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A survey on ensemble learning
作者姓名:Xibin DONG  Zhiwen YU  Wenming CAO  Yifan SHI  Qianli MA
作者单位:School of Computer Science and Engineering;Department of Computer Science
基金项目:the National Natural Science Foundation of China(Grant Nos.61722205,61751205,61572199,61502174,61872148,and U 1611461);the grant from the key research and development program of Guangdong province of China(2018B010107002);the grants from Science and Technology Planning Project of Guangdong Province,China(2016A050503015,2017A030313355);the grant from the Guangzhou science and technology planning project(201704030051).
摘    要:Despite significant successes achieved in knowledge discovery,traditional machine learning methods may fail to obtain satisfactory performances when dealing with complex data,such as imbalanced,high-dimensional,noisy data,etc.The reason behind is that it is difficult for these methods to capture multiple characteristics and underlying structure of data.In this context,it becomes an important topic in the data mining field that how to effectively construct an efficient knowledge discovery and mining model.Ensemble learning,as one research hot spot,aims to integrate data fusion,data modeling,and data mining into a unified framework.Specifically,ensemble learning firstly extracts a set of features with a variety of transformations.Based on these learned features,multiple learning algorithms are utilized to produce weak predictive results.Finally,ensemble learning fuses the informative knowledge from the above results obtained to achieve knowledge discovery and better predictive performance via voting schemes in an adaptive way.In this paper,we review the research progress of the mainstream approaches of ensemble learning and classify them based on different characteristics.In addition,we present challenges and possible research directions for each mainstream approach of ensemble learning,and we also give an extra introduction for the combination of ensemble learning with other machine learning hot spots such as deep learning,reinforcement learning,etc.

关 键 词:ENSEMBLE  LEARNING  supervised  ENSEMBLE  CLASSIFICATION  SEMI-SUPERVISED  ENSEMBLE  CLASSIFICATION  CLUSTERING  ENSEMBLE  SEMI-SUPERVISED  CLUSTERING  ENSEMBLE

A survey on ensemble learning
Xibin DONG,Zhiwen YU,Wenming CAO,Yifan SHI,Qianli MA.A survey on ensemble learning[J].Frontiers of Computer Science,2020,14(2):241-258.
Authors:Xibin DONG  Zhiwen YU  Wenming CAO  Yifan SHI  Qianli MA
Affiliation:1. School of Computer Science and Engineering, South China University of Technology, Guangzhou 510006, China2. Department of Computer Science, City University of Hong Kong, Hong Kong SAR 999077, China
Abstract:Despite significant successes achieved in knowledge discovery, traditional machine learning methods may fail to obtain satisfactory performances when dealing with complex data, such as imbalanced, high-dimensional, noisy data, etc. The reason behind is that it is difficult for these methods to capture multiple characteristics and underlying structure of data. In this context, it becomes an important topic in the data mining field that how to effectively construct an efficient knowledge discovery and mining model. Ensemble learning, as one research hot spot, aims to integrate data fusion, data modeling, and data mining into a unified framework. Specifically, ensemble learning firstly extracts a set of features with a variety of transformations. Based on these learned features, multiple learning algorithms are utilized to produce weak predictive results. Finally, ensemble learning fuses the informative knowledge from the above results obtained to achieve knowledge discovery and better predictive performance via voting schemes in an adaptive way. In this paper, we review the research progress of the mainstream approaches of ensemble learning and classify them based on different characteristics. In addition, we present challenges and possible research directions for each mainstream approach of ensemble learning, and we also give an extra introduction for the combination of ensemble learning with other machine learning hot spots such as deep learning, reinforcement learning, etc.
Keywords:ensemble learning  supervised ensemble classification  semi-supervised ensemble classification  clustering ensemble  semi-supervised clustering ensemble  
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