Statistics for business and economics
著者
書誌事項
Statistics for business and economics
Pearson Education, c2011
11th ed., international ed
- : pbk
大学図書館所蔵 全3件
  青森
  岩手
  宮城
  秋田
  山形
  福島
  茨城
  栃木
  群馬
  埼玉
  千葉
  東京
  神奈川
  新潟
  富山
  石川
  福井
  山梨
  長野
  岐阜
  静岡
  愛知
  三重
  滋賀
  京都
  大阪
  兵庫
  奈良
  和歌山
  鳥取
  島根
  岡山
  広島
  山口
  徳島
  香川
  愛媛
  高知
  福岡
  佐賀
  長崎
  熊本
  大分
  宮崎
  鹿児島
  沖縄
  韓国
  中国
  タイ
  イギリス
  ドイツ
  スイス
  フランス
  ベルギー
  オランダ
  スウェーデン
  ノルウェー
  アメリカ
注記
Includes index
内容説明・目次
内容説明
Classic, yet contemporary. Theoretical, yet applied. Statistics for Business and Economics, Eleventh Edition, gives you the best of both worlds. Using a rich array of applications from a variety of industries, McClave/Sincich/Benson clearly demonstrates how to use statistics effectively in a business environment.
The book focuses on developing statistical thinking so the reader can better assess the credibility and value of inferences made from data. As consumers and future producers of statistical inferences, readers are introduced to a wide variety of data collection and analysis techniques to help them evaluate data and make informed business decisions. As with previous editions, this revision offers an abundance of applications with many new and updated exercises that draw on real business situations and recent economic events. The authors assume a background of basic algebra.
目次
1. Statistics, Data, and Statistical Thinking
1.1 The Science of Statistics
1.2 Types of Statistical Applications in Business
1.3 Fundamental Elements of Statistics
1.4 Processes*
1.5 Types of Data
1.6 Collecting Data
1.7 The Role of Statistics in Managerial Decision-Making
2. Methods for Describing Sets of Data
2.1 Describing Qualitative Data
2.2 Graphical Methods for Describing Quantitative Data
2.3 Summation Notation
2.4 Numerical Measures of Central Tendency
2.5 Numerical Measures of Variability
2.6 Interpreting the Standard Deviation
2.7 Numerical Measures of Relative Standing
2.8 Methods for Detecting Outliers: Box Plots and z-Scores
2.9 Graphing Bivariate Relationships*
2.10 The Time Series Plot
2.11 Distorting the Truth with Descriptive Techniques
3. Probability
3.1 Events, Sample Spaces, and Probability
3.2 Unions and Intersections
3.3 Complementary Events
3.4 The Additive Rule and Mutually Exclusive Events
3.5 Conditional Probability
3.6 The Multiplicative Rule and Independent Events
3.7 Random Sampling
3.8 Bayes' Rule
4. Random Variables and Probability Distributions
4.1 Two Types of Random Variables
PART I: Discrete Random Variables
4.2 Probability Distributions for Discrete Random Variables
4.3 The Binomial Random Variable
4.4 Other Discrete Distributions: Poisson and Hypergeometric
PART II: Continuous Random Variables
4.5 Probability Distributions for Continuous Random Variables
4.6 The Normal Distribution
4.7 Descriptive Methods for Assessing Normality
4.8 Approximating a Binomial Distribution with a Normal Distribution
4.9 Other Continuous Distributions: Uniform and Exponential
4.10 Sampling Distributions
4.11 The Sampling Distribution of a Sample Mean and the Central Limit Theorem
5. Inferences Based on a Single Sample: Estimation with Confidence Intervals
5.1 Identifying the Target Parameter
5.2 Confidence Interval for a Population Mean: Normal (z) Statistic
5.3 Confidence Interval for a Population Mean: Student's t-Statistic
5.4 Large-Sample Confidence Interval for a Population Proportion
5.5 Determining the Sample Size
5.6 Finite Population Correction for Simple Random Sampling
5.7 Sample Survey Designs*
6. Inferences Based on a Single Sample: Tests of Hypothesis
6.1 The Elements of a Test of Hypothesis
6.2 Formulating Hypotheses and Setting Up the Rejection Region
6.3 Test of Hypothesis about a Population Mean: Normal (z) Statistic
6.4 Observed Significance Levels: p-Values
