**Introductory Statistics**

by T. H. Wonnacott, R. J. Wonnacott

**Publisher**: Wiley 1969**ISBN/ASIN**: 0471615188**ISBN-13**: 9780471615187**Number of pages**: 416

**Description**:

The popular introduction to statistics for students of economics or business, suitable for a one- or two-semester course. Presents an approach that is generally available only in much more advanced texts, yet uses the simplest mathematics consistent with a sound presentation. This edition includes a wealth of new problems and examples (many of them real-life problems drawn from the literature) to support the theoretical discussion.

Download or read it online for free here:

**Download link**

(multiple formats)

Download mirrors:**Mirror 1**

## Similar books

**Multivariate Statistics: Concepts, Models, and Applications**

by

**David W. Stockburger**-

**Missouri State University**

The book for a course in multivariate statistics for first year graduate or advanced undergraduates. It is neither a mathematical treatise nor a cookbook. Instead of complicated mathematical proofs the author wrote about mathematical ideas.

(

**8598**views)

**Online Statistics Education**

by

**David Lane**-

**Rice University**

This is a resource for learning and teaching introductory statistics. It contains material presented in textbook format and as video presentations. This resource features interactive demonstrations and simulations, case studies, and an analysis lab.

(

**1573**views)

**A Feel for Statistics**

by

**Ivan Lowe**-

**scientificlanguage.com**

Here I present statistics for the ordinary person. Examples are taken from ordinary life. The book begins with basic concepts behind the statistics and never gets harder than simple arithmetic. The course is presented as a series of key ideas.

(

**1510**views)

**Statistical Theory**

by

**Ryan Martin**-

**University of Illinois at Chicago**

Table of contents: Statistics and Sampling Distributions; Point Estimation Basics; Likelihood and Maximum Likelihood Estimation; Sufficiency and Minimum Variance Estimation; Hypothesis Testing; Bayesian Statistic; What Else is There to Learn?

(

**10827**views)