A copy of this work was available on the public web and has been preserved in the Wayback Machine. The capture dates from 2021; you can also visit the original URL.
The file type is application/pdf
.
Factor-analytic inverse regression for high-dimension, small-sample dimensionality reduction
2021
International Conference on Machine Learning
Sufficient dimension reduction (SDR) methods are a family of supervised methods for dimensionality reduction that seek to reduce dimensionality while preserving information about a target variable of interest. However, existing SDR methods typically require more observations than the number of dimensions (N > p). To overcome this limitation, we propose Class-conditional Factor Analytic Dimensions (CFAD), a model-based dimensionality reduction method for high-dimensional, small-sample data. We
dblp:conf/icml/JhaMP21
fatcat:xo4tzgi4uvezhgr6ge4272mdqa