DocumentCode :
1134895
Title :
Pareto-Based Multiobjective Machine Learning: An Overview and Case Studies
Author :
Jin, Yaochu ; Sendhoff, Bernhard
Author_Institution :
Honda Res. Inst. Eur., Offenbach
Volume :
38
Issue :
3
fYear :
2008
fDate :
5/1/2008 12:00:00 AM
Firstpage :
397
Lastpage :
415
Abstract :
Machine learning is inherently a multiobjective task. Traditionally, however, either only one of the objectives is adopted as the cost function or multiple objectives are aggregated to a scalar cost function. This can be mainly attributed to the fact that most conventional learning algorithms can only deal with a scalar cost function. Over the last decade, efforts on solving machine learning problems using the Pareto-based multiobjective optimization methodology have gained increasing impetus, particularly due to the great success of multiobjective optimization using evolutionary algorithms and other population-based stochastic search methods. It has been shown that Pareto-based multiobjective learning approaches are more powerful compared to learning algorithms with a scalar cost function in addressing various topics of machine learning, such as clustering, feature selection, improvement of generalization ability, knowledge extraction, and ensemble generation. One common benefit of the different multiobjective learning approaches is that a deeper insight into the learning problem can be gained by analyzing the Pareto front composed of multiple Pareto-optimal solutions. This paper provides an overview of the existing research on multiobjective machine learning, focusing on supervised learning. In addition, a number of case studies are provided to illustrate the major benefits of the Pareto-based approach to machine learning, e.g., how to identify interpretable models and models that can generalize on unseen data from the obtained Pareto-optimal solutions. Three approaches to Pareto-based multiobjective ensemble generation are compared and discussed in detail. Finally, potentially interesting topics in multiobjective machine learning are suggested.
Keywords :
Pareto optimisation; evolutionary computation; learning (artificial intelligence); Machine Learning:; Pareto-based multiobjective learning; evolutionary algorithms; multiobjective optimization; scalar cost function; Clustering algorithms; Cost function; Evolutionary computation; Machine learning; Machine learning algorithms; Pareto analysis; Power generation; Search methods; Stochastic processes; Supervised learning; Ensemble; Pareto optimization; evolutionary multiobjective optimization; generalization; machine learning; multiobjective learning; multiobjective optimization; neural networks;
fLanguage :
English
Journal_Title :
Systems, Man, and Cybernetics, Part C: Applications and Reviews, IEEE Transactions on
Publisher :
ieee
ISSN :
1094-6977
Type :
jour
DOI :
10.1109/TSMCC.2008.919172
Filename :
4492360
Link To Document :
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