Existing Literature about Machine Unlearning

Overview

Machine Unlearning Papers

2021

Brophy and Lowd. Machine Unlearning for Random Forests. In ICML 2021.

Bourtoule et al. Machine Unlearning. In IEEE Symposium on Security and Privacy 2021.

Gupta et al. Adaptive Machine Unlearning. In Neurips 2021.

Huang et al. Unlearnable Examples: Making Personal Data Unexploitable. In ICLR 2021.

Neel et al. Descent-to-Delete: Gradient-Based Methods for Machine Unlearning. In ALT 2021.

Schelter et al. HedgeCut: Maintaining Randomised Trees for Low-Latency Machine Unlearning. In SIGMOD 2021.

Sekhari et al. Remember What You Want to Forget: Algorithms for Machine Unlearning. In Neurips 2021.

arXiv

Chen et al. Graph Unlearning. In arXiv 2021.

Chen et al. Machine unlearning via GAN. In arXiv 2021.

Fu et al. Bayesian Inference Forgetting. In arXiv 2021.

He et al. DeepObliviate: A Powerful Charm for Erasing Data Residual Memory in Deep Neural Networks. In arXiv 2021.

Khan and Swaroop. Knowledge-Adaptation Priors. In arXiv 2021.

Marchant et al. Hard to Forget: Poisoning Attacks on Certified Machine Unlearning . In arXiv 2021.

Parne et al. Machine Unlearning: Learning, Polluting, and Unlearning for Spam Email. In arXiv 2021.

Tarun et al. Fast Yet Effective Machine Unlearning . In arXiv 2021.

Ullah et al. Machine Unlearning via Algorithmic Stability. In arXiv 2021.

Wang et al. Federated Unlearning via Class-Discriminative Pruning . In arXiv 2021.

Warnecke et al. Machine Unlearning for Features and Labels. In arXiv 2021.

Zeng et al. Learning to Refit for Convex Learning Problems In arXiv 2021.

2020

Guo et al. Certified Data Removal from Machine Learning Models. In ICML 2020.

Golatkar et al. Eternal Sunshine of the Spotless Net: Selective Forgetting in Deep Networks. In CVPR 2020.

Wu et. al DeltaGrad: Rapid Retraining of Machine Learning Models. In ICML 2020.

arXiv

Aldaghri et al. Coded Machine Unlearning. In arXiv 2020.

Baumhauer et al. Machine Unlearning: Linear Filtration for Logit-based Classifiers. In arXiv 2020.

Garg et al. Formalizing Data Deletion in the Context of the Right to be Forgotten. In arXiv 2020.

Chen et al. When Machine Unlearning Jeopardizes Privacy. In arXiv 2020.

Felps et al. Class Clown: Data Redaction in Machine Unlearning at Enterprise Scale. In arXiv 2020.

Golatkar et al. Mixed-Privacy Forgetting in Deep Networks. In arXiv 2020.

Golatkar et al. Forgetting Outside the Box: Scrubbing Deep Networks of Information Accessible from Input-Output Observations. In arXiv 2020.

Izzo et al. Approximate Data Deletion from Machine Learning Models: Algorithms and Evaluations. In arXiv 2020.

Liu et al. Learn to Forget: User-Level Memorization Elimination in Federated Learning. In arXiv 2020.

Sommer et al. Towards Probabilistic Verification of Machine Unlearning. In arXiv 2020.

Yiu et al. Learn to Forget: User-Level Memorization Elimination in Federated Learning. In arXiv 2020.

Yu et al. Membership Inference with Privately Augmented Data Endorses the Benign while Suppresses the Adversary. In arXiv 2020.

2019

Chen et al. A Novel Online Incremental and Decremental Learning Algorithm Based on Variable Support Vector Machine. In Cluster Computing 2019.

Ginart et al. Making AI Forget You: Data Deletion in Machine Learning. In NeurIPS 2019.

Schelter. “Amnesia” – Towards Machine Learning Models That Can Forget User Data Very Fast. In AIDB 2019.

Shintre et al. Making Machine Learning Forget. In APF 2019.

