Statistics for Business
Pearson (Verlag)
978-0-321-12391-6 (ISBN)
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Robert Stine holds a PhD from Princeton University. He has taught at the Wharton School since 1983, during which time he has regularly taught business statistics. During his tenure, Bob has received a variety of teaching awards. Bob also actively consults for industry. His clients include the pharmaceutical firms Merck and Pfizer, and he regularly works with the Federal Reserve Bank of Philadelphia on models for retail credit risk. This collaboration has produced three well-received conferences held at Wharton. His areas of research include computer software, time series analysis and forecasting, and general problems related to model identification and selection. Bob has published numerous articles in research journals, including the Journal of the American Statistical Association, Journal of the Royal Statistical Society, Biometrika, and The Annals of Statistics. He was recently awarded the 2011 Helen Kardon Moss Anvil Award for outstanding teaching quality at the Wharton School. Dean Foster holds a PhD from the University of Maryland. He has taught at the Wharton School since 1992 and previously taught at the University of Chicago. Dean teaches courses in introductory business statistics, probability and Markov chains, statistical computing, and advanced statistics for managers. Dean’s research areas are statistical inference for stochastic processes, game theory, machine learning, and variable selection. He is published in a wide variety of journals, including The Annals of Statistics, Operations Research, Games and Economic Behaviour, Journal of Theoretical Population Biology, andEconometrica. Bob Stine and Dean Foster have co-authored two casebooks: Basic Business Statistics (Springer-Verlag) and Business Analysis Using Regression (Springer-Verlag). These casebooks offer a collection of data analysis examples that motivate and illustrate key ideas of statistics, ranging from standard error to regression diagnostics and time series analysis. They also have collaborated on a number of research articles.
PART 1: VARIATION IN DATA
1. Introduction
1.1 What is Statistics?
1.2 Previews
1.3 How to Use This Book
2. Data
2.1 Data Tables
2.2 Categorical and Numerical Data
2.3 Recoding and Aggregation
2.4 Time Series
2.5 Further Attributes of Data
3. Describing categorical data
3.1 Looking at Data
3.2 Charts of Categorical Data
3.3 The Area Principle
3.4 Mode and Median
4. Describing numerical data
4.1 Summaries of Numerical Variables
4.2 Histograms and the Distribution of Numerical Data
4.3 Boxplot
4.4 Shape of a Distribution
5. Association in categorical data
5.1 Contingency Tables
5.2 Lurking Variables and Simpson's Paradox
5.3 Strength of Association
6. Association in numerical data
6.1 Scatterplots
6.2 Association in Scatterplots
6.3 Measuring Association
6.4 Summarizing Association with a Line
6.5 Spurious Correlation
Statistics in Action: Financial time series
Statistics in Action: Executive compensation
PART 2: PROBABILITY
7. Probability
7.1 From Data to Probability
7.2 Rules for Probability
7.3 Independent Events
7.4 Boole's Inequality
8. Conditional Probability
8.1 From Tables to Probabilities
8.2 Dependent Events
8.3 Organizing Probabilities
8.4 Order in Conditional Probabilities
9. Random Variables
9.1 Properties of Random Variables
9.2 Expected Values
9.3 Comparing Random Variables
10. Association between Random Variables
10.1 Portfolios and Random Variables
10.2 Probability Distribution
10.3 Sums of Random Variables
10.4 Measure Dependence between Random Variables
10.5 IID Random Variables
11. Probability models for Counts
11.1 Random Variables for Counts
11.2 Binomial Model
11.3 Properties of Binomial Random Variables
11.4 Poisson Model
12. Normality
12.1 Normal Random Variable
12.2 The Normal Model
12.3 Percentiles of the Normal Distribution
12.4 Departures from Normality
Statistics in Action: Managing Financial Risk
Statistics in Action: Modeling Sampling Variation
PART 3: INFERENCE
13. Samples and Surveys
13.1 Two Surprises in Sampling
13.2 Variation
13.3 Alternative Sampling Methods
13.4 Checklist for Surveys
14. Sampling Variation and Quality
14.1 Sampling Distribution of the Mean
14.2 Control Limits
14.3 Using a Control Chart
14.4 Control Charts for Variation
15. Confidence Intervals
15.1 Ranges for Parameters
15.2 Confidence Interval for the Mean
15.3 Interpreting Confidence Intervals
15.4 Manipulating Confidence Intervals
15.5 Margin of Error
16. Statistical Tests
16.1 Concepts of Statistical Tests
16.2 Testing the Proportion
16.3 Testing the Mean
16.4 Other Properties of Tests
17. Alternative Approaches to Inference
17.1 A Confidence Interval for the Median
17.2 Transformations and Intervals
17.3 Prediction Intervals
17.4 Proportions Based on Small Samples
18. Comparison
18.1 Data for Comparisons
18.2 Two-sample T-test
18.3 Confidence Interval for the Difference
18.4 Other Comparisons
Statistics in Action: Rare Events
Statistics in Action: Testing Association
PART 4: REGRESSION MODELS
19. Linear Patterns
19.1 Fitting a Line to Data
19.2 Interpreting the Fitted Line
19.3 Properties of Residuals
19.4 Explaining Variation
19.5 Conditions for a Simple Regression
20. Curved Patterns
20.1 Detecting Nonlinear Patterns
20.2 Reciprocal Transformation
20.3 Comparing a Linear and Nonlinear Equation
20.4 Logarithm Transformation
20.5 Comparing Equations
21. Simple Regression
21.1 The Simple Regression Model
21.2 Conditions for the Simple Regression Model
21.3 Inference in Regression
21.4 Prediction Intervals
22. Regression Diagnostics
22.1 Changing Variation
22.2 Leveraged Outliers
22.3 Dependent Errors and Time Series
23. Multiple Regression
23.1 The Multiple Regression Model
23.2 Interpreting Multiple Regression
23.3 Checking Conditions
23.4 Inference in Multiple Regression
23.5 Steps in Building a Multiple Regression
24. Building Regression Models
24.1 Identifying Explanatory Variables
24.2 Collinearity
24.3 Removing Explanatory Variables
25. Categorical Explanatory Variables
25.1 Two-sample Comparisons
25.2 Analysis of Covariance
25.3 Checking Conditions
25.4 Interactions and Inference
25.5 Regression with Several Groups
26. Analysis of Variance
26.1 Comparing Several Groups
26.2 Inference in Anova Regression Models
26.3 Multiple Comparisons
26.4 Groups of Different Size
27. Time Series
27.1 Decomposing a Time Series
27.2 Regression Models
27.3 Checking Conditions
Statistics in Action: Analyzing Experiments
Statistics in Action: Automated Regression Modeling
Erscheint lt. Verlag | 31.5.2011 |
---|---|
Sprache | englisch |
Maße | 276 x 217 mm |
Gewicht | 1974 g |
Themenwelt | Mathematik / Informatik ► Mathematik ► Finanz- / Wirtschaftsmathematik |
Mathematik / Informatik ► Mathematik ► Statistik | |
ISBN-10 | 0-321-12391-3 / 0321123913 |
ISBN-13 | 978-0-321-12391-6 / 9780321123916 |
Zustand | Neuware |
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