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  • Search: subject:"High Dimensional Data"
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Year of publication
Subject
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High-dimensional data 73 high-dimensional data 51 Schätztheorie 49 Estimation theory 48 Theorie 39 Theory 37 Regression analysis 34 Regressionsanalyse 34 Time series analysis 34 Zeitreihenanalyse 34 Estimation 32 Schätzung 32 Prognoseverfahren 26 Forecasting model 25 Factor analysis 21 High dimensional data 21 Faktorenanalyse 20 Correlation 17 Korrelation 17 Lasso 12 Statistical test 11 Statistischer Test 11 Volatility 11 Volatilität 11 Multivariate Analyse 10 Multivariate analysis 10 Causality analysis 9 Kausalanalyse 9 high dimensional data 9 Analysis of variance 8 Capital income 8 Kapitaleinkommen 8 Portfolio selection 8 Portfolio-Management 8 Varianzanalyse 8 shrinkage 8 Artificial intelligence 7 Big Data 7 Bootstrap approach 7 Bootstrap-Verfahren 7
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Online availability
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Undetermined 95 Free 75 CC license 2
Type of publication
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Article 110 Book / Working Paper 69
Type of publication (narrower categories)
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Article in journal 62 Aufsatz in Zeitschrift 62 Working Paper 47 Graue Literatur 39 Non-commercial literature 39 Arbeitspapier 36 Thesis 4 Aufsatz im Buch 3 Book section 3 Article 2 Case study 1 Fallstudie 1 Hochschulschrift 1
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Language
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English 126 Undetermined 53
Author
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Giannone, Domenico 10 Bailey, Natalia 8 Lan, Wei 8 Pesaran, M. Hashem 8 Smith, L. Vanessa 7 Kock, Anders Bredahl 6 Smeekes, Stephan 6 Honda, Toshio 5 Tsai, Chih-Ling 5 Wang, Hansheng 5 Binder, Harald 4 Schumacher, Martin 4 Alfelt, Gustav 3 Bodnar, Taras 3 Bouveyron, Charles 3 Chernozhukov, Victor 3 Conflitti, Cristina 3 De Mol, Christine 3 Freyaldenhoven, Simon 3 Gao, Jiti 3 Glombek, Konstantin 3 Hansen, Christian Bailey 3 Härdle, Wolfgang 3 Härdle, Wolfgang Karl 3 Javed, Farrukh 3 Katayama, Shota 3 Modugno, Michele 3 Reichlin, Lucrezia 3 Tyrcha, Joanna 3 Wang, Cheng 3 Weber, Matthias 3 Xiu, Dacheng 3 Yuan, Ming 3 Zhang, Yichong 3 Aït-Sahalia, Yacine 2 Bańbura, Marta 2 Belloni, Alexandre 2 Bok, Brandyn 2 Brakel, Jan A. van den 2 Caner, Mehmet 2
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Institution
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School of Economics and Management, University of Aarhus 3 C.E.P.R. Discussion Papers 2 European Centre for Advanced Research in Economics and Statistics (ECARES), Solvay Brussels School of Economics and Management 2 Berkeley Electronic Press 1 CESifo 1 Department of Economics, European University Institute 1 Faculty of Economics, University of Cambridge 1 National Bureau of Economic Research 1 Seminar für Wirtschafts- und Sozialstatistik, Wirtschafts- und Sozialwissenschaftliche Fakultät 1 Sonderforschungsbereich 649: Ökonomisches Risiko, Wirtschaftswissenschaftliche Fakultät 1 Tinbergen Instituut 1
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Published in...
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Journal of econometrics 17 Computational Statistics & Data Analysis 10 Journal of Multivariate Analysis 10 Journal of business & economic statistics : JBES ; a publication of the American Statistical Association 9 International journal of forecasting 4 CEMMAP working papers / Centre for Microdata Methods and Practice 3 CREATES Research Papers 3 Statistics & Probability Letters 3 Working paper 3 Working paper / Department of Econometrics and Business Statistics, Monash University 3 CEPR Discussion Papers 2 CESifo Working Paper 2 CESifo working papers 2 Computational Statistics 2 Data science and service research discussion paper 2 Discussion paper / Statistics Netherlands 2 Discussion papers / Graduate School of Economics, Hitotsubashi University 2 International journal of production research 2 Journal of information & knowledge management : JIKM 2 Psychometrika 2 SFB 649 Discussion Paper 2 SFB 649 discussion paper 2 Staff Report 2 Staff reports / Federal Reserve Bank of New York 2 Statistical Papers / Springer 2 The Japanese economic review : the journal of the Japanese Economic Association 2 Working Paper 2 Working Papers ECARES 2 Working papers / Federal Reserve Bank of Philadelphia, Research Department 2 Advances in Data Analysis and Classification 1 Annals of the Institute of Statistical Mathematics 1 Bozen economics & management paper series : BEMPS 1 CAMP working paper series 1 CEA_372Bayes working paper series 1 CEA_372Cass working paper series 1 CESifo Working Paper Series 1 Cambridge Working Papers in Economics 1 Cambridge working papers in economics 1 Computational Economics 1 Cowles Foundation discussion paper 1
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Source
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ECONIS (ZBW) 106 RePEc 53 EconStor 13 BASE 4 Other ZBW resources 3
Showing 141 - 150 of 179
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Lasso penalized model selection criteria for high-dimensional multivariate linear regression analysis
Katayama, Shota; Imori, Shinpei - In: Journal of Multivariate Analysis 132 (2014) C, pp. 138-150
This paper proposes two model selection criteria for identifying relevant predictors in the high-dimensional multivariate linear regression analysis. The proposed criteria are based on a Lasso type penalized likelihood function to allow the high-dimensionality. Under the asymptotic framework...
