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Extraction-Based Text Summarization and Sentiment Analysis of Online Reviews Using Hybrid Classification Method

机译:混合分类法的基于评论的文本摘要和在线评论情感分析

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The field of sentiment mining and text summarization has evoked the interest of many scientists and researchers over the last few years, as the textual data has become useful for many real-world applications and challenges. Sentiment Analysis and Opinion Mining is the most popular field for analyzing and discovering insights from text data from various sources, such as Facebook, Twitter and Amazon, Zomato, etc. It involves a computational study of an individual's behavior in terms of buying interest and then extracting his opinions on the business entity of the company. This entity can be viewed as an event, individual, blog post or product experience. Scholars in the fields of natural language processing, data mining, machine learning and others have tested a variety of methods for automating sentiment analysis. These reviews are increasing on a daily basis, as a result of which the summarization of the reviews plays a role where the text is summarized as needed, which provides useful information from a large number of reviews. It is very difficult for a human being to extract and interpret useful data from a very large file. In the text analysis, the value of sentences is decided on the basis of the linguistic characteristics of sentences. This paper provides a comprehensive review of current and past work on sentiment analysis and text description. In this research work, a new hybrid classification system is proposed based on coupling classification methods using arcing classifiers and their quality is evaluated within terms of accuracy. The Classifier Collection was constructed using Naïve Bayes (NB), Support Vector Machine (SVM) and Genetic Algorithm (GA). The proposed work consists of a comparative study of the efficacy of the ensemble technique for sentiment classification. The feasibility and benefits of the proposed approaches are demonstrated by a restaurant review that is widely used in the field of sentiment classification. A wide range of comparative studies is performed and, ultimately, some in-depth analysis is addressed and conclusions are drawn on the efficacy of the ensemble technique for sentiment classification.
机译:在过去的几年中,情感文本挖掘和文本摘要领域引起了许多科学家和研究人员的兴趣,因为文本数据已对许多实际应用和挑战变得有用。情感分析和观点挖掘是最流行的领域,用于分析和发现来自Facebook,Twitter和Amazon,Zomato等各种来源的文本数据的见解。它涉及对个人行为的计算研究,包括购买兴趣,然后提取他对公司业务实体的意见。可以将此实体视为事件,个人,博客文章或产品体验。自然语言处理,数据挖掘,机器学习和其他领域的学者已经测试了多种自动进行情感分析的方法。这些评论每天都在增加,其结果是,评论的摘要在根据需要对文本进行汇总的过程中起着一定的作用,这可以从大量评论中提供有用的信息。对于人类来说,从非常大的文件中提取和解释有用的数据非常困难。在文本分析中,句子的价值是根据句子的语言特性决定的。本文对情感分析和文本描述的当前和过去的工作进行了全面回顾。在这项研究工作中,基于电弧分类器的耦合分类方法,提出了一种新的混合分类系统,并在准确性的范围内对其质量进行了评估。分类器集合是使用朴素贝叶斯(NB),支持向量机(SVM)和遗传算法(GA)构建的。拟议的工作包括对情感分类的集成技术功效的比较研究。餐馆评论证明了所提出方法的可行性和益处,该餐馆评论广泛用于情感分类领域。进行了广泛的比较研究,最终,进行了一些深入的分析,并得出了整体技术对情感分类的功效的结论。

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