Dimensionality Reduction has Quantifiable Imperfections: Two Geometric Bounds

Lui, Kry, Ding, Gavin Weiguang, Huang, Ruitong, McCann, Robert

Neural Information Processing Systems 

In this paper, we investigate Dimensionality reduction (DR) maps in an information retrieval setting from a quantitative topology point of view. In particular, we show that no DR maps can achieve perfect precision and perfect recall simultaneously. Thus a continuous DR map must have imperfect precision. We further prove an upper bound on the precision of Lipschitz continuous DR maps. While precision is a natural measure in an information retrieval setting, it does not measure how' wrong the retrieved data is.