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首页> 外文期刊>Applied Soft Computing >Online RBM: Growing Restricted Boltzmann Machine on the fly for unsupervised representation
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Online RBM: Growing Restricted Boltzmann Machine on the fly for unsupervised representation

机译:在线rbm:verved directed表示,越来越多的Boldzmann机器

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In this work, we endeavor to investigate and propose a novel unsupervised online learning algorithm, namely the Online Restricted Boltzmann Machine (O-RBM). The O-RBM is able to construct and adapt the architecture of a Restricted Boltzmann Machine (RBM) artificial neural network, according to the statistics of the streaming input data. Specifically, for a training data that is not fully available at the onset of training, the proposed O-RBM begins with a single neuron in the hidden layer of the RBM, progressively adds and suitably adapts the network to account for the variations in streaming data distributions. Such an unsupervised learning helps to effectively model the probability distribution of the entire data stream, and generates robust features. We will demonstrate that such unsupervised representations can be used for discriminative classifications on a set of multi-category and binary classification problems for unstructured image and structured signal data sets, having varying degrees of class-imbalance. We first demonstrate the O-RBM algorithm and characterize the network evolution using the simple and conventional multi-class MNIST image dataset, aimed at recognizing hand-written digit. We then benchmark O-RBM performance to other machine learning, neural network and Class RBM techniques using a number of public non-stationary datasets. Finally, we study the performance of the O-RBM on a real-world problem involving predictive maintenance of an aircraft component using time series data. In all these studies, it is observed that the O-RBM converges to a stable, concise network architecture, wherein individual neurons are inherently discriminative to the class labels despite unsupervised training. It can be observed from the performance results that on an average O-RBM improves accuracy by 2.5%-3% over conventional offline batch learning techniques while requiring at least 24%-70% fewer neurons. (C) 2020 Elsevier B.V. All rights reserved.
机译:在这项工作中,我们努力调查和提出一种小说无人监督的在线学习算法,即在线受限制的Boltzmann机器(O-RBM)。根据流输入数据的统计,O-RBM能够构造和调整受限制的Boltzmann机器(RBM)人工神经网络的架构。具体地,对于在训练的开始不完全可用的训练数据中,所提出的O-RBM在RBM的隐藏层中以单个神经元开始,逐步增加并适当地调整网络以解释流数据的变化分布。这种无监督的学习有助于有效地模拟整个数据流的概率分布,并产生鲁棒特征。我们将展示这种无监督的表示可以用于非结构化图像和结构化信号数据集的一组多类别和二进制分类问题上的判别分类,具有不同程度的类别不平衡。我们首先展示O-RBM算法,并使用简单和传统的多级MNIST图像数据集来表征网络演进,旨在识别手写的数字。然后,我们使用许多公共非稳定性数据集将O-RBM性能基准测试到其他机器学习,神经网络和级RBM技术。最后,我们研究了O-RBM对使用时间序列数据的预测维护飞机组件的真实问题的性能。在所有这些研究中,观察到O-RBM会聚到稳定的简洁的网络架构,其中尽管无监督的培训,单个神经元本质上对类标签具有本质上的歧视。可以从平均O-RBM的性能结果观察到,在常规的离线批量学习技术上,平均O-RBM提高了2.5%-3%的精度,同时需要至少24%-70%的神经元。 (c)2020 Elsevier B.V.保留所有权利。

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