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Deposit, archive and share your final research data in DR-NTU (Data)

DR-NTU (Data) is for research data deposit. For research paper deposits, please use DR-NTU.

Mission: DR-NTU (Data) curates, stores, preserves, makes available and enables the download of digital data generated by the NTU research community. The repository develops and provides guidance for managing, sharing, and reusing research data to promote responsible data sharing in support of open science and research integrity.

Who can deposit? NTU faculty, research staff and students.

What can be deposited? Final, non-sensitive research data from projects carried out at NTU. The uploaded content must not infringe upon the copyrights or other intellectual property rights, and must be void of all identifiable information.

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Useful links: FAQs | Collection Guidelines | NTU Research Data Management | General terms of use and Privacy policy

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69,341 to 69,350 of 73,600 Results
Feb 28, 2020 - WANG Si
Wang, Si, 2020, "Replication Data for: Fired Neuron Rate Based Decision Tree for Detection of Adversarial Examples in DNNs", https://doi.org/10.21979/N9/YPY0EB, DR-NTU (Data), V1
This dataset contains model file, program source code and the experimental data for the analysis of the paper " Fired Neuron Rate Based Decision Tree for Detection of Adversarial Examples in DNNs".
Jupyter Notebook - 22.5 KB - MD5: e80222aa040cbd0b9084dfb65d9f8109
source code to generate decision tree for mobilenet
Jupyter Notebook - 35.7 KB - MD5: 410ad43334e820a53dea170b0a697ac6
source code to generate decision tree for vgg16
Feb 28, 2020 - LI Tanghua
Li, Tanghua, 2020, "Uncertainties of Glacial Isostatic Adjustment model predictions in North America associated with 3D structure", https://doi.org/10.21979/N9/26AY8H, DR-NTU (Data), V1
The mean GIA signals of RSL, u-dot and g-dot with 1σ, 2σ and 3σ uncertainties in North America.
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