Interpretable Machine Learning: Difference between revisions

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(Created page with "== Introduction == Interpretable Machine Learning (IML) is a subfield of machine learning that focuses on creating models that provide understandable and interpretable results. Unlike black-box models that provide no insight into their internal workings, interpretable models allow users to understand, trust, and potentially manipulate the model's decision-making process. <div class='only_on_desktop image-preview'><div class='image-preview-loader'><...")
 
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Interpretable Machine Learning (IML) is a subfield of [[Machine Learning|machine learning]] that focuses on creating models that provide understandable and interpretable results. Unlike black-box models that provide no insight into their internal workings, interpretable models allow users to understand, trust, and potentially manipulate the model's decision-making process.
Interpretable Machine Learning (IML) is a subfield of [[Machine Learning|machine learning]] that focuses on creating models that provide understandable and interpretable results. Unlike black-box models that provide no insight into their internal workings, interpretable models allow users to understand, trust, and potentially manipulate the model's decision-making process.


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[[Image:Detail-147687.jpg|thumb|center|A computer screen displaying a machine learning model with clear, interpretable results.]]


== Importance of Interpretability ==
== Importance of Interpretability ==
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