Timezone: »
Pairwise clustering methods partition the data space into clusters by the pairwise similarity between data points. The success of pairwise clustering largely depends on the pairwise similarity function defined over the data points, where kernel similarity is broadly used. In this paper, we present a novel pairwise clustering framework by bridging the gap between clustering and multi-class classification. This pairwise clustering framework learns an unsupervised nonparametric classifier from each data partition, and search for the optimal partition of the data by minimizing the generalization error of the learned classifiers associated with the data partitions. We consider two nonparametric classifiers in this framework, i.e. the nearest neighbor classifier and the plug-in classifier. Modeling the underlying data distribution by nonparametric kernel density estimation, the generalization error bounds for both unsupervised nonparametric classifiers are the sum of nonparametric pairwise similarity terms between the data points for the purpose of clustering. Under uniform distribution, the nonparametric similarity terms induced by both unsupervised classifiers exhibit a well known form of kernel similarity. We also prove that the generalization error bound for the unsupervised plug-in classifier is asymptotically equal to the weighted volume of cluster boundary for Low Density Separation, a widely used criteria for semi-supervised learning and clustering. Based on the derived nonparametric pairwise similarity using the plug-in classifier, we propose a new nonparametric exemplar-based clustering method with enhanced discriminative capability, whose superiority is evidenced by the experimental results.
Author Information
Yingzhen Yang (Snap Research)
Feng Liang (Univ. of Illinois Urbana-Champaign)
Shuicheng Yan (National University of Singapore)
Zhangyang Wang (UIUC)
Thomas S Huang (UIUC)
More from the Same Authors
-
2021 Poster: Towards Understanding Why Lookahead Generalizes Better Than SGD and Beyond »
Pan Zhou · Hanshu Yan · Xiaotong Yuan · Jiashi Feng · Shuicheng Yan -
2021 Poster: How Should Pre-Trained Language Models Be Fine-Tuned Towards Adversarial Robustness? »
Xinshuai Dong · Anh Tuan Luu · Min Lin · Shuicheng Yan · Hanwang Zhang -
2021 Poster: Direct Multi-view Multi-person 3D Pose Estimation »
tao wang · Jianfeng Zhang · Yujun Cai · Shuicheng Yan · Jiashi Feng -
2020 Poster: ConvBERT: Improving BERT with Span-based Dynamic Convolution »
Zi-Hang Jiang · Weihao Yu · Daquan Zhou · Yunpeng Chen · Jiashi Feng · Shuicheng Yan -
2020 Spotlight: ConvBERT: Improving BERT with Span-based Dynamic Convolution »
Zi-Hang Jiang · Weihao Yu · Daquan Zhou · Yunpeng Chen · Jiashi Feng · Shuicheng Yan -
2019 Poster: Efficient Meta Learning via Minibatch Proximal Update »
Pan Zhou · Xiaotong Yuan · Huan Xu · Shuicheng Yan · Jiashi Feng -
2019 Spotlight: Efficient Meta Learning via Minibatch Proximal Update »
Pan Zhou · Xiaotong Yuan · Huan Xu · Shuicheng Yan · Jiashi Feng -
2019 Poster: Bayesian Joint Estimation of Multiple Graphical Models »
Lingrui Gan · Xinming Yang · Naveen Narisetty · Feng Liang -
2018 Poster: A^2-Nets: Double Attention Networks »
Yunpeng Chen · Yannis Kalantidis · Jianshu Li · Shuicheng Yan · Jiashi Feng -
2017 Poster: Dual-Agent GANs for Photorealistic and Identity Preserving Profile Face Synthesis »
Jian Zhao · Lin Xiong · Panasonic Karlekar Jayashree · Jianshu Li · Fang Zhao · Zhecan Wang · Panasonic Sugiri Pranata · Panasonic Shengmei Shen · Shuicheng Yan · Jiashi Feng -
2016 Poster: Tree-Structured Reinforcement Learning for Sequential Object Localization »
Zequn Jie · Xiaodan Liang · Jiashi Feng · Xiaojie Jin · Wen Lu · Shuicheng Yan -
2014 Workshop: Modern Nonparametrics 3: Automating the Learning Pipeline »
Eric Xing · Mladen Kolar · Arthur Gretton · Samory Kpotufe · Han Liu · Zoltán Szabó · Alan Yuille · Andrew G Wilson · Ryan Tibshirani · Sasha Rakhlin · Damian Kozbur · Bharath Sriperumbudur · David Lopez-Paz · Kirthevasan Kandasamy · Francesco Orabona · Andreas Damianou · Wacha Bounliphone · Yanshuai Cao · Arijit Das · Yingzhen Yang · Giulia DeSalvo · Dmitry Storcheus · Roberto Valerio -
2014 Poster: PAC-Bayesian AUC classification and scoring »
James Ridgway · Pierre Alquier · Nicolas Chopin · Feng Liang -
2014 Poster: Robust Logistic Regression and Classification »
Jiashi Feng · Huan Xu · Shie Mannor · Shuicheng Yan -
2014 Poster: Convex Optimization Procedure for Clustering: Theoretical Revisit »
Changbo Zhu · Huan Xu · Chenlei Leng · Shuicheng Yan -
2013 Poster: Online Robust PCA via Stochastic Optimization »
Jiashi Feng · Huan Xu · Shuicheng Yan -
2013 Poster: Online PCA for Contaminated Data »
Jiashi Feng · Huan Xu · Shie Mannor · Shuicheng Yan -
2011 Poster: Learning to Search Efficiently in High Dimensions »
Zhen Li · Huazhong Ning · Liangliang Cao · Tong Zhang · Yihong Gong · Thomas S Huang -
2009 Poster: Graph-based Consensus Maximization among Multiple Supervised and Unsupervised Models »
Jing Gao · Feng Liang · Wei Fan · Yizhou Sun · Jiawei Han