Each document in a multi-label classification is connected to a subset of labels. These documents usually include a big number of features, which can hamper the performance of learning algorithms. Therefore, feature selection is helpful in isolating the redundant and irrelevant elements that can hold the performance back. The current study proposes a Naive Bayesian (NB) multi-label classification algorithm by incorporating a wrapper approach for the strategy of feature selection aiming at determining the best minimum confidence threshold. This paper also suggests transforming the multi-label documents prior to utilizing the standard algorithm of feature selection. In such a process, the document was copied into labels that belonged to by ad...
Feature Selection plays an important role in machine learning and data mining, and it is often appli...
Multi-label classification has many applications in the text categorization, biology and medical dia...
AbstractFeature selection is an important task in machine learning, which can effectively reduce the...
Each document in a multi-label classification is connected to a subset of labels. These documents us...
Each document in a multi-label classification is connected to a subset of labels. These documents us...
AbstractFeature selection is an important task in machine learning, which can effectively reduce the...
Multi-label classification is a fast-growing field of machine learning. Recent developments have sho...
Multi-label learning has emerged as a crucial paradigm in data analysis, addressing scenarios where ...
Multi-label classification addresses the issues that more than one class label assigns to each insta...
Multi-label classification is a generalization of a broader concept of multi-class classification in...
In many important application domains, such as text categorization, biomolecular analysis, scene or ...
Research on multi-label classification is concerned with developing and evaluating algorithms that l...
Multi-label classification (MLC) is a supervised learning problem in which a particular example can ...
Feature Selection plays an important role in machine learning and data mining, and it is often appli...
This paper presents an empirical study of multi-label classification methods, and gives suggestions ...
Feature Selection plays an important role in machine learning and data mining, and it is often appli...
Multi-label classification has many applications in the text categorization, biology and medical dia...
AbstractFeature selection is an important task in machine learning, which can effectively reduce the...
Each document in a multi-label classification is connected to a subset of labels. These documents us...
Each document in a multi-label classification is connected to a subset of labels. These documents us...
AbstractFeature selection is an important task in machine learning, which can effectively reduce the...
Multi-label classification is a fast-growing field of machine learning. Recent developments have sho...
Multi-label learning has emerged as a crucial paradigm in data analysis, addressing scenarios where ...
Multi-label classification addresses the issues that more than one class label assigns to each insta...
Multi-label classification is a generalization of a broader concept of multi-class classification in...
In many important application domains, such as text categorization, biomolecular analysis, scene or ...
Research on multi-label classification is concerned with developing and evaluating algorithms that l...
Multi-label classification (MLC) is a supervised learning problem in which a particular example can ...
Feature Selection plays an important role in machine learning and data mining, and it is often appli...
This paper presents an empirical study of multi-label classification methods, and gives suggestions ...
Feature Selection plays an important role in machine learning and data mining, and it is often appli...
Multi-label classification has many applications in the text categorization, biology and medical dia...
AbstractFeature selection is an important task in machine learning, which can effectively reduce the...