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Machine learning problems from optimization perspective

Year of publication:
2010
Authors: Xu, Lei
Published in:
Journal of Global Optimization. - Springer. - Vol. 47.2010, 3, p. 369-401
Publisher: Springer
Subject: Three levels of inverse problems | Parameter learning | Model selection | Local convexity | Convex duality | Learning versus optimization | Convex programming | Bayesian Ying-Yang learning | Automatic model selection | Learning based combinatorial optimization
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Type of publication: Article
Source:
RePEc - Research Papers in Economics
Persistent link: https://www.econbiz.de/10008456026
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