Detect the emotions of the public based on cascade neural network model

Xiao Sun, Xiaoqi Peng, F. Ren
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引用次数: 1

Abstract

Along with the development of social network, more and more people know the world by reading news. The problem about what kind of emotion is inspired when people read news is very worthy of discussion. This paper will mix Deep Belief Networks (DBN) model and Support Vector Machine (SVM) to a hybrid neural network model by using the Contrast Divergence (CD) algorithm to estimate the weights when training a generating model, ensure that each layer of the Restricted Boltzmann Machine (RBM) mapping the features of the inputs to the best. At the same time, we cascade the last layer of DBN and a SVM classifier to adjust judging performance. And a set of tags will be attached to the top (Associative Memory), through a process of parameter tuning, learn the identifying weights to obtain a network for the task of text classification. The experimental results show that the hybrid neural network model works better than the traditional text categorization method based on simple characteristics (such as CHI), and it is more suitable for extracting text semantic characteristics.
基于级联神经网络模型的公众情绪检测
随着社交网络的发展,越来越多的人通过阅读新闻来了解世界。人们在阅读新闻时,会产生什么样的情绪,这个问题非常值得讨论。本文将深度信念网络(DBN)模型和支持向量机(SVM)混合成一个混合神经网络模型,在训练生成模型时使用对比度散度(CD)算法进行权值估计,保证约束玻尔兹曼机(RBM)的每一层将输入特征映射到最佳。同时,我们将DBN的最后一层与SVM分类器级联以调整判断性能。并将一组标签附加到顶部(Associative Memory),通过参数调优的过程,学习识别权值,获得用于文本分类任务的网络。实验结果表明,混合神经网络模型比传统的基于简单特征(如CHI)的文本分类方法效果更好,更适合提取文本语义特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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