| Literature DB >> 25045195 |
Esra Ataer-Cansizoglu1, Murat Akcakaya1, Umut Orhan1, Deniz Erdogmus1.
Abstract
Nonlinear dimensionality reduction is essential for the analysis and the interpretation of high dimensional data sets. In this manuscript, we propose a distance order preserving manifold learning algorithm that extends the basic mean-squared error cost function used mainly in multidimensional scaling (MDS)-based methods. We develop a constrained optimization problem by assuming explicit constraints on the order of distances in the low-dimensional space. In this optimization problem, as a generalization of MDS, instead of forcing a linear relationship between the distances in the high-dimensional original and low-dimensional projection space, we learn a non-decreasing relation approximated by radial basis functions. We compare the proposed method with existing manifold learning algorithms using synthetic datasets based on the commonly used residual variance and proposed percentage of violated distance orders metrics. We also perform experiments on a retinal image dataset used in Retinopathy of Prematurity (ROP) diagnosis.Entities:
Keywords: Machine Learning; Manifold Learning; Nonlinear Dimensionality Reduction
Year: 2014 PMID: 25045195 PMCID: PMC4096825 DOI: 10.1016/j.patrec.2013.11.022
Source DB: PubMed Journal: Pattern Recognit Lett ISSN: 0167-8655 Impact factor: 3.756