Sparse CCA using a Lasso with positivity constraints

作者:Lykou Anastasia*; Whittaker Joe
来源:Computational Statistics & Data Analysis, 2010, 54(12): 3144-3157.
DOI:10.1016/j.csda.2009.08.002

摘要

Canonical correlation analysis (CCA) describes the relationship between two sets of variables by finding linear combinations of the variables with maximal correlation. A sparse version of CCA is proposed that reduces the chance of including unimportant variables in the canonical variates and thus improves their interpretation. A version of the Lasso algorithm incorporating positivity constraints is implemented in tandem with alternating least squares (ALS), to obtain sparse canonical variates. The proposed method is demonstrated on simulation studies and a data set from market basket analysis.

  • 出版日期2010-12-1