SVM-based Sketch Recognition: Which Hyperparameter Interval to Try?
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Date
2015Author
Yesilbek, Kemal Tugrul
Sen, Cansu
Cakmak, Serike
Sezgin, T. Metin
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Show full item recordAbstract
Hyperparameters are among the most crucial factors that affect the performance of machine learning algorithms. In general, there is no direct method for determining a set of satisfactory parameters, so hyperparameter search needs to be conducted each time a model is to be trained. In this work, we analyze how similar hyperparameters perform across various datasets from the sketch recognition domain. Results show that hyperparameter search space can be reduced to a subspace despite differences in characteristics of datasets.
BibTeX
@inproceedings {10.2312:exp.20151184,
booktitle = {Sketch-Based Interfaces and Modeling},
editor = {Ergun Akleman},
title = {{SVM-based Sketch Recognition: Which Hyperparameter Interval to Try?}},
author = {Yesilbek, Kemal Tugrul and Sen, Cansu and Cakmak, Serike and Sezgin, T. Metin},
year = {2015},
publisher = {The Eurographics Association},
DOI = {10.2312/exp.20151184}
}
booktitle = {Sketch-Based Interfaces and Modeling},
editor = {Ergun Akleman},
title = {{SVM-based Sketch Recognition: Which Hyperparameter Interval to Try?}},
author = {Yesilbek, Kemal Tugrul and Sen, Cansu and Cakmak, Serike and Sezgin, T. Metin},
year = {2015},
publisher = {The Eurographics Association},
DOI = {10.2312/exp.20151184}
}