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Oct 1, 2020 - Jupyter Notebook
#
interpretability
Here are 195 public repositories matching this topic...
A game theoretic approach to explain the output of any machine learning model.
A curated list of awesome open source libraries to deploy, monitor, version and scale your machine learning
machine-learning
data-mining
awesome
deep-learning
awesome-list
interpretability
privacy-preserving
production-machine-learning
mlops
privacy-preserving-machine-learning
explainability
responsible-ai
machine-learning-operations
ml-ops
ml-operations
privacy-preserving-ml
large-scale-ml
production-ml
large-scale-machine-learning
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Oct 1, 2020
A collection of infrastructure and tools for research in neural network interpretability.
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Sep 28, 2020 - Jupyter Notebook
Open
Interpret
4
A curated list of awesome machine learning interpretability resources.
python
data-science
machine-learning
data-mining
awesome
r
awesome-list
transparency
fairness
accountability
interpretability
interpretable-deep-learning
interpretable-ai
interpretable-ml
explainable-ml
xai
fatml
interpretable-machine-learning
iml
machine-learning-interpretability
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Sep 30, 2020
Model interpretability and understanding for PyTorch
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Sep 30, 2020 - Python
adocherty
commented
Nov 27, 2019
Description
Currently our unit tests are disorganized and each test creates example StellarGraph graphs in different or similar ways with no sharing of this code.
This issue is to improve the unit tests by making functions to create example graphs available to all unit tests by, for example, making them pytest fixtures at the top level of the tests (see https://docs.pytest.org/en/latest/
[ICCV 2017] Torch code for Grad-CAM
deep-learning
heatmap
grad-cam
convolutional-neural-networks
interpretability
iccv17
visual-explanation
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Mar 3, 2017 - Lua
Interpretability Methods for tf.keras models with Tensorflow 2.x
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Jul 26, 2020 - Python
Algorithms for monitoring and explaining machine learning models
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Oct 1, 2020 - Python
moDel Agnostic Language for Exploration and eXplanation
black-box
data-science
machine-learning
predictive-modeling
interpretability
explainable-artificial-intelligence
explanations
explainable-ai
explainable-ml
xai
model-visualization
interpretable-machine-learning
iml
dalex
explanatory-model-analysis
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Sep 28, 2020 - Python
A collection of anomaly detection methods (iid/point-based, graph and time series) including active learning for anomaly detection/discovery, bayesian rule-mining, description for diversity/explanation/interpretability. Analysis of incorporating label feedback with ensemble and tree-based detectors. Includes adversarial attacks with Graph Convolutional Network.
streaming
timeseries
time-series
lstm
generative-adversarial-network
gan
rnn
autoencoder
ensemble-learning
trees
active-learning
concept-drift
graph-convolutional-networks
interpretability
anomaly-detection
adversarial-attacks
explaination
anogan
unsuperivsed
nettack
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Sep 25, 2020 - Python
XAI - An eXplainability toolbox for machine learning
machine-learning
ai
evaluation
ml
artificial-intelligence
upsampling
bias
interpretability
feature-importance
explainable-ai
explainable-ml
xai
imbalance
downsampling
explainability
bias-evaluation
machine-learning-explainability
xai-library
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Oct 5, 2019 - Python
Examples of techniques for training interpretable ML models, explaining ML models, and debugging ML models for accuracy, discrimination, and security.
