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Optimal Mixture Experiments


Optimal Mixture Experiments


Lecture Notes in Statistics, Band 1028

von: B.K. Sinha, N.K. Mandal, Manisha Pal, P. Das

CHF 118.00

Verlag: Springer
Format: PDF
Veröffentl.: 24.05.2014
ISBN/EAN: 9788132217862
Sprache: englisch
Anzahl Seiten: 209

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Beschreibungen

<p>​The book dwells mainly on the optimality aspects of mixture designs. As mixture models are a special case of regression models, a general discussion on regression designs has been presented, which includes topics like continuous designs, de la Garza phenomenon, Loewner order domination, Equivalence theorems for different optimality criteria and standard optimality results for single variable polynomial regression and multivariate linear and quadratic regression models. This is followed by a review of the available literature on estimation of parameters in mixture models. Based on recent research findings, the volume also introduces optimal mixture designs for estimation of optimum mixing proportions in different mixture models, which include Scheffé’s quadratic model, Darroch-Waller model, log- contrast model, mixture-amount models, random coefficient models and multi-response model. Robust mixture designs and mixture designs in blocks have been also reviewed. Moreover, some applications of mixture designs in areas like agriculture, pharmaceutics and food and beverages have been presented. Familiarity with the basic concepts of design and analysis of experiments, along with the concept of optimality criteria are desirable prerequisites for a clear understanding of the book. It is likely to be helpful to both theoreticians and practitioners working in the area of mixture experiments.</p>
​<b>Chapter 1.</b> Mixture Models and Mixture Designs: Scope of the Monograph.- <b>Chapter 2.</b> Optimal Regression Designs.- <b>Chapter 3.</b> Parameter Estimation in Linear and Quadratic Mixture Models.- <b>Chapter 4.</b> Optimal Mixture Designs for Estimation of Natural Parameters in Scheffé’s Model.- <b>Chapter 5.</b> Optimal Mixture Designs for Estimation of Natural Parameters in Scheffé’s Model under Constrained Factor Space.- <b>Chapter 6.</b> Optimal Mixture Designs for Estimation of Natural Parameters in Other Mixture Models.- <b>Chapter 7.</b> Optimal Designs for Estimation of Optimum Mixture in Scheffé’s Quadratic Model.- <b>Chapter 8.</b> More on Estimation of Optimum Mixture in Scheffé’s Quadratic Model.- <b>Chapter 9.</b> Optimal Designs for Estimation of Optimum Mixture in Scheffé’s Quadratic Model under Constrained Factor Space.- <b>Chapter 10.</b> Optimal Designs for Estimation of Optimum Mixture under Darroch-Waller and Log-Contrast Models.- <b>Chapter 11.</b> Applications of Mixture Experiments.- <b>Chapter 12.</b> Miscellaneous Topics: Robust mixtures, random regression coefficients, multiresponse experiments, mixture-amount models, blocking in mixture designs.
<p><b>Professor Bikas Kumar Sinha</b> is a retired professor of statistics of Indian Statistical Institute, Calcutta, India. He has travelled extensively within India and abroad for collaborative research and with teaching assignments. He has served as a ‘UN Expert on Mission’ and also as a consultant for USEPA. He is a ‘Summer at Census’ visitor at the US Census Bureau. He has more than 130 research publications in areas like linear models and optimal designs, survey sampling theory and statistical methodologies. He is the co-author of two research monographs published under Springer-Verlag Lecture Notes in Statistics Series (1989, 2002).</p><p><b>Professor Nripes Kumar Mandal</b> is a senior faculty in the Department of Statistics, University of Calcutta, India. He has been working in the area of design of experiments since 1977. He has visited several universities/institutes in India and abroad for teaching/collaborative research and as a resource person/invited speaker/keynote speaker at Workshops/Conferences/Symposia. He has more than 60 research articles published in peer-reviewed journals. He is the co-author of a research monograph published under Springer-Verlag Lecture Notes in Statistics Series (2002).</p><p><b>Professor Manisha Pal</b> teaches at the Department of Statistics, University of Calcutta, India. She has undertaken teaching and collaborative research assignments in Indian and foreign universities. She has been a resource person/invited speaker at Workshops/ Conferences/Symposia held in India and abroad. She has more than 85 published research articles in the areas of inventory control, reliability inference, skewed distributions, mixture experiments and data analysis.</p><p><b>Professor Premadhis Das</b> is a senior faculty in the Department of Statistics, University of Kalyani, India. He has been working in the area of design of experiments for more than 30 years, and has visited many universities for teaching/ collaborativeresearch and as a resource person/invited speaker at Workshops/ Conferences/ Symposia. He has research publications in many national and international journals of repute. </p>
<p>The book dwells mainly on the optimality aspects of mixture designs. As mixture models are a special case of regression models, a general discussion on regression designs has been presented, which includes topics like continuous designs, de la Garza phenomenon, Loewner order domination, Equivalence theorems for different optimality criteria and standard optimality results for single variable polynomial regression and multivariate linear and quadratic regression models. This is followed by a review of the available literature on estimation of parameters in mixture models. Based on recent research findings, the volume also introduces optimal mixture designs for estimation of optimum mixing proportions in different mixture models, which include Scheffé’s quadratic model, Darroch-Waller model, log- contrast model, mixture-amount models, random coefficient models and multi-response model.  Robust mixture designs and mixture designs in blocks have been also reviewed. Moreover, some applications of mixture designs in areas like agriculture, pharmaceutics and food and beverages have been presented. Familiarity with the basic concepts of design and analysis of experiments, along with the concept of optimality criteria are desirable prerequisites for a clear understanding of the book.  It is likely to be helpful to both theoreticians and practitioners working in the area of mixture experiments.</p>
Includes optimality consideration for estimating both linear and non-linear functions of parameters of some mixture models Includes multi-response mixture models and also random coefficient mixture models, which are totally new considerations in mixture experiments Provides a thorough and effective application of novel techniques such as Loewner Order Domination, Kiefer’s Equivalence Theorem and Bayesian Analysis towards determination of optimal mixture experiments Includes supplementary material: sn.pub/extras

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