Multi-View Bayesian Correlated Component Analysis

02/07/2018
by   Simon Kamronn, et al.
0

Correlated component analysis as proposed by Dmochowski et al. (2012) is a tool for investigating brain process similarity in the responses to multiple views of a given stimulus. Correlated components are identified under the assumption that the involved spatial networks are identical. Here we propose a hierarchical probabilistic model that can infer the level of universality in such multi-view data, from completely unrelated representations, corresponding to canonical correlation analysis, to identical representations as in correlated component analysis. This new model, which we denote Bayesian correlated component analysis, evaluates favourably against three relevant algorithms in simulated data. A well-established benchmark EEG dataset is used to further validate the new model and infer the variability of spatial representations across multiple subjects.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/09/2020

Variational Inference for Deep Probabilistic Canonical Correlation Analysis

In this paper, we propose a deep probabilistic multi-view model that is ...
research
05/25/2020

Deep Tensor CCA for Multi-view Learning

We present Deep Tensor Canonical Correlation Analysis (DTCCA), a method ...
research
11/13/2014

Multi-view Anomaly Detection via Probabilistic Latent Variable Models

We propose a nonparametric Bayesian probabilistic latent variable model ...
research
11/12/2019

MM-PCA: Integrative Analysis of Multi-group and Multi-view Data

Data integration is the problem of combining multiple data groups (studi...
research
06/02/2016

Multi-View Treelet Transform

Current multi-view factorization methods make assumptions that are not a...
research
12/16/2009

Multi-Way, Multi-View Learning

We extend multi-way, multivariate ANOVA-type analysis to cases where one...
research
02/29/2016

Beyond CCA: Moment Matching for Multi-View Models

We introduce three novel semi-parametric extensions of probabilistic can...

Please sign up or login with your details

Forgot password? Click here to reset