Targeting Predictors in Random Forest Regression

Daniel Borup Andersen*, Bent Jesper Christensen, Nicolaj Adam Søndergaard Mühlbach, Mikkel Slot Nielsen

*Corresponding author af dette arbejde

Publikation: Bidrag til tidsskrift/Konferencebidrag i tidsskrift /Bidrag til avisTidsskriftartikelForskningpeer review

51 Citationer (Scopus)

Abstract

Random forest regression (RF) is an extremely popular tool for the analysis of highdimensional data. Nonetheless, its benefits may be lessened in sparse settings due to weak predictors, and a pre-estimation dimension reduction (targeting) step is required. We show that proper targeting controls the probability of placing splits along strong predictors, thus providing an important complement to RF’s feature sampling. This is supported by simulations using representative finite samples. Moreover, we quantify the immediate gain from targeting in terms of increased strength of individual trees. Macroeconomic and financial applications show that the bias-variance trade-off implied by targeting, due to increased correlation among trees in the forest, is balanced at a medium degree of targeting, selecting the best 5–30% of commonly applied predictors.
Improvements in predictive accuracy of targeted RF relative to ordinary RF are considerable, up to 21%, occurring both in recessions and expansions, particularly at long horizons.
OriginalsprogEngelsk
TidsskriftInternational Journal of Forecasting
Vol/bind39
Nummer2
Sider (fra-til)841-868
Antal sider28
ISSN0169-2070
DOI
StatusUdgivet - apr. 2023

Fingeraftryk

Dyk ned i forskningsemnerne om 'Targeting Predictors in Random Forest Regression'. Sammen danner de et unikt fingeraftryk.

Citationsformater