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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.
2017
2017
Removing Bias from Diverse Data Clusters for Ensemble Classification
Sam Fletcher
,
B. Verma
International Conference on Neural Information…
2017
Corpus ID: 27671656
Diversity plays an important role in successful ensemble classification. One way to diversify the base-classifiers in an ensemble…
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2010
2010
Hyperspectral data classification via sparse representation in homotopy
Qazi Mazhar ul Haq
,
Lixin Shi
,
L. Tao
,
Shiqiang Yang
International Conference on Information Science…
2010
Corpus ID: 15532049
Sparse representation has significant success in many fields such as signal compression and reconstruction but to the best of our…
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2010
2010
Full-scale On-farm Pretreatment of Perennial Grasses with Dilute Acid for Fuel Ethanol Production
M. Digman
,
K. Shinners
,
R. Muck
,
B. Dien
Bioenergy Research
2010
Corpus ID: 32167899
Biorefineries that rely on lignocellulosic feedstocks require dependable and safe methods for storing biomass. Storing biomass…
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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…
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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
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…
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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…
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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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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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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…
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