Skip to search form
Skip to main content
Skip to account menu
Semantic Scholar
Semantic Scholar's Logo
Search 234,935,578 papers from all fields of science
Search
Sign In
Create Free Account
Bootstrap aggregating
Known as:
Bootstrap aggregation
, Bootstrapped Aggregation
, Bootstrapping (machine learning)
Bootstrap aggregating, also called bagging, is a machine learning ensemble meta-algorithm designed to improve the stability and accuracy of machine…
Expand
Wikipedia
(opens in a new tab)
Create Alert
Alert
Related topics
Related topics
22 relations
AdaBoost
Bias–variance tradeoff
Boosting (machine learning)
Bootstrapping (statistics)
Expand
Broader (1)
Computational statistics
Papers overview
Semantic Scholar uses AI to extract papers important to this topic.
2016
2016
Ensemble Tree Learning Techniques for Magnetic Resonance Image Analysis
J. Ramírez
,
J. Górriz
,
A. Ortiz
,
P. Padilla
,
Francisco J. Martínez-Murcia
2016
Corpus ID: 124294845
This paper shows a comparative study of boosting and bagging algorithms for magnetic resonance image (MRI) analysis and…
Expand
2015
2015
Pruning Bagging Ensembles with Metalearning
Fábio Pinto
,
C. Soares
,
João Mendes-Moreira
International Workshop on Multiple Classifier…
2015
Corpus ID: 34314518
Ensemble learning algorithms often benefit from pruning strategies that allow to reduce the number of individuals models and…
Expand
Review
2012
Review
2012
A Review on Diverse Ensemble Methods for Classification
Prachi S. Adhvaryu
,
Mahesh Panchal
2012
Corpus ID: 53644312
Ensemble methods for different classifiers like Bagging and Boosting which combine the decisions of multiple hypotheses are some…
Expand
2010
2010
Algorithm of Partition based Network Boosting for imbalanced data classification
S. Gou
,
Hui Yang
,
L. Jiao
,
Zhuang Xiong
IEEE International Joint Conference on Neural…
2010
Corpus ID: 1101807
Network Boosting (NB) is an ensemble learning method which combines weak learners together based on a network and can learn the…
Expand
2009
2009
HETEROGENEOUS ENSEMBLE CLASSIFICATION
Sean Gilpin
,
Daniel M. Dunlavy
2009
Corpus ID: 5834698
The problem of multi-class classication is explored using heterogeneous ensemble classiers. Heterogeneous ensembles classiers are…
Expand
2009
2009
An efficient classifier ensemble using SVM
Manju Bhardwaj
,
Trasha Gupta
,
Tanu Grover
,
Vasudha Bhatnagar
Proceeding of International Conference on Methods…
2009
Corpus ID: 15608289
Recently ensemble classification has attracted serious attention of machine learning community as a solution for improving…
Expand
2009
2009
Applied Taxonomy Techniques Intended for Strenuous Random Forest Robustness
Tarannum Bloch
2009
Corpus ID: 16037705
Globalization and economic trade has change the scrutiny of facts from data to knowledge. For the same purpose data mining…
Expand
2006
2006
Ensembles of Grafted Trees
Juan José Rodríguez Diez
,
Jesús Maudes
European Conference on Artificial Intelligence
2006
Corpus ID: 13429644
Grafted trees are trees that are constructed using two methods. The first method creates an initial tree, while the second method…
Expand
2004
2004
Combining classifiers for harmful document filtering
B. Grilhères
,
S. Brunessaux
,
Philippe Leray
RIAO Conference
2004
Corpus ID: 16741927
In this paper, we describe the experiments that we have carried out during the European Research Project NetProtect II that aims…
Expand
1995
1995
A Comparison of Methods for Learning and Combining Evidence From Multiple Models
Kamal Ali
1995
Corpus ID: 18830857
Most previous work on multiple models has been done on a few domains. We present a com-parsion of three ways of learning multiple…
Expand