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  • Search: subject:"Kernel methods"
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Year of publication
Subject
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kernel methods 17 Kernel methods 7 nonlinear forecasting 7 High dimensionality 6 ridge regression 5 Prognoseverfahren 4 Schätztheorie 4 bandwidth 3 high dimensionality 3 prediction 3 quantile estimation 3 shrinkage estimation 3 time series analysis 3 Absolutely regular 2 Estimation theory 2 Forecasting model 2 Gaussian Process 2 Kernel Methods 2 Nichtlineare Regression 2 Nichtlineares Verfahren 2 Nonlinear forecasting 2 Nonlinear regression 2 Regression 2 Wasserstein Distance 2 bias 2 biased bootstrap 2 conditional distribution 2 confidence interval 2 conservative coverage 2 coverage error 2 large margin and instance-based classifiers 2 local linear methods 2 local logistic methods 2 statistical smoothing 2 weighted bootstrap 2 Bandwidth 1 Bootstrap approach 1 Bootstrap-Verfahren 1 Classification 1 Classification problems 1
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Online availability
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Free 27
Type of publication
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Book / Working Paper 23 Article 3 Other 1
Type of publication (narrower categories)
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Working Paper 10 Arbeitspapier 3 Graue Literatur 3 Non-commercial literature 3 Article 1
Language
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English 15 Undetermined 12
Author
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Exterkate, Peter 9 Hall, Peter 5 Heij, Christiaan 5 Dijk, Dick van 4 Groenen, Patrick J.F. 4 Yao, Qiwei 3 Chernozhukov, Victor 2 Fernández-Val, Iván 2 Galichon, Alfred 2 Horowitz, Joel 2 Spokoiny, Vladimir 2 Ang, Andrew 1 Bachoc, Francois 1 Bandi, Federico M. 1 Bioch, Bioch, J.C. 1 Bioch, J.C. 1 Gonzalez, Javier 1 Groenen, P.J.F. 1 Groenen, Patrick 1 Groenen, Patrick J. F. 1 Kim, Joo Seuk 1 Koziuk, Andzhey 1 Kristensen, Dennis 1 Le, Quoc 1 Loubes, Jean-Michel 1 Monteiro, André A. 1 Munoz, Alberto 1 Mücke, Nicole 1 Nalbantov, G.I. 1 Nalbantov, Nalbantov, G.I. 1 Reno, Roberto 1 Rosasco, Lorenzo 1 Sears, Timothy 1 Smola, Alexander 1 Stankewitz, Bernhard 1 Suvorikova, Alexandra 1 Takeuchi, Ichiro 1 Wolff, Rodney C 1 Wolff, Rodney C. 1 van Dijk, Dick 1
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Institution
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School of Economics and Management, University of Aarhus 3 Departamento de Estadistica, Universidad Carlos III de Madrid 2 Tinbergen Instituut 2 Erasmus University Rotterdam, Econometric Institute 1 Faculteit der Economische Wetenschappen, Erasmus Universiteit Rotterdam 1 Institute of Economic Research, Hitotsubashi University 1 London School of Economics (LSE) 1 School of Economics and Finance, Business School 1 Tinbergen Institute 1
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Published in...
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CREATES Research Papers 3 Tinbergen Institute Discussion Papers 3 cemmap working paper 3 Discussion paper / Tinbergen Institute 2 IRTG 1792 Discussion Paper 2 Statistics and Econometrics Working Papers 2 Tinbergen Institute Discussion Paper 2 CEMMAP working papers / Centre for Microdata Methods and Practice 1 Computational Optimization and Applications 1 Econometric Institute Report 1 Econometric Institute Research Papers 1 Global COE Hi-Stat Discussion Paper Series 1 LSE Research Online Documents on Economics 1 School of Economics and Finance Discussion Papers and Working Papers Series 1
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Source
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RePEc 13 EconStor 8 BASE 3 ECONIS (ZBW) 3
Showing 1 - 10 of 27
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From inexact optimization to learning via gradient concentration
Stankewitz, Bernhard; Mücke, Nicole; Rosasco, Lorenzo - In: Computational Optimization and Applications 84 (2022) 1, pp. 265-294
Optimization in machine learning typically deals with the minimization of empirical objectives defined by training data. The ultimate goal of learning, however, is to minimize the error on future data (test error), for which the training data provides only partial information. In this view, the...
