股票市场机会感知的预测分析框架

S. Mittal, C. K. Nagpal
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引用次数: 0

摘要

原始价格数据的大容量、随机波动和干扰模式导致股价预测的过拟合。因此,这一领域的研究论文受到多重限制:预测周期很短,从一天到一周,只考虑少数股票而不是整个股市频谱,探索更合适的机器学习算法。通过克服原始数据的问题,可以克服这些限制。提议的工作使用有监督的机器学习方法,对从输入数据的要点中获得的统计学习宏观特征进行学习,没有原始数据的缺点,以预测几乎所有NIFTY50股票未来一个半月的价格区间。将预测波段与实际股票价格波段进行比较,以检验其精度。所获得的激励结果用于使用模糊逻辑自动感知机会以做出买入/卖出/等待决策。结果表明,该价格区间具有较好的准确度和合理的公差。通过使用机会控制器k,预测波段的货币化能力也得到了增强。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A predictive analytics framework for opportunity sensing in stock market
Large volume, random fluctuations and distractive patterns in raw price data lead to overfitting in stock price prediction. Thus research papers in this area suffer from multiple limitations: Very short prediction period from one day to one week, consideration of few stocks only instead of whole of stock market spectrum, exploration of more suitable machine learning algorithms. By overcoming the problems of raw data these limitations can be conquered. Proposed work uses a supervised machine learning approach on statistically learned macro features obtained from gist of input data, free from raw data drawbacks, to predict the price band for the upcoming month and a half for almost all NIFTY50 stocks. The predicted bands are tested for precision in comparison with actual stock price bands. Motivating outcomes so obtained were used for automated sensing of opportunity to make buy / sell / wait decision using fuzzy logic. The results show that the price bands are quite accurate with reasonable tolerance. Monetization capability of the predicted bands has also been enhanced by using an opportunity controller k.
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来源期刊
Kuwait Journal of Science & Engineering
Kuwait Journal of Science & Engineering MULTIDISCIPLINARY SCIENCES-
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