(NeurIPS 2021) Realistic Evaluation of Transductive Few-Shot Learning

Overview

Realistic evaluation of transductive few-shot learning

Introduction

This repo contains the code for our NeurIPS 2021 submitted paper "Realistic evaluation of transductive few-shot learning". This is a framework that regroups all methods evaluated in our paper except for SIB and LR-ICI. Results provided in the paper can be reproduced with this repo. Code was developed under python 3.8.3 and pytorch 1.4.0.

1. Getting started

1.1 Quick installation (recommended) (Download datasets and models)

To download datasets and pre-trained models (checkpoints), follow instructions 1.1.1 to 1.1.2 of NeurIPS 2020 paper "TIM: Transductive Information Maximization" public implementation (https://github.com/mboudiaf/TIM)

1.1.1 Place datasets

Make sure to place the downloaded datasets (data/ folder) at the root of the directory.

1.1.2 Place models

Make sure to place the downloaded pre-trained models (checkpoints/ folder) at the root of the directory.

1.2 Manual installation

Follow instruction 1.2 of NeurIPS 2020 paper "TIM: Transductive Information Maximization" public implementation (https://github.com/mboudiaf/TIM) if facing issues with previous steps. Make sure to place data/ and checkpoints/ folders at the root of the directory.

2. Requirements

To install requirements:

conda create --name <env> --file requirements.txt

Where <env> is the name of your environment

3. Reproducing the main results

Before anything, activate the environment:

source activate <env>

3.1 Table 1 and 2 results in paper

Evaluation in a 5-shot scenario on mini-Imagenet using RN-18 as backbone (Table 1. in paper)

Method 1-shot 5-shot 10-shot 20-shot
SimpleShot 63.0 80.1 84.0 86.1
PT-MAP 60.1 (↓16.8) 67.1 (↓18.2) 68.8 (↓18.0) 70.4 (↓17.4)
LaplacianShot 65.4 (↓4.7) 81.6 (↓0.5) 84.1 (↓0.2) 86.0 (↑0.5)
BDCSPN 67.0 (↓2.4) 80.2 (↓1.8) 82.7 (↓1.4) 84.6 (↓1.1)
TIM 67.3 (↓4.5) 79.8 (↓4.1) 82.3 (↓3.8) 84.2 (↓3.7)
α-TIM 67.4 82.5 85.9 87.9

To reproduce the results from Table 1. and 2. in the paper, from the root of the directory execute this python command.

python3 -m src.main --base_config <path_to_base_config_file> --method_config <path_to_method_config_file> 

The <path_to_base_config_file> follows this hierarchy:

config/<balanced or dirichlet>/base_config/<resnet18 or wideres>/<mini or tiered or cub>/base_config.yaml

The <path_to_method_config_file> follows this hierarchy:

config/<balanced or dirichlet>/methods_config/<alpha_tim or baseline or baseline_pp or bdcspn or entropy_min or laplacianshot or protonet or pt_map or simpleshot or tim>.yaml

For instance, if you want to reproduce the results in the balanced setting on mini-Imagenet, using ResNet-18, with alpha-TIM method go to the root of the directory and execute:

python3 -m src.main --base_config config/balanced/base_config/resnet18/mini/base_config.yaml --method_config config/balanced/methods_config/alpha_tim.yaml

If you want to reproduce the results in the randomly balanced setting on mini-Imagenet, using ResNet-18, with alpha-TIM method go to the root of the directory and execute:

python3 -m src.main --base_config config/dirichlet/base_config/resnet18/mini/base_config.yaml --method_config config/dirichlet/methods_config/alpha_tim.yaml

Reusable data sampler module

One of our main contribution is our realistic task sampling method following Dirichlet's distribution. plot

Our realistic sampler can be found in sampler.py file. The sampler has been implemented following Pytorch's norms and in a way that it can be easily reused and integrated in other projects.

The following notebook exemple_realistic_sampler.ipynb is an exemple that shows how to initialize and use our realistic category sampler.

Contact

For further questions or details, reach out to Olivier Veilleux ([email protected])

Acknowledgements

Special thanks to the authors of NeurIPS 2020 paper "TIM: Transductive Information Maximization" (TIM) (https://github.com/mboudiaf/TIM) for publicly sharing their pre-trained models and their source code from which this repo was inspired from.

Owner
Olivier Veilleux
Olivier Veilleux
Tutoriais publicados nas nossas redes sociais para obtenção de dados, análises simples e outras tarefas relevantes no mercado financeiro.

Tutoriais Públicos Tutoriais publicados nas nossas redes sociais para obtenção de dados, análises simples e outras tarefas relevantes no mercado finan

Trading com Dados 68 Oct 15, 2022
This repository provides the official code for GeNER (an automated dataset Generation framework for NER).

