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    The Bad Girl A Novel
    by Mario Vargas Llosa
    Edith Grossman

    Publisher: Farrar, Straus and Giroux Awards:
    Nobel Prize in Literature Awarded Author

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    ISBN: 9781429921558
    Release date: March 4, 2011

    EPUB eBook
    ISBN: 9781429921558
    File size: 394 KB
    Release date: March 4, 2011

    About Ebook The Bad Girl A Novel

    A New York Times Notable Book of 2007

    “Splendid, suspenseful, and irresistible . . . A contemporary love story that explores the mores of the urban 1960s—and 70s and 80s.”—The New York Times Book Review

    Ricardo Somocurcio is in love with a bad girl. He loves her as a teenager known as “Lily” in Lima in 1950, when she flits into his life one summer and disappears again without explanation. He loves her still when she reappears as a revolutionary in 1960s Paris, then later as Mrs. Richardson, the wife of a wealthy Englishman, and again as the mistress of a sinister Japanese businessman in Tokyo. However poorly she treats him, he is doomed to worship her. Charting Ricardo’s expatriate life through his romances with this shape-shifting woman, Vargas Llosa has created a beguiling, epic romance about the life-altering power of obsession.

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    دانلود کتاب Applied Statistics: From Bivariate Through Multivariate Techniques دانلود ایبوک با فرمت EPUB Rebecca M. Warner 141299134X, 9781412991346

    Applied Statistics : From Bivariate Through Multivariate Techniques

    Author: Rebecca (Becky) M (Margaret) Warner
    Publisher: Thousand Oaks : SAGE Publications, 2012
    Edition/Format: eBook : Document : English

    Summary:
    Rebecca M. Warner’s Applied Statistics: From Bivariate Through Multivariate Techniques, Second Edition provides a clear introduction to widely used topics in bivariate and multivariate statistics, including multiple regression, discriminant analysis, MANOVA, factor analysis, and binary logistic regression. The approach is applied and does not require formal mathematics; equations are accompanied by verbal explanations. Students are asked to think about the meaning of equations. Each chapter presents a complete empirical research example to illustrate the application of a specific method.

     

    درباره نویسنده کتاب Rebecca (Becky) M (Margaret) Warner

    About the author (2012)

    Rebecca M. Warner received a B.A. from Carnegie-Mellon University in Social Relations in 1973 and a Ph.D. in Social Psychology from Harvard in 1978. She has taught statistics for more than 25 years: from Introductory and Intermediate Statistics to advanced topics seminars in Multivariate Statistics, Structural Equation Modeling, and Time Series Analysis. She is currently a Full Professor in the Department of Psychology at the University of New Hampshire. She is a Fellow in the Association for Psychological Science and a member of the American Psychological Association, the International Association for Relationships Research, the Society of Experimental Social Psychology, and the Society for Personality and Social Psychology. She has consulted on statistics and data management for the World Health Organization in Geneva and served as a visiting faculty member at Shandong Medical University in China.

    اطلاعات کتاب شناختی Applied Statistics: From Bivariate Through Multivariate Techniques

    Bibliographic information
    QR code for Applied Statistics: From Bivariate Through Multivariate Techniques
    Title Applied Statistics: From Bivariate Through Multivariate Techniques: From Bivariate Through Multivariate Techniques
    Author Rebecca M. Warner
    Edition illustrated
    Publisher SAGE, 2012
    ISBN 141299134X, 9781412991346
    Length 1172 pages
    Subjects Mathematics
    › Probability & Statistics
    › Multivariate Analysis

    Mathematics / Probability & Statistics / Multivariate Analysis
    Psychology / Statistics
    Social Science / Research
    Social Science / Statistics

    دانلود رایگان Applied Statistics: From Bivariate

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    Applied Statistics: From Bivariate Through Multivariate Techniques

    by Rebecca M. Warner

    Publisher: SAGE Publications, Inc

    Print ISBN: 9781412991346, 141299134X

    eText ISBN: 9781483305974, 148330597X

    Edition: 2nd

    Pages: 1208

    Copyright year: 2013

    فهرست مطالب کتاب Applied Statistics: From Bivariate through Multivariate Techniques 9780761927723

