InFusionLayer: a CFA-based ensemble tool to generate new classifiers for learning and modeling
arXiv cs.AI / 3/12/2026
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Key Points
- InFusionLayer is a machine learning architecture based on Combinatorial Fusion Analysis (CFA) that generates new classifiers by fusing a moderate set of base models for both unsupervised and supervised multiclassification tasks.
- The approach leverages CFA concepts such as rank-score characteristics (RSC) and cognitive diversity (CD) to enhance ensemble performance and model fusion.
- The project emphasizes practical usability across PyTorch, TensorFlow, and Scikit-learn workflows and demonstrates competitive results on computer vision datasets.
- The authors have open-sourced the code on GitHub to encourage community-driven development and broader adoption of CFA in ensemble learning.
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