2023
DOI: 10.3389/fncom.2023.1292842
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Burst and Memory-aware Transformer: capturing temporal heterogeneity

Byounghwa Lee,
Jung-Hoon Lee,
Sungyup Lee
et al.

Abstract: Burst patterns, characterized by their temporal heterogeneity, have been observed across a wide range of domains, encompassing event sequences from neuronal firing to various facets of human activities. Recent research on predicting event sequences leveraged a Transformer based on the Hawkes process, incorporating a self-attention mechanism to capture long-term temporal dependencies. To effectively handle bursty temporal patterns, we propose a Burst and Memory-aware Transformer (BMT) model, designed to explici… Show more

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