基于在线核自适应滤波的收盘价预测

S. Mishra, Tanveer Ahmed, V. Mishra
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引用次数: 1

摘要

股票价格预测是一项具有挑战性且乏味的任务。尽管针对该问题已经开发了各种方法,但对精确和低延迟方法的研究却没有得到太多关注。此外,传统的回归和分类方法需要面向批处理的独立训练。因此,它们不适合用于股票价格预测,因为我们所处理的数据是非平稳的,有太多的汇合因素。本文提出了一种基于在线学习的核自适应滤波方法用于股票价格预测。具体来说,我们使用了十种不同的核过滤算法,并提出了一种预测下一个收盘价的方法。以NSE指数的50只股票为对象进行了1分钟、5分钟、10分钟、15分钟、20分钟、30分钟、1小时、1天等9个时间窗口的试验。对此,这里应该指出的是,本文是第一个通过观察这些不同的时间窗口来分析股票的文章。此外,实证结果表明,核自适应滤波也是高频交易的有效工具。本文的工作显示了核自适应滤波类算法相对于经典回归和分类方法的预测能力和优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Close-Price Prediction using Online Kernel Adaptive Filtering
Stock price prediction is a challenging and a tedious task. Although various methods have been developed for issue, an investigation on accurate and low latency methods is not given much attention. In addition, traditional regression and classification methods require batch-oriented and independent training. Thus, they are not suitable for stock price prediction as the data we are working with is non-stationary with so many confluencing factors. In this paper, we propose an online learning-based kernel adaptive filtering approach for stock price prediction. Specifically, we work with ten different kernel filtering algorithms and propose a method to predict the next closing price. The idea is tested on fifty stocks of the NSE index with nine different time-windows such as one-minute, five-minutes, ten-minutes, fifteen-minutes, twenty-minutes, thirty-minutes, one hour, and one day. To this, it should be noted here that this article is the first wherein a stock is analyzed by looking at these different time windows. Moreover, the empirical results suggest that Kernel adaptive filtering is an efficient tool for high-frequency trading as well. The work presented here shows the predictive capability and superiority of the kernel adaptive filtering class of algorithms over classical regression and classification methods.
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