_pkgdown.yml 2.64 KB
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template:
  params:
    bootswatch: cerulean

site:
  root: ''
  title: LightGBM, Light Gradient Boosting Machine

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repo:
  url:
    home: https://github.com/microsoft/LightGBM/
    source: https://github.com/microsoft/LightGBM/tree/master/R-package/
    issue: https://github.com/microsoft/LightGBM/issues/
    user: https://github.com/

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development:
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  mode: unreleased
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authors:
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  Yu Shi:
    href: https://github.com/shiyu1994
    html: <img src="https://avatars.githubusercontent.com/u/14541765?s=400&v=4" height="48" /> Yu Shi
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  Guolin Ke:
    href: https://github.com/guolinke
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    html: <img src="https://avatars.githubusercontent.com/u/16040950?s=400&v=4" height="48" /> Guolin Ke
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  Damien Soukhavong:
    href: https://github.com/Laurae2
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    html: <img src="https://avatars.githubusercontent.com/u/9083669?s=400&v=4" height="48" /> Damien Soukhavong
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  Yachen Yan:
    href: https://github.com/yanyachen
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    html: <img src="https://avatars.githubusercontent.com/u/6893682?s=400&v=4" height="48" /> Yachen Yan
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  James Lamb:
    href: https://github.com/jameslamb
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    html: <img src="https://avatars.githubusercontent.com/u/7608904?s=400&v=4" height="48" /> James Lamb
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navbar:
  title: LightGBM
  type: default
  left:
  - icon: fa-reply fa-lg
    href: ../
  - icon: fa-home fa-lg
    href: index.html
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  - text: Articles
    href: articles/index.html
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  - text: Reference
    href: reference/index.html
  right:
  - icon: fa-github fa-lg
    href: https://github.com/microsoft/LightGBM/tree/master/R-package

reference:
  - title: Datasets
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    desc: Datasets included with the R-package
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    contents:
    - '`agaricus.train`'
    - '`agaricus.test`'
    - '`bank`'
  - title: Data Input / Output
    desc: Data I/O required for LightGBM
    contents:
    - '`dim.lgb.Dataset`'
    - '`dimnames.lgb.Dataset`'
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    - '`get_field`'
    - '`set_field`'
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    - '`slice`'
    - '`lgb.Dataset`'
    - '`lgb.Dataset.construct`'
    - '`lgb.Dataset.create.valid`'
    - '`lgb.Dataset.save`'
    - '`lgb.Dataset.set.categorical`'
    - '`lgb.Dataset.set.reference`'
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    - '`lgb.convert_with_rules`'
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  - title: Machine Learning
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    desc: Train models with LightGBM and then use them to make predictions on new data
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    contents:
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    - '`lightgbm`'
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    - '`lgb.train`'
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    - '`predict.lgb.Booster`'
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    - '`lgb.cv`'
  - title: Saving / Loading Models
    desc: Save and load LightGBM models
    contents:
    - '`lgb.dump`'
    - '`lgb.save`'
    - '`lgb.load`'
    - '`lgb.model.dt.tree`'
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  - title: Model Interpretation
    desc: Analyze your models
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    contents:
    - '`lgb.get.eval.result`'
    - '`lgb.importance`'
    - '`lgb.interprete`'
    - '`lgb.plot.importance`'
    - '`lgb.plot.interpretation`'