Search Results - "Mixed model"
Suggested Topics within your search.
Suggested Topics within your search.
- Research & information: general 9
- Probability & statistics 4
- Biology, life sciences 3
- Humanities 3
- Mathematics & science 3
- Social interaction 3
- Agricultural science 2
- Agriculture 2
- Biometry 2
- Biostatistics 2
- Environmental economics 2
- History of engineering & technology 2
- Information technology industries 2
- Life sciences: general issues 2
- Technology: general issues 2
- Agricultural Genetics 1
- Agricultural genome mapping 1
- Bioinformatics 1
- Computer science 1
- Earth Sciences 1
- Economics, finance, business & management 1
- Environmental science, engineering & technology 1
- Epidemiology 1
- GPS 1
- Linear Models and Regression 1
- Medicine 1
- Multivariate Analysis 1
- Multivariate analysis 1
- Physics 1
- Plant Genetics 1
-
521
-
522
-
523
-
524
-
525
-
526
-
527
-
528
-
529
-
530
-
531
-
532
-
533
-
534
-
535
-
536
-
537
Multivariate Statistical Machine Learning Methods for Genomic Prediction
Published 2022Table of Contents: “…Preface -- Chapter 1 -- General elements of genomic selection and statistical learning -- Chapter. 2 -- Preprocessing tools for data preparation -- Chapter. 3 -- Elements for building supervised statistical machine learning models -- Chapter. 4 -- Overfitting, model tuning and evaluation of prediction performance -- Chapter. 5 -- Linear Mixed Models -- Chapter. 6 -- Bayesian Genomic Linear Regression -- Chapter. 7 -- Bayesian and classical prediction models for categorical and count data -- Chapter. 8 -- Reproducing Kernel Hilbert Spaces Regression and Classification Methods -- Chapter. 9 -- Support vector machines and support vector regression -- Chapter. 10 -- Fundamentals of artificial neural networks and deep learning -- Chapter. 11 -- Artificial neural networks and deep learning for genomic prediction of continuous outcomes -- Chapter. 12 -- Artificial neural networks and deep learning for genomic prediction of binary, ordinal and mixed outcomes -- Chapter. 13 -- Convolutional neural networks -- Chapter. 14 -- Functional regression -- Chapter. 15 -- Random forest for genomic prediction.…”
Link to Metadata
Electronic eBook -
538
-
539
-
540