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Missing data 7 EM algorithm 6 Econometrics 6 Probability Theory and Stochastic Processes 6 Statistical consulting 6 Statistics for Business, Management, Economics, Finance, Insurance 6 Statistics, general 6 Estimation 5 Explainable artificial intelligence 5 Interpretable machine learning 5 Moments 5 Panel data 5 Cointegration 4 Computer experiments 4 Factor analysis 4 Feature importance 4 Measurement error 4 Mixture models 4 Multiple imputation 4 Structural equation modeling 4 Analysis of variance 3 Asymptotic normality 3 Capture–recapture 3 Deep learning 3 Design of experiments 3 Forecasting 3 Functional data 3 Heterogeneity 3 Imputation 3 Monte Carlo simulation 3 Monte Carlo study 3 Regularization 3 Sample selection 3 Statistical process control 3 Stochastic differential equations 3 products of random variables 3 Bayesian analysis 2 Bayesian statistics 2 Beta regression 2 Bradley–Terry model 2
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Undetermined 261 Free 41
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Article 302
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Article 39 Book Review 2
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Undetermined 261 English 41
Author
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Uebe, Götz 11 Nadarajah, Saralees 10 Kauermann, Göran 8 Kneib, Thomas 6 Härdle, Wolfgang 5 Schlittgen, Rainer 5 Schmid, Wolfgang 5 Groll, Andreas 4 Böhning, Dankmar 3 Golosnoy, Vasyl 3 Hassler, Uwe 3 Haupt, Harry 3 Hsiao, Cheng 3 Kotz, Samuel 3 Krumbholz, Wolf 3 Münnich, Ralf 3 Okhrin, Yarema 3 Pauly, Markus 3 Rendtel, Ulrich 3 Schmidt, Klaus 3 Singer, Hermann 3 Webel, Karsten 3 Weiß, Christian 3 Weißbach, Rafael 3 Ötting, Marius 3 Aßenmacher, Matthias 2 Behnke, Joachim 2 Berger, Ursula 2 Bischl, Bernd 2 Blesch, Kristin 2 Brefeld, Ulf 2 Bresson, Georges 2 Böckenhoff, Annette 2 Demetrescu, Matei 2 Doblhammer, Gabriele 2 Dörre, Achim 2 Engel, Joachim 2 Fahrmeir, Ludwig 2 Fickel, Norman 2 Fink, Anne 2
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AStA Advances in Statistical Analysis 302
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RePEc 261 EconStor 41
Showing 11 - 20 of 302
Cover Image
Debiasing SHAP scores in random forests
Loecher, Markus - In: AStA Advances in Statistical Analysis 108 (2023) 2, pp. 427-440
Black box machine learning models are currently being used for high-stakes decision making in various parts of society such as healthcare and criminal justice. While tree-based ensemble methods such as random forests typically outperform deep learning models on tabular data sets, their built-in...
Persistent link: https://www.econbiz.de/10015168519
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Conditional feature importance for mixed data
Blesch, Kristin; Watson, David S.; Wright, Marvin N. - In: AStA Advances in Statistical Analysis 108 (2023) 2, pp. 259-278
Despite the popularity of feature importance (FI) measures in interpretable machine learning, the statistical adequacy of these methods is rarely discussed. From a statistical perspective, a major distinction is between analysing a variable's importance before and after adjusting for...
Persistent link: https://www.econbiz.de/10015187795
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Mixture of experts distributional regression: implementation using robust estimation with adaptive first-order methods
Rügamer, David; Pfisterer, Florian; Bischl, Bernd; … - In: AStA Advances in Statistical Analysis 108 (2023) 2, pp. 351-373
In this work, we propose an efficient implementation of mixtures of experts distributional regression models which exploits robust estimation by using stochastic first-order optimization techniques with adaptive learning rate schedulers. We take advantage of the flexibility and scalability of...
Persistent link: https://www.econbiz.de/10015327403
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Cover Image
A Bayesian approach to modeling topic-metadata relationships
Schulze, Patrick; Wiegrebe, Simon; Thurner, Paul W.; … - In: AStA Advances in Statistical Analysis 108 (2023) 2, pp. 333-349
The objective of advanced topic modeling is not only to explore latent topical structures, but also to estimate relationships between the discovered topics and theoretically relevant metadata. Methods used to estimate such relationships must take into account that the topical structure is not...
Persistent link: https://www.econbiz.de/10015327412
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Cover Image
Left-truncated health insurance claims data: theoretical review and empirical application
Weißbach, Rafael; Dörre, Achim; Wied, Dominik; … - In: AStA Advances in Statistical Analysis 108 (2023) 1, pp. 31-68
From the inventory of the health insurer AOK in 2004, we draw a sample of a quarter million people and follow each person's health claims continuously until 2013. Our aim is to estimate the effect of a stroke on the dementia onset probability for Germans born in the first half of the 20th...
Persistent link: https://www.econbiz.de/10015272034
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Cover Image
Statistical guarantees for sparse deep learning
Lederer, Johannes - In: AStA Advances in Statistical Analysis 108 (2023) 2, pp. 231-258
Neural networks are becoming increasingly popular in applications, but our mathematical understanding of their potential and limitations is still limited. In this paper, we further this understanding by developing statistical guarantees for sparse deep learning. In contrast to previous work, we...
Persistent link: https://www.econbiz.de/10015404242
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Cover Image
Mixture of experts distributional regression: implementation using robust estimation with adaptive first-order methods
Rügamer, David; Pfisterer, Florian; Bischl, Bernd; … - In: AStA Advances in Statistical Analysis 108 (2023) 2, pp. 351-373
In this work, we propose an efficient implementation of mixtures of experts distributional regression models which exploits robust estimation by using stochastic first-order optimization techniques with adaptive learning rate schedulers. We take advantage of the flexibility and scalability of...
Persistent link: https://www.econbiz.de/10015404246
Saved in:
Cover Image
A Bayesian approach to modeling topic-metadata relationships
Schulze, Patrick; Wiegrebe, Simon; Thurner, Paul W.; … - In: AStA Advances in Statistical Analysis 108 (2023) 2, pp. 333-349
The objective of advanced topic modeling is not only to explore latent topical structures, but also to estimate relationships between the discovered topics and theoretically relevant metadata. Methods used to estimate such relationships must take into account that the topical structure is not...
Persistent link: https://www.econbiz.de/10015404248
Saved in:
Cover Image
Debiasing SHAP scores in random forests
Loecher, Markus - In: AStA Advances in Statistical Analysis 108 (2023) 2, pp. 427-440
Black box machine learning models are currently being used for high-stakes decision making in various parts of society such as healthcare and criminal justice. While tree-based ensemble methods such as random forests typically outperform deep learning models on tabular data sets, their built-in...
Persistent link: https://www.econbiz.de/10015404251
Saved in:
Cover Image
Left-truncated health insurance claims data: theoretical review and empirical application
Weißbach, Rafael; Dörre, Achim; Wied, Dominik; … - In: AStA Advances in Statistical Analysis 108 (2023) 1, pp. 31-68
From the inventory of the health insurer AOK in 2004, we draw a sample of a quarter million people and follow each person’s health claims continuously until 2013. Our aim is to estimate the effect of a stroke on the dementia onset probability for Germans born in the first half of the 20th...
Persistent link: https://www.econbiz.de/10015404258
Saved in:
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