    Applied Statistics: From Bivariate through Multivariate Techniques
    Warner, Rebecca M.
    ISBN-13: 9780761927723

    Table of Contents

    Preface
    Acknowledgments
    Chapter 1. Review of Basic Concepts
    1.1 Introduction
    1.2 A Simple Example of a Research Problem
    1.3 Discrepancies Between Real and Ideal Research Situations
    1.4 Samples and Populations
    1.5 Descriptive Versus Inferential Uses of Statistics
    1.6 Levels of Measurement and Types of Variables
    1.7 The Normal Distribution
    1.8 Research Design
    1.9 Parametric Versus Nonparametric Statistics
    1.10 Additional Implicit Assumptions
    1.11 Selection of an Appropriate Bivariate Analysis
    1.12 Summary
    Comprehension Questions
    Chapter 2. Introduction to SPSS: Basic Statistics, Sampling Error, and Confidence Intervals
    2.1 Introduction
    2.2 Research Example: Description of a Sample of HR Scores
    2.3 Sample Mean (M)
    2.4 Sum of Squared Deviations and Sample Variance (s2)
    2.5 Degrees of Freedom (df) for a Sample Variance
    2.6 Why Is There Variance?
    2.7 Sample Standard Deviation (s)
    2.8 Assessment of Location of a Single X Score Relative to a Distribution of Scores
    2.9 A Shift in Level of Analysis: The Distribution of Values of M Across Many Samples From the Same Population
    2.10 An Index of Amount of Sampling Error: The Standard Error of the Mean (oM)
    2.11 Effect of Sample Size (N) on the Magnitude of the Standard Error (oM )
    2.12 Sample Estimate of the Standard Error of the Mean (SEM)
    2.13 The Family of t Distributions
    2.14 Confidence Intervals
    2.15 Summary

    Appendix on SPSS

    Comprehension Questions
    Chapter 3. Statistical Significance Testing
    3.1 The Logic of Null Hypothesis Significance Testing (NHST)
    3.2 Type I Versus Type II Error
    3.3 Formal NHST Procedures: The z Test for a Null Hypothesis About One Population Mean
    3.4 Common Research Practices Inconsistent With Assumptions and Rules for NHST
    3.5 Strategies to Limit Risk of Type I Error
    3.6 Interpretation of Results
    3.7 When Is a t Test Used Instead of a z Test?
    3.8 Effect Size
    3.9 Statistical Power Analysis
    3.10 Numerical Results for a One-Sample t Test Obtained From SPSS
    3.11 Guidelines for Reporting Results
    3.12 Summary
    Comprehension Questions
    Chapter 4. Preliminary Data Screening
    4.1 Introduction: Problems in Real Data
    4.2 Quality Control During Data Collection
    .3ExampleofanSPSSDataWorkshee
    4.4 Identification of Errors and Inconsistencies
    4.5 Missing Values
    4.6 Empirical Example of Data Screening for Individual Variables
    .7IdentificationandHandlingofOutliers
    4.8 Screening Data for Bivariate Analyses
    4.9 Nonlinear Relations
    4.10 Data Transformations
    4.11 Verifying That Remedies Had the Desired Effects
    .12MultivariateDatcreenin
    4.13 Reporting Preliminary Data Screenin
    4.14 Summary and Checklist for Data Screening
    Comprehension Questions
    Chapter 5. Comparing Group Means Using the Independent Samples t Test
    .1ResearchSituationsWheretheIndependentSamplestTestIsUsed
    5.2 A Hypothetical Research Example
    5.3 Assumptions About the Distribution of Scores on the Quantitative Dependent Variable
    5.4 Preliminary Data Screening
    5.5 Issues in Designing a Study
    5.6 Formulas for the Independent Samples t Test
    5.7 Conceptual Basis: Factors That Affect the Size of the t Ratio
    5.8 Effect Size Indexes for t
    5.9 Statistical Power and Decisions About Sample Size for the Independent Samples t Test
    5.10 Describing the Nature of the Outcome
    5.11 SPSS Output and Model Results Section
    5.12 Summary
    Comprehension Questions

