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A Neural Network Model for Learning Data Stream with Multiple Class Labels

机译:用于学习具有多个类标签的数据流的神经网络模型

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In this paper, we extend the sequential multitask learning model called Resource Allocating Network for Multi-Task Pattern Recognition (RAN-MTPR) proposed by Nishikawa et al. such that it can learn a training sample with multiple class labels which are originated from different lassification tasks. Here, we assume that no task information is given for training samples. Therefore, the extended RAN-MTPR has to allocate multiple class labels to appropriate tasks under unsupervised settings. This is carried out based on the prediction errors in the output sections, and the most probable task is selected from the output section with a minimum error. Through the computer simulations using the ORL face dataset, we show that the extended RAN-MTPR works well as a multitask learning model.
机译:在本文中,我们扩展了Nishikawa等人提出的顺序多任务学​​习模型,即用于多任务模式识别的资源分配网络(RAN-MTPR)。这样它就可以学习具有来自不同分类任务的多个类别标签的训练样本。在这里,我们假设没有给出训练样本的任务信息。因此,扩展的RAN-MTPR必须在不受监督的设置下为适当的任务分配多个类标签。这是根据输出部分中的预测误差执行的,并且从输出部分中选择误差最小的最有可能的任务。通过使用ORL人脸数据集的计算机仿真,我们表明扩展的RAN-MTPR可以很好地用作多任务学习模型。

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