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Integration of Unsupervised and Supervised Criteria for Deep Neural Networks Training

机译:无监督和监督深度神经网络培训的融合标准

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Training Deep Neural Networks has been a difficult task for a long time. Recently diverse approaches have been presented to tackle these difficulties, showing that deep models improve the performance of shallow ones in some areas like signal processing, signal classification or signal segmentation, whatever type of signals, e.g. video, audio or images. One of the most important methods is greedy layer-wise unsupervised pre-training followed by a fine-tuning phase. Despite the advantages of this procedure, it does not fit some scenarios where real time learning is needed, as for adaptation of some time-series models. This paper proposes to couple both phases into one, modifying the loss function to mix together the unsupervised and supervised parts. Benchmark experiments with MNIST database prove the viability of the idea for simple image tasks, and experiments with time-series forecasting encourage the incorporation of this idea into on-line learning approaches. The interest of this method in time-series forecasting is motivated by the study of predictive models for domotic houses with intelligent control systems.
机译:培训深度神经网络很长一段时间一直是一项艰巨的任务。最近,已经提出了各种方法来解决这些困难,表明深度模型在信号处理,信号分类或信号分割等领域提高了浅层的性能,无论是什么类型的信号,例如任何类型的信号。视频,音频或图像。最重要的方法之一是贪婪的层智能监督的预测预测,然后是微调阶段。尽管此过程的优势,但它不适应需要实时学习的某些情况,如适应某些时间序列模型。本文提出将两个阶段耦合到一个,修改损耗功能,将无监督和监督部件混合在一起。 Mnist数据库的基准实验证明了简单图像任务的理念的可行性,并且随时间系列预测的实验鼓励将这个想法纳入在线学习方法。这种方法在时间序列预测中的兴趣是通过研究与智能控制系统的多种房屋预测模型的推动。

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