Review on Multi-lable Classification
Review on Multi-lable Classification
Blog Article
Multi-label classification refers to the classification problem where multiple labels may coexist in a single sample.It has been widely applied in fields such as text classification, image classification, music and video classification.Unlike traditional single-label classification problems, multi-label classification problems become more complex due to the possible correlation or dependence among labels.
In recent years, with the rapid development of Wrist Braces deep learning technology, many multi-label classification methods combined with deep learning have gradually become a research hotspot.Therefore, this paper summarizes the multi-label classification methods from the traditional and deep learning-based perspectives, and analyzes the key ideas, representative models, and advantages and disadvantages of each method.In traditional multi-label classification methods, problem transformation methods and algorithm adaptation methods are introduced.
In deep learning-based multi-label classification methods, the latest Luncheon Napkins multi-label classification methods based on Transformer are reviewed particularly, which have become one of the mainstream methods to solve multi-label classification problems.Additionally, various multi-label classification datasets from different domains are introduced, and 15 evaluation metrics for multi-label classification are briefly analyzed.Finally, future work is discussed from the perspectives of multi-modal data multi-label classification, prompt learning-based multi-label classification, and imbalanced data multi-label classification, in order to further promote the development and application of multi-label classification.