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Statistics for business and economics / Paul Newbold, William L. Carlson, Betty M. Thorne.

By: Contributor(s): Material type: TextTextPublication details: Upper Saddle River, N.J. : Pearson, c2010.Edition: 7th ed. ; global edDescription: 986, : ill. ; 26 cm. + 1 CD-ROM (4 3/4 in.)ISBN:
  • 0135072484
  • 9780135072486
Subject(s): DDC classification:
  • 519.5 NEW
Holdings
Item type Current library Call number Copy number Status Date due Barcode
Standard Loan Moylish Library Main Collection 519.5 NEW (Browse shelf(Opens below)) 1 Available 39002100392043

Enhanced descriptions from Syndetics:

For business statistics courses taught in Economics and Business Schools


This title is a Pearson Global Edition. The Editorial team at Pearson has worked closely with educators around the world to include content which is especially relevant to students outside the United States.


A classic text for accuracy and statistical precision.

Statistics for Business and Economics enables students to conduct serious analysis of applied problems rather than running simple "canned" applications. This text is also at a mathematically higher level than most business statistics texts and provides students with the knowledge they need to become stronger analysts for future managerial positions.


The seventh edition of this book has been revised and updated to provide students with improved problem contexts for learning how statistical methods can improve their analysis and understanding of business and economics.

Includes bibliographical references and index.

System requirements for accompanying disc: Windows XP or Vista.

