61 to 70 of 82 Results
Jul 11, 2018 -
BGLRR - Bayesian Generalized Linear Regression in R. V 2.1
Plain Text - 3.7 KB -
MD5: 3e8e22f64b1e4600fe17e1b6694c223a
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Tabular Data - 10.3 KB - 6 Variables, 728 Observations - UNF:6:qb2UIHULo/KZ3V04rm33PA==
Sample Dataset |
Feb 14, 2018
Reyes-Valdés, M Humberto; Burgueño, Juan; Martínez, Octavio; Sansaloni, Carolina Paola, 2018, "An informational view of accession rarity and allele specificity in germplasm banks for management and conservation", https://hdl.handle.net/11529/10547952, CIMMYT Research Data & Software Repository Network, V2, UNF:6:v+RWYoZQ/W6oh+hfVGd6uQ== [fileUNF]
Repository of the data set used in the paper "An informational view of accession rarity and allele specificity in germplasm banks for management and conservation" M. Humberto Reyes-Valdés 1, Juan Burgueño-Ferreira 2, Octavio Martínez 3, Carolina Paola Sansaloni 2. 1 Department of... |
Feb 14, 2018 -
An informational view of accession rarity and allele specificity in germplasm banks for management and conservation
R Data - 81.7 MB -
MD5: ffec764128374e86a73b31e57a33a533
AllDataHexaploid.bin. A table in RData format, readable by R through the function *load*. It has a dimension 41052 x 7987. The column allele_id is the SNP allele id, and the remaining 7986 columns are hexaploid wheat accessions. The numbers in the cells are allele frequencies. Th... |
Feb 14, 2018 -
An informational view of accession rarity and allele specificity in germplasm banks for management and conservation
Unknown - 5.8 MB -
MD5: 256a7c0e69ebd16cc88b80d6fea8e6cb
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Feb 14, 2018 -
An informational view of accession rarity and allele specificity in germplasm banks for management and conservation
Tabular Data - 64.1 MB - 7988 Variables, 4126 Observations - UNF:6:v+RWYoZQ/W6oh+hfVGd6uQ==
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Jun 27, 2017
Fernando Aguate; Samuel Trachsel; Lorena González-Pérez; Juan Burgueño; José Crossa; Mónica Balzarini; David Gouache; Matthieu Bogard; Gustavo de los Campos, 2017, "Use of High-Resolution Image Data Outperforms Vegetation Indices in Prediction of Maize Yield: Supplementary Methods", https://hdl.handle.net/11529/10972, CIMMYT Research Data & Software Repository Network, V1
This is the supplementary methods of "Use of High-Resolution Image Data Outperforms Vegetation Indices in Prediction of Maize Yield" published in Crop Science · May 2017, DOI: 10.2135/cropsci2017.01.0007. It includes the raw data in R format and the R-code for the analysis. |
Jun 27, 2017 -
Use of High-Resolution Image Data Outperforms Vegetation Indices in Prediction of Maize Yield: Supplementary Methods
Unknown - 695.0 KB -
MD5: ad2a90490e7c619747d1690bddd1cd04
Raw data in R format |
Jun 27, 2017 -
Use of High-Resolution Image Data Outperforms Vegetation Indices in Prediction of Maize Yield: Supplementary Methods
HTML - 2.0 MB -
MD5: 6ec2dfc08226ef6b760d0b76c2040591
R- code to analyze data step by step |
Jan 7, 2017
Alvarado, Gregorio; Pérez-Elizalde, Sergio; Cerón, Jesús, 2015, "SI-R Codes for Computing Selection Indices in R", https://hdl.handle.net/11529/10352, CIMMYT Research Data & Software Repository Network, V4
SI is a collection of R codes to compute several selection indices. It comes together a powerpoint explanation of the indices and one example. |
