Jumat, 19 Desember 2014

** PDF Download An Introduction to Mathematical Statistics and Its Applications (3rd Edition), by Richard J. Larsen, Morris L. Marx

PDF Download An Introduction to Mathematical Statistics and Its Applications (3rd Edition), by Richard J. Larsen, Morris L. Marx

By downloading and install the on-line An Introduction To Mathematical Statistics And Its Applications (3rd Edition), By Richard J. Larsen, Morris L. Marx book right here, you will get some benefits not to go for the book store. Simply hook up to the web as well as begin to download the web page web link we discuss. Currently, your An Introduction To Mathematical Statistics And Its Applications (3rd Edition), By Richard J. Larsen, Morris L. Marx prepares to delight in reading. This is your time and your peacefulness to get all that you want from this publication An Introduction To Mathematical Statistics And Its Applications (3rd Edition), By Richard J. Larsen, Morris L. Marx

An Introduction to Mathematical Statistics and Its Applications (3rd Edition), by Richard J. Larsen, Morris L. Marx

An Introduction to Mathematical Statistics and Its Applications (3rd Edition), by Richard J. Larsen, Morris L. Marx



An Introduction to Mathematical Statistics and Its Applications (3rd Edition), by Richard J. Larsen, Morris L. Marx

PDF Download An Introduction to Mathematical Statistics and Its Applications (3rd Edition), by Richard J. Larsen, Morris L. Marx

Checking out a publication An Introduction To Mathematical Statistics And Its Applications (3rd Edition), By Richard J. Larsen, Morris L. Marx is type of simple activity to do whenever you want. Also checking out every time you want, this task will not interrupt your various other activities; many individuals commonly check out guides An Introduction To Mathematical Statistics And Its Applications (3rd Edition), By Richard J. Larsen, Morris L. Marx when they are having the leisure. What concerning you? What do you do when having the extra time? Do not you spend for ineffective points? This is why you should get the book An Introduction To Mathematical Statistics And Its Applications (3rd Edition), By Richard J. Larsen, Morris L. Marx as well as try to have reading routine. Reading this e-book An Introduction To Mathematical Statistics And Its Applications (3rd Edition), By Richard J. Larsen, Morris L. Marx will not make you worthless. It will provide more advantages.

If you desire truly get guide An Introduction To Mathematical Statistics And Its Applications (3rd Edition), By Richard J. Larsen, Morris L. Marx to refer currently, you should follow this page always. Why? Keep in mind that you require the An Introduction To Mathematical Statistics And Its Applications (3rd Edition), By Richard J. Larsen, Morris L. Marx source that will offer you best expectation, don't you? By visiting this site, you have begun to make new deal to consistently be updated. It is the first thing you can begin to get all take advantage of remaining in a website with this An Introduction To Mathematical Statistics And Its Applications (3rd Edition), By Richard J. Larsen, Morris L. Marx and also various other compilations.

From now, locating the finished site that markets the finished books will be several, however we are the trusted site to see. An Introduction To Mathematical Statistics And Its Applications (3rd Edition), By Richard J. Larsen, Morris L. Marx with easy web link, simple download, and also completed book collections become our excellent services to get. You can discover as well as utilize the perks of picking this An Introduction To Mathematical Statistics And Its Applications (3rd Edition), By Richard J. Larsen, Morris L. Marx as every little thing you do. Life is constantly establishing and you require some brand-new book An Introduction To Mathematical Statistics And Its Applications (3rd Edition), By Richard J. Larsen, Morris L. Marx to be reference consistently.

If you still require much more publications An Introduction To Mathematical Statistics And Its Applications (3rd Edition), By Richard J. Larsen, Morris L. Marx as referrals, going to browse the title and style in this website is offered. You will find even more lots books An Introduction To Mathematical Statistics And Its Applications (3rd Edition), By Richard J. Larsen, Morris L. Marx in various self-controls. You can also when possible to read the book that is currently downloaded and install. Open it as well as save An Introduction To Mathematical Statistics And Its Applications (3rd Edition), By Richard J. Larsen, Morris L. Marx in your disk or gizmo. It will certainly relieve you any place you require guide soft file to check out. This An Introduction To Mathematical Statistics And Its Applications (3rd Edition), By Richard J. Larsen, Morris L. Marx soft data to read can be referral for everybody to improve the skill and capacity.

