Inference of Sequential Patterns for Neural Message Passing in Temporal Graphs
Jan von Pichowski, Vincenzo Perri, Lisi Qarkaxhija, Ingo Scholtes

TL;DR
This paper introduces HYPA-DBGNN, a novel method combining statistical null models and neural message passing on De Bruijn graphs to detect anomalous temporal patterns in dynamic graphs, improving node classification performance.
Contribution
It proposes a new two-step approach that integrates statistical anomaly detection with higher-order neural message passing for temporal graph analysis.
Findings
Effective detection of anomalous sequential patterns in empirical datasets
Superior node classification performance compared to baseline methods
First to incorporate statistically informed sequence anomalies into GNNs
Abstract
The modelling of temporal patterns in dynamic graphs is an important current research issue in the development of time-aware GNNs. Whether or not a specific sequence of events in a temporal graph constitutes a temporal pattern not only depends on the frequency of its occurrence. We consider whether it deviates from what is expected in a temporal graph where timestamps are randomly shuffled. While accounting for such a random baseline is important to model temporal patterns, it has mostly been ignored by current temporal graph neural networks. To address this issue we propose HYPA-DBGNN, a novel two-step approach that combines (i) the inference of anomalous sequential patterns in time series data on graphs based on a statistically principled null model, with (ii) a neural message passing approach that utilizes a higher-order De Bruijn graph whose edges capture overrepresented sequential…
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Taxonomy
TopicsNeural dynamics and brain function
