Applied Statistics and Probability for Engineers, EMEA Edition
5.290 kr.

Lýsing:
Applied Statistics and Probability for Engineers provides a practical approach to probability and statistical methods. Students learn how the material will be relevant in their careers by including a rich collection of examples and problem sets that reflect realistic applications and situations. This product focuses on real engineering applications and real engineering solutions while including material on the bootstrap, increased emphasis on the use of p-value, coverage of equivalence testing, and combining p-values.
Annað
- Höfundar: Douglas C. Montgomery, George C. Runger
- Útgáfa:7
- Útgáfudagur: 01/2020
- Hægt að prenta út 10 bls.
- Hægt að afrita 2 bls.
- Format:ePub
- ISBN 13: 9781119636229
- Print ISBN: 9781119585596
- ISBN 10: 1119636221
Efnisyfirlit
- Cover
- Title Page
- Preface
- CHAPTER 1: The Role of Statistics in Engineering
- Important Terms and Concepts
- Study Resources
- Additional Study Resources
- Readings Content
- 1.1 The Engineering Method and Statistical Thinking
- 1.2 Collecting Engineering Data
- 1.3 Mechanistic and Empirical Models
- 1.4 Probability and Probability Models
- Exercises
- Exercises for Section 2.1
- Exercises for Section 2.2
- Exercises for Section 2.3
- Exercises for Section 2.4
- Exercises for Section 2.5
- Exercises for Section 2.6
- Exercises for Section 2.7
- Exercises for Section 2.8
- Exercises for Section 2.9
- Supplemental Exercises for Chapter 2
- Important Terms and Concepts
- Study Resources
- Section 2.1: Sample Spaces and Events
- Section 2.2: Counting Techniques
- Section 2.3: Interpretations and Axioms of Probability
- Section 2.5: Conditional Probability
- Section 2.6: Intersections of Events and Multiplication and Total Probability Rules
- Section 2.7: Independence
- Section 2.8: Bayes’ Theorem
- Additional Study Resources
- Readings Content
- 2.1 Sample Spaces and Events
- 2.2 Counting Techniques
- 2.3 Interpretations and Axioms of Probability
- 2.4 Unions of Events and Addition Rules
- 2.5 Conditional Probability
- 2.6 Intersections of Events and Multiplication and Total Probability Rules
- 2.7 Independence
- 2.8 Bayes’ Theorem
- 2.9 Random Variables
- Exercises
- Exercises for Section 3.1
- Exercises for Section 3.2
- Exercises for Section 3.3
- Exercises for Section 3.4
- Exercises for Section 3.5
- Exercises for Section 3.6
- Exercises for Section 3.7
- Exercises for Section 3.8
- Supplemental Exercises for Chapter 3
- Important Terms and Concepts
- Study Resources
- Section 3.1 Probability Distributions and Probability Mass Functions
- Section 3.2 Cumulative Distribution Functions
- Section 3.3 Mean and Variance of a Discrete Random Variable
- Section 3.5 Binomial Distribution
- Section 3.6 Geometric and Negative Binomial Distributions
- Section 3.7 Hypergeometric Distribution
- Section 3.8 Poisson Distribution
- Additional Study Resources
- Reading Content
- 3.1 Probability Distributions and Probability Mass Functions
- 3.2 Cumulative Distribution Functions
- 3.3 Mean and Variance of a Discrete Random Variable
- 3.4 Discrete Uniform Distribution
- 3.5 Binomial Distribution
- 3.6 Geometric and Negative Binomial Distributions
- 3.7 Hypergeometric Distribution
- 3.8 Poisson Distribution
- Exercises
- Exercises for Section 4.1
- Exercises for Section 4.2
- Exercises for Section 4.3
- Exercises for Section 4.4
- Exercises for Section 4.5
- Exercises for Section 4.6
- Exercises for Section 4.7
- Exercises for Section 4.8
- Exercises for Section 4.9
- Exercises for Section 4.10
- Exercises for Section 4.11
- Supplemental Exercises for Chapter 4
- Important Terms and Concepts
- Study Resources
- Section 4.1 Probability Distributions and Probability Density Functions
- Section 4.2 Cumulative Distribution Functions
- Section 4.3 Mean and Variance of a Continuous Random Variable
- Section 4.4 Continuous Uniform Distribution
- Section 4.5 Normal Distribution
- Section 4.6 Normal Approximation to the Binomial and Poisson Distributions
- Section 4.7 Exponential Distribution
