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Exploratory Reduced Reparameterized Unified Model Estimation
Perform a Bayesian estimation of the exploratory reduced
reparameterized unified model (ErRUM) described by Culpepper and Chen (2018)
Bayesian Estimation of an Exploratory Deterministic Input, Noisy and Gate Model
Perform a Bayesian estimation of the exploratory
deterministic input, noisy and gate (EDINA)
cognitive diagnostic model described by Chen et al. (2018)
Discrimination Mitigation for Machine Learning Models
Based on different statistical definitions of discrimination, several methods have been proposed to detect and mitigate social inequality in machine learning models. This package aims to provide an alternative to fairness treatment in predictive models. The ROC method implemented in this package is described by Kamiran, Karim and Zhang (2012) < https://ieeexplore.ieee.org/document/6413831/>.
Computation and Plots of Influence Functions for Risk and Performance Measures
Computes the influence functions time series of the returns for the risk and performance measures as mentioned in Chen and Martin (2018) < https://www.ssrn.com/abstract=3085672>, as well as in Zhang et al. (2019) < https://www.ssrn.com/abstract=3415903>. Also evaluates estimators influence functions at a set of parameter values and plots them to display the shapes of the influence functions.
Choi and Hall Style Data Sharpening
Functions for use in perturbing data prior to use of nonparametric smoothers and clustering.
Bayesian Modeling via Frequentist Goodness-of-Fit
A Bayesian data modeling scheme that performs four interconnected tasks: (i) characterizes the uncertainty of the elicited parametric prior; (ii) provides exploratory diagnostic for checking prior-data conflict; (iii) computes the final statistical prior density estimate; and (iv) executes macro- and micro-inference. Primary reference is Mukhopadhyay, S. and Fletcher, D. 2018 paper "Generalized Empirical Bayes via Frequentist Goodness of Fit" (< https://www.nature.com/articles/s41598-018-28130-5 >).
Generalized Additive Latent and Mixed Models
Estimates generalized additive latent and
mixed models using maximum marginal likelihood,
as defined in Sorensen et al. (2023)
Data sets from "SAS System for Mixed Models"
Data sets and sample lmer analyses corresponding to the examples in Littell, Milliken, Stroup and Wolfinger (1996), "SAS System for Mixed Models", SAS Institute.
Functions for Multi-Dimensional Analysis
Multi-Dimensional Analysis (MDA) is an adaptation of factor
analysis developed by Douglas Biber (1992)
Geographic and Taxonomic Occurrence R-Based Scrubbing
Streamlines downloading and cleaning biodiversity data from Integrated Digitized Biocollections (iDigBio) and the Global Biodiversity Information Facility (GBIF).