A kernel Principal Component Analysis (kPCA) digest with a new backward mapping (pre-image reconstruction) strategy
A kernel Principal Component Analysis (kPCA) digest with a new backward mapping (pre-image reconstruction) strategy
Methodologies for multidimensionality reduction aim at discovering low-dimensional manifolds where data ranges. Principal Component Analysis (PCA) is very effective if data have linear structure. But fails in identifying a possible dimensionality reduction if data belong to a nonlinear low-dimensional manifold. For nonlinear dimensionality reduction, kernel Principal Component Analysis (kPCA) is appreciated because of its simplicity and ease implementation. The paper provides a concise review of PCA and kPCA main ideas, trying to collect in a single document aspects that are often dispersed. Moreover, a strategy to map back the reduced dimension into the original high dimensional space is also devised, based on the minimization of a discrepancy functional.
Alberto Garc¨aa-Gonz¨¢lez、Antonio Huerta、Sergio Zlotnik、Pedro D¨aez
计算技术、计算机技术
Alberto Garc¨aa-Gonz¨¢lez,Antonio Huerta,Sergio Zlotnik,Pedro D¨aez.A kernel Principal Component Analysis (kPCA) digest with a new backward mapping (pre-image reconstruction) strategy[EB/OL].(2020-01-07)[2025-05-28].https://arxiv.org/abs/2001.01958.点此复制
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