Codebase for "Demystifying Black-box Models with Symbolic Metamodels", NeurIPS 2019.
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Updated
Oct 26, 2019 - Jupyter Notebook
Codebase for "Demystifying Black-box Models with Symbolic Metamodels", NeurIPS 2019.
List of papers in the area of Explainable Artificial Intelligence Year wise
Experiments to explain entity resolution systems
A project in an AI seminar
TS4NLE is converts the explanation of an eXplainable AI (XAI) system into natural language utterances comprehensible by humans.
(WWW'21) ATON - an Outlier Interpreation / Outlier explanation method
Comprehensible Convolutional Neural Networks via Guided Concept Learning
[TMLR] "Can You Win Everything with Lottery Ticket?" by Tianlong Chen, Zhenyu Zhang, Jun Wu, Randy Huang, Sijia Liu, Shiyu Chang, Zhangyang Wang
Code for ER-Test, accepted to the Findings of EMNLP 2022
The mechanisms behind image classification using a pretrained CNN model in high-dimensional spaces 🏞️
ML Pipeline. Detail documentation of the project in README. Click on actions to see the script.
Domestic robot example configured for the multi-level explainability framework
We introduce XBrainLab, an open-source user-friendly software, for accelerated interpretation of neural patterns from EEG data based on cutting-edge computational approach.
A framework for evaluating natural language explanations of neurons.
Transform the way you work with boolean logic by forming them from discrete propositions. This enables you to dynamically generate custom output, such as providing explanations about the causes behind a result.
tornado plots for model sensitivity analysis
CAVES-dataset accepted at SIGIR'22
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