Data di Pubblicazione:
2017
Abstract:
In this paper we propose a survival factorization framework that models information cascades by tying together social influence pat- terns, topical structure and temporal dynamics. This is achieved through the introduction of a latent space which encodes: (a) the relevance of a information cascade on a topic; (b) the topical authoritativeness and the susceptibility of each individual involved in the information cascade, and (c) temporal topical patterns. By exploiting the cumulative proper- ties of the survival function and of the likelihood of the model on a given adoption log, which records the observed activation times of users and side-information for each cascade, we show that the inference phase is linear in the number of users and in the number of adoptions. The eval- uation on both synthetic and real-world data shows the effectiveness of the model in detecting the interplay between topics and social influence patterns, which ultimately provides high accuracy in predicting users activation times.
Tipologia CRIS:
04.01 Contributo in Atti di convegno
Keywords:
Social Network Analysis; Survival Analysis; Information Diffusion; Influence Propagation; Adoption Prediction.
Elenco autori:
Manco, Giuseppe; Ritacco, Ettore
Link alla scheda completa:
Titolo del libro:
ECML PKDD 2017: Machine Learning and Knowledge Discovery in Databases