Abstract—Temporal networks are ubiquitous and evolve over time by the addition, deletion, and changing of links, nodes, and attributes. Although many relational datasets contain temporal information, the majority of existing techniques in relational learning focus on static snapshots and ignore the temporal dynamics. We propose a framework for discovering temporal representations of relational data to increase the accuracy of statistical relational learning algorithms. The temporal relational representations serve as a basis for classification, ensembles, and pattern mining in evolving domains. The framework includes (1) selecting the time-varying relational components (links, attributes, nodes), (2) selecting the temporal granularity (i.e....
A dynamic network is a network whose structure changes because of the emergence and disappearance of...
International audienceMost methods for temporal pattern mining assume that time is represented by po...
Encoding a large-scale network into a low-dimensional space is a fundamental step for various networ...
Abstract. Relational networks often evolve over time by the addition, deletion, and changing of link...
Many relational domains contain temporal information and dynamics that are important to model (e.g.,...
Networks encode dependencies between entities (people, computers, proteins) and allow us to study ph...
The rapid growth of large scale event datasets with timestamps has given rise to the dynamically evo...
Ensemble learning techniques combine predictions of multiple models to improve classification, while...
In this work an approach is presented which applies unsupervised symbolic learning to a qualitative ...
| openaire: EC/H2020/654024/EU//SoBigDataNetworks (or graphs) are used to represent and analyze larg...
© Copyright 2014 Association for the Advancement of Artificial Intelligence. All rights reserved. Ov...
Recently there has been a lot of interest in using Statistical Relational Learning (SRL) models for ...
Networks are data structures more and more frequently used for modeling interactions in social and b...
We propose dynamic graph-based relational mining approach to learn structural patterns in graphs or ...
We introduce a generalization of temporal-difference (TD) learning to networks of interrelated predi...
A dynamic network is a network whose structure changes because of the emergence and disappearance of...
International audienceMost methods for temporal pattern mining assume that time is represented by po...
Encoding a large-scale network into a low-dimensional space is a fundamental step for various networ...
Abstract. Relational networks often evolve over time by the addition, deletion, and changing of link...
Many relational domains contain temporal information and dynamics that are important to model (e.g.,...
Networks encode dependencies between entities (people, computers, proteins) and allow us to study ph...
The rapid growth of large scale event datasets with timestamps has given rise to the dynamically evo...
Ensemble learning techniques combine predictions of multiple models to improve classification, while...
In this work an approach is presented which applies unsupervised symbolic learning to a qualitative ...
| openaire: EC/H2020/654024/EU//SoBigDataNetworks (or graphs) are used to represent and analyze larg...
© Copyright 2014 Association for the Advancement of Artificial Intelligence. All rights reserved. Ov...
Recently there has been a lot of interest in using Statistical Relational Learning (SRL) models for ...
Networks are data structures more and more frequently used for modeling interactions in social and b...
We propose dynamic graph-based relational mining approach to learn structural patterns in graphs or ...
We introduce a generalization of temporal-difference (TD) learning to networks of interrelated predi...
A dynamic network is a network whose structure changes because of the emergence and disappearance of...
International audienceMost methods for temporal pattern mining assume that time is represented by po...
Encoding a large-scale network into a low-dimensional space is a fundamental step for various networ...