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FIND:Explainable Framework for Meta-learning

2022-05-20 02:38:28
Xinyue Shao, Hongzhi Wang, Xiao Zhu, Feng Xiong

Abstract

Meta-learning is used to efficiently enable the automatic selection of machine learning models by combining data and prior knowledge. Since the traditional meta-learning technique lacks explainability, as well as shortcomings in terms of transparency and fairness, achieving explainability for meta-learning is crucial. This paper proposes FIND, an interpretable meta-learning framework that not only can explain the recommendation results of meta-learning algorithm selection, but also provide a more complete and accurate explanation of the recommendation algorithm's performance on specific datasets combined with business scenarios. The validity and correctness of this framework have been demonstrated by extensive experiments.

Abstract (translated)

URL

https://arxiv.org/abs/2205.10362

PDF

https://arxiv.org/pdf/2205.10362.pdf


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