CURVE and SURFACE FITTING with MATLAB. FUNCTIONS and EXAMPLES
by A Ramirez
Understanding Regression Analysis unifies diverse regression applications including the classical model, ANOVA models, generalized models including Poisson, Negative binomial, logistic, and survival, neural networks, and decision trees under a common umbrella -- namely, the conditional distribution model. It explains why the conditional distribution model is the correct model, and it also explains (proves) why the assumptions of the classical regression model are wrong. Unlike other regression b...
Modelos Predictivos y Programacion Lineal. Ejercicios Resueltos Con Excel
by Maria Perez Marques
Modeling Change and Uncertainty (Textbooks in Mathematics)
by William P. Fox and Robert E. Burks
Mathematical modeling is a powerful craft that requires practice. The more practice the better one will become in executing the art. The authors wrote this book to develop the craft of mathematical modeling and to foster a desire for lifelong learning, habits of mind and develop competent and confident problem solvers and decision makers for the 21st century. This book offers a problem-solving approach. The authors introduce a problem to help motivate the learning of a particular mathematical...
Intermediate Statistics
by Keenan A. Pituch, Tiffany A. Whittaker, and James P. Stevens
James Stevens' best-selling text, Intermediate Statistics, is written for those who use, rather than develop, statistical techniques. Dr. Stevens focuses on a conceptual understanding of the material rather than on proving the results. SAS and SPSS are an integral part of each chapter. Definitional formulas are used on small data sets to provide conceptual insight into what is being measured. The assumptions underlying each analysis are emphasized and the reader is shown how to test the critic...
Now in its third edition, Essential Econometric Techniques: A Guide to Concepts and Applications is a concise, student-friendly textbook which provides an introductory grounding in econometrics, with an emphasis on the proper application and interpretation of results. Drawing on the author's extensive teaching experience, this book offers intuitive explanations of concepts such as heteroskedasticity and serial correlation, and provides step-by-step overviews of each key topic. This new editio...
Student Solutions Manual for Essential Statistics, Regression, and Econometrics
by Gary Smith
Applications of Regression Models in Epidemiology
by Erick Suarez, Cynthia M. Perez, Roberto Rivera, and Melissa N. Martinez
A one-stop guide for public health students and practitioners learning the applications of classical regression models in epidemiology This book is written for public health professionals and students interested in applying regression models in the field of epidemiology. The academic material is usually covered in public health courses including (i) Applied Regression Analysis, (ii) Advanced Epidemiology, and (iii) Statistical Computing. The book is composed of 13 chapters, including an introduc...
Decision Making under Interval Uncertainty (De Gruyter Studies in Mathematics)
by Vladik Kreinovich
This book is about how to make decisions - mathematically based. These are the topics in focus: How to elicit user's preferences. How to select the best alternatives. Which characteristics should we select when describing probabilities? The need for interval uncertainty. Decision making under interval uncertainty: straightforward approach, remaining problems, solution. What if we cannot even elicit interval-valued uncertainty: symmetry approach. Questions beyond optimization.
Intended as a text for a basic course in linear regression analysis, this manual blends both theory and application so that the reader will obtain an understanding of the basic principles necessary to apply regression methods in a variety of practical settings. New material has been added on regression diagnostics, sample computer output with expanded interpretations, handling missing observations, and handling generalized linear models and nonlinear regress. The examples and problem sets have b...
Master the math needed to excel in data science and machine learning. If you're a data scientist who lacks a math or scientific background or a developer who wants to add data domains to your skillset, this is your book. Author Hadrien Jean provides you with a foundation in math for data science, machine learning, and deep learning. Through the course of this book, you'll learn how to use mathematical notation to understand new developments in the field, communicate with your peers, and solve p...
Nonlinear Regression and Its Applications Using R (Wiley Series in Probability and Statistics)
by Douglas M. Bates
This new edition represents the most up-to-date treatment of nonlinear regression topics and applications available using the academically-preferred R language throughout. It offers a balanced presentation of the theoretical, practical, and computational aspects of nonlinear regression and provides background material on linear regression, including the geometrical development for linear and nonlinear least squares. The authors employ real data sets throughout, and their use of geometric constru...
Introduction to Nonparametric Regression (Wiley Series in Probability and Statistics, #606)
by K. Takezawa
An easy-to-grasp introduction to nonparametric regression This book's straightforward, step-by-step approach provides an excellent introduction to the field for novices of nonparametric regression. Introduction to Nonparametric Regression clearly explains the basic concepts underlying nonparametric regression and features: * Thorough explanations of various techniques, which avoid complex mathematics and excessive abstract theory to help readers intuitively grasp the value of nonparametric r...
ANOVA and Mixed Models: A Short Introduction Using R provides both the practitioner and researcher a compact introduction to the analysis of data from the most popular experimental designs. Based on knowledge from an introductory course on probability and statistics, the theoretical foundations of the most important models are introduced. The focus is on an intuitive understanding of the theory, common pitfalls in practice, and the application of the methods in R. From data visualization, model...
Nonlinear Statistical Methods A. Ronald Gallant Describes the recent advances in statistical and probability theory that have removed obstacles to an adequate theory of estimation and inference for nonlinear models. Thoroughly explains theory, methods, computations, and applications. Covers the three major categories of statistical models that relate dependent variables to explanatory variables: univariate regression models, multivariate regression models, and simultaneous equations models. Incl...
Linear Regression With Matlab (Tutorial Introductions)
by James V. Stone
Mathematics Finely Explained - Statistics (Mathematics Finely Explained, #3)
by Robert W Shutler
DATA MINING and MACHINE LEARNING. PREDICTIVE TECHNIQUES
by Cesar Perez Lopez
Statistische Datenanalyse
by Ludovic Lebart, Alain Morineau, and Jean-Pierre Fenelon