Visual Analysis of the Impact of Neural Network Hyper-Parameters (Unknown)
- New search for: Jönsson, Daniel
- New search for: Eilertsen, Gabriel
- New search for: Shi, Hezi
- New search for: Zheng, Jianmin
- New search for: Ynnerman, Anders
- New search for: Unger, Jonas
- New search for: Jönsson, Daniel
- New search for: Eilertsen, Gabriel
- New search for: Shi, Hezi
- New search for: Zheng, Jianmin
- New search for: Ynnerman, Anders
- New search for: Unger, Jonas
In:
Machine Learning Methods in Visualisation for Big Data
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13-17
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2020
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ISBN:
- Conference paper / Electronic Resource
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Title:Visual Analysis of the Impact of Neural Network Hyper-Parameters
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Contributors:Jönsson, Daniel ( author ) / Eilertsen, Gabriel ( author ) / Shi, Hezi ( author ) / Zheng, Jianmin ( author ) / Ynnerman, Anders ( author ) / Unger, Jonas ( author )
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Published in:
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Publisher:
- New search for: The Eurographics Association
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Publication date:2020
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Size:5 pages
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ISBN:
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DOI:
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Type of media:Conference paper
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Type of material:Electronic Resource
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Language:Unknown
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Source:
Table of contents conference proceedings
The tables of contents are generated automatically and are based on the data records of the individual contributions available in the index of the TIB portal. The display of the Tables of Contents may therefore be incomplete.
- 1
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Progressive Multidimensional Projections: A Process Model based on Vector QuantizationVentocilla, Elio Alejandro / Martins, Rafael M. / Paulovich, Fernando V. / Riveiro, Maria et al. | 2020
- 7
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ModelSpeX: Model Specification Using Explainable Artificial Intelligence MethodsSchlegel, Udo / Cakmak, Eren / Keim, Daniel A. et al. | 2020
- 13
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Visual Analysis of the Impact of Neural Network Hyper-ParametersJönsson, Daniel / Eilertsen, Gabriel / Shi, Hezi / Zheng, Jianmin / Ynnerman, Anders / Unger, Jonas et al. | 2020
- 19
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Improving the Sensitivity of Statistical Testing for Clusterability with Mirrored-Density PlotsThrun, Michael C. et al. | 2020
- 25
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Visual Interpretation of DNN-based Acoustic Models using Deep AutoencodersGrósz, Tamás / Kurimo, Mikko et al. | 2020