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Achievements

Overview

Objective Goal

Our primary aim was to harness the power of divergence theory and fractal characteristics to significantly enhance pattern recognition and classification tasks within machine learning.

1

🔍 Fractal-based KL Divergence

In our initial study, I introduced a fractal-based KL divergence, blending the principles of KL divergence with the process of fractal. This approach was applied to real-world classification tasks and pattern recognition.

2

📊 High-Order Fractal Entropy and Divergence

As an extension of my initial work, I developed a high-order fractal entropy. This proposed entropy highlights the optimal fractal time for an information source, ensuring a more reasonable and accurate information fusion process. In its practical application, our method was rigorously tested on various complex datasets, consistently outperforming other state-of-the-art methodologies.

3

🌡️ Application in Health Systems

Building upon the foundational concepts of multiscale entropy (MSE), our research delved deeper into the health domain. We embarked on a journey to refine entropy and divergence measures, aiming to enhance their application in health diagnostics and insights, particularly in the context of cardiac interbeat interval time series.