Making Fairness an Intrinsic Part of Machine Learning Open Data Science Conference

#artificialintelligence 

Editor's Note: At ODSC Europe 2019, Sray Agarwal will conduct a workshop on fairness and accountability demonstrating how to detect bias and remove bias from ML models. The suitability of Machine Learning models is traditionally measured on its accuracy. A highly accurate model based on metrics like RMSE, MAPE, AUC, ROC, Gini, etc are considered to be high performing models. While such accuracy metrics important, are there other metrics that the data science community has been ignoring so far? The answer is yes--in the pursuit of accuracy, most models sacrifice "fairness" and "interpretability."

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