python
data-science
machine-learning
data-mining
h2o
gradient-boosting-machine
transparency
decision-tree
fairness
lime
accountability
interpretability
interpretable-ai
interpretable-ml
xai
fatml
interpretable
interpretable-machine-learning
iml
machine-learning-interpretability
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Oct 1, 2020 - Jupyter Notebook
Visualization toolkit for neural networks in PyTorch! Demo -->
visualization
machine-learning
deep-learning
cnn
pytorch
neural-networks
interpretability
explainability
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Aug 23, 2020 - Python
Public facing deeplift repo
sensitivity-analysis
saliency-map
interpretability
guided-backpropagation
interpretable-deep-learning
deeplift
integrated-gradients
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Aug 18, 2020 - Python
Interesting resources related to XAI (Explainable Artificial Intelligence)
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Aug 26, 2020 - R
Code for the TCAV ML interpretability project
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Sep 25, 2020 - Jupyter Notebook
H2O.ai Machine Learning Interpretability Resources
python
data-science
machine-learning
data-mining
h2o
xgboost
transparency
jupyter-notebooks
fairness
accountability
interpretability
interpretable-ai
interpretable-ml
explainable-ml
mli
xai
fatml
interpretable-machine-learning
iml
machine-learning-interpretability
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May 22, 2020 - Jupyter Notebook
Making decision trees competitive with neural networks on CIFAR10, CIFAR100, TinyImagenet200, Imagenet
pytorch
neural-networks
imagenet
image-classification
pretrained-models
decision-trees
cifar10
interpretability
pretrained-weights
cifar100
tiny-imagenet
explainability
neural-backed-decision-trees
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Jun 17, 2020 - Python
深度学习近年来关于神经网络模型解释性的相关高引用/顶会论文(附带代码)
nlp
awesome
computer-vision
deep-learning
neural-network
chainer
tensorflow
matlab
keras
torch
pytorch
awesome-list
papers
cvpr
iccv
iclr
interpretability
icml
eccv
neurips
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Sep 29, 2020
A Python package implementing a new model for text classification with visualization tools for Explainable AI
nlp
machine-learning
natural-language-processing
text-mining
data-mining
text-classification
machine-learning-algorithms
artificial-intelligence
document-classification
sentence-classification
interpretability
multilabel-classification
explainable-artificial-intelligence
interpretable-ml
xai
interpretable-machine-learning
document-categorization
early-classification
text-labeling
ss3-classifier
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Oct 1, 2020 - Python
Layer-wise Relevance Propagation (LRP) for LSTMs
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Apr 24, 2020 - Python
machine-learning
predictive-modeling
interactive-visualizations
interpretability
explainable-artificial-intelligence
explainable-ai
explainable-ml
xai
model-visualization
interpretable-machine-learning
iml
explainability
explanatory-model-analysis
explainable-machine-learning
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Sep 10, 2020 - R
A collection of research papers categorized into broad topics in federated learning.
machine-learning
privacy
computer-vision
semi-supervised-learning
transfer-learning
wireless-communication
distributed-optimization
interpretability
neural-architecture-search
federated-learning
continual-learning
vertical-federated-learning
non-iid
decentralized-federated-learning
hierarchical-federated-learning
adversarial-attack-and-defense
communication-efficiency
straggler-problem
computation-efficiency
incentive-mechanism
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Oct 1, 2020
Pytorch Implementation of recent visual attribution methods for model interpretability
pytorch
explanation
excitation
interpretability
saliency
interpretable-deep-learning
xai
visual-explanations
model-interpretability
excitation-backpropagation
patternnet
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Feb 27, 2020 - Jupyter Notebook
Explain & debug blackbox machine learning algorithms.
machine-learning
scikit-learn
transparency
blackbox
bias
interpretability
explainable-artificial-intelligence
interpretable-ai
explainable-ai
explainable-ml
xai
interpretable-machine-learning
machine-learning-interpretability
explainability
aws-sagemaker
explainx
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Oct 1, 2020 - Jupyter Notebook
Interpretable ML package for concise, transparent, and accurate predictive modeling (sklearn-compatible).
python
data-science
demo
machine-learning
tutorial
statistics
ai
scikit-learn
ml
artificial-intelligence
uncertainty
supervised-learning
interpretability
rule-learning
bayesian-rule-lists
optimal-classification-tree
rulefit
imodels
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Oct 1, 2020 - Jupyter Notebook
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May 29, 2020 - Jupyter Notebook
official implementation of "Visualization of Convolutional Neural Networks for Monocular Depth Estimation"
pytorch
depth-estimation
interpretability
monocular-depth-estimation
visualization-of-cnns
interpreting-cnns
explain-cnns
understanding-cnns
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Sep 21, 2020 - Python
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