Measuring regional effects of model inputs with random Forest

Volume: 49, Issue: 9, Pages: 2444 - 2461
Published: Nov 13, 2018
Abstract
In many disciplines involving high-dimensional data, permutation variable importance measure (PVIM) based on random forest is widely used for importance ranking of model inputs. This work extends the traditional PVIM to investigate the regional effects of the internal value range of model inputs. The PVIM function is firstly defined to measure the residual PVIM when the distribution range of one input variable is reduced to its subranges. An...
Paper Details
Title
Measuring regional effects of model inputs with random Forest
Published Date
Nov 13, 2018
Volume
49
Issue
9
Pages
2444 - 2461
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