Du et al. Lifelong Anomaly Detection Through Unlearning. In CCS 2019.

Wang et al. Neural Cleanse: Identifying and Mitigating Backdoor Attacks in Neural Networks. In IEEE Symposium on Security and Privacy 2019.

arXiv

Tople te al. Analyzing Privacy Loss in Updates of Natural Language Models. In arXiv 2019.

2018

Cao et al. Efficient Repair of Polluted Machine Learning Systems via Causal Unlearning. In ASIACCS 2018.

European Union. GDPR, 2018.

State of California. California Consumer Privacy Act, 2018.

Veale et al. Algorithms that remember: model inversion attacks and data protection law. In The Royal Society 2018.

Villaronga et al. Humans Forget, Machines Remember: Artificial Intelligence and the Right to Be Forgotten. In Computer Law & Security Review 2018.

2017

Kwak et al. Let Machines Unlearn--Machine Unlearning and the Right to be Forgotten. In SIGSEC 2017.

Shokri et al. Membership Inference Attacks Against Machine Learning Models. In SP 2017.

Before 2017

Cao and Yang. Towards Making Systems Forget with Machine Unlearning. In IEEE Symposium on Security and Privacy 2015.

Tsai et al. Incremental and decremental training for linear classification. In KDD 2014.

Karasuyama and Takeuchi. Multiple Incremental Decremental Learning of Support Vector Machines. In NeurIPS 2009.

Duan et al. Decremental Learning Algorithms for Nonlinear Langrangian and Least Squares Support Vector Machines. In OSB 2007.

Romero et al. Incremental and Decremental Learning for Linear Support Vector Machines. In ICANN 2007.

Tveit et al. Incremental and Decremental Proximal Support Vector Classification using Decay Coefficients. In DaWaK 2003.

Tveit and Hetland. Multicategory Incremental Proximal Support Vector Classifiers. In KES 2003.

Cauwenberghs and Poggio. Incremental and Decremental Support Vector Machine Learning. In NeurIPS 2001.

Canada. PIPEDA, 2000.

Owner
Jonathan Brophy
PhD student at UO.
Jonathan Brophy
Implementation of temporal pooling methods studied in [ICIP'20] A Comparative Evaluation Of Temporal Pooling Methods For Blind Video Quality Assessment

Implementation of temporal pooling methods studied in [ICIP'20] A Comparative Evaluation Of Temporal Pooling Methods For Blind Video Quality Assessment

Zhengzhong Tu 5 Sep 16, 2022
TensorFlow ROCm port

Documentation TensorFlow is an end-to-end open source platform for machine learning. It has a comprehensive, flexible ecosystem of tools, libraries, a

ROCm Software Platform 622 Jan 09, 2023
This code uses generative adversarial networks to generate diverse task allocation plans for Multi-agent teams.

Mutli-agent task allocation This code uses generative adversarial networks to generate diverse task allocation plans for Multi-agent teams. To change

Biorobotics Lab 5 Oct 12, 2022
Semi-Supervised Learning with Ladder Networks in Keras. Get 98% test accuracy on MNIST with just 100 labeled examples !

Semi-Supervised Learning with Ladder Networks in Keras This is an implementation of Ladder Network in Keras. Ladder network is a model for semi-superv

Divam Gupta 101 Sep 07, 2022
Code for "ShineOn: Illuminating Design Choices for Practical Video-based Virtual Clothing Try-on", accepted at WACV 2021 Generation of Human Behavior Workshop.

ShineOn: Illuminating Design Choices for Practical Video-based Virtual Clothing Try-on [ Paper ] [ Project Page ] This repository contains the code fo

Andrew Jong 97 Dec 13, 2022
Code for Universal Semi-Supervised Semantic Segmentation models paper accepted in ICCV 2019

USSS_ICCV19 Code for Universal Semi Supervised Semantic Segmentation accepted to ICCV 2019. Full Paper available at https://arxiv.org/abs/1811.10323.

