Belief propagation and learning in convolution multi-layer factor graphs

F. Palmieri, A. Buonanno
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引用次数: 5

Abstract

In modeling time series, convolution multi-layer graphs are able to capture long-term dependence at a gradually increasing scale. We present an approach to learn a layered factor graph architecture starting from a stationary latent models for each layer. Simulations of belief propagation are reported for a three-layer graph on a small data set of characters.
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卷积多层因子图的信念传播与学习
在时间序列建模中,卷积多层图能够在逐渐增加的尺度上捕获长期依赖关系。我们提出了一种从每层的平稳潜在模型开始学习分层因子图架构的方法。在一个小的字符数据集上,对三层图的信念传播进行了仿真。
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