Oleksandr Art'omenko / Profile
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With the right setup, you can get results like this.
From $3,000 to $11,000,000 in 6 months.
Excellent performance potential!
The indicator calculates and displays the Z-Score spread (cointegrated spread) between two financial instruments. It is based on the ordinary least squares (OLS) method to estimate the relationship coefficient between the prices of two symbols and then normalizes the spread distribution into Z-Score values. In a separate indicator window you will see: Main Z-Score line (red) Upper and lower thresholds (silver, dashed), set by the user When the thresholds are reached the indicator signals a
PCA Pairs Trader Pro is an Expert Advisor that, using the Principal Component Analysis (PCA) method , automatically identifies the optimal asset pair from a portfolio of five instruments and constructs a market‑neutral hedged position comprising two legs—LONG and SHORT. Unlike classic pair trading, which analyzes only a single pair, PCA Pairs Trader Pro performs a multidimensional statistical analysis, uncovers hidden patterns, and adapts to changing market conditions without manual adjustments
The 5% don’t trade—they extract profit. Which side are you on? Meet Your New Co-Pilot. Principal Component Analysis (PCA) is a quantitative mathematical approach that helps extract the most significant factors driving market behavior from large datasets. In this Expert Advisor, PCA analyzes historical price movements of multiple assets simultaneously to determine which common movements (i.e., principal components) influence their performance and which ones exhibit statistically anomalous
Dive into the world of highly accurate statistics and dynamic capital allocation with the advanced tool – PCA Arbitrage 3X . This indicator is based on Principal Component Analysis (PCA) , a method used by elite traders to identify hidden patterns in market movements. With the advanced Jacobi algorithm (ML) for calculating eigenvalues and eigenvectors, the system transforms complex historical data into clear signals for entry and position management. Applying this approach enables



