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added molnar book authored Dec 12, 2019 by Maximilian Idahl's avatar Maximilian Idahl
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|A Survey of Methods for Explaining Black Box Models|Guidotti et al.|[arxiv](https://arxiv.org/abs/1802.01933)|
|Interpretability of Machine Learning Models and Representations: an Introduction|Adrien Bibal and Benoît Frénay|[pdf](https://www.elen.ucl.ac.be/Proceedings/esann/esannpdf/es2016-141.pdf)|
## Books
|Title|Author|link|
|-----|------|----|
|Interpretable ML: A Guide for Making Black Box Models Explainable.|Molnar|[link](https://christophm.github.io/interpretable-ml-book/)|
\ No newline at end of file
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  • Concept based Explanations
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  • Limitations of Interpretability
  • Neurips 2019 Interpretability Roundup
  • On the (In)fidelity and Sensitivity of Explanations
  • Re inforcement Learning for NLP and Text
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  • Visualizing and Measuring the Geometry of BERT
  • a benchmark for interpretability methods in deep neural networks
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