© Springer Nature Switzerland AG 2018. In many real-life applications data can be described through multiple representations, or views. Multi-view learning aims at combining the information from all views, in order to obtain a better performance. Most well-known multi-view methods optimize some form of correlation between two views, while in many applications there are three or more views available. This is usually tackled by optimizing the correlations pairwise. However, this ignores the higher-order correlations that could only be discovered when exploring all views simultaneously. This paper proposes novel multi-view Kernel PCA models. By introducing a model tensor, the proposed models aim to include the higher-order correlations between...
How to handle large multi-dimensional datasets such as hyperspectral images and video information bo...
Learning multiple heterogeneous features from different data sources is challenging. One research to...
Abstract — In this paper, we develop a new effective multiple kernel learning algorithm. First, we m...
Canonical correlation analysis (CCA) has proven an effective tool for two-view dimension reduction d...
Canonical correlation analysis (CCA) has proven an effective tool for two-view dimension reduction d...
Recent researches have shown the necessity to consider multiple kernels rather than a single fixed k...
Canonical Correlation Analysis is a classical data analysis technique for computing common correlate...
Multi-view data analysis is a key technology for making effective decisions by leveraging informatio...
Self-representation based subspace learning has shown its effectiveness in many applications. In thi...
© 2018, Springer Science+Business Media, LLC, part of Springer Nature. In this paper, we address the...
In this work, we introduce a new generalized nonlinear tensor regression framework called kernel-bas...
Multi-view clustering aims to take advantage of multiple views information to improve the performanc...
Modern data processing and analytic tasks often deal with high dimensional matrices or tensors; for ...
As a hot research topic, many multi-view clustering approaches are proposed over the past few years....
You can find PolyMNIST dataset converted to PyTorch tensors. Pretrained classifiers and Inception n...
How to handle large multi-dimensional datasets such as hyperspectral images and video information bo...
Learning multiple heterogeneous features from different data sources is challenging. One research to...
Abstract — In this paper, we develop a new effective multiple kernel learning algorithm. First, we m...
Canonical correlation analysis (CCA) has proven an effective tool for two-view dimension reduction d...
Canonical correlation analysis (CCA) has proven an effective tool for two-view dimension reduction d...
Recent researches have shown the necessity to consider multiple kernels rather than a single fixed k...
Canonical Correlation Analysis is a classical data analysis technique for computing common correlate...
Multi-view data analysis is a key technology for making effective decisions by leveraging informatio...
Self-representation based subspace learning has shown its effectiveness in many applications. In thi...
© 2018, Springer Science+Business Media, LLC, part of Springer Nature. In this paper, we address the...
In this work, we introduce a new generalized nonlinear tensor regression framework called kernel-bas...
Multi-view clustering aims to take advantage of multiple views information to improve the performanc...
Modern data processing and analytic tasks often deal with high dimensional matrices or tensors; for ...
As a hot research topic, many multi-view clustering approaches are proposed over the past few years....
You can find PolyMNIST dataset converted to PyTorch tensors. Pretrained classifiers and Inception n...
How to handle large multi-dimensional datasets such as hyperspectral images and video information bo...
Learning multiple heterogeneous features from different data sources is challenging. One research to...
Abstract — In this paper, we develop a new effective multiple kernel learning algorithm. First, we m...