In machine learning and statistics, dimensionality reduction (DR) is a fundamental technique of revealing the intrinsic low-dimension features hidden in a high-dimesnsion dataset. There are various DR algorithms, linear ones, like PCA, MDS, etc, and nonlinear ones, like ISOMAP, LEE, etc. The task of DR actually is to implement a mapping that transforms a set of high-dimension data to a set of low-dimension data. What I have concerns about DR is how to use the low-dimension dataset. Can the obtained low-dimension dataset be used for other machine learning tasks, such as classification or clustering analysis? Could someone give me some ideas or references. Thanks in advance.