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#98 Interpretable Machine Learning

DataFramed

CHAPTER

Machine Learning Models - What Are the Common Diagnoses?

Bias, complexity and robustness are some of the common diagnoses you can make about a machine learning model that has suspect interpretability results. And how can toners remedy these diagnoses? You mention bias, and that's a big one. Fortunately, there are many bias mitigation methods. The remedy this on three levels. So you can remedy bias in the data. You can do it with the model or with the predict s themselves. For model consistency, as long as you monitor data drift and retrain frequently, you can tackle it. But it's also good practice to train using a time base. Cross validation with time is an important element,. Like for the typical like cat cats and dogs

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