Functions to perform inference via simulation from the posterior distributions for Bayesian nonparametric and semiparametric models. Although the name of the package was motivated by the Dirichlet Process prior, the package considers and will consider other priors on functional spaces. So far, DPpackage includes models considering Dirichlet Processes, Dependent Dirichlet Processes, Dependent Poisson- Dirichlet Processes, Hierarchical Dirichlet Processes, Polya Trees, Linear Dependent Tailfree ...
Artifacts using DPpackage (6)
We provide intuitive maps to visualize the association between genetic elements, with emphasis on epigenetics. The approach is based on Multi-Dimensional Scaling.
Last Release on Apr 28, 2022
This package provides efficient Bayesian nonparametric models for network discovery
Last Release on May 1, 2022
Provides the Bayesian nonparametric inference for the causal effects of mediation. The function bnpmediation() gives the posterior means and credible intervals of the effects of mediation on the data.
Last Release on May 29, 2022
4.CHAT
org.renjin.cran » CHAT GPL
CHAT is a collection of tools developed for tumor subclonality analysis using high density DNA SNP array data and sequencing data. The pipeline consists of four major compartments: 1) tumor aneuploid genome proportion (AGP) calculation and ploidy ...
Last Release on May 1, 2022
5.DPWeibull
org.renjin.cran » DPWeibull GPL
Use Dirichlet process Weibull mixture model and dependent Dirichlet process Weibull mixture model for survival data with and without competing risks. Dirichlet process Weibull mixture model is used for data without covariates and dependent Dirichlet ...
Last Release on May 29, 2022
6.MsBP
org.renjin.cran » msBP GPL
Performs Bayesian nonparametric multiscale density estimation and multiscale testing of group differences with multiscale Bernstein polynomials (msBP) mixtures as in Canale and Dunson (2016).
Last Release on Nov 4, 2024
- Prev
- 1
- Next