Theoretical Topology-Driven Genetic Algorithm Learning: A Differential Approach to Phenotypic Emergence

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Abstract

This paper introduces a novel machine learning approach that merges concepts from genetic algorithms, topological mathematics, and neural networks to create a robust framework for understanding complex phenotypic expressions. Unlike conventional genetic algorithms that rely on direct gene-to-phenotype mappings, our method employs genetic topological structures as inputs that undergo transformational layers before expressing deterministic phenotypes. By leveraging gradient-based optimization with carefully engineered features capturing network properties, we demonstrate that complex traits emerge not from individual genes but from the structural interactions within a genetic topology that can differentiate without losing integrity. Our results show exceptional predictive performance with an R² score of 0.9969, confirming the model's ability to capture the relationship between topological genetic structures and phenotypic outcomes with unprecedented accuracy. The framework offers promising applications in biological modeling, drug discovery, and complex systems analysis where emergent properties are key to understanding system behaviors.

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