Modern Statistical Methods for Spatial and Multivariate Data. 1st ed. 2019
- 種類:
- 電子ブック
- 責任表示:
- edited by Norou Diawara
- 出版情報:
- Cham : Springer International Publishing : Imprint: Springer, 2019
- 著者名:
- シリーズ名:
- STEAM-H: Science, Technology, Engineering, Agriculture, Mathematics & Health ;
- ISBN:
- 9783030114312 [3030114317]
- 注記:
- A. Working, M. Alqawba, and N. Diawara: Functional Form of Markovian Attribute-level Best-Worst Discrete Choice Modelling -- D. Hitchcock, H. Liu, and S. Zahra Samadi -- Spatial and Spatio-temporal Analysis of Precipitation Data from South Carolina -- D. Musgrove, D. Young, J. Hughes, and L. E. Eberly: A sparse areal mixed model for multivariate outcomes, with an application to zero-inflated Census data -- E. M. Maboudou-Tchao: Wavelet Kernels for Support Matrix Machines -- S. A. Janse and K. L. Thompson: Properties of the number of iterations of a feasible solutions algorithm -- R. Dey and M. S. Mulekar: A Primer of Statistical Methods for Classification -- M. Sheth-Chandra, N. R. Chaganty, and R. T. Sabo: A Doubly-Inflated Poisson Distribution and Regression Model -- J. Mathews, S. Sen, and I. Das: Multivariate Doubly-Inflated Negative Binomial Distribution using Gaussian Copula -- J. Lorio, N. Diawara, and L. Waller: Quantifying spatio-temporal characteristics via Moran's statistics.
This contributed volume features invited papers on current models and statistical methods for spatial and multivariate data. With a focus on recent advances in statistics, topics include spatio-temporal aspects, classification techniques, the multivariate outcomes with zero and doubly-inflated data, discrete choice modelling, copula distributions, and feasible algorithmic solutions. Special emphasis is placed on applications such as the use of spatial and spatio-temporal models for rainfall in South Carolina and the multivariate sparse areal mixed model for the Census dataset for the state of Iowa. Articles use simulated and aggregated data examples to show the flexibility and wide applications of proposed techniques. Carefully peer-reviewed and pedagogically presented for a broad readership, this volume is suitable for graduate and postdoctoral students interested in interdisciplinary research. Researchers in applied statistics and sciences will find this book an important resource on the latest developments - ローカル注記:
- 学内専用E-BOOKS (local access only)
類似資料:
Springer-Verlag Milan |
Springer Science+Business Media, LLC |
Birkhäuser Boston |
8
電子ブック
Modern Multivariate Statistical Techniques : Regression, Classification, and Manifold Learning
Springer-Verlag New York |
Springer Nature Singapore : Imprint: Springer | |
Springer Science+Business Media, LLC |
Springer Science+Business Media, LLC |
Springer New York : Imprint: Springer |
Birkhäuser Verlag AG |
Springer New York : Imprint: Springer |
Atlantis Press |