An Introduction to Mathematical Statistics and Its Applications (3rd Edition), by Richard J. Larsen, Morris L. Marx

Using high-quality, real-world case studies and examples, this introduction to mathematical statistics shows how to use statistical methods and when to use them. This book can be used as a brief introduction to design of experiments. This successful, calculus-based book of probability and statistics, was one of the first to make real-world applications an integral part of motivating discussion. The number of problem sets has increased in all sections. Some sections include almost 50% new problems, while the most popular case studies remain. For anyone needing to develop proficiency with Mathematical Statistics.

  • Sales Rank: #975284 in Books
  • Published on: 2000-01-15
  • Original language: English
  • Number of items: 1
  • Dimensions: 9.62" h x 1.34" w x 7.18" l,
  • Binding: Hardcover
  • 790 pages

From the Publisher
Highly structured, this volume allows those with an established mathematics background to pursue a more rigorous, advanced treatment of probability and statistics.

From the Inside Flap
Preface

Changes in this third edition have been primarily motivated by our own teaching experiences as well as by the comments of others who use the text. Technology, though, has also dictated certain revisions. The widespread use of statistical software packages has brought certain topics and concepts to the fore, while diminishing the relevance of others. All in all, we feel that this new edition has a sharper focus and that students will find it more accessible and easier to use.

Many of the major changes come in the middle third of the book, much of which has been rewritten. These are the chapters that make the critical transition from probability to statistics. We have taken a variety of steps to make that material come more alive, ranging from the addition of more helpful examples to the frequent use of computer simulations.

Chapter 4, for example, now addresses more fully the important question of why certain measurements are modeled by particular probability functions. Relationships that exist between pdfs are given more attention, and the connection between theoretical models and sample data is explored in greater depth. Chapter 5 has been restructured. In the new edition, methods of estimation come first and the underlying theory is taken up last. That arrangement makes it easier for instructors to adjust the amount of time spent on estimation to whatever suits their individual needs. In Chapter 6, the principles of decision-making are now introduced in the context of testing Ho: µ = µo rather than Ho: p = po. The result is a more streamlined presentation that avoids the complications inherent in a test statistic whose pdf is discrete.

Positioned between Chapter 7, which deals with the normal distribution, and Chapters 9 through 14, where the various techniques for analyzing data are introduced, is a new chapter on experimental design. Chapter 8 profiles seven of the most frequently encountered "data models." The basic characteristics of each design are discussed as well as the types of questions each seeks to answer. By providing a framework and a theme, Chapter 8 brings cohesion and a sense of order to the chapters that follow.

Chapter 11 (Regression) has also been changed substantially. It now begins with curve-fitting, then introduces the linear model, and eventually concludes with the bivariate normal. Regression "diagnostics" have been added to the new edition, and the various inference procedures associated with the linear model have been explained and delineated more carefully.

Our overriding motivation in deciding which topics to present – and in what order – stem from our objective to write a book that emphasizes the interrelation between probability theory, mathematical statistics, and data analysis. We believe that integrating all three is vitally important, particularly for those students who take only one statistics course during their college careers. Our experience in the classroom has certainly strengthened our faith in this approach: Students can more clearly see the importance of each of the three when viewed in the context of the other two.

From the Back Cover
Using high-quality, real-world case studies and examples, this introduction to mathematical statistics shows how to use statistical methods and when to use them. This book can be used as a brief introduction to design of experiments. This successful, calculus-based book of probability and statistics, was one of the first to make real-world applications an integral part of motivating discussion. The number of problem sets has increased in all sections. Some sections include almost 50% new problems, while the most popular case studies remain. For anyone needing to develop proficiency with Mathematical Statistics.

Most helpful customer reviews

47 of 48 people found the following review helpful.
Excellent intro to the mathematics of traditional statistics
By Bob Carpenter
The first half of the book begins with basic discrete and continuous probability theory. It continues with thorough overviews of the basic distributions (normal, Poisson, binomial, multinomial, chi-squared and student-T). The focus is on basic probability and variance analysis, though it briefly covers higher-order moments.

The second half of this book is devoted to hypothesis testing and regression. There is an excellent explanation of the mathematical presuppositions of the various classical experimental methodologies ranging from chi-square to t-tests to generalized likelihood ratio testing. It contains a very nicely organized chapter on general regression analysis, concentrating on the common least squares case under the usual transforms (e.g. exponential, logistic, etc.).

Like many books in mathematics, this introduction starts from first principles in the topic it's introducing, but assumes some "mathematical sophistication". In this case, it assumes you're comfortable with basic definition-example-theorem style and that you understand the basics of multivariate differential equations. I was a math and computer science undergrad who did much better in abstract algebra and set theory than analysis and diff eqs, but I found this book extremely readable. I couldn't have derived the proofs, but I could follow them because they were written as clearly as anything I've ever read in mathematics. I found the explanation of the central limit theorem and the numerous normal approximation theorems for sampling to be exceptionally clear.

