@inproceedings{3539de0f28e9454fbfd09599dfba3843,
title = "Latent subspace representation for multiclass classification",
abstract = "Self-representation based subspace representation has shown its effectiveness in clustering tasks, in which the key assumption is that data are from multiple subspaces and can be reconstructed by the data themselves. Benefiting from the self-representation manner, ideally, subspace representation matrix will be block-diagonal. The block-diagonal structure indicates the true segmentation of data, which is beneficial to the multiclass classification task. In this paper, we propose a Latent Subspace Representation for Multiclass Classification (LSRMC). With the help of a projection, our method focuses on exploiting the subspace representation based on the low-dimensional latent subspace, which further ensures the quality of subspace representation. We learn the projection, subspace representation and classifier in a unified model, and solve the problem efficiently by using Augmented Lagrangian Multiplier with Alternating Direction Minimization. Experiments on benchmark datasets demonstrate that our approach outperforms the state-of-the-art multiclass classification methods.",
keywords = "Latent space, Multiclass classification, Subspace representation",
author = "Jing Hu and Changqing Zhang and Xiao Wang and Pengfei Zhu and Zheng Wang and Qinghua Hu",
note = "Publisher Copyright: {\textcopyright} Springer Nature Switzerland AG 2018.; 15th Pacific Rim International Conference on Artificial Intelligence, PRICAI 2018 ; Conference date: 28-08-2018 Through 31-08-2018",
year = "2018",
doi = "10.1007/978-3-319-97304-3\_13",
language = "英语",
isbn = "9783319973036",
series = "Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)",
publisher = "Springer Verlag",
pages = "163--176",
editor = "Byeong-Ho Kang and Xin Geng",
booktitle = "PRICAI 2018",
address = "德国",
}