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Applied Statistical Methods : ISGES 2020, Pune, India, January 2–4 / edited by David D. Hanagal, Raosaheb V. Latpate, Girish Chandra
(Springer Proceedings in Mathematics & Statistics. ISSN:21941017 ; 380)

Edition 1st ed. 2022.
Publisher (Singapore : Springer Nature Singapore : Imprint: Springer)
Year 2022
Language English
Size XVIII, 307 p. 50 illus., 28 illus. in color : online resource
Authors Hanagal, David D editor
Latpate, Raosaheb V editor
Chandra, Girish editor
SpringerLink (Online service)
Subjects LCSH:Statistics 
FREE:Applied Statistics
FREE:Statistics in Business, Management, Economics, Finance, Insurance
FREE:Statistics in Engineering, Physics, Computer Science, Chemistry and Earth Sciences
Notes X. Chen and B. Nandram, Bayesian Order-Restricted Inference of Multinomial Counts from Small Areas -- L. Chen and B. Nandram, A Hierarchical Bayesian Beta-Binomial Model for Sub-Areas -- P. Anjoy and H. Chandra, Hierarchical Bayes Prediction of Survey-Weighted Small Area Proportions -- E. Zamanzade1 and M. Mahdizadeh, Efficiency of Ranked Set Sampling Design in Goodness of Fit Tests for Cauchy Distribution -- M. R. Bhosale1, R. Latpate and S. Gitte, Fuzzy Supply Chain Newsboy Problem Under Lognormal Distributed Demand for Bakery Products -- S. Kurade, R. Latpate and D. Hanagal, Probabilistic Supply Chain Models with Partial Backlogging for Deteriorating Items -- P. Ranjan and M. Harshvardhan, The Evolution of Dynamic Gaussian Process Model with Applications to Malaria Vaccine Coverage Prediction -- K. Uniyal1, G. Chandra, R. U. Khan and Y. P. Singh, Grey Relational Analysis for the Selection of Potential Isolates of Alternaria Alternata of Poplar -- Nidhi D. Raykundaliya and DharmeshP. Raykundaliya -- Decision making for Multi-items Inventory Models -- A. Pandey, David D. Hanagal, S. Tyagi and P. Gupta, Modeling Australian Twin Data using Generalized Lindley Shared Frailty Models, K. Jain and H. S. Kapoor, Ultimate Ruin Probability for Benktander Gibrat Risk Model, K. K. Mahajan, S. Arora and A. Gaur, Test of Homogeneity of Scale Parameters Based on Function of Sample Quasi Ranges -- T. Dai and Sanjay Shete, A Bayesian Response-Adaptive, Covariate-Balanced and Q-learning-Decision-consistent Randomization Method for SMART Designs -- J. Sedransk, An introduction to Bayesian Inference for Finite Population Characteristics -- S. C. Malik, Reliability Measures of Repairable Systems with Arrival Time of Server -- P. V. Pandit and S. Joshi, Stress-Strength Reliability estimation for Multi-component system Based on Upper Record Values under New Weibull-Pareto Distribution -- V. S. Vaidyanathan and H. Bakouch, Record Values and Associated Inference on Muth Distribution -- Shalabh, Statistical Linear Calibration in Data with Measurement Errors
This book collects select contributions presented at the International Conference on Importance of Statistics in Global Emerging (ISGES 2020) held at the Department of Mathematics and Statistics, University of Pune, Maharashtra, India, from 2–4 January 2020. It discusses recent developments in several areas of statistics with applications of a wide range of key topics, including small area estimation techniques, Bayesian models for small areas, ranked set sampling, fuzzy supply chain, probabilistic supply chain models, dynamic Gaussian process models, grey relational analysis and multi-item inventory models, and more. The possible use of other models, including generalized Lindley shared frailty models, Benktander Gibrat risk model, decision-consistent randomization method for SMART designs and different reliability models are also discussed. This book includes detailed worked examples and case studies that illustrate the applications of recently developed statistical methods, making it a valuable resource for applied statisticians, students, research project leaders and practitioners from various marginal disciplines and interdisciplinary research.
HTTP:URL=https://doi.org/10.1007/978-981-16-7932-2
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Material Type E-Book
Classification LCC:QA276-280
DC23:519
ID 4000142003
ISBN 9789811679322

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