The examples were both illuminating and entertaining. One of the beauties of statistics is that the examples are almost always interesting real-world problems, in this case ranging from biological (e.g. significance testing for cancer clusters) to man-made (e.g. Poisson models of football scoring) to physical (e.g. loaded dice). The examples tied directly to the techniques being explored. The exercises were more exercise-like in this book than in some math books where they're a dumping ground for material that wouldn't fit into the body of the text. This book has clearly been tuned over many years of classroom use with real students.

I read this book because I found I couldn't understand the applied statistics I was reading in machine learning and Bayesian data analysis research papers in my field (computational linguistics). In paticular, I wanted the background to be able to tackle books such as Hastie et al.'s "Elements of Statistical Learning" or Gelman et al.'s "Bayesian Data Analysis", both of which pretty much assume a good grounding in the topics covered in this book by Larsen and make excellent follow-on reading.

29 of 31 people found the following review helpful.
A fairly good book but it could be better
By Mike W
I have just finished teaching a year of probability and statistics out of the fourth edition of this text. As I was teaching the course, it became clear just how difficult it is to write a mathematically rigorous undergraduate text in mathematical statistics. I selected this book because it seemed to be the best of the department recommended texts. For example, it is a bit more rigorous than Wackerly, Mendenhall, and SchaefferMathematical Statistics with Applications; significantly more rigorous than DevoreProbability and Statistics for Engineering and the Sciences; and just as rigorous but apparently more popular than Hogg and TannisProbability and Statistical Inference (8th Edition).
The book is readable and well-written and I'll probably use it again if and when I teach the sequence. The authors, as Jay I. Simon pointed out in an earlier review, have a sense of humor. For example, a random walk problem begins with the following sentence: "A somewhat inebriated conventioneer finds himself in the embarrassing predicament of being unable to predetermine whether his next step will be forward or backward." There are several other examples of humor: for example, the authors discuss an airline known as Doomsday Airlines.
The reason that I give the book only four stars is that the rigor is on occasion illusory, as Glitzer pointed out in another review. Here is a chapter-by-chapter review.

Preface: The authors claim that the first 7 chapters can easily be covered in one semester. I don't agree with this statement. We covered the first four chapters and part of the fifth, and very few of my students suggested that I was going slowly.

Chapter 1: This is an historical introduction. I don't know about the accuracy of the history (although I believe that the history is accurate), but the authors tell a good story. The treatment of the golden ratio is problematic, since their definition inverts one of the ratios and so their definition is the reciprocal of the usual golden ratio. This is not that problematic in itself, but the continued fraction representation converges to the usual golden ratio.

Chapter 2: This introduces elementary probability and combinatorics. It is one of the best chapters in the text with excellent examples and a good introduction to the Kolmogorov axiomatic framework which does not get bogged down in measure theoretic details.

Chapter 3: Random variables are introduced in this chapter, the longest in the book. Much of the material is well-done in this chapter, but the introduction of continuous random variables is a mess. They initially define continuous sample spaces to be those that are uncountable blatantly disregarding the possibility of mixed distributions. They then define a continuous real-valued random variable to be a function between two subsets of the real numbers and assert without justification that a probability density function. The `definition' is in any case simultaneously too restrictive (the input space need not be real) and too general (the observation space of a binomial random variable is a subset of the real numbers). In the discussion of the relationship between a cdf and a pdf, the authors blatantly misapply the fundamental theorem of calculus since there is no reason to assume that a pdf is continuous. This disregard of basic regularity issues permeates the chapter, usually without comment from the authors. Although there were other factors (many due to me), the confused treatment of continuous random variables was a contributor to the fact that most of my class never had a clear idea of what a random variable was. However, despite these issues, the chapter is still fairly good. The examples and exercises are well done, and not all of them are routine.

Chapter 4: This chapter is devoted to a discussion of some of the more important distributions. The material is generally of high quality. The central limit theorem is stated and the proof is deferred to an appendix. The appendix starts off by stating that the full proof is beyond the level of the text. While I agree with this, I do not understand why one would devote an appendix to `a proof of the central limit theorem' without giving a proof. This is an example of the illusory nature of the apparent rigor of the text.