Table of contents provided by Syndetics

  • Chapter 1 Describing Data: Graphical
  • 1.1 Decision Making in an Uncertain Environment
  • 1.2 Classification of Variables
  • 1.3 Graphs to Describe Categorical Variables
  • 1.4 Graphs to Describe Time-Series Data
  • 1.5 Graphs to Describe Numerical Variables
  • 1.6 Tables and Graphs to Describe Relationships Between Variables
  • 1.7 Data Presentation Errors
  • Chapter 2 Describing Data: Numerical
  • 2.1 Measures of Central Tendency
  • 2.2 Measures of Variability
  • 2.3 Weighted Mean and Measures of Grouped Data
  • 2.4 Measures of Relationships Between Variables
  • Chapter 3 Probability
  • 3.1 Random Experiment, Outcomes, Events
  • 3.2 Probability and Its Postulates
  • 3.3 Probability Rules
  • 3.4 Bivariate Probabilities
  • 3.5 Bayes' Theorem
  • Chapter 4 Discrete Random Variables and Probability Distributions
  • 4.1 Random Variables
  • 4.2 Probability Distributions for Discrete Random Variables
  • 4.3 Properties of Discrete Random Variables
  • 4.4 Binomial Distribution
  • 4.5 Hypergeometric Distribution
  • 4.6 The Poisson Probability Distribution
  • 4.7 Jointly Distributed Discrete Random Variables
  • Chapter 5 Continuous Random Variables and Probability Distributions
  • 5.1 Continuous Random Variables
  • 5.2 Expectations for Continuous Random Variables
  • 5.3 The Normal Distribution
  • 5.4 Normal Distribution Approximation for Binomial Distribution
  • 5.5 The Exponential Distribution
  • 5.6 Jointly Distributed Continuous Random Variables
  • Chapter 6 Sampling and Sampling Distributions
  • 6.1 Sampling from a Population
  • 6.2 Sampling Distributions of Sample Means
  • 6.3 Sampling Distributions of Sample Proportions
  • 6.4 Sampling Distributions of Sample Variances
  • Chapter 7 Estimation: Single Population
  • 7.1 Properties of Point Estimators
  • 7.2 Confidence Interval Estimation of the Mean of a Normal Distribution: Population Variance Known
  • 7.3 Confidence Interval Estimation of the Mean of a Normal Distribution: Population Variance Unknown
  • 7.4 Confidence Interval Estimation of Population Proportion
  • 7.5 Confidence Interval Estimation of the Variance of a Normal Distribution
  • 7.6 Confidence Interval Estimation: Finite Populations
  • Chapter 8 Estimation: Additional Topics
  • 8.1 Confidence Interval Estimation of the Difference Between Two Normal Population Means: Dependent Samples
  • 8.2 Confidence Interval Estimation of the Difference Between Two Normal Population Means: Independent Samples
  • 8.3 Confidence Interval Estimation of the Difference Between Two Population Proportions
  • 8.4 Sample Size Determination: Large Populations
  • 8.5 Sample Size Determination: Finite Populations
  • Chapter 9 Hypothesis Testing: Single Population
  • 9.1 Concepts of Hypothesis Testing
  • 9.2 Tests of the Mean of a Normal Distribution: Population Variance Known
  • 9.3 Tests of the Mean of a Normal Distribution: Population Variance Unknown
  • 9.4 Tests of the Population Proportion
  • 9.5 Assessing the Power of a Test
  • 9.6 Tests of the Variance of a Normal Distribution
  • Chapter 10 Hypothesis Testing: Additional Topics
  • 10.1 Tests of the Difference Between Two Population Means: Dependent Samples
  • 10.2 Tests of the Difference Between Two Normal Population Means: Independent Samples
  • 10.3 Tests of the Difference Between Two Population Proportions
  • 10.4 Tests of the Equality of the Variances Between Two Normally Distributed Populations
  • 10.5 Some Comments on Hypothesis Testing
  • Chapter 11 Simple Regression
  • 11.1 Overview of Linear Models
  • 11.2 Linear Regression Model
  • 11.3 Least Squares Coefficient Estimators
  • 11.4 The Explanatory Power of a Linear Regression Equation
  • 11.5 Statistical Inference: Hypothesis Tests and Confidence Intervals
  • 11.6 Prediction
  • 11.7 Correlation Analysis
  • 11.8 Beta Measure of Financial Risk
  • 11.9 Graphical Analysis
  • Chapter 12 Multiple Regression
  • 12.1 The Multiple Regression Model
  • 12.2 Estimation of Coefficients
  • 12.3 Explanatory Power of a Multiple Regression Equation
  • 12.4 Confidence Intervals and Hypothesis Tests for Individual Regression Coefficients
  • 12.5 Tests on Regression Coefficients
  • 12.6 Prediction
  • 12.7 Transformations for Nonlinear Regression Models
  • 12.8 Dummy Variables for Regression Models
  • 12.9 Multiple Regression Analysis Application Procedure
  • Chapter 13 Additional Topics in Regression Analysis
  • 13.1 Model-Building Methodology
  • 13.2 Dummy Variables and Experimental Design
  • 13.3 Lagged Values of the Dependent Variables as Regressors
  • 13.4 Specification Bias
  • 13.5 Multicollinearity
  • 13.6 Heteroscedasticity
  • 13.7 Autocorrelated Errors
  • Chapter 14 Analysis of Categorical Data
  • 14.1 Goodness-of-Fit Tests: Specified Probabilities
  • 14.2 Goodness-of-Fit Tests: Population Parameters Unknown
  • 14.3 Contingency Tables
  • 14.4 Sign Test and Confidence Interval
  • 14.5 Wilcoxon Signed Rank Test
  • 14.6 Mann-Whitney U Test
  • 14.7 Wilcoxon Rank Sum Test
  • 14.7 Spearman Rank Correlation
  • Chapter 15 Analysis of Variance
  • 15.1 Comparison of Several Population Means
  • 15.2 One-Way Analysis of Variance
  • 15.3 The Kruskal-Wallis Test
  • 15.4 Two-Way Analysis of Variance: One Observation per Cell, Randomized Blocks
  • 15.5 Two-Way Analysis of Variance: More Than One Observation per Cell
  • Chapter 16 Time-Series Analysis and Forecasting
  • 16.1 Index Numbers
  • 16.2 A Nonparametric Test for Randomness
  • 16.3 Components of a Time Series
  • 16.4 Moving Averages
  • 16.5 Exponential Smoothing
  • 16.6 Autoregressive Models
  • 16.7 Autoregressive Integrated Moving Average Models
  • Chapter 17 Sampling: Additional Topics
  • 17.1 Stratified Sampling
  • 17.2 Other Sampling Methods
  • Chapter 18 Statistical Decision Theory
  • 18.1 Decision Making Under Uncertainty
  • 18.2 Solutions Not Involving Specification of Probabilities
  • 18.3 Expected Monetary Value TreePlan
  • 18.4 Sample Information: Bayesian Analysis and Value
  • 18.5 Allowing for Risk: Utility Analysis
  • Appendix Tables
  • 1 Cumulative Distribution Function of the Standard Normal Distribution
  • 2 Probability Function of the Binomial Distribution
  • 3 Cumulative Binomial Probabilities
  • 4 Values of e -¿
  • 5 Individual Poisson Probabilities
  • 6 Cumulative Poisson Probabilities
  • 7 Cutoff Points of the Chi-Square Distribution Function
  • 8 Cutoff Points for the Student's t Distribution
  • 9 Cutoff Points for the F Distribution
  • 10 Cutoff Points for the Distribution of the Wilcoxon Test Statistic
  • 11 Cutoff Points for the Distribution of Spearman Rank Correlation Coefficient
  • 12 Cutoff Points for the Distribution of the Durbin-Watson Test Statistic
  • 13 Critical Values of the Studentized Range Q (page 964 965 Applied Statistical Methods Carlson, Thorne rentice Hall 1997)
  • 14 Cumulative Distribution Function of the Runs
  • Test Statistic
  • Answers to Selected Even-Numbered Exercises
  • Index

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