    Chapter 6. One-Way Between-Subjects Analysis of Variance

    6.1 Research Situations Where One-Way Between-Subjects Analysis of Variance (ANOVA) Is Used
    6.2 Hypothetical Research Example
    6.3 Assumptions About Scores on the Dependent Variable for One-Way Between-S ANOVA
    6.4 Issues in Planning a Study
    6.5 Data Screening
    6.6 Partition of Scores Into Components
    6.7 Computations for the One-Way Between-S ANOVA
    6.8 Effect Size Index for One-Way Between-S ANOVA
    6.9 Statistical Power Analysis for One-Way Between-S ANOVA
    6.10 Nature of Differences Among Group Means
    6.11 SPSS Output and Model Results
    6.12 Summary
    Comprehension Questions
    Chapter 7. Bivariate Pearson Correlation
    7.1 Research Situations Where Pearson r Is Used
    7.2 Hypothetical Research Example
    7.3 Assumptions for Pearson r
    7.4 Preliminary Data Screening
    7.5 Design Issues in Planning Correlation Research
    7.6 Computation of Pearson r
    7.7 Statistical Significance Tests for Pearson r
    7.8 Setting Up CIs for Correlations
    7.9 Factors That Influence the Magnitude and Sign of Pearson r
    7.10 Pearson r and r2 as Effect Size Indexes
    7.11 Statistical Power and Sample Size for Correlation Studies
    7.12 Interpretation of Outcomes for Pearson r
    7.13 SPSS Output and Model Results Write-Up
    7.14 Summary

    applied statistics from bivariate through multivariate techniques second edition pdf

    Comprehension Questions
    Chapter 8. Alternative Correlation Coefficients
    8.1 Correlations for Different Types of Variables
    8.2 Two Research Examples
    8.3 Correlations for Rank or Ordinal Scores
    8.4 Correlations for True Dichotomies
    8.5 Correlations for Artificially Dichotomized Variables
    8.6 Assumptions and Data Screening for Dichotomous Variables
    8.7 Analysis of Data: Dog Ownership and Survival After a Heart Attack
    8.8 Chi-Square Test of Association (Computational Methods for Tables of Any Size)
    8.9 Other Measures of Association for Contingency Tables
    8.10 SPSS Output and Model Results Write-Up
    8.11 Summary
    Comprehension Questions

    Chapter 9. Bivariate Regression

    9.1 Research Situations Where Bivariate Regression Is Used
    9.2 A Research Example: Prediction of Salary From Years of Job Experience
    9.3 Assumptions and Data Screening
    9.4 Issues in Planning a Bivariate Regression Study
    9.5 Formulas for Bivariate Regression
    9.6 Statistical Significance Tests for Bivariate Regression
    9.7 Setting Up Confidence Intervals Around Regression Coefficients
    9.8 Factors That Influence the Magnitude and Sign of b

    9.9 Effect Size/Partition of Variance in Bivariate Regression
    9.10 Statistical Power
    9.11 Raw Score Versus Standard Score Versions of the Regression Equation
    9.12 Removing the Influence of X From the Y Variable by Looking at Residuals From Bivariate Regression
    9.13 Empirical Example Using SPSS
    9.14 Summary
    Comprehension Questions
    Chapter 10. Adding a Third Variable: Preliminary Exploratory Analyses
    10.1 Three-Variable Research Situations
    10.2 First Research Example

