Stock Market Prediction using Sequential Events

C. Vanipriya, A. Tomar, Gaurav Gupta, Namita Gandotra, S. N. Sheshappa, K. ThammiReddy
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引用次数: 1

Abstract

The stock market prediction is considered to be the most exigent and challenging problem in the domain of finance and time series prediction. In this paper we present problems pertaining stock market prediction and the models of prediction. Further, we also probe into the effect of global events and their influence on the stock prices. It was found that by incorporating the event information in the prediction model, the prediction's accuracy will be escalated. The overall scope of this work is to provide the predictive power to the investor in the web environment so that he could take informed decision of whether he can invest in the company in question, and yield high profits, by considering the effect of the events occurred. We have established that there is a huge impact of negative news on the stock and also we proved that our method outperformed SVM and NBC techniques.
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使用顺序事件预测股票市场
股票市场预测被认为是金融和时间序列预测领域中最紧迫和最具挑战性的问题。本文提出了有关股票市场预测和预测模型的一些问题。此外,我们还探讨了全球事件及其对股票价格的影响。结果表明,在预测模型中加入事件信息可以提高预测的精度。这项工作的总体范围是为网络环境中的投资者提供预测能力,以便他能够通过考虑事件发生的影响,对是否可以投资于有问题的公司做出明智的决定,并获得高额利润。我们已经确定了负面新闻对股票的巨大影响,并且我们也证明了我们的方法优于SVM和NBC技术。
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