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130,911 to 130,920 of 137,550 Results
Adobe PDF - 215.7 KB - MD5: 8b31c095c16a2690bb775cdaafc2e6f2
Original approval by The Norwegian Medicines Agency
Adobe PDF - 155.9 KB - MD5: 90cf357930d8ea3bd0161b7b9c63acb4
Approval by Norwegian Medicines Agency protocol amendments version 3.3 dated 6th March 2020
Apr 20, 2020 - NTNU – Norwegian University of Science and Technology
Riddervold, Hans Ole, 2020, "Replication Data for: A gradient boosting approach for optimal selection of bidding strategies: Simple model - Original variables", https://doi.org/10.18710/WNKSVX, DataverseNO, V1, UNF:6:gXehgeAeqs6FWVHODiWuAQ== [fileUNF]
Access to an increasing amount of data opens for the application of machine learning models to predict the best combination of models and strategies for bidding of hydro power in a de-regulated market for any given day. This data-set describe the historical performance-gap of two given bidding strategies over several years (2016-2018). Data from tw...
Tabular Data - 14.9 KB - 4 Variables, 737 Observations - UNF:6:dsqq3osqmstFH57/4I/b6A==
This file contains the data for 04Rplot1.pdf.
Adobe PDF - 830.3 KB - MD5: c7583d149343866f55f927b56417259e
This is the graph that appears as Figure 2 in the article associated with this dataset.
Tabular Data - 3.1 KB - 1 Variables, 150 Observations - UNF:6:9W7CkLYwriV8kaVPKXC0pA==
This file contains the data for 06Rplot2.pdf.
Adobe PDF - 203.1 KB - MD5: 92b83b18ed4bb623fa23899d7620f4b5
This is the graph that appears as Figure 3 in the article associated with this dataset.
Apr 14, 2020 - UiT The Arctic University of Norway
Kvammen, Andreas; Wickstrøm, Kristoffer; McKay, Derek; Partamies, Noora, 2020, "Replication Data for: Auroral Image Classification with Deep Neural Networks", https://doi.org/10.18710/SSA38J, DataverseNO, V3
Results from a study of automatic aurora classification using machine learning techniques are presented. The aurora is the manifestation of physical phenomena in the ionosphere magnetosphere environment. Automatic classification of millions of auroral images from the Arctic and Antarctic is therefore an attractive tool for developing auroral statis...
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