- Section 4.9 Weibull Distribution
- Section 4.10 Lognormal Distribution
- Additional Study Resources
- Readings Content
- 4.1 Probability Distributions and Probability Density Functions
- 4.2 Cumulative Distribution Functions
- 4.3 Mean and Variance of a Continuous Random Variable
- 4.4 Continuous Uniform Distribution
- 4.5 Normal Distribution
- 4.6 Normal Approximation to the Binomial and Poisson Distributions
- 4.7 Exponential Distribution
- 4.8 Erlang and Gamma Distributions
- 4.9 Weibull Distribution
- 4.10 Lognormal Distribution
- 4.11 Beta Distribution
- Exercises
- Exercises for Section 5.1
- Exercises for Section 5.2
- Exercises for Section 5.3
- Exercises for Section 5.4
- Exercises for Section 5.5
- Exercises for Section 5.6
- Exercises for Section 5.7
- Exercises for Section 5.8
- Supplemental Exercises for Chapter 5
- Important Terms and Concepts
- Study Resources
- Section 5.1 Joint Probability Distributions for Two Random Variables
- Section 5.2 Conditional Probability Distributions and Independence
- Section 5.4 Covariance and Correlation
- Section 5.5 Common Joint Distributions
- Section 5.6 Linear Functions of Random Variables
- Section 5.8 Moment-Generating Functions
- Additional Study Resources
- Readings Content
- 5.1 Joint Probability Distributions for Two Random Variables
- 5.2 Conditional Probability Distributions and Independence
- 5.3 Joint Probability Distributions for More Than Two Random Variables
- 5.4 Covariance and Correlation
- 5.5 Common Joint Distributions
- 5.6 Linear Functions of Random Variables
- 5.7 General Functions of Random Variables
- 5.8 Moment-Generating Functions
- Exercises
- Exercises for Section 6.1
- Exercises for Section 6.2
- Exercises for Section 6.3
- Exercises for Section 6.4
- Exercises for Section 6.5
- Exercises for Section 6.6
- Exercises for Section 6.7
- Supplemental Exercises for Chapter 6
- Important Terms and Concepts
- Study Resources
- Section 6.1 Numerical Summaries of Data
- Section 6.2 Stem-and-Leaf Diagrams
- Section 6.3 Frequency Distributions and Histograms
- Section 6.4 Box Plots
- Section 6.6 Scatter Diagrams
- Section 6.7 Probability Plots
- Additional Study Resources
- Readings Content
- 6.1 Numerical Summaries of Data
- 6.2 Stem-and-Leaf Diagrams
- 6.3 Frequency Distributions and Histograms
- 6.4 Box Plots
- 6.5 Time Sequence Plots
- 6.6 Scatter Diagrams
- 6.7 Probability Plots
- Exercises
- Exercises for Section 7.2
- Exercises for Section 7.3
- Exercises for Section 7.4
- Supplemental Exercises for Chapter 7
- Important Terms and Concepts
- Study Resources
- Section 7.2 Sampling Distributions and the Central Limit Theorem
- Section 7.3 General Concepts of Point Estimation
- Section 7.4 Methods of Point Estimation
- Additional Study Resources
- Readings Content
- Introduction
- 7.1 Point Estimation
- 7.2 Sampling Distributions and the Central Limit Theorem
- 7.3 General Concepts of Point Estimation
- 7.4 Methods of Point Estimation
- Exercises
- Exercises for Section 8.1
- Exercises for Section 8.2
- Exercises for Section 8.3
- Exercises for Section 8.4
- Exercises for Section 8.6
- Supplemental Exercises for Chapter 8
- Important Terms and Concepts
- Study Resources
- Section 8.1 Confidence Interval on the Mean of a Normal Distribution, Variance Known
- Section 8.2 Confidence Interval on the Mean of a Normal Distribution, Variance Unknown
- Section 8.3 Confidence Interval on the Variance and Standard Deviation of a Normal Distribution
- Section 8.4 Large-Sample Confidence Interval for a Population Proportion
- Additional Study Resources
- Readings Content
- Introduction
- 8.1 Confidence Interval on the Mean of a Normal Distribution, Variance Known
- 8.2 Confidence Interval on the Mean of a Normal Distribution, Variance Unknown
- 8.3 Confidence Interval on the Variance and Standard Deviation of a Normal Distribution
- 8.4 Large-Sample Confidence Interval for a Population Proportion
- 8.5 Guidelines for Constructing Confidence Intervals
- 8.6 Bootstrap Confidence Interval
- 8.7 Tolerance and Prediction Intervals
