Algorithmic Assurance: An Active Approach to Algorithmic Testing using Bayesian Optimisation

NeurIPS 2018 Shivapratap GopakumarSunil GuptaSantu RanaVu NguyenSvetha Venkatesh

We introduce algorithmic assurance, the problem of testing whether machine learning algorithms are conforming to their intended design goal. We address this problem by proposing an efficient framework for algorithmic testing... (read more)

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