Literature DB >> 15070510

Are loss functions all the same?

Lorenzo Rosasco1, Ernesto De Vito, Andrea Caponnetto, Michele Piana, Alessandro Verri.   

Abstract

In this letter, we investigate the impact of choosing different loss functions from the viewpoint of statistical learning theory. We introduce a convexity assumption, which is met by all loss functions commonly used in the literature, and study how the bound on the estimation error changes with the loss. We also derive a general result on the minimizer of the expected risk for a convex loss function in the case of classification. The main outcome of our analysis is that for classification, the hinge loss appears to be the loss of choice. Other things being equal, the hinge loss leads to a convergence rate practically indistinguishable from the logistic loss rate and much better than the square loss rate. Furthermore, if the hypothesis space is sufficiently rich, the bounds obtained for the hinge loss are not loosened by the thresholding stage.

Mesh:

Year:  2004        PMID: 15070510     DOI: 10.1162/089976604773135104

Source DB:  PubMed          Journal:  Neural Comput        ISSN: 0899-7667            Impact factor:   2.026


  16 in total

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2.  Automated Detection of Obstructive Sleep Apnea Events from a Single-Lead Electrocardiogram Using a Convolutional Neural Network.

Authors:  Erdenebayar Urtnasan; Jong-Uk Park; Eun-Yeon Joo; Kyoung-Joung Lee
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4.  Investigation of Super Learner Methodology on HIV-1 Small Sample: Application on Jaguar Trial Data.

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5.  Structured feature selection using coordinate descent optimization.

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Journal:  BMC Bioinformatics       Date:  2016-04-08       Impact factor: 3.169

Review 6.  Moving beyond regression techniques in cardiovascular risk prediction: applying machine learning to address analytic challenges.

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Journal:  Eur Heart J       Date:  2017-06-14       Impact factor: 29.983

Review 7.  Deep Learning and Its Applications in Biomedicine.

Authors:  Chensi Cao; Feng Liu; Hai Tan; Deshou Song; Wenjie Shu; Weizhong Li; Yiming Zhou; Xiaochen Bo; Zhi Xie
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8.  Modeling and Experimental Study for Online Measurement of Hydraulic Cylinder Micro Leakage Based on Convolutional Neural Network.

Authors:  Yuan Guo; Yinchuan Zeng; Liandong Fu; Xinyuan Chen
Journal:  Sensors (Basel)       Date:  2019-05-09       Impact factor: 3.576

Review 9.  Applications of machine learning methods in kidney disease: hope or hype?

Authors:  Lili Chan; Akhil Vaid; Girish N Nadkarni
Journal:  Curr Opin Nephrol Hypertens       Date:  2020-05       Impact factor: 3.416

10.  A physical model for efficient ranking in networks.

Authors:  Caterina De Bacco; Daniel B Larremore; Cristopher Moore
Journal:  Sci Adv       Date:  2018-07-20       Impact factor: 14.136

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