MetaDT: Meta Decision Tree with Class Hierarchy for Interpretable Few-Shot Learning
Baoquan Zhang, Hao Jiang, Xutao Li, Shanshan Feng, Yunming Ye, Rui Ye

TL;DR
MetaDT introduces an interpretable meta-learning decision tree framework for Few-Shot Learning, utilizing concept hierarchies and visual attention to clarify decision processes and improve performance on scarce data tasks.
Contribution
The paper proposes a novel meta-learning decision tree model, MetaDT, incorporating concept hierarchies and visual attention for enhanced interpretability in Few-Shot Learning.
Findings
MetaDT achieves superior performance compared to existing methods.
The model provides clear decision process visualizations.
MetaDT effectively addresses data scarcity in FSL.
Abstract
Few-Shot Learning (FSL) is a challenging task, which aims to recognize novel classes with few examples. Recently, lots of methods have been proposed from the perspective of meta-learning and representation learning. However, few works focus on the interpretability of FSL decision process. In this paper, we take a step towards the interpretable FSL by proposing a novel meta-learning based decision tree framework, namely, MetaDT. In particular, the FSL interpretability is achieved from two aspects, i.e., a concept aspect and a visual aspect. On the concept aspect, we first introduce a tree-like concept hierarchy as FSL prior. Then, resorting to the prior, we split each few-shot task to a set of subtasks with different concept levels and then perform class prediction via a model of decision tree. The advantage of such design is that a sequence of high-level concept decisions that lead up…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Machine Learning and Data Classification · Machine Learning and ELM