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    10.3 Exploratory Statistical Analyses for Three-Variable Research Situations
    10.4 Separate Analysis of X1, Y Relationship for Each Level of the Control Variable X2
    10.5 Partial Correlation Between X1 and Y Controlling for X2
    10.6 Understanding Partial Correlation as the Use of Bivariate Regression to Remove Variance Predictable by X2 From Both X1 and Y
    10.7 Computation of Partial r From Bivariate Pearson Correlations
    10.8 Intuitive Approach to Understanding Partial r
    10.9 Significance Tests, Confidence Intervals, and Statistical Power for Partial Correlations
    10.10 Interpretation of Various Outcomes for rY1.2 and rY1
    10.11 Two-Variable Causal Models
    10.12 Three-Variable Models: Some Possible Patterns of Association Among X1, Y, and X2
    10.13 Mediation Versus Moderation
    10.14 Model Results
    10.15 Summary
    Comprehension Questions

    Chapter 11. Multiple Regression With Two Predictor Variables

    11.1 Research Situations Involving Regression With Two Predictor Variables
    11.2 Hypothetical Research Example
    11.3 Graphic Representation of Regression Plane
    11.4 Semipartial (or “Part”) Correlation
    11.5 Graphic Representation of Partition of Variance in Regression With Two Predictors
    11.6 Assumptions for Regression With Two Predictors
    11.7 Formulas for Regression Coefficients, Significance Tests, and Confidence Intervals
    11.8 SPSS Regression Results
    11.9 Conceptual Basis: Factors That Affect the Magnitude and Sign of B and b Coefficients in Multiple Regression With Two Predictors
    11.10 Tracing Rules for Causal Model Path Diagrams
    11.11 Comparison of Equations for B, b, pr, and sr
    11.12 Nature of Predictive Relationships
    11.13 Effect Size Information in Regression With Two Predictors
    11.14 Statistical Power
    11.15 Issues in Planning a Study
    11.16 Use of Regression With Two Predictors to Test Mediated Causal Models
    11.17 Results
    11.18 Summary

    applied statistics from bivariate through multivariate techniques pdf download

    Comprehension Questions
    Chapter 12. Dummy Predictor Variables and Interaction Terms in Multiple Regression
    12.1 Research Situations Where Dummy Predictor Variables Can Be Used
    12.2 Empirical Example
    12.3 Screening for Violations of Assumptions
    12.4 Issues in Planning a Study
    12.5 Parameter Estimates and Significance Tests for Regressions With Dummy Variables
    12.6 Group Mean Comparisons Using One-Way Between-S ANOVA
    12.7 Three Methods of Coding for Dummy Variables
    12.8 Regression Models That Include Both Dummy and Quantitative Predictor Variables
    12.9 Tests for Interaction (or Moderation)
    12.10 Interaction Terms That Involve Two Quantitative Predictors
    12.11 Effect Size and Statistical Power
    12.12 Nature of the Relationship and/or Follow-Up Tests
    12.13 Results
    12.14 Summary
    Comprehension Questions

