4.7 Article

In-Processing fairness improvement methods for regression Data-Driven building Models: Achieving uniform energy prediction

期刊

ENERGY AND BUILDINGS
卷 277, 期 -, 页码 -

出版社

ELSEVIER SCIENCE SA
DOI: 10.1016/j.enbuild.2022.112565

关键词

Fairness; Accuracy; Data-driven model; Energy prediction; Building

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This study proposes four in-processing methods to improve the predictive fairness of regression models in terms of having similar predictive performance between different conditions. The results show that the mean square error constrained (MSEC) method is the most effective in improving fairness, while the mean square error penalized (MSEP) method is another good option without significantly decreasing the overall accuracy. The mean residual difference constrained (MRDC) method effectively improves the similarity of absolute mean residual difference between different conditions, while the mean residual difference penalized (MRDP) method does not affect the predictive result.
In recent years, the massive data collection in buildings has paved the way for the development of accu-rate data-driven building models (DDBMs) for various applications. However, a model with a high overall accuracy would not ensure a good predictive performance on all conditions. The biased predictive perfor-mance for some conditions may cause fairness problems. Although pre-processing methods were pro-posed to improve predictive fairness by removing discrimination from training datasets for classification problems in building engineering domain, they lack the ability of achieving user-defined trade-off between fairness and accuracy for regression problems, such as energy prediction. To improve the predictive fairness of regression models in terms of having similar predictive performance between different conditions, this study proposes four in-processing methods, namely mean residual difference penalized (MRDP) regression, mean square error penalized (MSEP) regression, mean residual difference constrained (MRDC) regression, and mean square error constrained (MSEC) regression, to add fairness -related penalties or constraints to the loss function of regression models. Then, these proposed methods are applied to develop linear regression models for energy prediction of an apartment. In this case study, improving predictive fairness means to let the energy predictive accuracy be uniform no matter if there is occupancy movement. The result shows that MSEC is the most powerful method to improve fairness in terms of mean square error (MSE) rate and mean absolute error (MAE) rate, while MSEP is another good option to improve fairness without a significant decrease on the overall accuracy. MRDC is effective on improving the similarity of absolute mean residual difference (abs(MRD)) between different conditions, however, MRDP would not affect the predictive result.(c) 2022 Elsevier B.V. All rights reserved.

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