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Free 644
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Article 644
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English 553 Undetermined 90 Portuguese 1
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Leeuw, Jan de 18 Hornik, Kurt 13 Zeileis, Achim 13 Hankin, Robin K. S. 10 Mair, Patrick 10 Marsaglia, George 10 King, Gary 8 Wickham, Hadley 8 Eddelbuettel, Dirk 7 Højsgaard, Søren 7 Handcock, Mark S. 6 Hilbe, Joseph 6 Lumley, Thomas 6 Sanchez, Juana 6 Valero-Mora, Pedro M. 6 Butts, Carter T. 5 Fox, John 5 Hunter, David R. 5 Michailides, George 5 Morris, Martina 5 Mullen, Katharine M. 5 Petzoldt, Thomas 5 Tabelow, Karsten 5 Tsang, Wai Wan 5 Altman, Micah 4 Bowman, Adrian 4 Cook, Dianne 4 Gramacy, Robert B. 4 Grün, Bettina 4 Hahsler, Michael 4 Leisch, Friedrich 4 Maindonald, John 4 Meyer, David 4 Oja, Hannu 4 Polzehl, Jörg 4 Sheng, Yanyan 4 Soetaert, Karline 4 Somerville, Paul N. 4 Stokkum, Ivo H. M. van 4 Tierney, Luke 4
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Journal of Statistical Software 644
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RePEc 644
Showing 51 - 60 of 644
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MatchIt: Nonparametric Preprocessing for Parametric Causal Inference
Ho, Daniel; Imai, Kosuke; King, Gary; Stuart, Elizabeth A. - In: Journal of Statistical Software 42 (2011) i08
MatchIt implements the suggestions of Ho, Imai, King, and Stuart (2007) for improving parametric statistical models by preprocessing data with nonparametric matching methods. MatchIt implements a wide range of sophisticated matching methods, making it possible to greatly reduce the dependence of...
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Genetic Optimization Using Derivatives: The rgenoud Package for R
Walter R. Mebane Jr.; Sekhon, Jasjeet S. - In: Journal of Statistical Software 42 (2011) i11
genoud is an R function that combines evolutionary algorithm methods with a derivative-based (quasi-Newton) method to solve difficult optimization problems. genoud may also be used for optimization problems for which derivatives do not exist. genoud solves problems that are nonlinear or perhaps...
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REGCMPNT : A Fortran Program for Regression Models with ARIMA Component Errors
Bell, William R. - In: Journal of Statistical Software 41 (2011) i07
RegComponent models are time series models with linear regression mean functions and error terms that follow ARIMA (autoregressive-integrated-moving average) component time series models. Bell (2004) discusses these models and gives some underlying theoretical and computational results. The...
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Distributed Lag Linear and Non-Linear Models in R: The Package dlnm
Gasparrini, Antonio - In: Journal of Statistical Software 43 (2011) i08
Distributed lag non-linear models (DLNMs) represent a modeling framework to flexibly describe associations showing potentially non-linear and delayed effects in time series data. This methodology rests on the definition of a <em>crossbasis</em>, a bi-dimensional functional space expressed by the...
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bayesTFR: An R package for Probabilistic Projections of the Total Fertility Rate
Ševčíková, Hana; Alkema, Leontine; Raftery, Adrian - In: Journal of Statistical Software 43 (2011) i01
The bayesTFR package for R provides a set of functions to produce probabilistic projections of the total fertility rate (TFR) for all countries. In the model, a random walk with drift is used to project the TFR during the fertility transition, using a Bayesian hierarchical model to estimate the...
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A Bayesian Analysis of Unobserved Component Models Using Ox
Bos, Charles S. - In: Journal of Statistical Software 41 (2011) i13
This article details a Bayesian analysis of the Nile river flow data, using a similar state space model as other articles in this volume. For this data set, Metropolis-Hastings and Gibbs sampling algorithms are implemented in the programming language Ox. These Markov chain Monte Carlo methods...
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State Space Methods in Stata
Drukker, David M.; Gates, Richard B. - In: Journal of Statistical Software 41 (2011) i10
We illustrate how to estimate parameters of linear state-space models using the Stata program sspace. We provide examples of how to use sspace to estimate the parameters of unobserved-component models, vector autoregressive moving-average models, and dynamic-factor models. We also show how to...
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BARD: Better Automated Redistricting
Altman, Micah; McDonald, Michael P. - In: Journal of Statistical Software 42 (2011) i04
BARD is the first (and at time of writing, only) open source software package for general redistricting and redistricting analysis. BARD provides methods to create, display, compare, edit, automatically refine, evaluate, and profile political districting plans. BARD aims to provide a framework...
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Clinical Trial Data Analysis Using R
Shentu, Yue - In: Journal of Statistical Software 43 (2011) b01
Persistent link: https://www.econbiz.de/10009245464
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Fitting State Space Models with EViews
Bossche, Filip A. M. Van den - In: Journal of Statistical Software 41 (2011) i08
This paper demonstrates how state space models can be fitted in EViews. We first briefly introduce EViews as an econometric software package. Next we fit a local level model to the Nile data. We then show how a multivariate âÂÂlatent riskâ model can be developed, making use of the EViews...
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