Visualizing Multi-Variable Prediction Functions by Segmented k-CPG'sVisualizing Multi-Variable Prediction Functions by Segmented k-CPG's
- Other Titles
- Visualizing Multi-Variable Prediction Functions by Segmented k-CPG's
- Authors
- 허명회
- Issue Date
- 2009
- Publisher
- 한국통계학회
- Keywords
- Visualization of prediction functions; k-Means
clustering; variable importance; support vector machine; random
forests; environmental data
- Citation
- Communications for Statistical Applications and Methods, v.16, no.1, pp.185 - 193
- Indexed
- KCI
- Journal Title
- Communications for Statistical Applications and Methods
- Volume
- 16
- Number
- 1
- Start Page
- 185
- End Page
- 193
- URI
- https://scholar.korea.ac.kr/handle/2021.sw.korea/121496
- ISSN
- 2287-7843
- Abstract
- Machine learning methods such as support vector machines and
random forests yield nonparametric prediction functions of the
form y = f(x_1 ,..., x_p ) . As a sequel to the previous
article (Huh and Lee, 2008) for visualizing nonparametric
functions, I propose more sensible graphs for visualizing y =
f(x_1 ,..., x_p ) herein which has two clear advantages over
the previous simple graphs. New graphs will show a small number of
prototype curves of f(x_1 ,..., x_{j-1} , x_j , x_{j+1}
..., x_p ), revealing statistically plausible portion over the
interval of x_j which changes with (x_1 ,...,
x_{j-1}, x_{j+1}, ..., x_p ). To complement the visual
display, matching importance measures for each of p predictor
variables are produced. The proposed graphs and importance
measures are validated in simulated settings and demonstrated for
an environmental study.
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