MyNixOS website logo
Showing entries 30101-30200 out of 54071.
r-MKLENix package
Maximum Kernel Likelihood Estimation
A Modern K-Means (MKMeans) Clustering Algorithm
Miscellaneous Functions from M. Kohl
Multiple Knapsack Problem Solver
Omics Data Analysis
Power Analysis and Sample Size Calculation
r-mkssdNix package
Efficient Multi-Level k-Circulant Supersaturated Designs
Variational Autoencoder Models for IRT Parameter Estimation
r-mlapiNix package
Abstract Classes for Building 'scikit-learn' Like API
Machine Learning Benchmark Problems
Create 'ggplot2' and 'gt' Visuals with Major League Baseball Logos
Major League Baseball Player Statistics Calculator
Latent Class Item Response Theory (LC-IRT) Models under Within-Item Multidimensionality
r-MLCMNix package
Maximum Likelihood Conjoint Measurement
Classification Models with Copula Functions
Collection of Machine Learning Datasets for Supervised Machine Learning
r-mldrNix package
Exploratory Data Analysis and Manipulation of Multi-Label Data Sets
r-MLDSNix package
Maximum Likelihood Difference Scaling
r-MLENix package
Maximum Likelihood Estimation of Various Univariate and Multivariate Distributions
r-mleapNix package
Machine Learning Algorithms with Unified Interface and Confusion Matrices
r-MLEceNix package
Asymptotic Efficient Closed-Form Estimators for Multivariate Distributions
Computation of the MLE for Bivariate Interval Censored Data
r-mlegpNix package
Maximum Likelihood Estimates of Gaussian Processes
MLE for Normally Distributed Data Censored by Limit of Detection
Multilevel Exponential-Family Random Graph Models
r-mleurNix package
Machine Learning Model Evaluation
Machine Learning Experiments
r-mlfNix package
Machine Learning Foundations
r-mlfitNix package
Iterative Proportional Fitting Algorithms for Nested Structures
Interface to 'MLflow'
r-MLFSNix package
Machine Learning Forest Simulator
Datasets for Use with Salvan, Sartori and Pace (2020)
r-MLGLNix package
Multi-Layer Group-Lasso
r-mlgtNix package
r-MLIDNix package
Multilevel Index of Dissimilarity
r-mlimNix package
Single and Multiple Imputation with Automated Machine Learning
R6-Based ML Learners for 'mlexperiments'
r-mlmaNix package
Multilevel Mediation Analysis
r-mlmcNix package
Multi-Level Monte Carlo
Machine Learning Evaluation Metrics
Multilevel/Mixed Model Helper Functions
r-mlmiNix package
Maximum Likelihood Multiple Imputation
Maximum Likelihood Estimation of DNA Methylation and Hydroxymethylation Proportions
r-mlmmmNix package
Model Selection in Multivariate Longitudinal Data Analysis
r-MLMOINix package
Estimating Frequencies, Prevalence and Multiplicity of Infection
Power Analysis and Data Simulation for Multilevel Models
Examples from Multilevel Modelling Software Review
r-mlmsNix package
Multilevel Monitoring System Data for Wells in the USGS INL Aquifer Monitoring Network
Multi-Level Model Assessment Kit
r-mlmtsNix package
Machine Learning Algorithms for Multivariate Time Series
Practical Multilevel Modeling
Multinomial Logit Models
Bayesian Model Averaging for Multinomial Logit Models
r-MLPNix package
r-MLPANix package
'Rcpp' Integration for the 'mlpack' Library
Maximum Likelihood Estimation of the Niche Preemption Model
Multi-Label Prediction Using Gibbs Sampling (and Classifier Chains)
r-mlpwrNix package
A Power Analysis Toolbox to Find Cost-Efficient Study Designs
Algorithms for Class Distribution Estimation
r-mlrNix package
Machine Learning in R
r-mlr3Nix package
Machine Learning in R - Next Generation
Batch Experiments for 'mlr3'
Analysis and Visualisation of Benchmark Experiments
Cluster Extension for 'mlr3'
Collection of Machine Learning Data Sets for 'mlr3'
Data Base Backend for 'mlr3'
Fairness Auditing and Debiasing for 'mlr3'
Extending 'mlr3' to Functional Data Analysis
Filter Based Feature Selection for 'mlr3'
Hyperband for 'mlr3'
Recommended Learners for 'mlr3'
Flexible Bayesian Optimization
Performance Measures for 'mlr3'
Helper Functions for 'mlr3'
Connector Between 'mlr3' and 'OpenML'
Preprocessing Operators and Pipelines for 'mlr3'
Resampling Algorithms for 'mlr3' Framework
Machine Learning in 'shiny' with 'mlr3'
Support for Spatial Objects Within the 'mlr3' Ecosystem
Spatiotemporal Resampling Methods for 'mlr3'
Model and Learner Summaries for 'mlr3'
Super Learner Fitting and Prediction
Deep Learning with 'mlr3'
Hyperparameter Optimization for 'mlr3'