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Multi-task learning using variational auto-encoder for sentiment classification

机译:使用变形自动编码器进行情感分类的多任务学习

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摘要

With the rapid growth of the big data, many approaches in the representation of text for sentiment classification have been successfully proposed in natural language processing. However, these approaches remedy this problem based on single-task supervised objectives learning and do not consider their relative of multiple tasks. Based on these defects, in this work, we consider these tasks are relative, and use weight-shared parameters for learning the representation of text in neural network model, we introduce and study a multi-task approach with variational auto-encoder generative model (MTVAE) by jointly learning them. Experimental results on six subsets of Amazon review data show that the proposed approach can effectively improve the sentiment classification accuracy by other relative tasks. (c) 2018 Published by Elsevier B.V.
机译:随着大数据的快速增长,在自然语言处理中成功提出了许多在文本的文本的表现方法中的方法。但是,这些方法基于单任务监督目标学习来解决这个问题,并且不考虑它们的相对任务。根据这些缺陷,在这项工作中,我们考虑这些任务是相对的,并使用权重共享参数来学习神经网络模型中文本的表示,我们介绍和研究了变分自动编码器生成模型的多任务方法( MTVAE)共同学习它们。亚马逊评论数据六个子集的实验结果表明,该方法可以通过其他相对任务有效提高情绪分类准确性。 (c)2018由elestvier b.v出版。

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