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Deep Boltzmann machine for nonlinear system modelling

机译:用于非线性系统建模的深螺栓曼机器

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摘要

Deep Boltzmann machine (DBM) has been successfully applied in classification, regression and time series modeling. For nonlinear system modelling, DBM should also have many advantages over the other neural networks, such as input features extraction and noise tolerance. In this paper, we use DBM to model nonlinear systems by calculating the probability distributions of the input and output. Two novel weight updating algorithms are proposed to obtain these distributions. We use binary encoding and conditional probability transformation methods. The proposed methods are validated with two benchmark nonlinear systems.
机译:Deep Boltzmann机器(DBM)已成功应用于分类,回归和时间序列建模。对于非线性系统建模,DBM还应具有与其他神经网络相比的许多优点,例如输入特征提取和噪声容差。在本文中,我们通过计算输入和输出的概率分布来使用DBM来模拟非线性系统。提出了两种新的重量更新算法以获得这些分布。我们使用二进制编码和条件概率变换方法。所提出的方法用两个基准非线性系统验证。

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