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                        A curated list of awesome resources dedicated to One Class Classification.
Awesome One Class Classification
A curated list of awesome resources dedicated to One Class Classification and its application to NLP / CV.
Contributing: Please feel free to make pull requests.
Contents
- Research Trends and Surveys
 - Papers
- SVM Approaches
 - Deep Learning Approaches
 
 - Datasets
 
Research Trends and Surveys
- One-class classification: Concept-learning in the absence of counter-examples (DMJ Tax, 2001)
 - One-class classification: taxonomy of study and review of techniques (Shehroz S.Khan, Michael G.Madden, 2014)
 - Rethinking Assumptions in Deep Anomaly Detection (Lukas Ruff, Robert A. Vandermeulen, Billy Joe Franks, Klaus-Robert Müller, Marius Kloft, 2020)
 
Papers
SVM Approaches
Support Vector Domain Description
- Support vector domain description [paper]
- David M.J. Tax, Robert P.W. Duin
 - Pattern Recognition Letters 20 (1999)
 
 
Bayesian Data Description
- A bayesian approach to the data description problem [paper]
- Alireza Ghasemi, Hamid R Rabiee, Mohammad T Manzuri, Mohammad Hossein Rohban
 - AAAI 2012
 
 
Support Vector Mapping Convergence
- Text Classification from Positive and Unlabeled Documents [paper]
- Hwanjo Yu, ChengXiang Zhai, Jiawei Han
 - CIKM 2003
 
 
Center-Based Similarity Space Learning
- Breaking the Closed World Assumption in Text Classification [paper]
- Geli Fei, Bing Liu
 - NAACL 2016
 
 
Cumulative Learning
- Learning Cumulatively to Become More Knowledgeable [paper]
- Geli Fei, Shuai Wang, Bing Liu
 - KDD 2016
 
 
Deep Learning Approaches
OpenMax
- Towards Open Set Deep Networks [paper]
- Abhijit Bendale, Terrance Boult
 - CVPR 2016
 
 
Deep Open Classification (DOC)
- DOC: Deep Open Classification of Text Documents [paper]
- Lei Shu, Hu Xu, Bing Liu
 - EMNLP 2017
 
 
Deep Support Vector Data Description
- Deep One-Class Classification [paper]
- Lukas Ruff, Robert Vandermeulen, Nico Goernitz, Lucas Deecke, Shoaib Ahmed Siddiqui, Alexander Binder, Emmanuel Müller, Marius Kloft
 - PMLR 2018
 
 
GAN
- Out-of-domain Detection based on Generative Adversarial Network [paper]
- Seonghan Ryu, Sangjun Koo, Hwanjo Yu, Gary Geunbae Lee
 - EMNLP 2018
 
 
Mahalanobis distance-based
- A Simple Unified Framework for Detecting Out-of-Distribution Samples and Adversarial Attacks [paper]
- Kimin Lee, Kibok Lee, Honglak Lee, Jinwoo Shin
 - NIPS 2018
 
 - Rethinking Softmax Cross-Entropy Loss for Adversarial Robustness [paper]
- Tianyu Pang, Kun Xu, Yinpeng Dong, Chao Du, Ning Chen, Jun Zhu
 - ICLR 2020
 
 
Inhibited Softmax
- Inhibited Softmax for Uncertainty Estimation in Neural Networks [paper]
- Marcin Możejko, Mateusz Susik, Rafał Karczewski
 - ICLR 2019 Conference Withdrawn Submission
 
 
Margin Loss
- Deep Unknown Intent Detection with Margin Loss [paper]
- Ting-En Lin, Hua Xu
 - ACL 2019
 
 
KL Divergence
- KLOOS: KL Divergence-based Out-of-Scope Intent Detection in Human-to-Machine Conversations [paper]
- Eyup Halit Yilmaz, Cagri Toraman
 - SIGIR 2020
 
 
Pseudo OOD Sample Generation (POG)
- Out-of-domain Detection for Natural Language Understanding in Dialog Systems [paper]
- Yinhe Zheng, Guanyi Chen, Minlie Huang
 - TALSP 2020
 
 
Conditional Gaussian Distribution Learning (CGDL)
- Conditional Gaussian Distribution Learning for Open Set Recognition [paper]
- Xin Sun, Zhenning Yang, Chi Zhang, Guohao Peng, Keck-Voon Ling
 - CVPR 2020
 
 
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Datasets
- Intent Classification and Out-of-Scope Prediction Dataset [paper]
- This dataset dataset covers 150 intent classes over 10 domains, capturing the breadth that a production taskoriented agent must handle. It also includes queries that are out-of-scope i.e., queries that do not fall into any of the system’s supported intents.
 
 
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