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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…
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Related topics
Related topics
22 relations
AdaBoost
Bias–variance tradeoff
Boosting (machine learning)
Bootstrapping (statistics)
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Broader (1)
Computational statistics
Papers overview
Semantic Scholar uses AI to extract papers important to this topic.
2015
2015
On the Performance of Ensemble Learning for Automated Diagnosis of Breast Cancer
Aytuğ Onan
Computer Science On-line Conference
2015
Corpus ID: 35271527
The automated diagnosis of diseases with high accuracy rate is one of the most crucial problems in medical informatics. Machine…
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Review
2012
Review
2012
A Study Of Bagging And Boosting Approaches To Develop Meta-Classifier
G. Kumari
2012
Corpus ID: 18139727
-- Classification is one of the data mining techniques that analyses a given data set and induces a model for each class based on…
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2011
2011
Shortipedia aggregating and curating Semantic Web data
Denny Vrandečić
,
V. Ratnakar
,
M. Krötzsch
,
Y. Gil
Journal of Web Semantics
2011
Corpus ID: 13958166
Highly Cited
2009
Highly Cited
2009
Reducing Semantic Drift with Bagging and Distributional Similarity
Tara McIntosh
,
J. Curran
Annual Meeting of the Association for…
2009
Corpus ID: 6652223
Iterative bootstrapping algorithms are typically compared using a single set of hand-picked seeds. However, we demonstrate that…
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2009
2009
Regression-Based Summarization of Email Conversations
Jan Ulrich
,
G. Carenini
,
Gabriel Murray
,
R. Ng
International Conference on Web and Social Media
2009
Corpus ID: 5059404
In this paper we present a regression-based machine learning approach to email thread summarization. The regression model is…
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2008
2008
Constraint Projections for Ensemble Learning
Daoqiang Zhang
,
Songcan Chen
,
Zhi-Hua Zhou
,
Qiang Yang
AAAI Conference on Artificial Intelligence
2008
Corpus ID: 13076676
It is well-known that diversity among base classifiers is crucial for constructing a strong ensemble. Most existing ensemble…
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Highly Cited
2003
Highly Cited
2003
Distributed learning with bagging-like performance
N. Chawla
,
Thomas E. Moore
,
L. Hall
,
K. Bowyer
,
W. Kegelmeyer
,
C. Springer
Pattern Recognition Letters
2003
Corpus ID: 1519032
2003
2003
Texture classification of logged forests in tropical Africa using machine-learning algorithms
Jonathan Cheung-Wai Chan
,
N. Laporte
,
Ruth S. DeFries
2003
Corpus ID: 2772407
This Letter describes a procedure that incorporates textural measures in the classification of logged forests from Landsat…
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2003
2003
Ensemble Techniques for Parallel Genetic Programming Based Classifiers
G. Folino
,
C. Pizzuti
,
G. Spezzano
European Conference on Genetic Programming
2003
Corpus ID: 44611167
An extension of Cellular Genetic Programming for data classification to induce an ensemble of predictors is presented. Each…
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2000
2000
Bagging and Boosting a Treebank Parser
John C. Henderson
,
Eric Brill
Applied Natural Language Processing Conference
2000
Corpus ID: 7857808
Bagging and boosting, two effective machine learning techniques, are applied to natural language parsing. Experiments using these…
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