SOTAVerified

Medoid splits for efficient random forests in metric spaces

2023-06-29Code Available0· sign in to hype

Matthieu Bulté, Helle Sørensen

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

This paper revisits an adaptation of the random forest algorithm for Fr\'echet regression, addressing the challenge of regression in the context of random objects in metric spaces. Recognizing the limitations of previous approaches, we introduce a new splitting rule that circumvents the computationally expensive operation of Fr\'echet means by substituting with a medoid-based approach. We validate this approach by demonstrating its asymptotic equivalence to Fr\'echet mean-based procedures and establish the consistency of the associated regression estimator. The paper provides a sound theoretical framework and a more efficient computational approach to Fr\'echet regression, broadening its application to non-standard data types and complex use cases.

Tasks

Reproductions