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Classification of temporal sequences via prediction using the simple recurrent neural network

机译:使用简单递归神经网络通过预测对时间序列进行分类

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An approach to classify temporal sequences using the simple recurrent neural network (SRNN) is developed in this paper. A classification problem is formulated as a component prediction problem and two training methods are described to train a single SRNN to predict the components of temporal sequences belonging to multiple classes. Issues related to the selection of the dimension of the context vector and the influence of the context vector on classification are identified and investigated. The use of a different initial context vector for each class is proposed as a means to improve classification and a classification rule which incorporates the different initial context vectors is formulated. A systematic method in which the SRNN is trained with noisy exemplars is developed to enhance the classification performance of the network. A 4-class localized object classification problem is selected to demonstrate that (a) a single SRNN can be trained to classify real multi-class sequences via component prediction, (b) the classification accuracy can be improved by using a distinguishing initial context vector for each class, and (c) the classification accuracy of the SRNN can be improved significantly by using the distinguishing initial context vector in conjunction with the systematic re-training method. It is concluded that, through the approach developed in this paper, the SRNN can robustly classify temporal sequences which may have an unequal number of components. (C) 2000 Published by Elsevier science Ltd on behalf of Pattern Recognition Society. [References: 38]
机译:本文提出了一种使用简单递归神经网络(SRNN)对时间序列进行分类的方法。将分类问题表述为成分预测问题,并描述了两种训练方法来训练单个SRNN以预测属于多个类别的时间序列的成分。识别和研究与上下文向量的维的选择以及上下文向量对分类的影响有关的问题。提出针对每个类别使用不同的初始上下文向量作为改善分类的手段,并制定了包含不同初始上下文向量的分类规则。开发了一种系统的方法,其中以嘈杂的示例训练SRNN,以增强网络的分类性能。选择一种4类局部对象分类问题来证明(a)可以训练单个SRNN通过分量预测对真实的多类序列进行分类,(b)通过使用可区分的初始上下文向量来提高分类精度每个类别,以及(c)通过使用可区分的初始上下文向量结合系统的重新训练方法,可以显着提高SRNN的分类准确性。结论是,通过本文开发的方法,SRNN可以对可能具有不相等数目的分量的时间序列进行鲁棒分类。 (C)2000由Elsevier science Ltd代表模式识别协会出版。 [参考:38]

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