Publication Date:
2023
abstract:
Recent advancements in Artificial Intelligence have been fueled by vast datasets, powerful computing
resources, and sophisticated algorithms. However, traditional Machine Learning models face limitations
in handling scarce data. Few-Shot Learning (FSL) offers a promising solution by training models on a
small number of examples per class. This manuscript introduces FXI-FSL, a framework for eXplainability
and Interpretability in FSL, which aims to develop post-hoc explainability algorithms and interpretableby-
design alternatives. A noteworthy contribution is the SIamese Network EXplainer (SINEX), a post-hoc
approach shedding light on Siamese Network behavior. The proposed framework seeks to unveil the
rationale behind FSL models, instilling trust in their real-world applications. Moreover, it emerges as a
safeguard for developers, facilitating models fine-tuning prior to deployment, and as a guide for end
users navigating the decisions of these models.
Iris type:
04.01 Contributo in Atti di convegno
Keywords:
Few-shot learning; Explainable Artificial Intelligence; Interpretable Machine Learning; Siamese networks
List of contributors:
Fedele, Andrea
Full Text:
Book title:
xAI-2023 - LB-D-DC xAI-2023 Late-breaking Work, Demos and Doctoral Consortium Joint Proceedings
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