School of Electrical & Electronics Engineering, Chung-Ang University, Seoul 06974, Korea.
School of Electrical Engineering, Korea University, Seoul 02841, Korea.
Sensors (Basel). 2021 Sep 15;21(18):6194. doi: 10.3390/s21186194.
Conventional predictive Artificial Neural Networks (ANNs) commonly employ deterministic weight matrices; therefore, their prediction is a point estimate. Such a deterministic nature in ANNs causes the limitations of using ANNs for medical diagnosis, law problems, and portfolio management in which not only discovering the prediction but also the uncertainty of the prediction is essentially required. In order to address such a problem, we propose a predictive probabilistic neural network model, which corresponds to a different manner of using the generator in the conditional Generative Adversarial Network (cGAN) that has been routinely used for conditional sample generation. By reversing the input and output of ordinary cGAN, the model can be successfully used as a predictive model; moreover, the model is robust against noises since adversarial training is employed. In addition, to measure the uncertainty of predictions, we introduce the entropy and relative entropy for regression problems and classification problems, respectively. The proposed framework is applied to stock market data and an image classification task. As a result, the proposed framework shows superior estimation performance, especially on noisy data; moreover, it is demonstrated that the proposed framework can properly estimate the uncertainty of predictions.
传统的预测人工神经网络 (ANNs) 通常采用确定性权重矩阵; 因此,它们的预测是一个点估计。这种确定性在 ANN 中导致了使用 ANN 进行医学诊断、法律问题和投资组合管理的局限性,在这些问题中,不仅需要发现预测,还需要预测的不确定性。为了解决这个问题,我们提出了一个预测概率神经网络模型,它对应于条件生成对抗网络 (cGAN) 中生成器的不同使用方式,该方式已被常规用于条件样本生成。通过反转普通 cGAN 的输入和输出,该模型可以成功地用作预测模型; 此外,由于采用了对抗训练,该模型对噪声具有鲁棒性。此外,为了衡量预测的不确定性,我们分别为回归问题和分类问题引入了熵和相对熵。所提出的框架应用于股票市场数据和图像分类任务。结果表明,所提出的框架具有优越的估计性能,特别是在噪声数据上; 此外,还证明了该框架可以正确估计预测的不确定性。