A Multi-view Dimensionality Reduction Algorithm Based on Smooth Representation Model

10/10/2019
by   Haohao Li, et al.
0

Over the past few decades, we have witnessed a large family of algorithms that have been designed to provide different solutions to the problem of dimensionality reduction (DR). The DR is an essential tool to excavate the important information from the high-dimensional data by mapping the data to a low-dimensional subspace. Furthermore, for the diversity of varied high-dimensional data, the multi-view features can be utilized for improving the learning performance. However, many DR methods fail to integrating multiple views. Although the features from different views are extracted by different manners, they are utilized to describe the same sample, which implies that they are highly related. Therefore, how to learn the subspace for high-dimensional features by utilizing the consistency and complementary properties of multi-view features is important in the present. In this paper, we propose an effective multi-view dimensionality reduction algorithm named Multi-view Smooth Preserve Projection. Firstly, we construct a single view DR method named Smooth Preserve Projection based on the Smooth Representation model. The proposed method aims to find a subspace for the high-dimensional data, in which the smooth reconstructive weights are preserved as much as possible. Then, we extend it to a multi-view version in which we exploits Hilbert-Schmidt Independence Criterion to jointly learn one common subspace for all views. A plenty of experiments on multi-view datasets show the excellent performance of the proposed method.

READ FULL TEXT

page 8

page 9

research
04/01/2019

Co-regularized Multi-view Sparse Reconstruction Embedding for Dimension Reduction

With the development of information technology, we have witnessed an age...
research
01/05/2019

Auto-weighted Mutli-view Sparse Reconstructive Embedding

With the development of multimedia era, multi-view data is generated in ...
research
01/31/2015

Optimized Projection for Sparse Representation Based Classification

Dimensionality reduction (DR) methods have been commonly used as a princ...
research
08/03/2015

Kernelized Multiview Projection

Conventional vision algorithms adopt a single type of feature or a simpl...
research
02/05/2015

A Confident Information First Principle for Parametric Reduction and Model Selection of Boltzmann Machines

Typical dimensionality reduction (DR) methods are often data-oriented, f...
research
01/17/2021

Multi-view Data Visualisation via Manifold Learning

Non-linear dimensionality reduction can be performed by manifold learnin...
research
08/30/2020

ChemVA: Interactive Visual Analysis of Chemical Compound Similarity in Virtual Screening

In the modern drug discovery process, medicinal chemists deal with the c...

Please sign up or login with your details

Forgot password? Click here to reset