Interpretable Few-Shot Image Classification via Prototypical Concept-Guided Mixture of LoRA Experts
Zhong Ji, Rongshuai Wei, Jingren Liu, Yanwei Pang, Jungong Han

TL;DR
This paper introduces a novel few-shot image classification framework that combines prototypical concept learning with a mixture of LoRA experts to improve interpretability and performance in data-scarce scenarios.
Contribution
It proposes a Mixture of LoRA Experts for efficient adaptation, cross-module concept guidance, multi-level feature preservation, and a geometry-aware discrimination loss for enhanced interpretability and accuracy.
Findings
Outperforms existing SEMs on six benchmarks with 4.2%-8.7% gains
Achieves higher accuracy in 5-way 5-shot classification
Enhances interpretability through disentangled concept representations
Abstract
Self-Explainable Models (SEMs) rely on Prototypical Concept Learning (PCL) to enable their visual recognition processes more interpretable, but they often struggle in data-scarce settings where insufficient training samples lead to suboptimal performance.To address this limitation, we propose a Few-Shot Prototypical Concept Classification (FSPCC) framework that systematically mitigates two key challenges under low-data regimes: parametric imbalance and representation misalignment. Specifically, our approach leverages a Mixture of LoRA Experts (MoLE) for parameter-efficient adaptation, ensuring a balanced allocation of trainable parameters between the backbone and the PCL module.Meanwhile, cross-module concept guidance enforces tight alignment between the backbone's feature representations and the prototypical concept activation patterns.In addition, we incorporate a multi-level feature…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Domain Adaptation and Few-Shot Learning · Advanced Neural Network Applications
