mlim: single and multiple imputation with automated machine learning
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Updated
Jul 2, 2024 - R
mlim: single and multiple imputation with automated machine learning
A chronological age predictor based on DNA methylation
Training ensemble machine learning classifiers, with flexible templates for repeated cross-validation and parameter tuning
MOSS: Multi-Omic integration via Sparse Singular Decomposition
A multi-tissue transcriptional age calculator
Fast Sparse Linear Models for Big Data with SAGA
R package: Computes the solution path of the multivariate Scalar-on-Functional Elastic Net regression in serial and parallel.
Research project in machine learning - to solve a simplifies version of the netflix challenge
Elastic Net, Lasso and Ridge models can be analyzed by the formula format.
Comparing the different types of Regression
Feature Selection using Elastic net function in the glmnet R package
Imputing immunogenic phenotypes using Elastic Net to infer causality between gut microbiome and immune system.
Baruch College STA9890 Spring 2020 Final Project.
LASSO, elastic net, Adaptive LASSO, SCAD methods for determining top predictors for each method
Ejercicio de regresiones por distintos métodos (Mejor Selección de Conjuntos, Selección de pasos hacia adelante, Ridge, LASSO, Elastic Net, Componentes Principales, Mínimos Cuadrados Parciales, etc.)
Predicting Time of Arrival for Food Delivery Service
Graduate course paper and R code for EDUC545
MS thesis project using GAMM and elastic net regression to predict quality of life in young adulthood from individual differences in adolescent neurocognitive development
Final project for Intro to Data Science w/ R (CAP 5768)
🧠 Machine learning analysis for the paper named "Predicting 3-year persistent or recurrent major depressive episode using machine learning techniques".
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