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Transformation Forests Hothorn, Torsten
Description
Regression models for supervised learning problems with a continuous target are commonly understood as models for the conditional mean of the target given predictors. This notion is simple and therefore appealing for interpretation and visualisation. Information about the whole underlying conditional distribution is, however, not available from these models. A more general understanding of regression models as models for conditional distributions allows much broader inference from such models, for example the computation of prediction intervals. Several random forest-type algorithms aim at estimating conditional distributions, most prominently quantile regression forests (Meinshausen, 2006, JMLR). We propose a novel approach based on a parametric family of distributions characterised by their transformation function. A dedicated novel ``transformation tree'' algorithm able to detect distributional changes is developed. Based on these transformation trees, we introduce ``transformation forests'' as an adaptive local likelihood estimator of conditional distribution functions. The resulting models are fully parametric yet very general and allow broad inference procedures, such as the model-based bootstrap, to be applied in a straightforward way.
Item Metadata
Title |
Transformation Forests
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Creator | |
Publisher |
Banff International Research Station for Mathematical Innovation and Discovery
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Date Issued |
2018-01-16T15:07
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Description |
Regression models for supervised learning problems with a continuous target
are commonly understood as models for the conditional mean of the target
given predictors. This notion is simple and therefore appealing for
interpretation and visualisation. Information about the whole underlying
conditional distribution is, however, not available from these models. A
more general understanding of regression models as models for conditional
distributions allows much broader inference from such models, for example
the computation of prediction intervals. Several random forest-type
algorithms aim at estimating conditional distributions, most prominently
quantile regression forests (Meinshausen, 2006, JMLR). We propose a novel
approach based on a parametric family of distributions characterised by
their transformation function. A dedicated novel ``transformation tree''
algorithm able to detect distributional changes is developed. Based on
these transformation trees, we introduce ``transformation forests'' as an
adaptive local likelihood estimator of conditional distribution functions.
The resulting models are fully parametric yet very general and allow broad
inference procedures, such as the model-based bootstrap, to be applied in a
straightforward way.
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Extent |
40 minutes
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Subject | |
Type | |
File Format |
video/mp4
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Language |
eng
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Notes |
Author affiliation: University of Zurich
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Series | |
Date Available |
2018-07-16
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Provider |
Vancouver : University of British Columbia Library
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Rights |
Attribution-NonCommercial-NoDerivatives 4.0 International
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DOI |
10.14288/1.0368937
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URI | |
Affiliation | |
Peer Review Status |
Unreviewed
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Scholarly Level |
Faculty
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Rights URI | |
Aggregated Source Repository |
DSpace
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Rights
Attribution-NonCommercial-NoDerivatives 4.0 International