Long Short-Term Memory Pattern Recognition in Currency Trading

Jai Pal
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Abstract

This study delves into the analysis of financial markets through the lens of Wyckoff Phases, a framework devised by Richard D. Wyckoff in the early 20th century. Focusing on the accumulation pattern within the Wyckoff framework, the research explores the phases of trading range and secondary test, elucidating their significance in understanding market dynamics and identifying potential trading opportunities. By dissecting the intricacies of these phases, the study sheds light on the creation of liquidity through market structure, offering insights into how traders can leverage this knowledge to anticipate price movements and make informed decisions. The effective detection and analysis of Wyckoff patterns necessitate robust computational models capable of processing complex market data, with spatial data best analyzed using Convolutional Neural Networks (CNNs) and temporal data through Long Short-Term Memory (LSTM) models. The creation of training data involves the generation of swing points, representing significant market movements, and filler points, introducing noise and enhancing model generalization. Activation functions, such as the sigmoid function, play a crucial role in determining the output behavior of neural network models. The results of the study demonstrate the remarkable efficacy of deep learning models in detecting Wyckoff patterns within financial data, underscoring their potential for enhancing pattern recognition and analysis in financial markets. In conclusion, the study highlights the transformative potential of AI-driven approaches in financial analysis and trading strategies, with the integration of AI technologies shaping the future of trading and investment practices.
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货币交易中的长短期记忆模式识别
本研究通过理查德-D-怀科夫(Richard D. Wyckoff)在 20 世纪初设计的框架--"怀科夫阶段"(Wyckoff Phases)--的视角深入分析金融市场。本研究以威可夫框架中的累积模式为重点,探讨了交易区间和二次测试阶段,阐明了它们在理解市场动态和识别潜在交易机会方面的重要意义。通过剖析这些阶段的复杂性,研究揭示了通过市场结构创造流动性的过程,为交易者如何利用这些知识预测价格变动并做出明智决策提供了启示。要有效检测和分析 Wyckoff 模式,就必须建立能够处理复杂市场数据的强大计算模型,其中空间数据最好使用卷积神经网络(CNN)进行分析,时间数据则使用长短期记忆(LSTM)模型。激活函数(如 sigmoid 函数)在决定神经网络模型的输出行为方面起着至关重要的作用。研究结果表明,深度学习模型在检测金融数据中的 Wyckoff 模式方面效果显著,凸显了其在增强金融市场模式识别和分析方面的潜力。总之,这项研究强调了人工智能驱动的方法在金融分析和交易策略中的变革潜力,人工智能技术的整合将塑造交易和投资实践的未来。
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