LGSRMLNov 20, 2019

Challenges with Extreme Class-Imbalance and Temporal Coherence: A Study on Solar Flare Data

arXiv:1911.09061v130 citations
Originality Synthesis-oriented
AI Analysis

This work addresses critical methodological pitfalls for researchers analyzing time series of rare events, particularly in interdisciplinary fields like space weather, though it is incremental as it applies known techniques to a specific domain.

The study tackled the problems of extreme class imbalance and temporal coherence in rare-event forecasting using solar flare data, finding that ignoring temporal autocorrelation artificially inflates performance metrics and that careful data and model adjustments are necessary for reliable results.

In analyses of rare-events, regardless of the domain of application, class-imbalance issue is intrinsic. Although the challenges are known to data experts, their explicit impact on the analytic and the decisions made based on the findings are often overlooked. This is in particular prevalent in interdisciplinary research where the theoretical aspects are sometimes overshadowed by the challenges of the application. To show-case these undesirable impacts, we conduct a series of experiments on a recently created benchmark data, named Space Weather ANalytics for Solar Flares (SWAN-SF). This is a multivariate time series dataset of magnetic parameters of active regions. As a remedy for the imbalance issue, we study the impact of data manipulation (undersampling and oversampling) and model manipulation (using class weights). Furthermore, we bring to focus the auto-correlation of time series that is inherited from the use of sliding window for monitoring flares' history. Temporal coherence, as we call this phenomenon, invalidates the randomness assumption, thus impacting all sampling practices including different cross-validation techniques. We illustrate how failing to notice this concept could give an artificial boost in the forecast performance and result in misleading findings. Throughout this study we utilized Support Vector Machine as a classifier, and True Skill Statistics as a verification metric for comparison of experiments. We conclude our work by specifying the correct practice in each case, and we hope that this study could benefit researchers in other domains where time series of rare events are of interest.

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