基于循环CNN模型的Bi-CARU情感分析

Ka‐Hou Chan, S. Im
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引用次数: 1

摘要

对于许多自然语言处理任务,情感分析对于从社交媒体数据中提取有意义的信息变得越来越重要。由于神经网络技术的优越性能,可以通过先进的深度学习模型来解决情感分析的任务。在这项工作中,将双向caru (Bi-CARU)和循环CNN的组合模型引入到情感分析任务中。本文提出的Bi-CAUR由三层组成,旨在获取输入序列的主要特征,缓解了长期依赖问题,并进行了从具体到抽象的内核信息过滤,有效提高了中间网络在该问题上的性能。接下来,将CNN的递归结构与Bi-CARU连接,确定情感分析。提出的递归CNN实现接受其自身先前卷积和池化产生的特征,这结合了CNN的性能并且只需要更少的参数。实验结果表明,我们的算法精度略高,收敛速度较快,需要的训练参数更少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sentiment Analysis Using Bi-CARU with Recurrent CNN Models
For many natural language processing tasks, sentiment analysis has become increasingly important for extracting meaningful information from social media data. With the out-performance of neural network technology, the task of sentiment analysis can be addressed by advanced deep learning models. In this work, a combination model of Bidirectional-CARU (Bi-CARU) and Recurrent CNN is introduced to the sentiment analysis tasks. The proposed Bi-CAUR consists of three layers designed to obtain the main features of the input sequence, which can alleviate the long-term dependency problem and perform kernel information filtering from concrete to abstract, effectively improving the performance of the intermediate network on this problem. Next, the recursive structure of the CNN is connected to Bi-CARU to determine the sentiment analysis. The proposed Recurrent CNN implementation accepts features produced by its own previous convolution and pooling, which incorporates the performance of a CNN and requires only fewer parameters. Experimental results show that we are slightly more accurate, achieve faster convergence, and require fewer training parameters.
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