Interpreting tree ensembles with inTrees

Abstract Tree ensembles such as random forests and boosted trees are accurate but difficult to understand. In this work, we provide the interpretable trees (inTrees) framework that extracts, measures, prunes, selects, and summarizes rules from a tree ensemble, and calculates frequent variable intera...
Ausführliche Beschreibung

Gespeichert in:
Autor*in:

Deng, Houtao [verfasserIn]

Format:

E-Artikel

Sprache:

Englisch

Erschienen:

2018

Schlagwörter:

Decision tree

Rule extraction

Rule-based learner

Random forest

Boosted trees

Anmerkung:

© Springer Nature Switzerland AG 2018

Übergeordnetes Werk:

Enthalten in: International journal of data science and analytics - Cham, Switzerland : Springer International Publishing, 2016, 7(2018), 4 vom: 11. Juli, Seite 277-287

Übergeordnetes Werk:

volume:7 ; year:2018 ; number:4 ; day:11 ; month:07 ; pages:277-287

Links:

Volltext

DOI / URN:

10.1007/s41060-018-0144-8

Katalog-ID:

SPR038675145

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