Tarun K 68 Nov 24, 2022
alfred-py: A deep learning utility library for **human**

Alfred Alfred is command line tool for deep-learning usage. if you want split an video into image frames or combine frames into a single video, then a

JinTian 800 Jan 03, 2023
Scalable, Portable and Distributed Gradient Boosting (GBDT, GBRT or GBM) Library, for Python, R, Java, Scala, C++ and more. Runs on single machine, Hadoop, Spark, Dask, Flink and DataFlow

eXtreme Gradient Boosting Community | Documentation | Resources | Contributors | Release Notes XGBoost is an optimized distributed gradient boosting l

Distributed (Deep) Machine Learning Community 23.6k Dec 31, 2022
FairMOT for Multi-Class MOT using YOLOX as Detector

FairMOT-X Project Overview FairMOT-X is a multi-class multi object tracker, which has been tailored for training on the BDD100K MOT Dataset. It makes

Jonathan Tan 33 Dec 28, 2022
Pytorch implementation for the EMNLP 2020 (Findings) paper: Connecting the Dots: A Knowledgeable Path Generator for Commonsense Question Answering

Path-Generator-QA This is a Pytorch implementation for the EMNLP 2020 (Findings) paper: Connecting the Dots: A Knowledgeable Path Generator for Common

Peifeng Wang 33 Dec 05, 2022
A setup script to generate ITK Python Wheels

ITK Python Package This project provides a setup.py script to build ITK Python binary packages and infrastructure to build ITK external module Python

Insight Software Consortium 59 Dec 14, 2022
Recommendationsystem - Movie-recommendation - matrixfactorization colloborative filtering recommendation system user

recommendationsystem matrixfactorization colloborative filtering recommendation

kunal jagdish madavi 1 Jan 01, 2022
The code for our NeurIPS 2021 paper "Kernelized Heterogeneous Risk Minimization".

Kernelized-HRM Jiashuo Liu, Zheyuan Hu The code for our NeurIPS 2021 paper "Kernelized Heterogeneous Risk Minimization"[1]. This repo contains the cod

Liu Jiashuo 8 Nov 20, 2022
This repository contains datasets and baselines for benchmarking Chinese text recognition.

Benchmarking-Chinese-Text-Recognition This repository contains datasets and baselines for benchmarking Chinese text recognition. Please see the corres

FudanVI Lab 254 Dec 30, 2022
2021 Artificial Intelligence Diabetes Datathon

A.I.D.D. 2021 2021 Artificial Intelligence Diabetes Datathon A.I.D.D. 2021은 ‘2021 인공지능 학습용 데이터 구축사업’을 통해 만들어진 학습용 데이터를 활용하여 당뇨병을 효과적으로 예측할 수 있는가에 대한 A

2 Dec 27, 2021
Research code for the paper "How Good is Your Tokenizer? On the Monolingual Performance of Multilingual Language Models"

Introduction This repository contains research code for the ACL 2021 paper "How Good is Your Tokenizer? On the Monolingual Performance of Multilingual

AdapterHub 20 Aug 04, 2022
Instant Real-Time Example-Based Style Transfer to Facial Videos

FaceBlit: Instant Real-Time Example-Based Style Transfer to Facial Videos The official implementation of FaceBlit: Instant Real-Time Example-Based Sty

Aneta Texler 131 Dec 19, 2022
Distance-Ratio-Based Formulation for Metric Learning

Distance-Ratio-Based Formulation for Metric Learning Environment Python3 Pytorch (http://pytorch.org/) (version 1.6.0+cu101) json tqdm Preparing datas

Hyeongji Kim 1 Dec 07, 2022
Byte-based multilingual transformer TTS for low-resource/few-shot language adaptation.

One model to speak them all 🌎 Audio Language Text ▷ Chinese 人人生而自由,在尊严和权利上一律平等。 ▷ English All human beings are born free and equal in dignity and rig

Mutian He 60 Nov 14, 2022
[CVPR 2021 Oral] Variational Relational Point Completion Network

VRCNet: Variational Relational Point Completion Network This repository contains the PyTorch implementation of the paper: Variational Relational Point

PL 121 Dec 12, 2022