4.2 Article

An Ordinal Weighted EDM Model for Nonmetric Multidimensional Scaling

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WORLD SCIENTIFIC PUBL CO PTE LTD
DOI: 10.1142/S0217595921500330

关键词

Nonmetric multidimensional scaling; image ranking; distance metric learning; optimization methods; Euclidean distance matrix

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  1. NSFC [12071032]

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The paper introduces an ordinal weighted Euclidean distance matrix model for NMDS and successfully applies it to image ranking, showing improvements over existing methods on two datasets.
Multidimensional scaling (MDS) is to recover a set of points by making use of noised pairwise Euclidean distances. In some situations, the observed Euclidean distances may contain large errors or even missing values. In such cases, the order of the distances is far more important than their magnitude. Non-metric multidimensional scaling (NMDS) is then to deal with this problem by taking use of the ordinal information. The challenge of NMDS is to tackle the large number of ordinal constraints on distances (for n points, this will be of O(n(4))), which will slow down existing numerical algorithms. In this paper, we propose an ordinal weighted Euclidean distance matrix model for NMDS. By designing an ordinal weighted matrix, we get rid of the large number of ordinal constraints and tackle the ordinal constraints in a soft way. We then apply our model to image ranking. The key insight is to view the image ranking problem as NMDS in the kernel space. We conduct extensive numerical test on two state-of-the-art datasets: FG-NET aging dataset and MSRA-MM dataset. The results show the improvement of the proposed approach over the existing methods.

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