Multi-view learning (MVL) is a special type of machine learning that utilizes more than one views, where views include various descriptions of a given sample. Traditionally, classification algorithms such as k-nearest neighbors (KNN) are designed for learning from single-view data. However, many real-world applications involve datasets with multiple views and each view may contain different and partly independent information, which makes the traditional single-view classification approaches ineffective. Therefore, this article proposes an improved MVL algorithm, called multi-view k-nearest neighbors (MVKNN), based on the existing KNN algorithm. The experimental results conducted in this research show that a significant improvement is achiev...
Multi-View Learning over Structured and Non-Identical Outputs In many machine learning problems, lab...
Multi-view classification optimally integrates various features from different views to improve clas...
Due to the efficiency of learning relationships and complex structures hidden in data, graph-oriente...
Multi-view learning (MVL) is a special type of machine learning that utilizes more than one views, w...
Multi-view learning is concerned with the problem of machine learning from data represented by multi...
Multi-view data analysis is a key technology for making effective decisions by leveraging informatio...
With the advent of multi-view data, multi-view learning (MVL) has become an important research direc...
abstract: Multi-view learning, a subfield of machine learning that aims to improve model performance...
The existing Multi-View Learning (MVL) is to discuss how to learn from patterns with multiple inform...
Background: Traditionally, machine learning algorithms have been simply applied for software defect ...
In most general learning problems, data is obtained from multiple sources. Hence, the features can b...
© 2017 Elsevier B.V. In multi-view learning, data is described using different representations, or v...
In this paper we empirically investigate the benefits of multi-view multi-instance (MVMI) learning f...
Abstract—The Multi-view or multi-modality learning approach is becoming popular for providing differ...
International audienceIn this article we tackle the supervised multi-view learning problem with kern...
Multi-View Learning over Structured and Non-Identical Outputs In many machine learning problems, lab...
Multi-view classification optimally integrates various features from different views to improve clas...
Due to the efficiency of learning relationships and complex structures hidden in data, graph-oriente...
Multi-view learning (MVL) is a special type of machine learning that utilizes more than one views, w...
Multi-view learning is concerned with the problem of machine learning from data represented by multi...
Multi-view data analysis is a key technology for making effective decisions by leveraging informatio...
With the advent of multi-view data, multi-view learning (MVL) has become an important research direc...
abstract: Multi-view learning, a subfield of machine learning that aims to improve model performance...
The existing Multi-View Learning (MVL) is to discuss how to learn from patterns with multiple inform...
Background: Traditionally, machine learning algorithms have been simply applied for software defect ...
In most general learning problems, data is obtained from multiple sources. Hence, the features can b...
© 2017 Elsevier B.V. In multi-view learning, data is described using different representations, or v...
In this paper we empirically investigate the benefits of multi-view multi-instance (MVMI) learning f...
Abstract—The Multi-view or multi-modality learning approach is becoming popular for providing differ...
International audienceIn this article we tackle the supervised multi-view learning problem with kern...
Multi-View Learning over Structured and Non-Identical Outputs In many machine learning problems, lab...
Multi-view classification optimally integrates various features from different views to improve clas...
Due to the efficiency of learning relationships and complex structures hidden in data, graph-oriente...