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Optimal feature set size in random forest regression
Sunwoo Han,
Hyunjoong Kim
Department of Applied Statistics
Research output
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Contribution to journal
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Article
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peer-review
9
Citations (Scopus)
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Earth and Planetary Sciences
Regression
66%
Size
33%
Rule
33%
Estimating
16%
Experimental Study
16%
Improvement
16%
Research
16%
Datum
16%
Foci
16%
Data Set
16%
Algorithms
16%
Prediction
16%
Context
16%
Selection
16%
Parameter
16%
Partitioning
16%
Package
16%
Mathematics
Set Size
100%
Regression
66%
Search Algorithm
33%
Classification Problem
16%
Forecasting
16%
Grid Search
16%
Algorithm
16%
Characteristics
16%
Parameters
16%
Trees
16%
Randomforest
16%
Computer Science
Random Decision Forest
66%
Regression
66%
Search Algorithm
33%
Classification Problem
16%
Partitioning
16%
Contexts
16%
Economics, Econometrics and Finance
Search
66%
Packaging
16%
Pharmacology, Toxicology and Pharmaceutical Science
Experimental Study
16%
Tree
16%