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Stock Market Classification Model Using Sentiment Analysis on Twitter Based on Hybrid Naive Bayes Classifiers

机译:基于混合朴素贝叶斯分类器的Twitter情绪分析股市分类模型

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Sentiment analysis has become one of the most popular process to predict stock market behaviour based on consumer reactions. Concurrently, the availability of data from Twitter has also attracted researchers towards this research area. Most of the models related to sentiment analysis are still suffering from inaccuracies. The low accuracy in classification has a direct effect on the reliability of stock market indicators. The study primarily focuses on the analysis of the Twitter dataset. Moreover, an improved model is proposed in this study; it is designed to enhance the classification accuracy. The first phase of this model is data collection, and the second involves the filtration and transformation, which are conducted to get only relevant data. The most crucial phase is labelling, in which polarity of data is determined and negative, positive or neutral values are assigned to people opinion. The fourth phase is the classification phase in which suitable patterns of the stock market are identified by hybridizing Naive Bayes Classifiers (NBCs), and the final phase is the performance and evaluation. This study proposes Hybrid Naive Bayes Classifiers (HNBCs) as a machine learning method for stock market classification. The outcome is instrumental for investors, companies, and researchers whereby it will enable them to formulate their plans according to the sentiments of people. The proposed method has produced a significant resu it has achieved accuracy equals 90.38%.
机译:情绪分析已成为根据消费者反应来预测股市行为的最受欢迎的过程之一。同时,来自Twitter的数据可用性也吸引了研究人员前往该研究领域。与情绪分析有关的大多数模型仍存在误差。分类的准确性低直接影响着股票市场指标的可靠性。该研究主要侧重于Twitter数据集的分析。此外,本研究提出了一种改进的模型。它旨在提高分类准确性。该模型的第一阶段是数据收集,第二阶段涉及过滤和转换,仅进行过滤和转换即可获取相关数据。最关键的阶段是标记,其中确定数据的极性并将负,正或中性值分配给人们。第四阶段是分类阶段,其中通过混合朴素贝叶斯分类器(NBC)来确定合适的股市模式,最后一个阶段是绩效和评估。这项研究提出了混合朴素贝叶斯分类器(HNBC)作为股票市场分类的机器学习方法。结果对于投资者,公司和研究人员而言至关重要,它将使他们能够根据人们的情感来制定计划。所提出的方法产生了重要的结果。它已经达到了90.38%的精度。

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