Machine Learning Algorithmic Trading With Random Forests

Machine Learning: Algorithmic Trading With Random Forests
MP4 | Video: h264, 1920×1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 2.53 GB | Duration: 3h 30m
A comprehensive guide in developing Random Forest Models and Expert advisors
What you’ll learn
Extract, clean, and structure years of historical intraday market data natively in MQL5 for machine learning analysis.
Engineer predictive mathematical features from standard price data to highlight volatility shifts and institutional liquidity.
Understand the core mechanics of decision trees and combine them into a stable Random Forest consensus model.
Program a fully automated MQL5 Expert Advisor that utilizes dynamic position sizing based on real-time probabilities.
Requirements
A basic understanding of the MQL5 programming language.
Description
Every single day, financial markets generate millions of data points. For the average retail trader, this data is overwhelming, leading them to rely on simple, lagging indicators that fail to capture the true complexity of price action.But in the world of quantitative finance, data is not overwhelming-it is the foundational building block for predictive modelling.Hello everyone, in this course, I am going to teach you how to transition from traditional rule-based trading to dynamic, data-driven algorithmic execution using Machine Learning natively in MQL5.Specifically, we are going to dive deep into one of the most robust and versatile machine learning algorithms available: The Random Forest.This course is highly informative and strictly project-based. I have structured the curriculum to give you a deep and practical understanding of how machine learning models actually process market data. Here is exactly what you will learn how to build:We will cover Historical Data Mining & Preprocessing were we will write MQL5 scripts to extract years of intraday market data, clean it, and structure it for machine learning analysis.We shall put emphasis on exhaustive Feature Engineering, where you will learn how to mathematically transform standard price data into complex, predictive features that highlight volatility shifts, momentum exhaustion, and institutional liquidity.You will learn how to build Decision Trees & use them for Ensemble Learning by breaking down the core mechanics of how decision trees split data, and how combining hundreds of these trees into a "Random Forest" prevents overfitting and creates a highly stable consensus model.Finally, we will integrate our Random Forest into a fully automated MQL5 Expert Advisor. You will learn how to program dynamic position sizing, adjusting your capital exposure based on the underlying states of the markets.Whether you are an experienced algorithmic trader looking to add machine learning to your toolkit, or an MQL5 developer ready to move beyond basic indicators, this course is packed with a lot of practical value. I will walk you through the logic, the mathematics, and every single line of code.Expand your quantitative skillset and learn how to engineer intelligent trading systems. So click that Enroll now, and join me into the random forest.
Anyone willing to learn how to develop Random Forest machine models with MQL5
https://rapidgator.net/file/2e67d304f056f5841656054425ed3bed/Machine_Learning_Algorithmic_Trading_With_Random_Forests.part3.rar.html
https://rapidgator.net/file/d0ba8b55eda922922e7363f0c77a4855/Machine_Learning_Algorithmic_Trading_With_Random_Forests.part2.rar.html
https://rapidgator.net/file/22a2645b06c44b927e8957532e33bf46/Machine_Learning_Algorithmic_Trading_With_Random_Forests.part1.rar.html
