Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Multidimensional Scaling on Multiple Input Distance Matrices

About

Multidimensional Scaling (MDS) is a classic technique that seeks vectorial representations for data points, given the pairwise distances between them. However, in recent years, data are usually collected from diverse sources or have multiple heterogeneous representations. How to do multidimensional scaling on multiple input distance matrices is still unsolved to our best knowledge. In this paper, we first define this new task formally. Then, we propose a new algorithm called Multi-View Multidimensional Scaling (MVMDS) by considering each input distance matrix as one view. Our algorithm is able to learn the weights of views (i.e., distance matrices) automatically by exploring the consensus information and complementary nature of views. Experimental results on synthetic as well as real datasets demonstrate the effectiveness of MVMDS. We hope that our work encourages a wider consideration in many domains where MDS is needed.

Song Bai, Xiang Bai, Longin Jan Latecki, Qi Tian• 2016

Related benchmarks

TaskDatasetResultRank
Manifold embedding correlationElectricity Load Diagrams (ELD)
Correlation (View 1)0.3713
7
Manifold embeddingSwiss Roll (view 1)
Correlation0.8235
5
Manifold embeddingSwiss Roll (mean)
Correlation0.8554
5
Manifold embeddingMobius (view 1)
Correlation92.92
5
Manifold embeddingTorus (view 1)
Correlation0.8257
5
Manifold embeddingTorus (mean)
Correlation0.8049
5
Manifold embeddingSwiss Roll (view 2)
Correlation0.8872
5
Manifold embeddingS-curve (view 1)
Correlation0.7748
5
Manifold embeddingMobius (view 2)
Correlation0.883
5
Manifold embeddingMobius (mean)
Correlation (mean)0.9061
5
Showing 10 of 13 rows

Other info

Follow for update