Preferred Label : Ensemble Learning;
CISMeF synonym : Ensemble Methods;
MeSH synonym : Aggregation, Ensemble Model; Ensemble Learnings; Ensemble Model Aggregation; Ensemble Model Aggregations; Learning, Ensemble; Model Aggregation, Ensemble;
Définition CISMeF : ML techniques that combine multiple models to improve the overall predictive performance
compared to using a single model. This involves training a set of base models, such
as neural networks, and then aggregating their predictions to make the final prediction.
Some common ensemble methods include bagging (i.e., training multiple models on different
subsets of the training data and averaging their predictions), boosting (i.e., training
models sequentially where each new model focuses on correcting the errors of the previous
model), and stacking (i.e., using the predictions of multiple base models as input
features for a higher-level “meta-model” that learns how to best combine them).; Source: Adapted from: Dietterich, T.G. (2000). Ensemble Methods in Machine Learning.
In: Multiple Classifier Systems. MCS 2000. Lecture Notes in Computer Science. Springer,
Berlin, Heidelberg. https://doi.org/10.1007/3-540-45014-9_1External Link Disclaimer
IEEE Standards. (2022). IEEE Standard for Performance and Safety Evaluation of Artificial
Intelligence Based Medical Devices: Terminology (IEEE Std 2802 ‐2022). https://standards.ieee.org/ieee/2802/7460/;
Origin ID : 300274;
Currated CISMeF NLP mapping
ML techniques that combine multiple models to improve the overall predictive performance
compared to using a single model. This involves training a set of base models, such
as neural networks, and then aggregating their predictions to make the final prediction.
Some common ensemble methods include bagging (i.e., training multiple models on different
subsets of the training data and averaging their predictions), boosting (i.e., training
models sequentially where each new model focuses on correcting the errors of the previous
model), and stacking (i.e., using the predictions of multiple base models as input
features for a higher-level “meta-model” that learns how to best combine them).
Source: Adapted from: Dietterich, T.G. (2000). Ensemble Methods in Machine Learning.
In: Multiple Classifier Systems. MCS 2000. Lecture Notes in Computer Science. Springer,
Berlin, Heidelberg. https://doi.org/10.1007/3-540-45014-9_1External Link Disclaimer
IEEE Standards. (2022). IEEE Standard for Performance and Safety Evaluation of Artificial
Intelligence Based Medical Devices: Terminology (IEEE Std 2802 ‐2022). https://standards.ieee.org/ieee/2802/7460/