Spin-offs in Indian Stock Market owing to Twitter Sentiments, Commodity Prices and Analyst Recommendations

B. G. Deshmukh, Premkumar S. Jain, Manasi S. Patwardhan, Viraj Kulkarni
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引用次数: 5

Abstract

These days the most crucial and commercially valuable information is becoming increasingly available on the World Wide Web. Companies which provide financial services are also making their products available on the web. As there are various types of web financial information sources, such as News Blogs, News Articles, Financial websites and Social Media, a lot of work is being carried out in the Stock Market domain using Data Analytics. This paper tries to find out if twitter sentiments and commodity prices help in predicting actual stock prices for top 50 companies listed on NIFTY at NSE, India, by using Natural Language Processing, Sentiment Analysis and Machine Learning techniques. The results show that, Twitter sentiment gives 70% accuracy while predicting the actual stock prices and the accuracy is improved by 15% when integrated with commodity prices for making company-wise predictions. Furthermore, we check if analyst's recommendations have more impact on stock market price movements for all companies listed on NSE as compared to tweeter public sentiments. The results show that, analyst's recommendations contribute more with 9% of the increase in prediction accuracy.
由于推特情绪,商品价格和分析师建议,印度股市分拆
如今,最重要和最具商业价值的信息越来越多地出现在万维网上。提供金融服务的公司也在网上提供他们的产品。由于有各种类型的网络金融信息源,如新闻博客,新闻文章,金融网站和社交媒体,在股票市场领域正在使用数据分析进行大量工作。本文试图通过使用自然语言处理、情感分析和机器学习技术,找出推特情绪和商品价格是否有助于预测印度NSE NIFTY上市的前50家公司的实际股价。结果表明,在预测实际股价时,Twitter情绪的准确率为70%,而在与商品价格相结合进行公司明智预测时,准确率提高了15%。此外,我们检验了分析师的建议是否比推特上的公众情绪对NSE所有上市公司的股价波动有更大的影响。结果表明,分析师的推荐对预测准确率的贡献更大,提高了9%。
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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