Logo des Repositoriums
 

Beyond Manual Tuning of Hyperparameters

dc.contributor.authorHutter, Frank
dc.contributor.authorLücke, Jörg
dc.contributor.authorSchmidt-Thieme, Lars
dc.date.accessioned2018-01-08T09:18:05Z
dc.date.available2018-01-08T09:18:05Z
dc.date.issued2015
dc.description.abstractThe success of hand-crafted machine learning systems in many applications raises the question of making machine learning algorithms more autonomous, i.e., to reduce the requirement of expert input to a minimum. We discuss two strategies towards this goal: (1) automated optimization of hyperparameters (including mechanisms for feature selection, preprocessing, model selection, etc) and (2) the development of algorithms with reduced sets of hyperparameters. Since many research directions (e.g., deep learning), show a tendency towards increasingly complex algorithms with more and more hyperparamters, the demand for both of these strategies continuously increases. We review recent hyperparameter optimization methods and discuss data-driven approaches to avoid the introduction of hyperparameters using unsupervised learning. We end in discussing how these complementary strategies can work hand-in-hand, representing a very promising approach towards autonomous machine learning.
dc.identifier.pissn1610-1987
dc.identifier.urihttps://dl.gi.de/handle/20.500.12116/11487
dc.publisherSpringer
dc.relation.ispartofKI - Künstliche Intelligenz: Vol. 29, No. 4
dc.relation.ispartofseriesKI - Künstliche Intelligenz
dc.subjectAutomatic machine learning
dc.subjectAutonomous learning
dc.subjectDeep learning
dc.subjectHyperparameter optimization
dc.titleBeyond Manual Tuning of Hyperparameters
dc.typeText/Journal Article
gi.citation.endPage337
gi.citation.startPage329

Dateien