little structural information about the network, or even with no structural information at all. In this study we propose a novel network-agnostic approach called cAs2vEC, that models information cascades as time series and discretizes them using time slices. For the actual prediction task we have adopted a technique from the natural language processing community. The particular choice of the technique is mainly inspired by an empirical observation on the strong similarity between the distribution of discretized values occurrence i...I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione



