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Learning from multivariate discrete sequential data using a restricted Boltzmann machine model

机译:使用受限的Boltzmann机器模型从多元离散序列数据中学习

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A restricted Boltzmann machine (RBM) is a generative neural-network model with many novel applications such as collaborative filtering and acoustic modeling. An RBM lacks the capacity to retain memory, making it inappropriate for dynamic data modeling as in time-series analysis. In this paper we address this issue by proposing the p-RBM model, a generalization of the regular RBM model, capable of retaining memory of p past states. We further show how to train the p-RBM model using contrastive divergence and test our model on the problem of predicting the stock market direction considering 100 stocks of the NASDAQ-100 index. Obtained results show that the p-RBM offer promising prediction potential.
机译:受限玻尔兹曼机(RBM)是一种生成神经网络模型,具有许多新颖的应用程序,例如协作过滤和声学建模。 RBM缺乏保留内存的能力,使其不适合进行动态数据建模(如在时序分析中那样)。在本文中,我们通过提出p-RBM模型(这是常规RBM模型的泛化,能够保留p个过去状态的记忆)来解决此问题。我们进一步展示了如何使用对比差异训练p-RBM模型,并在考虑纳斯达克100指数的100只股票的情况下对预测股市方向的问题进行测试。获得的结果表明,p-RBM提供了有希望的预测潜力。

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