NLM Logo

Boosting Machine Learning Algorithms MeSH Descriptor Data 2025


MeSH Heading
Boosting Machine Learning Algorithms
Tree Number(s)
G17.035.250.500.438.500
G17.035.438
L01.224.050.375.530.438.500
L01.224.050.453
Unique ID
D000098404
RDF Unique Identifier
http://id.nlm.nih.gov/mesh/D000098404
Scope Note
A form of ensemble learning methods which combines weak learners to create strong ones, which reduces training errors and bias in the training models. There are different types of boosting such as gradient boosting, XGBoost, and Adaboost.
Entry Term(s)
Adaboost
Adaptive Boosting Algorithms
Boosting, Machine Learning
CatBoost
Categorical Boosting
Categorical Boosting Algorithms
Ensemble Machine Learning Boosting
Extreme Gradient Boost
Gradient Boosting Algorithms
Iterative Model Building
Light Gradient Boosting Machine
LightGBM
Machine Learning Boosting Algorithms
XGBoost
Public MeSH Note
2025
History Note
2025
Date Established
2025/01/01
Date of Entry
2024/08/09
Revision Date
2023/12/06

No Qualifiers
Boosting Machine Learning Algorithms Preferred
Adaptive Boosting Algorithms Narrower
Iterative Model Building Related
Gradient Boosting Algorithms Narrower
Extreme Gradient Boost Narrower
Light Gradient Boosting Machine Narrower
Categorical Boosting Narrower
page delivered in 0.149s