2024
DOI: 10.3390/en17030700
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A Future Direction of Machine Learning for Building Energy Management: Interpretable Models

Luca Gugliermetti,
Fabrizio Cumo,
Sofia Agostinelli

Abstract: Machine learning (ML) algorithms are now part of everyday life, as many technological devices use these algorithms. The spectrum of uses is wide, but it is evident that ML represents a revolution that may change almost every human activity. However, as for all innovations, it comes with challenges. One of the most critical of these challenges is providing users with an understanding of how models’ output is related to input data. This is called “interpretability”, and it is focused on explaining what feature i… Show more

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