作者
Jieping Ye, Ravi Janardan, Qi Li, Haesun Park
发表日期
2004/7/4
图书
Proceedings of the twenty-first international conference on Machine learning
页码范围
113
简介
Feature extraction is important in many applications, such as text and image retrieval, because of high dimensionality. Uncorrelated Linear Discriminant Analysis (ULDA) was recently proposed for feature extraction. The extracted features via ULDA were shown to be statistically uncorrelated, which is desirable for many applications. In this paper, we will first propose the ULDA/QR algorithm to simplify the previous implementation of ULDA. Then we propose the ULDA/GSVD algorithm, based on a novel optimization criterion, to address the singularity problem. It is applicable for undersampled problem, where the data dimension is much larger than the data size, such as text and image retrieval. The novel criterion used in ULDA/GSVD is the perturbed version of the one from ULDA/QR, while surprisingly, the solution to ULDA/GSVD is shown to be independent of the amount of perturbation applied. We did extensive …
引用总数
20042005200620072008200920102011201220132014201520162017201820192020202120222023202413852536624622214122
学术搜索中的文章
J Ye, R Janardan, Q Li, H Park - Proceedings of the twenty-first international conference …, 2004