bst: Gradient Boosting

bst: Gradient Boosting

The bst package implements a functional gradient descent algorithm tailored for various convex and non-convex loss functions, addressing both classical and robust regression and classification challenges. It serves as a versatile tool for machine learning practitioners, enhancing predictive modeling capabilities. More information can be found at https://CRAN.R-project.org/package=bst.

Top bst: Gradient Boosting Alternatives

1

RPMM

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By: R Project From Austria
2

FRBS

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3

rgenoud

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4

RGP

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6

CORElearn

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7

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8

svmpath

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9

maptree

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10

tgp

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11

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13

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15

Rmalschains

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