使用机器学习算法预测股票市场:分类研究

Meghna Misra, Ajaykumar Yadav, Harkiran Kaur
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引用次数: 18

摘要

预测股市不仅是交易员感兴趣的领域,也是计算机工程师感兴趣的领域。预测主要可以通过两种方式进行,一种是通过使用以前的股票数据,另一种是通过分析社交媒体信息。由于股票市场模式的变化,基于先前数据的预测缺乏准确性。因此,一些领域可能由于在某些股票中不重要或无法获得数据而被遗漏。例如,一些模型可能需要“回报率”作为股票预测的参数,但可用的数据可能没有。另一方面,仅根据收益率进行预测的模型可能会发现开盘价和收盘价是无关紧要的参数。数据必须经过清理才能用于预测。本文着重对迄今为止不同领域中用于预测分析的各种方法进行分类,以及它们的缺点。此外,本文的作者还提出了一些改进建议,可以纳入这些方法以获得更好的准确性。
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Stock Market Prediction using Machine Learning Algorithms: A Classification Study
Predicting the stock market has been an area of interest not only for traders but also for the computer engineers. Predictions can be performed by mainly two means, one by using previous data available against the stock and the other by analysing the social media information. Predictions based on previous data lack accuracy due to changing patterns in the stock market al.so, some fields might have been missed due to their insignificance in some stocks or unavailability of data. For example, some models may require ‘return rate’ as a parameter for stock prediction, but the available data might not have it. On the other hand, a model predicting only on the basis of the return rate may find opening and closing price to be insignificant parameters. The data has to be cleansed before it can be used for predictions. This paper focuses on categorising various methods used for predictive analytics in different domains to date, their shortcomings. Further, the authors of this paper have suggested some improvements that could be incorporated to achieve better accuracy in these approaches.
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