Multi-objective Genetic Programming with Multi-view Multi-level Feature for Enhanced Protein Secondary Structure Prediction
arXiv cs.LG / 3/16/2026
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Key Points
- The paper introduces MOGP-MMF, a multi-objective genetic programming framework that reframes protein secondary structure prediction (PSSP) as an automated feature selection and fusion optimization problem.
- It employs a multi-view, multi-level representation (evolutionary, semantic, and structural views) and an enhanced operator set to evolve both linear and nonlinear feature fusion functions, capturing high-order interactions while managing fusion complexity.
- A knowledge transfer mechanism leverages prior evolutionary experience to guide the population toward global optima, addressing the accuracy–complexity trade-off.
- Experimental results on seven benchmark datasets show improved Q8 accuracy and structural integrity, plus a diverse set of non-dominated solutions; the authors also provide GitHub code for reproducibility.
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