Ranked Soft Algebra for Genetic Systems: Toward Intelligent Trait Prediction
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In modern genetics, trait prediction and disease susceptibility modeling require tools capable of handling uncertainty, variability, and differential influence of biological and environmental factors. This paper introduces a novel framework based on \textbf{Ranked Soft Algebraic Structures}, specifically \textbf{Ranked Soft Groups (RSGs)}, to model and analyze complex genetic systems. Genes are modeled as group elements, while biological parameters such as environmental conditions, epigenetic factors, and lifestyle influences are treated as soft set parameters. A ranking function is employed to capture the relative importance or expression level of each parameter, enabling the system to represent weighted gene-environment interactions. The proposed structure allows for flexible classification, hierarchical trait modeling, and context-sensitive inference, providing a mathematically grounded approach for intelligent trait prediction. Applications in gene expression analysis, personalized medicine, and risk assessment are discussed, demonstrating the potential of ranked soft algebra in advancing genetic data interpretation. This work bridges algebraic modeling with biological complexity and offers a new direction in the intersection of soft computing and genomic.