Code to reproduce experiments in the paper "Explainability Requires Interactivity".

Overview

Explainability Requires Interactivity

This repository contains the code to train all custom models used in the paper Explainability Requires Interactivity as well as to create all static explanations (heat maps and generative). For our interactive framework, see the sister repositor.

Precomputed generative explanations are located at static_generative_explanations.

Requirements

Install the conda environment via conda env create -f env.yml (depending on your system you might need to change some versions, e.g. for pytorch, cudatoolkit and pytorch-lightning).

For some parts you will need the FairFace model, which can be downloaded from the authors' repo. You will only need the res34_fair_align_multi_7_20190809.pt file.

Training classification networks

CelebA dataset

You first need to download and decompress the CelebAMask-HQ dataset (or here). Then run the training with

python train.py --dset celeb --dset_path /PATH/TO/CelebAMask-HQ/ --classes_or_attr Smiling --target_path /PATH/TO/OUTPUT

/PATH/TO/FLOWERS102/ should contain a CelebAMask-HQ-attribute-anno.txt file and an CelebA-HQ-img directory. Any of the columns in CelebAMask-HQ-attribute-anno.txt can be used; in the paper we used Heavy_Makeup, Male, Smiling, and Young.

Flowers102 dataset

You first need to download and decompress the Flowers102 data. Then run the training with

python train.py --dset flowers102 --dset_path /PATH/TO/FLOWERS102/ --classes_or_attr 49-65 --target_path /PATH/TO/OUTPUT/

/PATH/TO/FLOWERS102/ should contain an imagelabels.mat file and an images directory. Classes 49 and 65 correspond to the "Oxeye daisy" and "California poppy", while 63 and 54 correspond to "Black-eyed Susan" and "Sunflower" as in the paper.

Generating heatmap explanations

Heatmap explanations are generated using the Captum library. After training, run explanations via

python static_exp.py --model_path /PATH/TO/MODEL.pt --img_path /PATH/TO/IMGS/ --model_name celeb --fig_dir /PATH/TO/OUTPUT/

/PATH/TO/IMGS/ contains (only) image files and can be omitted in order to run the default images exported by train.py. To run on FairFace, choose --model_name fairface and add --attr age or --attr gender. Other explanation methods can be easily added by modifying the explain_all function in static_exp.py. Explanations are saved to fig_dir. Only tested for the networks trained on the facial images data in the previous step, but any resnet18 with scalar output layer should work just as well.

Generating generative explanations

First, clone the original NVIDIA StyleGAN2-ada-pytorch repo. Make sure everything works as expected (e.g. run the getting started code). If the code is stuck at loading TODO, usually ctrl-C will let the model fall back to a smaller reference implementation which is good enough for our use case. Next, export the repo into your PYTHONPATH (e.g. via export PYTHONPATH=$PYTHONPATH:/PATH/TO/stylegan2-ada-pytorch/). To generate explanations, you will need to 0) train an image model (see above, or use the FairFace model); 1) create a dataset of latent codes + labels; 2) train a latent space logistic regression models; and 3) create the explanations. As each of the steps can be very slow, we split them up

Create labeled latent dataset

First, make sure to either train at least one image model as in the first step and/or download the FairFace model.

python generative_exp.py --phase 1 --attrs Smiling,ff-skin-color --base_dir /PATH/TO/BASE/ --generator_path /PATH/TO/STYLEGAN2.pkl --n_train 20000 --n_valid 5000

The base_dir is the directory where all files/sub-directories are stored and should be the same as the target_path from train.py (e.g., just .). It should contain e.g. the celeb-Smiling directory and the res34_fair_align_multi_7_20190809.pt file if using --attrs Smiling,ff-skin-color.

Train latent space model

After the first step, run

python generative_exp.py --phase 2 --attrs Smiling,ff-skin-color --base_dir /PATH/TO/BASE/ --epochs 50

with same base_dir and attrs.

Create generative explanations

Finally, you can generate generative explanations via

python generative_exp.py --phase 3 --base_dir /PATH/TO/BASE/ --eval_attr Smiling --generator_path /PATH/TO/STYLEGAN2.pkl --attrs Smiling,ff-skin-color --reconstruction_steps 1000 --ampl 0.09 --input_img_dir /PATH/TO/IMAGES/ --output_dir /PATH/TO/OUTPUT/

Here, eval_attr is the final evaluation model's class that you want to explain; attrs are the same as before, the directions in latent space; input_img_dir is a directory with (only) image files that are to be explained. Explanations are saved to output_dir.

