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Mathematica laboratories for mathematical statistics: emphasizing simulation and computer intensive methods

✍ Scribed by Jenny A. Baglivo


Book ID
127455974
Publisher
Society for Industrial and Applied Mathematics; American Statistical Association
Year
2005
Tongue
English
Weight
2 MB
Series
ASA-SIAM series on statistics and applied probability
Category
Library
City
Philadelphia, Pa. :, Alexandria, Va
ISBN
0898715660

No coin nor oath required. For personal study only.

✦ Synopsis


Integrating computers into mathematical statistics courses allows students to simulate experiments and visualize their results, handle larger data sets, analyze data more quickly, and compare the results of classical methods of data analysis with those using alternative techniques. This text presents a concise introduction to the concepts of probability theory and mathematical statistics. The accompanying in-class and take-home computer laboratory activities reinforce the techniques introduced in the text and are accessible to students with little or no experience with Mathematica. These laboratory materials present applications in a variety of real-world settings, with data from epidemiology, environmental sciences, medicine, social sciences, physical sciences, manufacturing, engineering, marketing, and sports.

Mathematica Laboratories for Mathematical Statistics: Emphasizing Simulation and Computer Intensive Methods includes parametric, nonparametric, permutation, bootstrap and diagnostic methods. Chapters on permutation and bootstrap techniques follow the formal inference chapters and precede the chapters on intermediate-level topics. Permutation and bootstrap methods are discussed side by side with classical methods in the later chapters.

✦ Subjects


Математическая статистика


📜 SIMILAR VOLUMES


Digital signal processors for computatio
✍ Pukite, P. R.; Pukite, J. 📂 Article 📅 1990 🏛 Association for Computing Machinery ⚖ 629 KB

The objective of this investigation was to evaluate the feasibility of using a digital signal processor (DSP) as a statistical computation "number cruncher" in a PC environment. The specific goals were to demonstrate that a DSP has high-speed, low-cost statistical computation and simulation capabili