Logo des Repositoriums
 

Automated Architecture-Modeling for Convolutional Neural Networks

dc.contributor.authorDuong, Manh Khoi
dc.contributor.editorMeyer, Holger
dc.contributor.editorRitter, Norbert
dc.contributor.editorThor, Andreas
dc.contributor.editorNicklas, Daniela
dc.contributor.editorHeuer, Andreas
dc.contributor.editorKlettke, Meike
dc.date.accessioned2019-04-15T11:40:32Z
dc.date.available2019-04-15T11:40:32Z
dc.date.issued2019
dc.description.abstractTuning hyperparameters can be very counterintuitive and misleading, yet it plays a big (or even the biggest) part in many machine learning algorithms. For instance, finding the right architecture for an artificial neural network (ANN) can also be seen as a hyperparameter e.g. number of convolutional layers, number of fully connected layers etc. Tuning these can be done manually or by techniques such as grid search or random search. Even then finding optimal hyperparameters seems to be impossible. This paper tries to counter this problem by using bayesian optimization, which finds optimal parameters, including the right architecture for ANNs. In our case, a histological image dataset was used to classify breast cancer into stages.en
dc.identifier.doi10.18420/btw2019-ws-17
dc.identifier.isbn978-3-88579-684-8
dc.identifier.pissn1617-5468
dc.identifier.urihttps://dl.gi.de/handle/20.500.12116/21803
dc.language.isoen
dc.publisherGesellschaft für Informatik, Bonn
dc.relation.ispartofBTW 2019 – Workshopband
dc.relation.ispartofseriesLecture Notes in Informatics (LNI) – Proceedings, Volume P-290
dc.subjectCNN
dc.subjectModel Architecture
dc.subjectBreast Cancer
dc.subjectHistology
dc.titleAutomated Architecture-Modeling for Convolutional Neural Networksen
gi.citation.endPage172
gi.citation.startPage163
gi.conference.date4.-8. März 2019
gi.conference.locationRostock
gi.conference.sessiontitleStudierendenprogramm

Dateien

Originalbündel
1 - 1 von 1
Lade...
Vorschaubild
Name:
D1-1.pdf
Größe:
3.04 MB
Format:
Adobe Portable Document Format