Persistent link: https://www.econbiz.de/10010939517
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Empirical likelihood test for high dimensional linear models
Peng, Liang; Qi, Yongcheng; Wang, Ruodu - In: Statistics & Probability Letters 86 (2014) C, pp. 85-90
We propose an empirical likelihood method to test whether the coefficients in a possibly high-dimensional linear model are equal to given values. The asymptotic distribution of the test statistic is independent of the number of covariates in the linear model.
Persistent link: https://www.econbiz.de/10010743581
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Non-parametric shrinkage mean estimation for quadratic loss functions with unknown covariance matrices
Wang, Cheng; Tong, Tiejun; Cao, Longbing; Miao, Baiqi - In: Journal of Multivariate Analysis 125 (2014) C, pp. 222-232
In this paper, a shrinkage estimator for the population mean is proposed under known quadratic loss functions with unknown covariance matrices. The new estimator is non-parametric in the sense that it does not assume a specific parametric distribution for the data and it does not require the...
Persistent link: https://www.econbiz.de/10010743747
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Regularized principal components of heritability
Fang, Yixin; Feng, Yang; Yuan, Ming - In: Computational Statistics 29 (2014) 3, pp. 455-465
In family studies with multiple continuous phenotypes, heritability can be conveniently evaluated through the so-called principal-component of heredity (PCH, for short; Ott and Rabinowitz in Hum Hered 49:106–111, <CitationRef CitationID="CR12">1999</CitationRef>). Estimation of the PCH, however, is notoriously difficult when entertaining...</citationref>
Persistent link: https://www.econbiz.de/10010998518
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Asymptotic power of likelihood ratio tests for high dimensional data
Wang, Cheng - In: Statistics & Probability Letters 88 (2014) C, pp. 184-189
This paper studies the asymptotic power of the likelihood ratio test (LRT) for the identity test when the dimension p is large compared to the sample size n. The asymptotic distribution under local alternatives is derived and a simulation study is carried out to compare LRT with other tests. All...
Persistent link: https://www.econbiz.de/10010752974
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Model-based clustering of high-dimensional data: A review
Bouveyron, Charles; Brunet-Saumard, Camille - In: Computational Statistics & Data Analysis 71 (2014) C, pp. 52-78
. However, high-dimensional data are nowadays more and more frequent and, unfortunately, classical model-based clustering … and clustering methods based on variable selection are reviewed. Existing softwares for model-based clustering of high-dimensional … data will be also reviewed and their practical use will be illustrated on real-world data sets. …
Persistent link: https://www.econbiz.de/10010719687
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Directed principal component analysis
Kao, Yi-hao; Van Roy, Benjamin - In: Operations research 62 (2014) 4, pp. 957-972
Persistent link: https://www.econbiz.de/10010403095
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Causality and aggregation in economics: the use of high dimensional panel data in micro-econometrics and macro-econometrics
Bessler, David A. (contributor) - 2007
- econometric analyses, for the full realization ofresearch potential brought by recently available high dimensional data. To … for the graphical causal models can be violatedfor high dimensional data, given that close co-movements and thus near … deterministic relationsare oftentimes observed among variables in high dimensional data. Aggregation methods areproposed as one …
Persistent link: https://www.econbiz.de/10009465107
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Adaptive risk management
Chen, Ying - 2007
In den vergangenen Jahren ist die Untersuchung des Risikomanagements vom Baselkomitee angeregt, um die Kredit- und Bankwesen regelmäßig zu aufsichten. Für viele multivariate Risikomanagementmethoden gibt es jedoch Beschränkungen von: 1) verlässt sich die Kovarianzschätzung auf eine...
Persistent link: https://www.econbiz.de/10009467091
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Two-way incremental seriation in the temporal domain with three-dimensional visualization: Making sense of evolving high-dimensional datasets
Wittek, Peter - In: Computational Statistics & Data Analysis 66 (2013) C, pp. 193-201
-dimensional landscape where colour codes or height correspond to the values in the matrix. To achieve a meaningful visualization of high-dimensional … data, a compactly supported convolution kernel is introduced, which is similar to filter kernels used in image …
Persistent link: https://www.econbiz.de/10010871425
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