A Unified Framework for Generalized Linear Discriminant Analysis Conference Paper uri icon


  • Linear Discriminant Analysis (LDA) is one of the wellknown methods for supervised dimensionality reduction. Over the years, many LDA-based algorithms have been developed to cope with the curse of dimensionality. In essence, most of these algorithms employ various techniques to deal with the singularity problem, which occurs when the data dimensionality is larger than the sample size. They have been applied successfully in various applications. However, there is a lack of a systematic study of the commonalities and differences of these algorithms, as well as their intrinsic relationships. In this paper, a unified framework for generalized LDA is proposed via a transfer function. The proposed framework elucidates the properties of various algorithms and their relationships. Based on the presented analysis, we propose an efficient model selection algorithm for LDA. We conduct extensive experiments using a collection of high-dimensional data, including text documents, face images, gene expression data, and gene expression pattern images, to evaluate the proposed theories and algorithms. 2008 IEEE.

name of conference

  • 2008 IEEE Conference on Computer Vision and Pattern Recognition

published proceedings

  • 2008 IEEE Conference on Computer Vision and Pattern Recognition

author list (cited authors)

  • Ji, S., & Ye, J.

citation count

  • 6

complete list of authors

  • Ji, Shuiwang||Ye, Jieping

publication date

  • June 2008