自然语言处理对大数据分析的影响:情感分析案例研究

Mariam Khader, A. Awajan, Ghazi Al-Naymat
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引用次数: 16

摘要

社交网络是大数据的主要来源之一。它连续不断地以高速率产生大量各种类型的数据。大量的数据包含有价值的信息,需要高效和可扩展的分析技术来提取。Hadoop/MapReduce被认为是处理大数据最合适的框架,因为它具有可扩展性、可靠性和简单性。情感分析是从数据中提取有价值信息的基本应用之一。情感分析通过将人们的书面文本分为积极极性和消极极性来研究人们的观点。在这项工作中,分析了一种用于分析Twitter数据集的情感分析方法。该方法使用朴素贝叶斯算法对文本进行正负极性分类。在数据集上应用了几种语言和NLP预处理技术。这些预处理技术的目的是研究它们对大数据分类质量的影响。所应用的预处理技术提高了朴素贝叶斯算法的分类精度。实验证明,使用自然语言处理和语言处理,情感分析的性能提高了5%,在使用的数据集上产生了73%的准确率。
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The Effects of Natural Language Processing on Big Data Analysis: Sentiment Analysis Case Study
The social networks are one of the main sources of big data. Continuously, it produce huge volume of variety types of data at high velocity rates. This huge volume of data contains valuable information that requires efficient and scalable analysis techniques to be extracted. Hadoop/MapReduce is considered the most suitable framework for handling big data because of its scalability, reliability and simplicity. One of the basic applications to extract valuable information from data is the sentiment analysis. The sentiment analysis studies peoples' opinion by classifying their written text into positive or negative polarity. In this work, a sentiment analysis method for analyzing a Twitter data set is analyzed. The method uses the Naive Bayes algorithm for classifying the text into positive and negative polarity. Several linguistic and NLP preprocessing techniques were applied on the data set. The aim of these preprocessing techniques is to study their effects on the quality of big data classification. The applied preprocessing techniques have achieved an enhancement in the classification accuracy of the Naive Bayes algorithm. The experiments prove that the performance of the sentiment analysis is enhanced by 5% using NLP and linguistic processing, yielding an accuracy of 73 % on the used data set.
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