<?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>sekangakim.r-universe.dev</title><link>https://sekangakim.r-universe.dev</link><description>Recent package updates in sekangakim</description><generator>R-universe</generator><image><url>https://github.com/sekangakim.png</url><title>R packages by sekangakim</title><link>https://sekangakim.r-universe.dev</link></image><lastBuildDate>Tue, 21 Apr 2026 20:46:12 GMT</lastBuildDate><item><title>[sekangakim] lorbridge 0.1.0</title><author>se-kang.kim@bcm.edu (Se-Kang Kim)</author><description>Provides a unified analytical workflow that bridges
conventional binary and multinomial logistic regression with
singly-ordered (SONSCA) and doubly-ordered (DONSCA)
nonsymmetric correspondence analysis. Log-odds ratios (LORs)
from logistic regression are re-expressed as cosine theta
estimates and closeness-of-concordance measures (CCMs) --
including Yule's Q, Yule's Y, and r_meta -- on the familiar
[-1, +1] scale introduced by Kim and Grochowalski (2019)
&lt;doi:10.3758/s13428-018-1161-1&gt;. Bootstrap confidence intervals
for cosine theta are provided throughout. The package is
intended to help clinical and medical researchers interpret
association strength from logistic regression in an intuitive,
correlation-like metric, and to connect conventional regression
results with geometric correspondence analysis visualisations.</description><link>https://github.com/r-universe/sekangakim/actions/runs/26275149797</link><pubDate>Tue, 21 Apr 2026 20:46:12 GMT</pubDate><r:package>lorbridge</r:package><r:version>0.1.0</r:version><r:status>success</r:status><r:repository>https://sekangakim.r-universe.dev</r:repository><r:upstream>https://github.com/sekangakim/lorbridge</r:upstream><r:article><r:source>introduction.Rmd</r:source><r:filename>introduction.html</r:filename><r:title>Introduction to lorbridge: Bridging Log-Odds Ratios and Correspondence Analysis</r:title><r:created>2026-04-19 22:04:51</r:created><r:modified>2026-04-21 20:46:12</r:modified></r:article></item><item><title>[sekangakim] FAPA 0.1.1</title><author>se-kang.kim@bcm.edu (Se-Kang Kim)</author><description>Implements Factor Analytic Profile Analysis of Ipsatized
Data ('FAPA'), a metric inferential framework for pattern
detection and person-level reconstruction in multivariate
profile data.  After row-centering (ipsatization) to remove
profile elevation, 'FAPA' applies singular value decomposition
('SVD') to recover shared core profiles and individual pattern
weights.  Dimensionality is determined by a variance-matched
Horn's parallel analysis.  A three-stage bootstrap verification
framework assesses (1) dimensionality via parallel analysis,
(2) subspace stability via Procrustes principal angles, and (3)
profile replicability via Tucker's congruence coefficients. BCa
bootstrap confidence intervals for core-profile coordinates are
computed via the canonical 'boot' package implementation of
Davison and Hinkley (1997) &lt;doi:10.1017/CBO9780511802843&gt;.</description><link>https://github.com/r-universe/sekangakim/actions/runs/25909852345</link><pubDate>Wed, 08 Apr 2026 16:17:25 GMT</pubDate><r:package>FAPA</r:package><r:version>0.1.1</r:version><r:status>success</r:status><r:repository>https://sekangakim.r-universe.dev</r:repository><r:upstream>https://github.com/sekangakim/fapa</r:upstream><r:article><r:source>fapa_example.Rmd</r:source><r:filename>fapa_example.html</r:filename><r:title>FAPA: A complete worked example</r:title><r:created>2026-03-20 21:54:16</r:created><r:modified>2026-03-20 21:54:16</r:modified></r:article></item><item><title>[sekangakim] pams 0.1.0</title><author>se-kang.kim@bcm.edu (Se-Kang Kim)</author><description>Implements Profile Analysis via Multidimensional Scaling
(PAMS) for the identification of population-level core response
profiles from cross-sectional and longitudinal person-score
data. Each person profile is decomposed into a level component
(the person mean) and a pattern component (ipsatized
subscores). PAMS uses nonmetric multidimensional scaling via
the SMACOF algorithm (de Leeuw &amp; Mair, 2009) to identify a
small number of core profiles that represent the central
response patterns in a sample of any size. Bootstrap standard
errors and bias-corrected and accelerated (BCa) confidence
intervals for individual core profile coordinates are
estimated, enabling significance testing of coordinates that is
not available in other profile analysis methods such as cluster
profile analysis or latent profile analysis. Person-level
weights, R-squared values, and correlations with core profiles
are also estimated, allowing individual profiles to be
interpreted in terms of the core profile structure. PAMS can be
applied to both cross-sectional data and longitudinal data,
where core trajectory profiles describe how response patterns
change over time.</description><link>https://github.com/r-universe/sekangakim/actions/runs/26708760960</link><pubDate>Fri, 27 Mar 2026 03:47:08 GMT</pubDate><r:package>pams</r:package><r:version>0.1.0</r:version><r:status>success</r:status><r:repository>https://sekangakim.r-universe.dev</r:repository><r:upstream>https://github.com/sekangakim/pams</r:upstream></item></channel></rss>