Chapter 5: This is a very hard chapter on estimation. The key sections are on maximum likelihood estimators, confidence intervals, unbiasedness, and (perhaps) efficiency. Given the difficulty of the notion of sufficiency, I thought that the authors did an excellent job with it. The optional section on Bayesian estimation is also well done.

Chapter 6: Hypothesis testing is introduced here. The authors routinely state hypotheses tests as theorems starting in this chapter. This seems to be an abuse of the term, and when they `prove' the theorems, they typically show that the hypothesis test is at least approximately a generalized likelihood ratio test (GLRT); which is not the same thing at all. Saying that, the basic idea of what an hypothesis test actually is and how to perform one is explained well.

Chapter 7: The basic t and chi-square tests are introduced here. Note that the hypotheses tests, by the time they are actually stated, are pretty obvious which makes it strange that appendices are devoted to their proofs. As noted above, the tests are shown in the appendices to be (at least approximately) GLRTs. I did like the derivation of the various sampling distributions.

Chapter 8: This chapter discusses how to classify data. Although it comes at an appropriate place in the discussion, it might be better to have it earlier so that more students have a chance to consider it in a classroom setting.

Chapter 9: This chapter discusses two-sample data. It's pretty vanilla.

Chapter 10: Here we look at goodness-of-fit tests. The discussion is nice, although I think more attention should have been paid to the categorical distribution rather than simply leaping to the general multinomial distribution.

Chapter 11: At this point, the examples and exercises become much more computationally intensive. For this chapter discusses regression, covariance, and the bivariate normal distribution. I think this is one of the better chapters in the text, although a linear algebraic point of view for the multivariate normal distribution would have made an elegant addition.

Chapter 12: ANOVA is now introduced. Given the complexity of the setup, the authors give a very nice exposition.

We did not have time to discuss chapters 13 (randomized block design) or 14 (non-parametric statistics). My impression is that they are less rigorous but give a good overall view of the basic ideas.

All in all, I would recommend this book to other instructors, and will recommend (actually require) it for future prob/stat students. The book appears to be at about the right level and is superior to the competition. That is despite the confused treatment of continuous random variables and the insistence on stating hypotheses tests as theorems.

22 of 27 people found the following review helpful.
Confused and confusing
By Glitzer
I used this as the text in a sequence on probability and statistics I taught recently, and I soon came to regret this choice. The authors are obviously quite confused about basic concepts. Here are some examples: the "definition" of the median ignores obvious problems with existence and uniqueness; the "proof" of the central limit theorem is thoroughly incomplete; the "theorems" on the tests in Sect. 9.2, 9.3 summarize previous discussions, but the "proofs" of these theorems (we are even referred to an appendix - no small surprise when the statements seem obvious) establish something entirely different; finally, to conclude this (very incomplete) selection, there is the delightful claim that the golden ratio is a transcendental number (which just proves that the authors don't have the slightest idea what a transcendental number really is, but then it might have been wise to avoid the use of the term).

In addition to these blatant problems, the authors' treatment frequently misses the point and/or is confusing.

See all 40 customer reviews...

An Introduction to Mathematical Statistics and Its Applications (3rd Edition), by Richard J. Larsen, Morris L. Marx PDF
An Introduction to Mathematical Statistics and Its Applications (3rd Edition), by Richard J. Larsen, Morris L. Marx EPub
An Introduction to Mathematical Statistics and Its Applications (3rd Edition), by Richard J. Larsen, Morris L. Marx Doc
An Introduction to Mathematical Statistics and Its Applications (3rd Edition), by Richard J. Larsen, Morris L. Marx iBooks
An Introduction to Mathematical Statistics and Its Applications (3rd Edition), by Richard J. Larsen, Morris L. Marx rtf
An Introduction to Mathematical Statistics and Its Applications (3rd Edition), by Richard J. Larsen, Morris L. Marx Mobipocket
An Introduction to Mathematical Statistics and Its Applications (3rd Edition), by Richard J. Larsen, Morris L. Marx Kindle

** PDF Download An Introduction to Mathematical Statistics and Its Applications (3rd Edition), by Richard J. Larsen, Morris L. Marx Doc

** PDF Download An Introduction to Mathematical Statistics and Its Applications (3rd Edition), by Richard J. Larsen, Morris L. Marx Doc

** PDF Download An Introduction to Mathematical Statistics and Its Applications (3rd Edition), by Richard J. Larsen, Morris L. Marx Doc
** PDF Download An Introduction to Mathematical Statistics and Its Applications (3rd Edition), by Richard J. Larsen, Morris L. Marx Doc

Tidak ada komentar:

Posting Komentar