
#98 Interpretable Machine Learning
DataFramed
Understanding Interpretable Machine Learning
This chapter emphasizes the critical need for interpretable machine learning to build trust and accountability in model-driven decision-making. It explores the challenges of black box models, the complex terminology surrounding AI such as responsible and explainable AI, and the ethical implications of bias in data. Additionally, the discussion highlights the importance of fairness, transparency, and the shifting mindset required to actively improve social outcomes through better model design.
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