SEDformer: Event-Synchronous Spiking Transformers for Irregular Telemetry Time Series Forecasting
Ziyu Zhou, Yuchen Fang, Weilin Ruan, Shiyu Wang, James Kwok, Yuxuan Liang

TL;DR
SEDformer introduces an event-synchronous spiking transformer that effectively models irregular telemetry time series by leveraging the SED property, achieving state-of-the-art accuracy with lower energy and memory consumption.
Contribution
The paper proposes SEDformer, a novel spiking transformer architecture that aligns with the SED property of IMTS, improving forecasting accuracy and efficiency over existing methods.
Findings
Achieves state-of-the-art forecasting accuracy on public telemetry datasets.
Reduces energy and memory usage compared to traditional models.
Effectively captures sparse and dense event patterns in IMTS.
Abstract
Telemetry streams from large-scale Internet-connected systems (e.g., IoT deployments and online platforms) naturally form an irregular multivariate time series (IMTS) whose accurate forecasting is operationally vital. A closer examination reveals a defining Sparsity-Event Duality (SED) property of IMTS, i.e., long stretches with sparse or no observations are punctuated by short, dense bursts where most semantic events (observations) occur. However, existing Graph- and Transformer-based forecasters ignore SED: pre-alignment to uniform grids with heavy padding violates sparsity by inflating sequences and forcing computation at non-informative steps, while relational recasting weakens event semantics by disrupting local temporal continuity. These limitations motivate a more faithful and natural modeling paradigm for IMTS that aligns with its SED property. We find that Spiking Neural…
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Taxonomy
TopicsTime Series Analysis and Forecasting · Traffic Prediction and Management Techniques · Network Time Synchronization Technologies
