Creating Explainable AI With Rules

#artificialintelligence 

Explainability issues arise because machine learning outputs are numerical; deep neural networks are so opaque that users don't necessarily know which factor contributed to what aspect of the resulting score. There are several emergent techniques for increasing explainability and interpretability of machine learning results. After organizations gain insight into the black box of intricate machine learning models, the best way to explain those results to customers, regulators and legal entities is to translate them into rules that, by their very definition, offer full transparency for explainable AI. Rules can also highlight points of bias in models.

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