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New Advances in Statistics and Data Science / edited by Ding-Geng Chen, Zhezhen Jin, Gang Li, Yi Li, Aiyi Liu, Yichuan Zhao.

Springer Nature - Springer Mathematics and Statistics eBooks 2017 English International Available online

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Format:
Book
Contributor:
Chen, Ding-Geng.., Editor.
Jin, Zhezhen.., Editor.
Li, Gang.., Editor.
Li, Yi.., Editor.
Liu, Aiyi.., Editor.
Zhao, Yichuan.., Editor.
Series:
ICSA Book Series in Statistics, 2199-0999
Language:
English
Subjects (All):
Statistics.
Quantitative research.
Biometry.
Statistical Theory and Methods.
Data Analysis and Big Data.
Biostatistics.
Local Subjects:
Statistical Theory and Methods.
Data Analysis and Big Data.
Biostatistics.
Physical Description:
1 online resource (XXIII, 348 p. 74 illus., 41 illus. in color.)
Edition:
1版. 2017.
Place of Publication:
Cham : Springer International Publishing : Imprint: Springer, 2017.
Summary:
This book is comprised of the presentations delivered at the 25th ICSA Applied Statistics Symposium held at the Hyatt Regency, Atlanta, on June 12-15, 2016. This symposium attracted more than 700 statisticians and data scientists working in academia, government, and industry from all over the world. The theme of this conference was the “Challenge of Big Data and Applications of Statistics,” in recognition of the advent of big data era, and the symposium offered opportunities for learning, receiving inspirations from old research ideas and for developing new ones, and for promoting further research collaborations in the data sciences. The invited contributions addressed rich topics closely related to big data analysis in the data sciences, reflecting recent advances and major challenges in statistics, business statistics, and biostatistics. Subsequently, the six editors selected 19 high-quality presentations and invited the speakers to prepare full chapters for this book, which showcases new methods in statistics and data sciences, emerging theories, and case applications from statistics, data science and interdisciplinary fields. The topics covered in the book are timely and have great impact on data sciences, identifying important directions for future research, promoting advanced statistical methods in big data science, and facilitating future collaborations across disciplines and between theory and practice.
Contents:
Part 1 Review and Theoretical Framework in Data Science
Ch 1 Statistical Distances and Their Role in Robustness
Ch 2 The Out-source Error in Multi-source Cross Validation-type Procedures
Ch 3
Meta-Analysis for Rare Events as Binary Outcomes
Ch 4 New Challenges and Strategies in Robust Optimal Design for Multicategory Logit Modelling
Ch 5 Testing of Multivariate Spline Growth Model
Part 2 Complex and Big Data Analysis
Ch 6 Uncertainty Quantification Using the Neighbor Gaussian Process
Ch 7 Tuning Parameter Selection in the LASSO with Unspecified Propensity
Adaptive Filtering Increases Power to Detect Differently Expressed Genes
Ch 9 Estimating Parameters in Complex Systems with Functional Outputs - A Wavelet-based Approximate Bayesian Computation Approach
Ch 10 A maximum Likelihood Approach for Non-invasive Cancer Diagnosis Using Methylation Profiling of Cell-free DNA from Blood
Part 3 Clinical Trials, Statistical Shape Analysis and Application
Ch 11 A Simpleand Efficient Statistical Approach for Designing an Early Phase II Clinical Trial - Ordinal Linear Contrast Test
Ch 12 Landmark-constrained Statistical Shape Analysis of Elastic Curves and Surfaces
Ch 13 Phylogeny-based kernels with Application to Microbiome Association Studies
Ch 14 Accounting for Differential Error in Time-to-event Analyses using Imperfect Electronic Health Record-derived Endpoints
Part 4 Statistical Modeling and Data Analysis
Ch 15 Modeling Inter-trade Durations in the Limit Order market
Ch 16 Assessment of Drug Interactions with Repeated Measurements
Ch 17 Statistical Indices for Risk Tracking in Longitudinal Studies
Ch 18 Statistical Analysis of Labor market Integration: A Mixture Regression Approach
Ch 19 Bias Correction in Age-Cohort Models Using Eigen Analysis.
Notes:
Includes bibliographical references at the end of each chapters and index.
ISBN:
9783319694160
3319694162

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