Ensemble learning for hyperspectral image classification using tangent collaborative representation
H Su, Y Yu, Q Du, P Du - IEEE Transactions on Geoscience and …, 2020 - ieeexplore.ieee.org
Recently, collaborative representation classification (CRC) has attracted much attention for
hyperspectral image analysis. In particular, tangent space CRC (TCRC) has achieved …
hyperspectral image analysis. In particular, tangent space CRC (TCRC) has achieved …
Multiview concept learning via deep matrix factorization
Multiview representation learning (MVRL) leverages information from multiple views to
obtain a common representation summarizing the consistency and complementarity in …
obtain a common representation summarizing the consistency and complementarity in …
Multi-view image classification with visual, semantic and view consistency
Multi-view visual classification methods have been widely applied to use discriminative
information of different views. This strategy has been proven very effective by many …
information of different views. This strategy has been proven very effective by many …
Multi-view learning methods with the LINEX loss for pattern classification
Multi-view learning concentrates on leveraging the consensus and complementarity
information among multiple distinct feature representations to improve the performance …
information among multiple distinct feature representations to improve the performance …
Min-redundancy and max-relevance multi-view feature selection for predicting ovarian cancer survival using multi-omics data
Background Large-scale collaborative precision medicine initiatives (eg, The Cancer
Genome Atlas (TCGA)) are yielding rich multi-omics data. Integrative analyses of the …
Genome Atlas (TCGA)) are yielding rich multi-omics data. Integrative analyses of the …
Coupling privileged kernel method for multi-view learning
Multi-view learning concentrates on fully using the data collected from diverse domains or
obtained from various feature extractors to learn effectively. The consensus and …
obtained from various feature extractors to learn effectively. The consensus and …
Improved multi-view privileged support vector machine
Multi-view learning (MVL) concentrates on the problem of learning from the data
represented by multiple distinct feature sets. The consensus and complementarity principles …
represented by multiple distinct feature sets. The consensus and complementarity principles …
Fine-grained image classification by class and image-specific decomposition with multiple views
Fine-grained image classification attempts to accurately classify images that are similar to
each other. Multiview information is often used to improve the classification accuracy …
each other. Multiview information is often used to improve the classification accuracy …
KTBoost: Combined kernel and tree boosting
F Sigrist - Neural Processing Letters, 2021 - Springer
We introduce a novel boosting algorithm called 'KTBoost'which combines k ernel boosting
and t ree boosting. In each boosting iteration, the algorithm adds either a regression tree or …
and t ree boosting. In each boosting iteration, the algorithm adds either a regression tree or …
An intelligent network traffic prediction scheme based on ensemble learning of multi-layer perceptron in complex networks
C Wang, W Cao, X Wen, L Yan, F Zhou, N **ong - Electronics, 2023 - mdpi.com
At present, the amount of network equipment, servers, and network traffic is increasing
exponentially, and the way in which operators allocate and efficiently utilize network …
exponentially, and the way in which operators allocate and efficiently utilize network …