4.3 Article

Calibrating aquatic microfossil proxies with regression-tree ensembles: Cross-validation with modern chironomid and diatom data

期刊

HOLOCENE
卷 26, 期 7, 页码 1040-1048

出版社

SAGE PUBLICATIONS LTD
DOI: 10.1177/0959683616632881

关键词

bagging; boosted regression tree; partial least squares; random forest; rotation forest; weighted averaging

资金

  1. Academy of Finland [278692]
  2. Finnish Cultural Foundation
  3. Canadian Institute for Health Research (CIHR) [MOP-97939]
  4. Norwegian Research Council [213607]
  5. Academy of Finland (AKA) [278692, 278692] Funding Source: Academy of Finland (AKA)

向作者/读者索取更多资源

We examine the ability of four different regression-tree ensemble techniques (bagging, random forest, rotation forest and boosted tree) in calibration of aquatic microfossil proxies. The methods are tested with six chironomid and diatom datasets, using a variety of cross-validation schemes. We find random forest, rotation forest and the boosted tree to have a similar performance, while bagging performs less well and in several cases has trouble producing continuous predictions. In comparison with commonly used parametric transfer-function approaches (PLS, WA, WA-PLS), we find that in some cases tree-ensemble methods outperform the best-performing transfer-function technique, especially with large datasets characterized by complex taxon responses and abundant noise. However, parametric transfer functions remain competitive with datasets characterized by low number of samples or linear taxon responses. We present an implementation of the rotation forest algorithm in R.

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