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.
翻译:由于传统的元学习技术缺乏解释性,以及透明度和公平性方面的缺陷,因此实现元学习的解释性至关重要。本文件提议,一个可解释的元学习框架,不仅可以解释元学习算法选择的建议结果,而且还可以更完整和准确地解释建议算法在具体数据集和各种业务情景方面的表现。这一框架的有效性和正确性已经通过广泛的实验得到了证明。