6.4 Test of Hypothesis About a Population Mean: Student's t-Statistic
6.5 Large-Sample Test of Hypothesis About a Population Proportion
6.6 Calculating Type II Error Probabilities: More About *
6.7 Test of Hypothesis About a Population Variance
7. Inferences Based on Two Samples: Confidence Intervals and Tests of Hypotheses
7.1 Identifying the Target Parameter
7.2 Comparing Two Population Means: Independent Sampling
7.3 Comparing Two Population Means: Paired Difference Experiments
7.4 Comparing Two Population Proportions: Independent Sampling
7.5 Determining the Sample Size
7.6 Comparing Two Population Variances: Independent Sampling
8. Design of Experiments and Analysis of Variance
8.1 Elements of a Designed Experiment
8.2 The Completely Randomized Design: Single Factor
8.3 Multiple Comparisons of Means
8.4 The Randomized Block Design
8.5 Factorial Experiments
9. Categorical Data Analysis
9.1 Categorical Data and the Multinomial Experiment
9.2 Testing Category Probabilities: One-Way Table
9.3 Testing Category Probabilities: Two-Way (Contingency) Table
9.4 A Word of Caution About Chi-Square Tests
10. Simple Linear Regression
10.1 Probabilistic Models
10.2 Fitting the Model: The Least Squares Approach
10.3 Model Assumptions
10.4 Assessing the Utility of the Model: Making Inferences about the Slope 1
10.5 The Coefficients of Correlation and Determination
10.6 Using the Model for Estimation and Prediction
10.7 A Complete Example
11. Multiple Regression and Model Building
11.1 Multiple Regression Models
PART I: First-Order Models with Quantitative Independent Variables
11.2 The First-Order Model: Estimating and Making Inferences about the -Parameters
11.3 Evaluating Overall Model Utility
11.4 Using the Model for Estimation and Prediction
PART II: Model Building in Multiple Regression
11.5 Model Building: Interaction Models
11.6 Model Building: Quadratic and other Higher-Order Models
11.7 Model Building: Qualitative (Dummy) Variable Models
11.8 Model Building: Models with both Quantitative and Qualitative Variables
11.9 Model Building: Comparing Nested Models
11.10 Model Building: Stepwise Regression
PART III: Multiple Regression Diagnostics
11.11 Residual Analysis: Checking the Regression Assumptions
11.12 Some Pitfalls: Estimability, Multicollinearity, and Extrapolation
12. Methods for Quality Improvement: Statistical Process Control
12.1 Quality, Processes, and Systems
12.2 Statistical Control
12.3 The Logic of Control Charts
12.4 A Control Chart for Monitoring the Mean of a Process: The x-Chart
12.5 A Control Chart for Monitoring the Variation of a Process: The R-Chart
12.6 A Control Chart for Monitoring the Proportion of Defectives Generated by a Process: The p-Chart
12.7 Diagnosing the Causes of Variation
12.8 Capability Analysis
13. Time Series: Descriptive Analyses, Models, and Forecasting (**Chapter is available in PDF format on CD bound with text)
13.1 Descriptive Analysis: Index Numbers
13.2 Descriptive Analysis: Exponential Smoothing
13.3 Time Series Components
13.4 Forecasting: Exponential Smoothing
13.5 Forecasting Trends: The Holt's Method
13.6 Measuring Forecast Accuracy: MAD and RMSE
13.7 Forecasting Trends: Simple Linear Regression
13.8 Seasonal Regression Models
13.9 Autocorrelation and the Durbin-Watson Test
14. Nonparametric Statistics (**Chapter is available in PDF format on CD-ROM bound with text)
14.1 Introduction: Distribution-Free Tests
14.2 Single Population Inferences
14.3 Comparing Two Populations: Independent Samples
14.4 Comparing Two Populations: Paired Difference Experiment
14.5 Comparing Three or More Populations: Completely Randomized Design
14.6 Comparing Three or More Populations: Randomized Block Design
14.7 Rank Correlation
* Optional Topic
Appendix A Basic Counting Rules
Appendix B Tables
Appendix C Calculation Formulas for Analysis of Variance
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