Classifier Chains: A Review and Perspectives
Read, Jesse, Pfahringer, Bernhard, Holmes, Geoffrey, Frank, Eibe
–Journal of Artificial Intelligence Research
The family of methods collectively known as classifier chains has become a popular approach to multi-label learning problems. This approach involves chaining together off-the-shelf binary classifiers in a directed structure, such that individual label predictions become features for other classifiers. Such methods have proved flexible and effective and have obtained state-of-the-art empirical performance across many datasets and multi-label evaluation metrics. This performance led to further studies of the underlying mechanism and efficacy, and investigation into how it could be improved. In the recent decade, numerous studies have explored the theoretical underpinnings of classifier chains, and many improvements have been made to the training and inference procedures, such that this method remains among the best options for multi-label learning. Given this past and ongoing interest, which covers a broad range of applications and research themes, the goal of this work is to provide a review of classifier chains, a survey of the techniques and extensions provided in the literature, as well as perspectives for this approach in the domain of multi-label classification in the future. We conclude positively, with a number of recommendations for researchers and practitioners, as well as outlining key issues for future research.
Journal of Artificial Intelligence Research
Feb-11-2021
- Country:
- Asia
- China (0.04)
- Macao (0.04)
- Middle East > Israel
- Haifa District > Haifa (0.04)
- Europe
- France (0.04)
- United Kingdom > England
- Greater London > London (0.04)
- North America
- Canada > Quebec
- Capitale-Nationale Region
- Quebec City (0.04)
- Québec (0.04)
- Capitale-Nationale Region
- United States > New York
- New York County > New York City (0.14)
- Canada > Quebec
- Oceania > New Zealand
- North Island > Waikato > Hamilton (0.04)
- Asia
- Genre:
- Overview (1.00)
- Technology:
- Information Technology
- Artificial Intelligence
- Machine Learning
- Learning Graphical Models > Directed Networks
- Bayesian Learning (0.93)
- Neural Networks > Deep Learning (0.67)
- Statistical Learning (1.00)
- Learning Graphical Models > Directed Networks
- Natural Language (1.00)
- Representation & Reasoning
- Search (1.00)
- Uncertainty > Bayesian Inference (0.68)
- Machine Learning
- Data Science (1.00)
- Information Management (1.00)
- Artificial Intelligence
- Information Technology