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Proper Machine Learning Explanations through LIME, using the OptiLIME framework
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Total time needed:
~3 hours
See details (learning objective, target audience, etc)...
Learning Objectives
With this list you will learn approaches to improve the explanations generated with LIME
Potential Use Cases
Improve LIME explanations
Target Audience
INTERMEDIATE
People with basic knowledge on interpretable machine learning
Go through the following
annotated items
in order
:
VIDEO
1. Proper Machine Learning Explanations through LIME using OptiLIME framework
Can we optimize the LIME explanations?
60 minutes
PAPER
2. Understand explaining the predictions of any machine learning models
Can we explain blackbox models?
Are the explanations useful for evaluating the model ?
30 minutes
VIDEO
3. Understand local interpretable model-agnostic explanations (LIME)
Can we explain blackbox models?
25 minutes
PAPER
4. How can we deal with instability associated with LIME explanations?
Can explanations generated by a locally interpretable model provide consistent results for the same instance?
30 minutes
PAPER
5. Understand generating robust and stable explanations
Can we generate explanations robust to data shifts?
Can we generate stable explanations?
30 minutes
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