Dimensionality reduction for sentiment analysis using pre-processing techniques

Mayuri A. Mhatre, Dakshata Phondekar, Pranali Kadam, A. Chawathe, K. Ghag
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引用次数: 19

Abstract

Sentiment analysis is the study of people's opinions, sentiments, attitudes and emotions, expressed in written language but this process is time consuming, inconsistent and costly in business context. Pre-processing the data will help to ease this difficulty. Pre-processing is the process of cleaning and preparing the text for its analysis using pre-processing techniques. The existing pre-processing techniques are Handling Expressive Lengthening, Emoticons Handling, HTML Tags Removal, Punctuations Handling, Slangs Handling, Stopwords Removal, Stemming and Lemmatization. In this paper, the effect of various pre-processing techniques and their combinations was analyzed on the dataset taken from Kaggle called Bag of Words Meets Bags of Popcorn. By taking every possible combination of pre-processing techniques, the aim was to find the one giving highest accuracy. Random Forest Classifier was used to predict sentiments as it is known to give good accuracy and the result was evaluated using 10 fold cross validation method. Accuracy increased from unprocessed data to pre-processed data. It was concluded that using pre-processing techniques gives a higher accuracy than the traditional approach i.e. no pre-processing.
使用预处理技术进行情感分析的降维
情感分析是研究人们的意见、情绪、态度和情感,用书面语言表达,但这个过程在商业环境中是耗时、不一致和昂贵的。对数据进行预处理将有助于缓解这一困难。预处理是使用预处理技术对文本进行清洗和准备以供分析的过程。现有的预处理技术有:处理表达延长、表情符号处理、HTML标签去除、标点符号处理、俚语处理、停止词去除、词干提取和词形化处理。本文在Kaggle的Bag of Words Meets Bags of Popcorn数据集上分析了各种预处理技术及其组合的效果。通过采用各种可能的预处理技术组合,目的是找到一个精度最高的。随机森林分类器用于预测情绪,因为已知它具有良好的准确性,并且使用10倍交叉验证方法对结果进行评估。从未处理数据到预处理数据的准确性提高。结果表明,采用预处理技术比不进行预处理的传统方法具有更高的精度。
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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