Partial label learning: Taxonomy, analysis and outlook
Partial label learning (PLL) is an emerging framework in weakly supervised machine
learning with broad application prospects. It handles the case in which each training …
learning with broad application prospects. It handles the case in which each training …
Feature selection with missing labels using multilabel fuzzy neighborhood rough sets and maximum relevance minimum redundancy
Recently, multilabel classification has generated considerable research interest. However,
the high dimensionality of multilabel data incurs high costs; moreover, in many real …
the high dimensionality of multilabel data incurs high costs; moreover, in many real …
Deep double incomplete multi-view multi-label learning with incomplete labels and missing views
View missing and label missing are two challenging problems in the applications of multi-
view multi-label classification scenery. In the past years, many efforts have been made to …
view multi-label classification scenery. In the past years, many efforts have been made to …
Dicnet: Deep instance-level contrastive network for double incomplete multi-view multi-label classification
In recent years, multi-view multi-label learning has aroused extensive research enthusiasm.
However, multi-view multi-label data in the real world is commonly incomplete due to the …
However, multi-view multi-label data in the real world is commonly incomplete due to the …
Incomplete multi-view multi-label learning via label-guided masked view-and category-aware transformers
As we all know, multi-view data is more expressive than single-view data and multi-label
annotation enjoys richer supervision information than single-label, which makes multi-view …
annotation enjoys richer supervision information than single-label, which makes multi-view …
Improving multi-label classification with missing labels by learning label-specific features
Existing multi-label learning approaches mainly utilize an identical data representation
composed of all the features in the discrimination of all the labels, and assume that all the …
composed of all the features in the discrimination of all the labels, and assume that all the …
Incomplete multi-modal representation learning for Alzheimer's disease diagnosis
Alzheimers disease (AD) is a complex neurodegenerative disease. Its early diagnosis and
treatment have been a major concern of researchers. Currently, the multi-modality data …
treatment have been a major concern of researchers. Currently, the multi-modality data …
Masked two-channel decoupling framework for incomplete multi-view weak multi-label learning
Multi-view learning has become a popular research topic in recent years, but research on
the cross-application of classic multi-label classification and multi-view learning is still in its …
the cross-application of classic multi-label classification and multi-view learning is still in its …
Multimodal learning with incomplete modalities by knowledge distillation
Multimodal learning aims at utilizing information from a variety of data modalities to improve
the generalization performance. One common approach is to seek the common information …
the generalization performance. One common approach is to seek the common information …
Incomplete multi-view learning: Review, analysis, and prospects
Multi-view data, stemming from diverse information sources, often suffer from
incompleteness due to various factors such as equipment failure and data transmission …
incompleteness due to various factors such as equipment failure and data transmission …