One of the standout tools in Sharemaestro is the Dynamic Momentum Indicator—a dynamic momentum indicator designed to spot shifts in market sentiment. Powered by a highly accurate machine learning model (test MSE ~0.0119; R-squared ~0.879, explaining about 88% of the variance in test data), it identifies early signals based on 17 key factors. The goal isn’t to predict every move but to highlight when something interesting is happening before the broader market catches on.
Unlike traditional momentum indicators that rely on rigid formulas, this system adapts dynamically to changing market conditions. It operates by analyzing historical price data and volume dynamics, recognizing patterns of accumulation and distribution. These are critical phases in a stock’s movement - accumulation (green signals) suggesting increased buying pressure and distribution (red signals) indicating heightened selling activity.
At the heart of this system is a proprietary machine learning model that continuously learns from past price behavior, refining its ability to detect emerging trends. Accumulation signals appear when the model identifies conditions historically linked to upward momentum - typically near the tail end of a downtrend, when institutions and informed investors start quietly buying in. Conversely, distribution signals emerge when the model spots subtle volume and price shifts that often precede a market peak, hinting that a stock’s strong run might be coming to an end.
The beauty of the Dynamic Momentum Indicator is that it cuts through the noise. It doesn’t follow hype or guess trends based on gut feeling - it works purely on data, helping investors stay ahead of the market by recognizing key inflection points before they become obvious. Whether you're looking for an early entry into a rising stock or a heads-up before momentum fades, this system provides a strategic edge without the guesswork.
Model Performance Overview:
Model Accuracy: The test MSE of ~0.0119 and an R-squared of ~0.879 indicate that the model explains about 88% of the variance in the test data, suggesting strong predictive performance.