TensorCast: forecasting and mining with coupled tensors
作者:Miguel Araujo, Pedro Ribeiro, Hyun Ah Song, Christos Faloutsos
摘要
Given an heterogeneous social network, can we forecast its future? Can we predict who will start using a given hashtag on twitter? Can we leverage side information, such as who retweets or follows whom, to improve our membership forecasts? We present TensorCast, a novel method that forecasts time-evolving networks more accurately than current state-of-the-art methods by incorporating multiple data sources in coupled tensors. TensorCast is (a) scalable, being linearithmic on the number of connections; (b) effective, achieving over 20% improved precision on top-1000 forecasts of community members; (c) general, being applicable to data sources with different structure. We run our method on multiple real-world networks, including DBLP, epidemiology data, power grid data, and a Twitter temporal network with over 310 million nonzeros, where we predict the evolution of the activity of the use of political hashtags.
论文关键词:Time-evolving network, Coupled tensor, Forecasting
论文评审过程:
论文官网地址:https://doi.org/10.1007/s10115-018-1223-9