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Learning Higher-Level Features with Convolutional Restricted Boltzmann Machines for Sentiment Analysis

机译:使用卷积受限玻尔兹曼机学习高级特征以进行情感分析

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In recent years, learning word vector representations has attracted much interest in Natural Language Processing. Word representations or embed-dings learned using unsupervised methods help addressing the problem of traditional bag-of-word approaches which fail to capture contextual semantics. In this paper we go beyond the vector representations at the word level and propose a novel framework that learns higher-level feature representations of n-grams, phrases and sentences using a deep neural network built from stacked Convolutional Restricted Boltzmann Machines (CRBMs). These representations have been shown to map syntactically and semantically related n-grams to closeby locations in the hidden feature space. We have experimented to additionally incorporate these higher-level features into supervised classifier training for two sentiment analysis tasks: subjectivity classification and sentiment classification. Our results have demonstrated the success of our proposed framework with 4% improvement in accuracy observed for subjectivity classification and improved the results achieved for sentiment classification over models trained without our higher level features.
机译:近年来,学习单词向量表示法引起了人们对自然语言处理的极大兴趣。使用无监督方法学习的单词表示或嵌入有助于解决传统的词袋方法无法捕获上下文语义的问题。在本文中,我们超越了单词级别的向量表示,并提出了一个新颖的框架,该框架使用由堆积的卷积受限玻尔兹曼机(CRBM)构建的深度神经网络来学习n-gram,短语和句子的更高级别的特征表示。这些表示形式已显示出将与语法和语义相关的n元语法映射到隐藏特征空间中的邻近位置。我们已尝试将这些更高级别的功能另外纳入到监督分类器训练中,以进行两项情感分析任务:主观性分类和情感分类。我们的结果证明了我们提出的框架的成功,对于主观分类,观察到的准确度提高了4%,并且在没有高级特征训练的模型上,情感分类的结果也得到了改善。

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