Xplique: A Deep Learning Explainability Toolbox

06/09/2022
by   Thomas Fel, et al.
0

Today's most advanced machine-learning models are hardly scrutable. The key challenge for explainability methods is to help assisting researchers in opening up these black boxes, by revealing the strategy that led to a given decision, by characterizing their internal states or by studying the underlying data representation. To address this challenge, we have developed Xplique: a software library for explainability which includes representative explainability methods as well as associated evaluation metrics. It interfaces with one of the most popular learning libraries: Tensorflow as well as other libraries including PyTorch, scikit-learn and Theano. The code is licensed under the MIT license and is freely available at github.com/deel-ai/xplique.

READ FULL TEXT
research
10/29/2019

How Much Can We See? A Note on Quantifying Explainability of Machine Learning Models

One of the most popular approaches to understanding feature effects of m...
research
09/24/2021

AI Explainability 360: Impact and Design

As artificial intelligence and machine learning algorithms become increa...
research
06/02/2023

A Survey on Explainability of Graph Neural Networks

Graph neural networks (GNNs) are powerful graph-based deep-learning mode...
research
11/22/2022

Explainability of Traditional and Deep Learning Models on Longitudinal Healthcare Records

Recent advances in deep learning have led to interest in training deep l...
research
08/10/2021

Modeling and Evaluating Personas with Software Explainability Requirements

This work focuses on the context of software explainability, which is th...
research
08/28/2023

Attention Visualizer Package: Revealing Word Importance for Deeper Insight into Encoder-Only Transformer Models

This report introduces the Attention Visualizer package, which is crafte...

Please sign up or login with your details

Forgot password? Click here to reset