- Exercises
- Exercises for Section 9.1
- Exercises for Section 9.2
- Exercises for Section 9.3
- Exercises for Section 9.4
- Exercises for Section 9.5
- Exercises for Section 9.7
- Exercises for Section 9.8
- Exercises for Section 9.9
- Exercises for Section 9.10
- Exercises for Section 9.11
- Supplemental Exercises for Chapter 9
- Important Terms and Concepts
- Study Resources
- Section 9.1 Hypothesis Testing
- Section 9.2 Tests on the Mean of a Normal Distribution, Variance Known
- Section 9.3 Tests on the Mean of a Normal Distribution, Variance Unknown
- Section 9.5 Tests on a Population Proportion
- Additional Study Resources
- Readings Content
- Introduction
- 9.1 Hypothesis Testing
- 9.2 Tests on the Mean of a Normal Distribution, Variance Known
- 9.3 Tests on the Mean of a Normal Distribution, Variance Unknown
- 9.4 Tests on the Variance and Standard Deviation of a Normal Distribution
- 9.5 Tests on a Population Proportion
- 9.6 Summary Table of Inference Procedures for a Single Sample
- 9.7 Testing for Goodness of Fit
- 9.8 Contingency Table Tests
- 9.9 Nonparametric Procedures
- 9.10 Equivalence Testing
- 9.11 Combining P-Values
- Exercises
- Exercises for Section 10.1
- Exercises for Section 10.2
- Exercises for Section 10.3
- Exercises for Section 10.4
- Exercises for Section 10.5
- Exercises for Section 10.6
- Supplemental Exercises for Chapter 10
- Important Terms and Concepts
- Study Resources
- Section 10.2 Inference on the Difference in Means of Two Normal Distributions, Variances Unknown
- Section 10.3 A Nonparametric Test for the Difference in Two Means
- Section 10.4 Paired t-Test
- Section 10.6 Inference on Two Population Proportions
- Additional Study Resources
- Readings Content
- 10.1 Inference on the Difference in Means of Two Normal Distributions, Variances Known
- 10.2 Inference on the Difference in Means of Two Normal Distributions, Variances Unknown
- 10.3 A Nonparametric Test for the Difference in Two Means
- 10.4 Paired t-Test
- 10.5 Inference on the Variances of Two Normal Distributions
- 10.6 Inference on Two Population Proportions
- 10.7 Summary Table and Road Map for Inference Procedures for Two Samples
- Exercises
- Exercises for Section 11.2
- Exercises for Section 11.4
- Exercises for Sections 11.5 and 11.6
- Exercises for Section 11.7
- Exercises for Section 11.8
- Exercises for Section 11.9
- Exercises for Section 11.10
- Supplemental Exercises for Chapter 11
- Important Terms and Concepts
- Study Resources
- Section 11.2 Simple Linear Regression
- Section 11.4 Hypothesis Tests in Simple Linear Regression
- Section 11.7 Adequacy of the Regression Model
- Section 11.8 Correlation
- Section 11.9: Regression on Transformed Variables
- Additional Study Resources
- Readings Content
- 11.1 Empirical Models
- 11.2 Simple Linear Regression
- 11.3 Properties of the Least Squares Estimators
- 11.4 Hypothesis Tests in Simple Linear Regression
- 11.5 Confidence Intervals
- 11.6 Prediction of New Observations
- 11.7 Adequacy of the Regression Model
- 11.8 Correlation
- 11.9 Regression on Transformed Variables
- 11.10 Logistic Regression
- Exercises
- Exercises for Section 12.1
- Exercises for Section 12.2
- Exercises for Sections 12.3 and 12.4
- Exercises for Section 12.5
- Exercises for Section 12.6
- Supplemental Exercises for Chapter 12
- Important Terms and Concepts
- Study Resources
- Section 12.1 Multiple Linear Regression Model
- Section 12.2 Hypothesis Tests in Multiple Linear Regression
- Section 12.5 Model Adequacy Checking
- Section 12.6 Aspects of Multiple Regression Modeling
- Additional Study Resources
- Readings Content
- 12.1 Multiple Linear Regression Model
- 12.2 Hypothesis Tests in Multiple Linear Regression
- 12.3 Confidence Intervals in Multiple Linear Regression
- 12.4 Prediction of New Observations
- 12.5 Model Adequacy Checking
- 12.6 Aspects of Multiple Regression Modeling
- Exercises
- Exercises for Section 13.2
- Exercises for Section 13.3
- Exercises for Section 13.4
- Supplemental Exercises for Chapter 13
- Important Terms and Concepts
- Study Resources
