On Mean Absolute Error for Deep Neural Network Based Vector-to-Vector Regression
Jun Qi,
Jun Du,
Sabato Marco Siniscalchi
et al.
Abstract:In this paper, we exploit the properties of mean absolute error (MAE) as a loss function for the deep neural network (DNN) based vector-to-vector regression. The goal of this work is two-fold: (i) presenting performance bounds of MAE, and (ii) demonstrating new properties of MAE that make it more appropriate than mean squared error (MSE) as a loss function for DNN based vector-to-vector regression. First, we show that a generalized upper-bound for DNN-based vectorto-vector regression can be ensured by leveragi… Show more
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