GeNER This repository provides the official code for GeNER (an automated dataset Generation framework for NER). Overview of GeNER GeNER allows you to

DMIS Laboratory - Korea University 50 Nov 30, 2022
Simple renderer for use with MuJoCo (>=2.1.2) Python Bindings.

Viewer for MuJoCo in Python Interactive renderer to use with the official Python bindings for MuJoCo. Starting with version 2.1.2, MuJoCo comes with n

Rohan P. Singh 62 Dec 30, 2022
Official repository for "Action-Based Conversations Dataset: A Corpus for Building More In-Depth Task-Oriented Dialogue Systems"

Action-Based Conversations Dataset (ABCD) This respository contains the code and data for ABCD (Chen et al., 2021) Introduction Whereas existing goal-

ASAPP Research 49 Oct 09, 2022
Bayesian dessert for Lasagne

Gelato Bayesian dessert for Lasagne Recent results in Bayesian statistics for constructing robust neural networks have proved that it is one of the be

Maxim Kochurov 84 May 11, 2020
YOLOX + ROS(1, 2) object detection package

YOLOX + ROS(1, 2) object detection package

Ar-Ray 158 Dec 21, 2022
simple artificial intelligence utilities

Simple AI Project home: http://github.com/simpleai-team/simpleai This lib implements many of the artificial intelligence algorithms described on the b

921 Dec 08, 2022
A booklet on machine learning systems design with exercises

Machine Learning Systems Design Read this booklet here. This booklet covers four main steps of designing a machine learning system: Project setup Data

Chip Huyen 7.6k Jan 08, 2023
Code implementation of Data Efficient Stagewise Knowledge Distillation paper.

Data Efficient Stagewise Knowledge Distillation Table of Contents Data Efficient Stagewise Knowledge Distillation Table of Contents Requirements Image

IvLabs 112 Dec 02, 2022
Deep Learning GPU Training System

DIGITS DIGITS (the Deep Learning GPU Training System) is a webapp for training deep learning models. The currently supported frameworks are: Caffe, To

NVIDIA Corporation 4.1k Jan 03, 2023
Virtual hand gesture mouse using a webcam

NonMouse 日本語のREADMEはこちら This is an application that allows you to use your hand itself as a mouse. The program uses a web camera to recognize your han

Yuki Takeyama 55 Jan 01, 2023
Tutel MoE: An Optimized Mixture-of-Experts Implementation

Project Tutel Tutel MoE: An Optimized Mixture-of-Experts Implementation. Supported Framework: Pytorch Supported GPUs: CUDA(fp32 + fp16), ROCm(fp32) Ho

Microsoft 344 Dec 29, 2022
A Marvelous ChatBot implement using PyTorch.

PyTorch Marvelous ChatBot [Update] it's 2019 now, previously model can not catch up state-of-art now. So we just move towards the future a transformer

JinTian 223 Oct 18, 2022
PyTorch implementation of our paper How robust are discriminatively trained zero-shot learning models?

How robust are discriminatively trained zero-shot learning models? This repository contains the PyTorch implementation of our paper How robust are dis

Mehmet Kerim Yucel 5 Feb 04, 2022
EMNLP 2021 - Frustratingly Simple Pretraining Alternatives to Masked Language Modeling

Frustratingly Simple Pretraining Alternatives to Masked Language Modeling This is the official implementation for "Frustratingly Simple Pretraining Al

Atsuki Yamaguchi 31 Nov 18, 2022
Barbershop: GAN-based Image Compositing using Segmentation Masks (SIGGRAPH Asia 2021)

Barbershop: GAN-based Image Compositing using Segmentation Masks Barbershop: GAN-based Image Compositing using Segmentation Masks Peihao Zhu, Rameen A

Peihao Zhu 928 Dec 30, 2022
This project uses ViT to perform image classification tasks on DATA set CIFAR10.

Vision-Transformer-Multiprocess-DistributedDataParallel-Apex Introduction This project uses ViT to perform image classification tasks on DATA set CIFA

Kaicheng Yang 3 Jun 03, 2022
PyTorch-based framework for Deep Hedging

PFHedge: Deep Hedging in PyTorch PFHedge is a PyTorch-based framework for Deep Hedging. PFHedge Documentation Neural Network Architecture for Efficien

139 Dec 30, 2022
Official Code Release for "CLIP-Adapter: Better Vision-Language Models with Feature Adapters"

Official Code Release for "CLIP-Adapter: Better Vision-Language Models with Feature Adapters" Pipeline of CLIP-Adapter CLIP-Adapter is a drop-in modul

peng gao 157 Dec 26, 2022
Convert Mission Planner (ArduCopter) Waypoint Missions to Litchi CSV Format to execute on DJI Drones

Mission Planner to Litchi Convert Mission Planner (ArduCopter) Waypoint Surveys to Litchi CSV Format to execute on DJI Drones Litchi doesn't support S

Yaros 24 Dec 09, 2022