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Neural Networks for Sequential Data: a Pre-training Approach based on Hidden Markov Models

机译:序列数据的神经网络:基于隐马尔可夫模型的预训练方法

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In the last few years, research highlighted the critical role of unsupervised pre-training strategies to improve the performance of artificial neural networks. However, the scope of existing pre-training methods is limited to static data, whereas many learning tasks require to deal with temporal information. We propose a novel approach to pre-training sequential neural networks that exploits a simpler, first-order Hidden Markov Model to generate an approximate distribution of the original dataset. The learned distribution is used to generate a smoothed dataset that is used for pre-training. In this way, it is possible to drive the connection weights in a better region of the parameter space, where subsequent fine-tuning on the original dataset can be more effective. This novel pre-training approach is model-independent and can be readily applied to different network architectures. The benefits of the proposed method, both in terms of accuracy and training times, are demonstrated on a prediction task using four datasets of polyphonic music. The flexibility of the proposed strategy is shown by applying it to two different recurrent neural network architectures, and we also empirically investigate the impact of different hyperparameters on the performance of the proposed pre-training strategy. (C) 2015 Elsevier B.V. All rights reserved.
机译:在过去的几年中,研究强调了无监督的预训练策略对提高人工神经网络性能的关键作用。但是,现有的预训练方法的范围仅限于静态数据,而许多学习任务需要处理时间信息。我们提出了一种预训练顺序神经网络的新颖方法,该方法利用一个更简单的一阶隐马尔可夫模型来生成原始数据集的近似分布。学习的分布用于生成用于预训练的平滑数据集。这样,可以在参数空间的更好区域中驱动连接权重,从而在原始数据集上进行后续微调可能更有效。这种新颖的预训练方法与模型无关,可以轻松地应用于不同的网络体系结构。使用四个复音音乐数据集,在预测任务上证明了该方法在准确性和训练时间方面的优势。通过将其应用于两种不同的递归神经网络体系结构,可以显示出所提出策略的灵活性,并且我们还通过经验研究了不同超参数对所提出的预训练策略性能的影响。 (C)2015 Elsevier B.V.保留所有权利。

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