Temporal networks refer to networks like physical contact networks whose topology changes over time. Predicting future temporal network is crucial e.g., to forecast the epidemics. Existing prediction methods are either relatively accurate but black-box, or white-box but less accurate. The lack of interpretable and accurate prediction methods motivates us to explore what intrinsic properties/mechanisms facilitate the prediction of temporal networks. We use interpretable learning algorithms, Lasso Regression and Random Forest, to predict, based on the current activities (i.e., connected or not) of all links, the activity of each link at the next time step. From the coefficients learned from each algorithm, we construct the prediction backbone...
We introduce a generalization of temporal-difference (TD) learning to networks of interrelated predi...
International audienceCapturing both structural and temporal features of interactions is crucial in ...
Link prediction is one of central tasks in the study of social network evolution and has many applic...
Link prediction is a task in Social Network Analysis that consists of predicting connections that ar...
International audienceIn this paper we address the problem of temporal link prediction, i.e., predic...
Understanding the evolutionary patterns of real-world complex systems such as human interactions, bi...
Link prediction is a well-studied technique for inferring the missing edges between two nodes in som...
Abstract — There are several types of processes which can be modeled explicitly by recording the int...
The challenge in predicting future links over large scale networks (social networks) is not only mai...
| openaire: EC/H2020/654024/EU//SoBigDataNetworks (or graphs) are used to represent and analyze larg...
Abstract. The analysis of social networks often assumes the time invariant scenario while in practic...
The analysis of social networks often assumes the time invariant scenario while in practice node att...
Predicting new links in complex networks can have a large societal impact. In fact, many complex sys...
The concept of temporal networks is an extension of complex networks as a modeling framework to incl...
The analysis of social networks often assumes time invariant scenario, while in practice actor attri...
We introduce a generalization of temporal-difference (TD) learning to networks of interrelated predi...
International audienceCapturing both structural and temporal features of interactions is crucial in ...
Link prediction is one of central tasks in the study of social network evolution and has many applic...
Link prediction is a task in Social Network Analysis that consists of predicting connections that ar...
International audienceIn this paper we address the problem of temporal link prediction, i.e., predic...
Understanding the evolutionary patterns of real-world complex systems such as human interactions, bi...
Link prediction is a well-studied technique for inferring the missing edges between two nodes in som...
Abstract — There are several types of processes which can be modeled explicitly by recording the int...
The challenge in predicting future links over large scale networks (social networks) is not only mai...
| openaire: EC/H2020/654024/EU//SoBigDataNetworks (or graphs) are used to represent and analyze larg...
Abstract. The analysis of social networks often assumes the time invariant scenario while in practic...
The analysis of social networks often assumes the time invariant scenario while in practice node att...
Predicting new links in complex networks can have a large societal impact. In fact, many complex sys...
The concept of temporal networks is an extension of complex networks as a modeling framework to incl...
The analysis of social networks often assumes time invariant scenario, while in practice actor attri...
We introduce a generalization of temporal-difference (TD) learning to networks of interrelated predi...
International audienceCapturing both structural and temporal features of interactions is crucial in ...
Link prediction is one of central tasks in the study of social network evolution and has many applic...