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In the task of multiview multilabel (MVML) classification, each instance is represented by several heterogeneous features and associated with multiple semantic labels. Existing MVML methods mainly focus on leveraging the shared subspace to comprehensively explore multiview consensus information across different views, while it is still an open problem whether such shared subspace representation is effective to characterize all relevant labels when formulating a desired MVML model. In this article, we propose a novel label-driven view-specific fusion MVML method named L-VSM, which bypasses seeking for a shared subspace representation and instead directly encodes the feature representation of each individual view to contribute to the final multilabel classifier induction. Specifically, we first design a label-driven feature graph construction strategy and construct all instances under various feature representations into the corresponding feature graphs. Then, these view-specific feature graphs are integrated into a unified graph by linking the different feature representations within each instance. Afterward, we adopt a graph attention mechanism to aggregate and update all feature nodes on the unified graph to generate structural representations for each instance, where both intraview correlations and interview alignments are jointly encoded to discover the underlying consensuses and complementarities across different views. Moreover, to explore the widespread label correlations in multilabel learning (MLL), the transformer architecture is introduced to construct a dynamic semantic-aware label graph and accordingly generate structural semantic representations for each specific class. Finally, we derive an instance-label affinity score for each instance by averaging the affinity scores of its different feature representations with the multilabel soft margin loss. Extensive experiments on various MVML applications have verified that our proposed L-VSM has achieved superior performance against state-of-the-art methods. The codes are available at https://gengyulyu.github.io/homepage/assets/codes/LVSM.zip.
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http://dx.doi.org/10.1109/TNNLS.2024.3390776 | DOI Listing |
J Am Stat Assoc
June 2025
Department of Statistical Science, Duke University, Durham, NC.
Factor analysis provides a canonical framework for imposing lower-dimensional structure such as sparse covariance in high-dimensional data. High-dimensional data on the same set of variables are often collected under different conditions, for instance in reproducing studies across research groups. In such cases, it is natural to seek to learn the shared versus condition-specific structure.
View Article and Find Full Text PDFRhythmic network states have been theorized to facilitate communication between brain regions, but how these oscillations influence communication subspaces, i.e. the low-dimensional neural activity patterns that mediate inter-regional communication, and in turn how subspaces impact behavior remains unclear.
View Article and Find Full Text PDFbioRxiv
August 2025
Department of Neurobiology and Biophysics, University of Washington, Seattle, WA, USA.
Sensory neuron spiking responses vary across repeated presentations of the same stimuli, but whether this trial-to-trial variability represents noise versus unidentified signals remains unresolved. Some of the variability can be attributed to correlations between neural activity and arousal, locomotion, and other overt movements. We hypothesized that correlations with global activity factors, i.
View Article and Find Full Text PDFIEEE Trans Comput Biol Bioinform
January 2025
Identifying complex interactions among millions of single nucleotide polymorphisms (SNPs) is a key challenge in Genome-Wide Association Studies (GWAS), offering crucial insights into the genetic architecture of complex diseases. Evolutionary algorithm (EA)-based methods have gained significant attention for their global search capabilities, controllable runtime, and multi-objective optimization potential. However, when applied to high-dimensional GWAS datasets, many existing EA-based methods encounter challenges such as getting trapped in local optima and facing high computational demands.
View Article and Find Full Text PDFElife
August 2025
Department of Biomedical Engineering, University of Rochester, Rochester, United States.
Neurons in macaque premotor cortex show firing rate modulation whether the subject performs an action or observes another individual performing a similar action. Although such mirror neurons have been thought to have highly congruent discharge during execution and observation, many, if not most, show noncongruent activity. Studies of reaching movements, for which low-dimensional neural trajectories exhibit comparatively simple dynamical motifs, have shown that these prevalent patterns of co-modulation pass through subspaces which are shared in part, but in part are visited exclusively during either execution or observation.
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