Multi-view Alignment and Generation in CCA via Consistent Latent
Encoding
- URL: http://arxiv.org/abs/2005.11716v1
- Date: Sun, 24 May 2020 10:50:15 GMT
- Title: Multi-view Alignment and Generation in CCA via Consistent Latent
Encoding
- Authors: Yaxin Shi, Yuangang Pan, Donna Xu and Ivor W. Tsang
- Abstract summary: Multi-view alignment is critical in many real-world multi-view applications.
This paper studies multi-view alignment from the Bayesian perspective.
We present Adversarial CCA (ACCA) which achieves consistent latent encodings.
- Score: 34.57297855115903
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Multi-view alignment, achieving one-to-one correspondence of multi-view
inputs, is critical in many real-world multi-view applications, especially for
cross-view data analysis problems. Recently, an increasing number of works
study this alignment problem with Canonical Correlation Analysis (CCA).
However, existing CCA models are prone to misalign the multiple views due to
either the neglect of uncertainty or the inconsistent encoding of the multiple
views. To tackle these two issues, this paper studies multi-view alignment from
the Bayesian perspective. Delving into the impairments of inconsistent
encodings, we propose to recover correspondence of the multi-view inputs by
matching the marginalization of the joint distribution of multi-view random
variables under different forms of factorization. To realize our design, we
present Adversarial CCA (ACCA) which achieves consistent latent encodings by
matching the marginalized latent encodings through the adversarial training
paradigm. Our analysis based on conditional mutual information reveals that
ACCA is flexible for handling implicit distributions. Extensive experiments on
correlation analysis and cross-view generation under noisy input settings
demonstrate the superiority of our model.
Related papers
- Towards Aligned Canonical Correlation Analysis: Preliminary Formulation
and Proof-of-Concept Results [6.933535396099733]
Canonical Correlation Analysis (CCA) has been widely applied to jointly embed multiple views of data in a maximally correlated latent space.
The alignment between various data perspectives, which is required by traditional approaches, is unclear in many practical cases.
We propose a new framework Aligned Canonical Correlation Analysis (ACCA), to address this challenge by iteratively solving the alignment and multi-view embedding.
arXiv Detail & Related papers (2023-12-01T02:24:07Z) - DealMVC: Dual Contrastive Calibration for Multi-view Clustering [78.54355167448614]
We propose a novel Dual contrastive calibration network for Multi-View Clustering (DealMVC)
We first design a fusion mechanism to obtain a global cross-view feature. Then, a global contrastive calibration loss is proposed by aligning the view feature similarity graph and the high-confidence pseudo-label graph.
During the training procedure, the interacted cross-view feature is jointly optimized at both local and global levels.
arXiv Detail & Related papers (2023-08-17T14:14:28Z) - Deep Incomplete Multi-view Clustering with Cross-view Partial Sample and
Prototype Alignment [50.82982601256481]
We propose a Cross-view Partial Sample and Prototype Alignment Network (CPSPAN) for Deep Incomplete Multi-view Clustering.
Unlike existing contrastive-based methods, we adopt pair-observed data alignment as 'proxy supervised signals' to guide instance-to-instance correspondence construction.
arXiv Detail & Related papers (2023-03-28T02:31:57Z) - A Unifying Perspective on Multi-Calibration: Game Dynamics for
Multi-Objective Learning [63.20009081099896]
We provide a unifying framework for the design and analysis of multicalibrated predictors.
We exploit connections to game dynamics to achieve state-of-the-art guarantees for a diverse set of multicalibration learning problems.
arXiv Detail & Related papers (2023-02-21T18:24:17Z) - Deep Multi-View Semi-Supervised Clustering with Sample Pairwise
Constraints [10.226754903113164]
We propose a novel Deep Multi-view Semi-supervised Clustering (DMSC) method, which jointly optimize three kinds of losses during networks finetuning.
We demonstrate that our proposed approach performs better than the state-of-the-art multi-view and single-view competitors.
arXiv Detail & Related papers (2022-06-10T08:51:56Z) - Variational Interpretable Learning from Multi-view Data [2.687817337319978]
DICCA is designed to disentangle both the shared and view-specific variations for multi-view data.
Empirical results on real-world datasets show that our methods are competitive across domains.
arXiv Detail & Related papers (2022-02-28T01:56:44Z) - Deep Partial Multi-View Learning [94.39367390062831]
We propose a novel framework termed Cross Partial Multi-View Networks (CPM-Nets)
We fifirst provide a formal defifinition of completeness and versatility for multi-view representation.
We then theoretically prove the versatility of the learned latent representations.
arXiv Detail & Related papers (2020-11-12T02:29:29Z) - Generative Partial Multi-View Clustering [133.36721417531734]
We propose a generative partial multi-view clustering model, named as GP-MVC, to address the incomplete multi-view problem.
First, multi-view encoder networks are trained to learn common low-dimensional representations, followed by a clustering layer to capture the consistent cluster structure across multiple views.
Second, view-specific generative adversarial networks are developed to generate the missing data of one view conditioning on the shared representation given by other views.
arXiv Detail & Related papers (2020-03-29T17:48:27Z) - Variational Inference for Deep Probabilistic Canonical Correlation
Analysis [49.36636239154184]
We propose a deep probabilistic multi-view model that is composed of a linear multi-view layer and deep generative networks as observation models.
An efficient variational inference procedure is developed that approximates the posterior distributions of the latent probabilistic multi-view layer.
A generalization to models with arbitrary number of views is also proposed.
arXiv Detail & Related papers (2020-03-09T17:51:15Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.