LukasKarner/IT4PXAI
This is the repository of my master's thesis "Information theory for Personalised Explainable AI" where I examine 1) output encoding occurring in information-theory-based explanations, and 2) using information theory to create user-adaptive explanations.
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Language
Jupyter Notebook
License
GPL-3.0
Last pushed
Mar 21, 2026
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