Persistent link: https://www.econbiz.de/10015327608
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Gaussian Process Forecast with multidimensional distributional entries
Bachoc, Francois; Suvorikova, Alexandra; Loubes, Jean-Michel - 2018
In this work, we propose to define Gaussian Processes indexed by multidimensional distributions. In the framework where the distributions can be modeled as i.i.d realizations of a measure on the set of distributions, we prove that the kernel defined as the quadratic distance between the...
Persistent link: https://www.econbiz.de/10012433179
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Instrumental variables regression
Koziuk, Andzhey; Spokoiny, Vladimir - 2018
IV regression in the context of a re-sampling is considered in the work. Comparatively, the contribution in the development is a structural identication in the IV model. The work also contains a multiplier-bootstrap justication.
Persistent link: https://www.econbiz.de/10012433180
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Nonlinear Forecasting With Many Predictors Using Kernel Ridge Regression
Exterkate, Peter; Groenen, Patrick J.F.; Heij, Christiaan; … - School of Economics and Management, University of Aarhus - 2013
This paper puts forward kernel ridge regression as an approach for forecasting with many predictors that are related nonlinearly to the target variable. In kernel ridge regression, the observed predictor variables are mapped nonlinearly into a high-dimensional space, where estimation of the...
Persistent link: https://www.econbiz.de/10010851287
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A simple bootstrap method for constructing nonparametric confidence bands for functions
Hall, Peter; Horowitz, Joel - 2012
Standard approaches to constructing nonparametric confidence bands for functions are frustrated by the impact of bias, which generally is not estimated consistently when using the bootstrap and conventionally smoothed function estimators. To overcome this problem it is common practice to either...
Persistent link: https://www.econbiz.de/10010288303
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Model Selection in Kernel Ridge Regression
Exterkate, Peter - School of Economics and Management, University of Aarhus - 2012
Kernel ridge regression is gaining popularity as a data-rich nonlinear forecasting tool, which is applicable in many different contexts. This paper investigates the influence of the choice of kernel and the setting of tuning parameters on forecast accuracy. We review several popular kernels,...
Persistent link: https://www.econbiz.de/10010851278
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A simple bootstrap method for constructing nonparametric confidence bands for functions
Hall, Peter; Horowitz, Joel - 2012
Standard approaches to constructing nonparametric confidence bands for functions are frustrated by the impact of bias, which generally is not estimated consistently when using the bootstrap and conventionally smoothed function estimators. To overcome this problem it is common practice to either...
Persistent link: https://www.econbiz.de/10009554351
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Kernel Methods for Classification with Irregularly Sampled and Contaminated Data.
Kim, Joo Seuk - 2011
design a classifier. In this thesis, we present kernel methods for classification with irregularly sampled and contaminated …-operative patient with possible sepsis. The experimental results show that the proposed features, when paired with kernel methods, have …
Persistent link: https://www.econbiz.de/10009482954
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Nonlinear Forecasting with Many Predictors using Kernel Ridge Regression
Exterkate, Peter; Groenen, Patrick J.F.; Heij, Christiaan; … - 2011
This paper puts forward kernel ridge regression as an approach for forecasting with many predictors that are related nonlinearly to the target variable. In kernel ridge regression, the observed predictor variables are mapped nonlinearly into a high-dimensional space, where estimation of the...
Persistent link: https://www.econbiz.de/10010325897
Saved in:
Cover Image
Modelling Issues in Kernel Ridge Regression
Exterkate, Peter - 2011
Kernel ridge regression is gaining popularity as a data-rich nonlinear forecasting tool, which is applicable in many different contexts. This paper investigates the influence of the choice of kernel and the setting of tuning parameters on forecast accuracy. We review several popular kernels,...
Persistent link: https://www.econbiz.de/10010326392
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