Contrastive Representation Learning for Predicting Solar Flares from Extremely Imbalanced Multivariate Time Series Data
Onur Vural, Shah Muhammad Hamdi, Soukaina Filali Boubrahimi

TL;DR
This paper introduces CONTREX, a contrastive learning method for multivariate time series data, significantly improving solar flare prediction by addressing class imbalance and temporal dependencies.
Contribution
The paper presents a novel contrastive representation learning approach, CONTREX, specifically designed for imbalanced multivariate time series data in solar flare prediction.
Findings
Improved prediction accuracy on SWAN-SF dataset
Effective handling of class imbalance and temporal dependencies
Enhanced discriminative power of learned embeddings
Abstract
Major solar flares are abrupt surges in the Sun's magnetic flux, presenting significant risks to technological infrastructure. In view of this, effectively predicting major flares from solar active region magnetic field data through machine learning methods becomes highly important in space weather research. Magnetic field data can be represented in multivariate time series modality where the data displays an extreme class imbalance due to the rarity of major flare events. In time series classification-based flare prediction, the use of contrastive representation learning methods has been relatively limited. In this paper, we introduce CONTREX, a novel contrastive representation learning approach for multivariate time series data, addressing challenges of temporal dependencies and extreme class imbalance. Our method involves extracting dynamic features from the multivariate time series…
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Taxonomy
TopicsMarket Dynamics and Volatility · Oil, Gas, and Environmental Issues · Global Energy and Sustainability Research
