利用极坐标图和等高线映射来感知金融市场的模式和趋势

Tsung-Nan Chou
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引用次数: 0

摘要

近年来,各行各业的中小企业都面临着大数据分析的挑战,因为他们的业务活动每天都会产生大量的数据。这些公司大多无法基于如此高维、海量的数据实现高效的数据分析和决策。通常,如果业务公司直接使用原始数据来训练、验证和测试其模型,则分析模型的性能将受到限制。因此,为了消除数据分析的复杂性和计算量,需要对原始数据进行有效的转换,降低数据的维数。在本研究中,将非时间数据转换为二维极坐标图以供进一步分析。另一方面,将时间数据与截面数据相结合,映射到另一个二维轮廓图,该轮廓图从其相应的三维数据剖面中导出并切片。这两种转换策略都被转换成不同的几何形状描述符和不变矩,并实现了三种传统的机器学习方法来评估它们的预测性能。此外,还采用基于无监督学习算法的自编码器神经网络来评估预测精度,并与传统方法进行比较。实验结果表明,自编码器神经网络达到了最高的精度,而其他方法被认为比低于机会的精度差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Perception of patterns and trends in financial markets using polar graph and contour mapping
In recent years, small and medium businesses across different industries have confronted the challenges of big data analysis since a huge amount of data being generated daily by their business activities. Most of these companies are unable to achieve efficient data analysis and decision-making based on such a high dimensional and voluminous data. Normally, the performance of analytic models will be limited if the business companies directly use the original data to train, verify and test their models. Therefore, to eliminate the complexity and computation of data analysis, the raw data requires an effective transformation to reduce the dimensionality of data. In this study, non-temporal data are transformed to a two-dimensional polar graph for further analysis. On the other hand, the temporal data combined with cross-sectional data are mapped to another two-dimensional contour graph that derived and sliced from their corresponding three-dimensional data profile. Both the transforming strategies are converted and fulfilled with various geometric shape descriptors and invariant moments, and three conventional machine-learning approaches are implemented to evaluate their predictive performance. In addition, an autoencoder neural network based on unsupervised learning algorithm is also employed to evaluate predictive accuracy in comparison with the conventional approaches. The experiment results suggested that the autoencoder neural network achieved the highest accuracy, and the rest approaches were considered worse than the below-chance accuracy.
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