Citation Link: https://doi.org/10.25819/ubsi/10827
Towards user-centered explainable energy demand forecasting systems
Source Type
InProceedings
Institute
Subjects
Explainable Energy Demand Forecasting
Human-centered Explanation
Shapely Additive Explanation
LSTM
DDC
004 Informatik
Source
e-Energy '22: Proceedings of the Thirteenth ACM International Conference on Future Energy Systems, S. 446 - 447. - https://doi.org/10.1145/3538637.3538877
Issue Date
2022
Abstract
In recent years, eXplainable Artificial Intelligence (XAI) has received huge attention in the area of explaining the decision-making processes of machine learning models. The aim is to increase the acceptance, trust, and transparency of AI models by providing explanations about the models' decisions. But most of the prior works on XAI are focused to support AI practitioners and developers in understanding and debugging. In this paper, we propose a user-centered explainable energy demand prediction and forecasting system that aims to provide explanations to end-users in the smart home. In doing so, we present an overview of the explainable system and propose a method combining Deep Learning Important FeaTures (DeepLIFT) and Shapley Additive Explanations (SHAP) to explain the prediction of an LSTM-based energy forecasting model.
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This is the preprint and accepted version
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