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Jul 23, 2021 - Jupyter Notebook
#
explainability
Here are 111 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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Jul 15, 2021
Open
Interpret
5
python
machine-learning
transparency
lime
interpretability
ethical-artificial-intelligence
explainable-ml
shap
explainability
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Jul 19, 2021 - Jupyter Notebook
Power Tools for AI Engineers With Deadlines
home-automation
data-science
time-series
collaboration
cybersecurity
cold-start
autonomous-vehicles
hacktoberfest
automl
avionics
human-in-the-loop
predictive-maintenance
ensemble-machine-learning
datascience-environment
explainability
industrial-iot
trustworthy-datascience
energy-optimization
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Jul 16, 2021 - Jupyter Notebook
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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Jul 20, 2021 - Python
Visualization toolkit for neural networks in PyTorch! Demo -->
visualization
machine-learning
deep-learning
cnn
pytorch
neural-networks
interpretability
explainability
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Jun 30, 2021 - HTML
[CVPR 2021] Official PyTorch implementation for Transformer Interpretability Beyond Attention Visualization, a novel method to visualize classifications by Transformer based networks.
deep-learning
vit
bert
perturbation
attention-visualization
bert-model
explainability
attention-matrix
vision-transformer
transformer-interpretability
visualize-classifications
cvpr2021
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May 19, 2021 - 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 3, 2021 - Python
[CVPRW 2020] Official implementation of Score-CAM in Pytorch
heatmap
grad-cam
pytorch
cam
saliency
class-activation-maps
cnn-visualization-technique
gradcam
gradient-free
cnn-visualization
visual-explanations
explainability
score-cam
scorecam
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Jul 6, 2021 - Python
nushib
commented
Jun 2, 2021
Suggested by Melanie Fernandez Pradier:
“Given a model trained on certain features, is there any way I can include additional features (not used in training) but that I want to monitor in the error analysis?"
This is currently possible by enriching the set of input features to the dashboard after the inference step. However, will need further support on the UI side to clearly mark features t
Explainable AI framework for data scientists. Explain & debug any blackbox machine learning model with a single line of code.
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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Feb 7, 2021 - Jupyter Notebook
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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Jul 13, 2021 - R
Training & evaluation library for text-based neural re-ranking and dense retrieval models built with PyTorch
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Jul 13, 2021 - Python
Official PyTorch implementation for Generic Attention-model Explainability for Interpreting Bi-Modal and Encoder-Decoder Transformers, a novel method to visualize any Transformer-based network. Including examples for DETR, VQA.
visualization
transformers
transformer
vqa
clip
interpretability
explainable-ai
explainability
detr
lxmert
visualbert
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Jul 22, 2021 - Jupyter Notebook
Explainability techniques for Graph Networks, applied to a synthetic dataset and an organic chemistry task. Code for the workshop paper "Explainability Techniques for Graph Convolutional Networks" (ICML19)
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Nov 12, 2019 - Jupyter Notebook
Using / reproducing ACD from the paper "Hierarchical interpretations for neural network predictions" 🧠 (ICLR 2019)
python
data-science
machine-learning
statistics
deep-neural-networks
ai
deep-learning
neural-network
jupyter-notebook
ml
pytorch
artificial-intelligence
convolutional-neural-networks
acd
interpretation
iclr
interpretability
feature-importance
explainable-ai
explainability
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Mar 14, 2021 - Jupyter Notebook
Causal Explanation (CXPlain) is a method for explaining the predictions of any machine-learning model.
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Aug 22, 2020 - Python
Code for using CDEP from the paper "Interpretations are useful: penalizing explanations to align neural networks with prior knowledge" https://arxiv.org/abs/1909.13584
python
data-science
machine-learning
ai
deep-learning
neural-network
jupyter-notebook
ml
pytorch
artificial-intelligence
convolutional-neural-network
fairness
interpretability
cdep
feature-importance
recurrent-neural-network
interpretable-deep-learning
explainable-ai
explainability
fairness-ml
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Mar 22, 2021 - Jupyter Notebook
security
attacks
interpretability
adversarial-learning
adversarial-machine-learning
adversarial-examples
adversarial-attacks
model-explanation
interpretable-deep-learning
interpretable-ai
explainable-ai
explainable-ml
xai
interpretable-machine-learning
iml
explainability
responsible-ai
adversarial-defense
adversarial-xai
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Jul 17, 2021
Contextual AI adds explainability to different stages of machine learning pipelines - data, training, and inference - thereby addressing the trust gap between such ML systems and their users. It does not refer to a specific algorithm or ML method — instead, it takes a human-centric view and approach to AI.
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Mar 25, 2021 - Jupyter Notebook
Amazon SageMaker Solution for explaining credit decisions.
machinelearning
financial-analysis
credit-scoring
explainable-ai
explainable-ml
sagemaker
loan-prediction-analysis
shapley
explainability
aws-sagemaker
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Jun 2, 2021 - Python
For calculating global feature importance using Shapley values.
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Jul 19, 2021 - Python
Can we use explanations to improve hate speech models? Our paper accepted at AAAI 2021 tries to explore that question.
detection
lstm
offensive
bias
hatespeech
hate-speech
interpretable-deep-learning
attention-lstm
bert-model
explainability
bert-fine-tuning
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May 25, 2021 - Python
The implementation of “A Capsule Network for Recommendation and Explaining What You Like and Dislike”, Chenliang Li, Cong Quan, Li Peng, Yunwei Qi, Yuming Deng, Libing Wu, https://dl.acm.org/citation.cfm?doid=3331184.3331216
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Feb 1, 2020 - Python
Modular Python Toolbox for Fairness, Accountability and Transparency Forensics
machine-learning
transparency
fairness
accountability
interpretability
interpretable-ai
explainable-ai
explainability
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Jan 25, 2021 - Python
XAI Tutorial for the Explainable AI track in the ALPS winter school 2021
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Feb 12, 2021 - Jupyter Notebook
A lightweight implementation of removal-based explanations for ML models.
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Jul 19, 2021 - Python
Data generator for Arena - interactive XAI dashboard
ema
interpretability
xai
iml
explainability
explanatory-model-analysis
axplainable-artificial-intelligence
interactive-xai
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Sep 30, 2020 - R
Zennit is a high-level framework in Python using PyTorch for explaining/exploring neural networks using attribution methods like LRP.
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Jul 6, 2021 - Python
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