Litcius/Paper detail

THPs: Topological Hawkes Processes for Learning Causal Structure on Event Sequences

Ruichu Cai, Siyu Wu, Jie Qiao, Zhifeng Hao, Keli Zhang, Xi Zhang

2022IEEE Transactions on Neural Networks and Learning Systems34 citationsDOI

Abstract

Learning causal structure among event types on multitype event sequences is an important but challenging task. Existing methods, such as the Multivariate Hawkes processes, mostly assumed that each sequence is independent and identically distributed. However, in many real-world applications, it is commonplace to encounter a topological network behind the event sequences such that an event is excited or inhibited not only by its history but also by its topological neighbors. Consequently, the failure in describing the topological dependency among the event sequences leads to the error detection of the causal structure. By considering the Hawkes processes from the view of temporal convolution, we propose a topological Hawkes process (THP) to draw a connection between the graph convolution in the topology domain and the temporal convolution in time domains. We further propose a causal structure learning method on THP in a likelihood framework. The proposed method is featured with the graph convolution-based likelihood function of THP and a sparse optimization scheme with an Expectation-Maximization of the likelihood function. Theoretical analysis and experiments on both synthetic and real-world data demonstrate the effectiveness of the proposed method.

Topics & Concepts

Convolution (computer science)Event (particle physics)Computer scienceTopology (electrical circuits)GraphDependency (UML)Independent and identically distributed random variablesMaximizationArtificial intelligenceTheoretical computer scienceAlgorithmMathematicsRandom variableMathematical optimizationCombinatoricsArtificial neural networkStatisticsPhysicsQuantum mechanicsPoint processes and geometric inequalitiesMorphological variations and asymmetryAutomated Road and Building Extraction