Sentiment Analysis using Improved Novel Convolutional Neural Network (SNCNN)

M. Kalaiarasu, C. Kumar
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引用次数: 1

Abstract

Sentiment Analysis is an important method in which many researchers are working on the automated approach for extraction and analysis of huge volumes of user achieved data, which are accessible on social networking websites. This approach helps in analyzing the direct falls under the domain of SA. SA comprises the vast field of effective classification of user-initiated text under defined polarities. The proposed work includes four major steps for solving these issues: the first step is preprocessing which holds tokenization, stop word removal, stemming, cleaning up of unwanted text information like removing of Ads from Web pages, Text normalization for converting binary format. Secondly, the Feature extraction is based on the Bag words, Word2Vec and TF-ID which is a Term Frequency-Inverse Document Frequency. Thirdly, this feature selection includes the procedure for examining semantic gaps along with source features using teaching models and this involves target task characteristic application for Improved Novel Convolutional Neural Network (INCNN). The Feature Selection accompanies the procedure of Information Gain (IG) and PCC which is a Pearson Correlation Coefficient. Finally, the classification step INCNN gives out sentiment posts and responses for the user-based post aspects which helps in enhancing the system performance. The experimental outcome proposes the INCNN algorithm and provides higher performance rather than the existing approach. The proposed INCNN classifier results in highest accuracy.
基于改进新颖卷积神经网络(SNCNN)的情感分析
情感分析是一种重要的方法,许多研究人员正在研究自动提取和分析大量用户实现数据的方法,这些数据可以在社交网站上访问。这种方法有助于分析SA域下的直接落点。自动分类包括在定义极性下对用户发起的文本进行有效分类的广泛领域。建议的工作包括解决这些问题的四个主要步骤:第一步是预处理,包括标记化,停止单词删除,词干提取,清理不需要的文本信息,如从网页中删除广告,文本规范化用于转换二进制格式。其次,基于Bag words、Word2Vec和TF-ID (Term Frequency- inverse Document Frequency)进行特征提取。第三,这种特征选择包括使用教学模型检查语义间隙和源特征的过程,这涉及到改进的新型卷积神经网络(INCNN)的目标任务特征应用。特征选择伴随着信息增益(IG)和PCC(皮尔逊相关系数)的过程。最后,分类步骤INCNN给出基于用户的帖子方面的情感帖子和响应,有助于提高系统的性能。实验结果表明,与现有方法相比,INCNN算法具有更高的性能。所提出的INCNN分类器具有最高的准确率。
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