A general framework for constructing partial dependence (i.e., marginal effect) plots from various types machine learning models in R.
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Updated
Jul 18, 2022 - R
A general framework for constructing partial dependence (i.e., marginal effect) plots from various types machine learning models in R.
Simplicial Homology Global Optimization
This repository was created as an implementation approach for a project on "Watermarking Deep Neural Networks".
📄 [Talk] OFFZONE 2022 / ODS Data Halloween 2022: Black-box attacks on ML models + with use of open-source tools
Tiny Tutorial on https://arxiv.org/abs/1703.04730
Black-box Few-shot Knowledge Distillation
Generative Adversarial Network (GAN) that can produce tabular samples given datasets, and build a general generative model that receives a black-box as a discriminator and can still generate samples from the tabular data.
Getting explanations for predictions made by black box models.
Using LIME and SHAP for model interpretability of Machine Learning Black-box models.
Interpreting Categorical Data Classifiers using Explanation-based Locality
A Global Model-Agnostic Rule-Based XAI Method based on Parameterised Event Primitives for Time Series Classifiers
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