<?xml version="1.0" encoding="utf-8" ?><rss version="2.0" xmlns:atom="http://www.w3.org/2005/Atom" xmlns:r="https://r-universe.dev"><channel><title>muswaseja92.r-universe.dev</title><link>https://muswaseja92.r-universe.dev</link><description>Recent package updates in muswaseja92</description><generator>R-universe</generator><image><url>https://github.com/muswaseja92.png</url><title>R packages by muswaseja92</title><link>https://muswaseja92.r-universe.dev</link></image><lastBuildDate>Tue, 05 May 2026 20:36:34 GMT</lastBuildDate><item><title>[muswaseja92] dcce 0.4.2</title><author>muswaseja@gmail.com (Mustapha Wasseja)</author><description>Estimates heterogeneous coefficient models for large
panels with cross-sectional dependence. Implements the Mean
Group (MG) estimator of Pesaran and Smith (1995)
&lt;doi:10.1016/0304-4076(94)01644-F&gt;, the Common Correlated
Effects (CCE) and Dynamic CCE (DCCE) estimators of Pesaran
(2006) &lt;doi:10.1111/j.1468-0262.2006.00692.x&gt; and Chudik and
Pesaran (2015) &lt;doi:10.1016/j.jeconom.2015.03.007&gt;, the
regularized CCE of Juodis (2022), the Augmented Mean Group
(AMG) of Eberhardt and Teal (2010), the Interactive Fixed
Effects (IFE) estimator of Bai (2009) &lt;doi:10.3982/ECTA6135&gt;,
and long-run estimators including Cross-Sectionally augmented
Distributed Lag (CS-DL), Cross-Sectionally augmented
Autoregressive Distributed Lag (CS-ARDL), and Pooled Mean Group
(PMG) (Chudik et al. 2016; Shin et al. 1999). Also provides
rolling-window estimation, high-dimensional fixed effect
absorption, spatial CCE via user-supplied weight matrices, and
structural break tests (Chow and sup-Wald) following Andrews
(1993), Bai and Perron (1998), and Ditzen, Karavias and
Westerlund (2024). Supplies a comprehensive cross-sectional
dependence (CD) test suite including the Pesaran (2015) CD test
&lt;doi:10.1080/07474938.2014.956623&gt;, the Juodis and Reese (2022)
randomized weighted CD (CDw) test, the Baltagi et al. (2012)
bias-adjusted weighted CD (CDw+) test, the Fan et al. (2015)
Power Enhancement Approach (PEA) test, and the Pesaran and Xie
(2021) bias-corrected CD (CD*) test. Further diagnostics
include the Pesaran (2007) Cross-sectionally Augmented IPS
(CIPS) panel unit root test &lt;doi:10.1002/jae.951&gt;, the
Westerlund (2007) panel cointegration tests, the Dumitrescu and
Hurlin (2012) panel Granger causality test, the Im-Pesaran-Shin
(IPS) and Levin-Lin-Chu (LLC) panel unit root tests, the
Pedroni (2004) and Kao (1999) residual cointegration tests, the
Swamy (1970) and Pesaran and Yamagata (2008) slope homogeneity
tests, a Hausman-type test for MG versus pooled, the exponent
of cross-sectional dependence from Bailey et al. (2016)
&lt;doi:10.1002/jae.2490&gt;, information criteria for
Cross-Sectional Average (CSA) selection, the rank condition
classifier, impulse response functions, cross-section and wild
bootstrap inference, and 'broom'-compatible methods.</description><link>https://github.com/r-universe/muswaseja92/actions/runs/26998971779</link><pubDate>Tue, 05 May 2026 20:36:34 GMT</pubDate><r:package>dcce</r:package><r:version>0.4.2</r:version><r:status>success</r:status><r:repository>https://muswaseja92.r-universe.dev</r:repository><r:upstream>https://github.com/cran/dcce</r:upstream><r:article><r:source>dcce-introduction.Rmd</r:source><r:filename>dcce-introduction.html</r:filename><r:title>Introduction to the dcce Package: DCCE Estimation for Panel Data</r:title><r:created>2026-05-05 20:36:34</r:created><r:modified>2026-05-05 20:36:34</r:modified></r:article></item><item><title>[muswaseja92] spmixW 0.2.2</title><author>muswaseja@gmail.com (Mustapha Wasseja Mohammed)</author><description>Bayesian Markov chain Monte Carlo (MCMC) estimation of
spatial panel data models including Spatial Autoregressive
(SAR), Spatial Durbin Model (SDM), Spatial Error Model (SEM),
Spatial Durbin Error Model (SDEM), and Spatial Lag of X (SLX)
specifications with fixed effects. Supports convex combinations
of multiple spatial weight matrices and Bayesian Model
Averaging (BMA) over subsets of weight matrices. Implements the
convex combination spatial weight matrix methodology of Debarsy
and LeSage (2021) &lt;doi:10.1080/07350015.2020.1840993&gt; and the
Bayesian spatial panel data models of LeSage and Pace (2009,
ISBN:9781420064247).</description><link>https://github.com/r-universe/muswaseja92/actions/runs/25984921296</link><pubDate>Thu, 16 Apr 2026 11:35:44 GMT</pubDate><r:package>spmixW</r:package><r:version>0.2.2</r:version><r:status>success</r:status><r:repository>https://muswaseja92.r-universe.dev</r:repository><r:upstream>https://github.com/cran/spmixW</r:upstream></item><item><title>[muswaseja92] dsge 1.0.0</title><author>muswaseja@gmail.com (Mustapha Wasseja Mohammed)</author><description>Specify, solve, and estimate dynamic stochastic general
equilibrium (DSGE) models by maximum likelihood and Bayesian
methods. Supports both linear models via an equation-based
formula interface and nonlinear models via string-based
equations with first-order perturbation (linearization around
deterministic steady state). Solution uses the method of
undetermined coefficients (Klein, 2000
&lt;doi:10.1016/S0165-1889(99)00045-7&gt;). Likelihood evaluated via
the Kalman filter. Bayesian estimation uses adaptive
Random-Walk Metropolis-Hastings with prior specification.
Additional tools include Kalman smoothing, historical shock
decomposition, local identification diagnostics, parameter
sensitivity analysis, second-order perturbation, occasionally
binding constraints, impulse-response functions, forecasting,
and robust standard errors.</description><link>https://github.com/r-universe/muswaseja92/actions/runs/26804965524</link><pubDate>Thu, 02 Apr 2026 11:13:39 GMT</pubDate><r:package>dsge</r:package><r:version>1.0.0</r:version><r:status>success</r:status><r:repository>https://muswaseja92.r-universe.dev</r:repository><r:upstream>https://github.com/cran/dsge</r:upstream><r:article><r:source>introduction.Rmd</r:source><r:filename>introduction.html</r:filename><r:title>Introduction to the dsge Package</r:title><r:created>2026-04-02 11:13:39</r:created><r:modified>2026-04-02 11:13:39</r:modified></r:article></item></channel></rss>