- Section 13.2 Completely Randomized Single-Factor Experiment
- Section 13.3 The Random-Effects Model
- Section 13.4 Randomized Complete Block Design
- Additional Study Resources
- Readings Content
- 13.1 Designing Engineering Experiments
- 13.2 Completely Randomized Single-Factor Experiment
- 13.3 The Random-Effects Model
- 13.4 Randomized Complete Block Design
- Exercises
- Exercises for Section 14.3
- Exercises for Section 14.4
- Exercises for Section 14.5
- Exercises for Section 14.6
- Exercises for Section 14.7
- Exercises for Section 14.8
- Exercises for Section 14.9
- Exercises for Section 14.10
- Exercises for Section 14.11
- Supplemental Exercises for Chapter 14
- Important Terms and Concepts
- Study Resources
- Section 14.3 Two-Factor Factorial Experiments
- Section 14.4 General Factorial Experiments
- Section 14.5 2k Factorial Designs
- Section 14.6 Single Replicate of the 2k Design
- Additional Study Resources
- Readings Content
- 14.1 Introduction
- 14.2 Factorial Experiments
- 14.3 Two-Factor Factorial Experiments
- 14.4 General Factorial Experiments
- 14.5 2 Factorial Designs
- 14.6 Single Replicate of the 2 Design
- 14.7 Addition of Center Points to a 2 Design
- 14.8 Blocking and Confounding in the 2 Design
- 14.9 One-Half Fraction of the 2 Design
- 14.10 Smaller Fractions: The 2 Fractional Factorial
- 14.11 Response Surface Methods and Designs
- Exercises
- Exercises for Section 15.3
- Exercises for Section 15.4
- Exercises for Section 15.5
- Exercises for Section 15.6
- Exercises for Section 15.7
- Exercises for Section 15.8
- Exercises for Section 15.10
- Supplemental Exercises for Chapter 15
- Important Terms and Concepts
- Study Resources
- Section 15.3 X and R or S Control Charts
- Section 15.4 Control Charts for Individual Measurements
- Section 15.5 Process Capability
- Section 15.6 Attribute Control Charts
- Section 15.7 Control Chart Performance
- Additional Study Resources
- Readings Content
- Bowl of Beads
- 15.1 Quality Improvement and Statistics
- 15.2 Introduction to Control Charts
- 15.3 X¯ and R or S Control Charts
- 15.4 Control Charts for Individual Measurements
- 15.5 Process Capability
- 15.6 Attribute Control Charts
- 15.7 Control Chart Performance
- 15.8 Time-Weighted Charts
- 15.9 Other SPC Problem-Solving Tools
- 15.10 Decision Theory
- 15.11 Implementing SPC
- Appendix A: Statistical Tables and Charts
- Appendix B: Bibliography
- Appendix C: Summary of Confidence Intervals and Hypothesis Testing Equations for One‐ and Two Sample Applications
UM RAFBÆKUR Á HEIMKAUP.IS
Bókahillan þín er þitt svæði og þar eru bækurnar þínar geymdar. Þú kemst í bókahilluna þína hvar og hvenær sem er í tölvu eða snjalltæki. Einfalt og þægilegt!Rafbók til eignar
Rafbók til eignar þarf að hlaða niður á þau tæki sem þú vilt nota innan eins árs frá því bókin er keypt.
Þú kemst í bækurnar hvar sem er
Þú getur nálgast allar raf(skóla)bækurnar þínar á einu augabragði, hvar og hvenær sem er í bókahillunni þinni. Engin taska, enginn kyndill og ekkert vesen (hvað þá yfirvigt).
Auðvelt að fletta og leita
Þú getur flakkað milli síðna og kafla eins og þér hentar best og farið beint í ákveðna kafla úr efnisyfirlitinu. Í leitinni finnur þú orð, kafla eða síður í einum smelli.
Glósur og yfirstrikanir
Þú getur auðkennt textabrot með mismunandi litum og skrifað glósur að vild í rafbókina. Þú getur jafnvel séð glósur og yfirstrikanir hjá bekkjarsystkinum og kennara ef þeir leyfa það. Allt á einum stað.
Hvað viltu sjá? / Þú ræður hvernig síðan lítur út
Þú lagar síðuna að þínum þörfum. Stækkaðu eða minnkaðu myndir og texta með multi-level zoom til að sjá síðuna eins og þér hentar best í þínu námi.
Fleiri góðir kostir
- Þú getur prentað síður úr bókinni (innan þeirra marka sem útgefandinn setur)
- Möguleiki á tengingu við annað stafrænt og gagnvirkt efni, svo sem myndbönd eða spurningar úr efninu
- Auðvelt að afrita og líma efni/texta fyrir t.d. heimaverkefni eða ritgerðir
- Styður tækni sem hjálpar nemendum með sjón- eða heyrnarskerðingu
- Gerð : 208
- Höfundur : 15399
- Útgáfuár : 2020
- Leyfi : 380