Owner
Digital Health & Machine Learning
Digital Health & Machine Learning
A Simple LSTM-Based Solution for "Heartbeat Signal Classification and Prediction" in Tianchi

LSTM-Time-Series-Prediction A Simple LSTM-Based Solution for "Heartbeat Signal Classification and Prediction" in Tianchi Contest. The Link of the Cont

KevinCHEN 1 Jun 13, 2022
S2s2net - Sentinel-2 Super-Resolution Segmentation Network

S2S2Net Sentinel-2 Super-Resolution Segmentation Network Getting started Install

Wei Ji 10 Nov 10, 2022
Large-scale open domain KNOwledge grounded conVERsation system based on PaddlePaddle

Knover Knover is a toolkit for knowledge grounded dialogue generation based on PaddlePaddle. Knover allows researchers and developers to carry out eff

607 Dec 31, 2022
A small library for doing fluid simulation with neural networks.

Neural Fluid Fields This is a small library for doing fluid simulation with neural fields. Check out our review paper, Neural Fields in Visual Computi

Towaki 23 Jun 23, 2022
Best Practices on Recommendation Systems

Recommenders What's New (February 4, 2021) We have a new relase Recommenders 2021.2! It comes with lots of bug fixes, optimizations and 3 new algorith

Microsoft 14.8k Jan 03, 2023
A Simulation Environment to train Robots in Large Realistic Interactive Scenes

iGibson: A Simulation Environment to train Robots in Large Realistic Interactive Scenes iGibson is a simulation environment providing fast visual rend

Stanford Vision and Learning Lab 493 Jan 04, 2023
Portfolio analytics for quants, written in Python

QuantStats: Portfolio analytics for quants QuantStats Python library that performs portfolio profiling, allowing quants and portfolio managers to unde

Ran Aroussi 2.7k Jan 08, 2023
Extremely simple and fast extreme multi-class and multi-label classifiers.

napkinXC napkinXC is an extremely simple and fast library for extreme multi-class and multi-label classification, that focus of implementing various m

Marek Wydmuch 43 Nov 14, 2022
This is a pytorch implementation of the NeurIPS paper GAN Memory with No Forgetting.

GAN Memory for Lifelong learning This is a pytorch implementation of the NeurIPS paper GAN Memory with No Forgetting. Please consider citing our paper

Miaoyun Zhao 43 Dec 27, 2022
The repo contains the code to train and evaluate a system which extracts relations and explanations from dialogue.

The repo contains the code to train and evaluate a system which extracts relations and explanations from dialogue. How do I cite D-REX? For now, cite

Alon Albalak 6 Mar 31, 2022
Unofficial pytorch implementation of the paper "Dynamic High-Pass Filtering and Multi-Spectral Attention for Image Super-Resolution"

DFSA Unofficial pytorch implementation of the ICCV 2021 paper "Dynamic High-Pass Filtering and Multi-Spectral Attention for Image Super-Resolution" (p

2 Nov 15, 2021
a Lightweight library for sequential learning agents, including reinforcement learning

SaLinA: SaLinA - A Flexible and Simple Library for Learning Sequential Agents (including Reinforcement Learning) TL;DR salina is a lightweight library

Facebook Research 405 Dec 17, 2022
Examples of using f2py to get high-speed Fortran integrated with Python easily

f2py Examples Simple examples of using f2py to get high-speed Fortran integrated with Python easily. These examples are also useful to troubleshoot pr

Michael 35 Aug 21, 2022
SeisComP/SeisBench interface to enable deep-learning (re)picking in SeisComP

scdlpicker SeisComP/SeisBench interface to enable deep-learning (re)picking in SeisComP Objective This is a simple deep learning (DL) repicker module

Joachim Saul 6 May 13, 2022
Official PyTorch implementation for FastDPM, a fast sampling algorithm for diffusion probabilistic models

Official PyTorch implementation for "On Fast Sampling of Diffusion Probabilistic Models". FastDPM generation on CIFAR-10, CelebA, and LSUN datasets. S

Zhifeng Kong 68 Dec 26, 2022
Multi-Task Learning as a Bargaining Game

Nash-MTL Official implementation of "Multi-Task Learning as a Bargaining Game". Setup environment conda create -n nashmtl python=3.9.7 conda activate

Aviv Navon 87 Dec 26, 2022
Hyperbolic Procrustes Analysis Using Riemannian Geometry

Hyperbolic Procrustes Analysis Using Riemannian Geometry The code in this repository creates the figures presented in this article: Please notice that

Ronen Talmon's Lab 2 Jan 08, 2023
Source code for "Interactive All-Hex Meshing via Cuboid Decomposition [SIGGRAPH Asia 2021]".

Interactive All-Hex Meshing via Cuboid Decomposition Video demonstration This repository contains an interactive software to the PolyCube-based hex-me

Lingxiao Li 131 Dec 05, 2022
Minimalistic PyTorch training loop

Backbone for PyTorch training loop Will try to keep it minimalistic. pip install back from back import Bone Features Progress bar Checkpoints saving/l

Kashin 4 Jan 16, 2020
A super lightweight Lagrangian model for calculating millions of trajectories using ERA5 data

Easy-ERA5-Trck Easy-ERA5-Trck Galleries Install Usage Repository Structure Module Files Version iteration Easy-ERA5-Trck is a super lightweight Lagran

Zhenning Li 26 Nov 19, 2022