Variational autoencoder-based dimension reduction of Ichimoku features for improved financial market analysis

Seyyed Ali Hosseini , Seyyed Abed Hosseini , Mahboobeh Houshmand
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Abstract

Financial markets are complex and dynamic, and accurately predicting market trends is crucial for traders and financial analysts. Ichimoku-based features have gained significant attention in financial market analysis due to their ability to capture essential market signals and patterns. This significant compression retains essential patterns related to trends, support/resistance levels, and trading signals. The reduced dimensionality improves computational efficiency and could allow for more accurate predictive modeling by traders. However, real-world testing is needed because compressing data risks losing useful nuances. In this study, we utilize an autoencoder for the dimensionality reduction of Ichimoku-based features in financial market analysis. The autoencoder, a neural network architecture, compresses high-dimensional data into a lower-dimensional representation by learning important features and patterns. The experiments conducted on a Euro/Dollar market dataset spanning 1990, comprising 16 columns with Ichimoku features, reveal the remarkable reduction of dataset size from 2,269,500 to 756,375, equivalent to a decrease of 66.67 %. These results highlight the efficiency of the proposed approach in reducing the dimensionality of financial market data, suggesting its potential as a valuable tool for traders and financial analysts to predict market trends and make informed decisions in the financial markets.

基于变异自动编码器的一目均衡特征降维技术用于改进金融市场分析
金融市场复杂多变,准确预测市场趋势对交易者和金融分析师来说至关重要。基于 Ichimoku 的功能因其捕捉基本市场信号和模式的能力而在金融市场分析中备受关注。这种大幅压缩保留了与趋势、支撑/阻力位和交易信号相关的基本模式。维度的降低提高了计算效率,可以让交易者进行更准确的预测建模。然而,由于压缩数据有可能丢失有用的细微差别,因此需要进行实际测试。在本研究中,我们利用自动编码器对金融市场分析中基于 Ichimoku 的特征进行降维。自动编码器是一种神经网络架构,通过学习重要特征和模式,将高维数据压缩为低维表示。在一个跨度为 1990 年的欧元/美元市场数据集上进行的实验表明,该数据集的规模从 2,269,500 降至 756,375,相当于减少了 66.67%。这些结果凸显了所提出的方法在降低金融市场数据维度方面的效率,表明它有潜力成为交易员和金融分析师预测市场趋势并在金融市场上做出明智决策的宝贵工具。
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