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241 to 250 of 303 Results
Oct 28, 2020 - Bitcoin Graph Analytics
Oggier, Frederique Elise; Datta, Anwitaman, 2020, "A directed Bitcoin subgraph with 209 nodes", https://doi.org/10.21979/N9/5CFO3I, DR-NTU (Data), V1
This file contains a list of edges, specified by two Bitcoin addresses.
Oct 26, 2020 - Yang Sheng
Yang, Sheng, 2020, "Replication Data for: SGDNet: An End-to-End Saliency-Guided Deep Neural Network for No-Reference Image Quality Assessment", https://doi.org/10.21979/N9/H38R0Z, DR-NTU (Data), V1
This repository contains the reference code for our ACM MM 2019 paper. Its GitHub link is https://github.com/ysyscool/SGDNet
Oct 26, 2020 - Yang Sheng
Yang, Sheng, 2020, "Replication Data for: A Dilated Inception Network for Visual Saliency Prediction", https://doi.org/10.21979/N9/OIYLBK, DR-NTU (Data), V1
This repository contains the reference code for our TMM paper. The related Github link is https://github.com/ysyscool/DINet
Yang Sheng(Nanyang Technological University)
Oct 26, 2020
Sep 18, 2020 - Wai Kin Adams KONG
Chen, Peng; Swarup, Pranjal; Matkowski, Wojciech Michal; Kong, Adams Wai Kin; Han, Su; Zhang, Zhihe; Rong, Hou, 2020, "Panda images dataset", https://doi.org/10.21979/N9/8CYVGF, DR-NTU (Data), V4
The data used in the study titled "A Study on Giant Panda Recognition Based on Images of a Large Proportion of Captive Pandas".
Aug 26, 2020 - Software Reliability and Security Lab
Du, Xiaoning; Li, Yi; Xie, Xiaofei; Ma, Lei; Liu, Yang; Zhao, Jianjun, 2020, "Supplementary Materials for: Marble: Model-based Robustness Analysis of Stateful Deep Learning Systems", https://doi.org/10.21979/N9/TTTSFK, DR-NTU (Data), V1
This supplementary material contains additional proofs for the paper: "Marble: Model-based Robustness Analysis of Stateful DeepLearning Systems".
Aug 21, 2020 - Software Reliability and Security Lab
Zhu, Chenguang; Li, Yi; Rubin, Julia; Chechik, Marsha, 2020, "Replication Data for: GenSlice: Generalized Semantic History Slicing", https://doi.org/10.21979/N9/LPHCUS, DR-NTU (Data), V3
This dataset contains the raw experiment data and replication package for the ICSME'20 paper: "GenSlice: Generalized Semantic History Slicing". The replication package is also available at: https://github.com/Chenguang-Zhu/icsme20-artifact (2020-08-06)
May 27, 2020 - Software Reliability and Security Lab
Liu, Ye; Li, Yi; Lin, Shang-Wei, 2020, "Replication Data for: Towards Automated Verification of Smart Contract Fairness", https://doi.org/10.21979/N9/0BEVRT, DR-NTU (Data), V1
Software artifacts created for the paper titled "Towards Automated Verification of Smart Contract Fairness" accepted at FSE'20.
Software Reliability and Security Lab(Nanyang Technological University)
May 27, 2020
Research data deposit for Yi Li's Software Reliability and Security (SRS) lab.
May 12, 2020 - Wen Yonggang
Hu, Weizheng; Li, Jie; Zhu, Chenxiao; Zhang, Wei; Wen, Yonggang, 2020, "Related data for: Heterogeneous Transfer Learning for Thermal Comfort Modeling", https://doi.org/10.21979/N9/56MTEH, DR-NTU (Data), V2, UNF:6:PfZTy8hHFxpEL725OduxrA== [fileUNF]
These datasets are collected for the GBIC project to conduct research about indoor human thermal comfort. The GBIC research project proposes to develop online thermal comfort models via a deep-learning approach and apply them to behavioral studies to drive “greener, smarter and h...
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