2024
DOI: 10.1111/exsy.13674
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KDBI special issue: Explainability feature selection framework application for LSTM multivariate time‐series forecast self optimization

Eduardo M. Rodrigues,
Yassine Baghoussi,
João Mendes‐Moreira

Abstract: Deep learning models are widely used in multivariate time series forecasting, yet, they have high computational costs. One way to reduce this cost is by reducing data dimensionality, which involves removing unimportant or low importance information with the proper method. This work presents a study on an explainability feature selection framework composed of four methods (IMV‐LSTM Tensor, LIME‐LSTM, Average SHAP‐LSTM, and Instance SHAP‐LSTM) aimed at using the LSTM black‐box model complexity to its favour, wit… Show more

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