    Chapter 13. Factorial Analysis of Variance

    13.1 Research Situations and Research Questions
    13.2 Screening for Violations of Assumptions
    13.3 Issues in Planning a Study
    1PDF-XCHANGE aPRO al ANOVA
    3.4EmpiricalExample:DescriptionofHypotheticalDat
    13.5 Computations for Between-S Factorial ANOVA
    13.6 Conceptual Basis: Factors That Affect the Size of Sums of Squares andFRatiosinFactori
    13.7 Effect Size Estimates for Factorial ANOVA
    13.8 Statistical Power
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    3.9NatureoftheRelationships,Follow-UpTests,andInformationtoIncludeintheResults
    13.10 Factorial ANOVA Using the SPSS GLM Procedure
    13.11 Summary
    Appendix: Nonorthogonal Factorial ANOVA (ANOVA With Unbalanced Numbers of Cases in the Cells or Groups)
    Comprehension Questions
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    14.1 Research Questions
    14.2 Empirical Example
    14.3 Screening for Violations of Assumptions
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    4.4IssuesinPlanningaStudy
    14.5 Computation of Regression Coefficients With k Predictor Variables
    14.6 Methods of Entry for Predictor Variables
    14.7 Variance Partitioning in Regression for Standard or Simultaneous Regression Versus Regressions That Involve a Series of Steps
    14.8 Significance Test for an Overall Regression Model
    14.9 Significance Tests for Individual Predictors in Multiple Regression
    14.10 Effect Size
    14.11 Changes in F and R as Additional Predictors Are Added to a Model in Sequential or Statistical Regression
    14.12 Statistical Power
    14.13 Nature of the Relationship Between Each X Predictor and Y (Controlling for Other Predictors)
    14.14 Assessment of Multivariate Outliers in Regression
    14.15 SPSS Example and Results
    14.16 Summary
    Appendix 14.A: A Review of Matrix Algebra Notation and Operations and Application of Matrix Algebra to Estimation of Slope Coefficients for Regression With More Than k Predictor Variables Appendix 14.B: Tables for Wilkinson and Dallal (1981) Test of Significance of Multiple R2 in Method = Forward Statistical Regression
    Comprehension Questions

    Chapter 15. Analysis of Covariance

    15.1 Research Situations and Research Questions
    15.2 Empirical Example
    15.3 Screening for Violations of Assumptions
    15.4 Variance Partitioning in ANCOVA
    15.5 Issues in Planning a Study
    15.6 Formulas for ANCOVA
    15.7 Computation of Adjusted Effects and Adjusted Y* Means
    15.8 Conceptual Basis: Factors That Affect the Magnitude of SSAadj and SSresidual and the Pattern of Adjusted Group Means
    15.9 Effect Size
    15.10 Statistical Power
    15.11 Nature of the Relationship and Follow-Up Tests: Information to Include in the Results Section
    15.12 SPSS Analysis and Model Results
    15.13 Additional Discussion of ANCOVA Results
    15.14 Summary
    Appendix: Alternative Methods for the Analysis of Pretest/Posttest Data
    Comprehension Questions
    Chapter 16. Discriminant Analysis
    16.1 Research Situations and Research Questions
    16.2 Introduction of an Empirical Example
    16.3 Screening for Violations of Assumptions
    16.4 Issues in Planning a Study
    16.5 Equations for Discriminant Analysis
    16.6 Conceptual Basis: Factors That Affect the Magnitude of Wilks’s Lambda
    16.7 Effect Size
    16.8 Statistical Power and Sample Size Recommendations
    16.9 Follow-Up Tests to Assess What Pattern of Scores Best Differentiates Groups
    16.10 Results
    16.11 One-Way ANOVA on Scores on Discriminant Functions
    16.12 Summary

    applied statistics from bivariate through multivariate techniques 2nd edition

    Appendix: Eigenvalue/Eigenvector Problem
    Comprehension Questions
    Chapter 17. Multivariate Analysis of Variance
    17.1 Research Situations and Research Questions
    17.2 Introduction of the Initial Research Example: A One-Way MANOVA
    17.3 Why Include Multiple Outcome Measures?
    17.4 Equivalence of MANOVA and DA
    17.5 The General Linear Model
    17.6 Assumptions and Data Screening
    17.7 Issues in Planning a Study
    17.8 Conceptual Basis of MANOVA and Some Formulas for MANOVA
    17.9 Multivariate Test Statistics
    17.10 Factors That Influence the Magnitude of Wilks’s Lambda
    17.11 Effect Size for MANOVA
    17.12 Statistical Power and Sample Size Decisions
    17.13 SPSS Output for a One-Way MANOVA: Career Group Data From Chapter 16
    17.14 A 2 x 3 Factorial MANOVA of the Career Group Data
    17.15 A Significant Interaction in a 3 x 6 MANOVA
    17.16 Comparison of Univariate and Multivariate Follow-Up Analyses for MANOVA
    17.17 Summary

    17.17 Summary
    Comprehension Questions

    Chapter 18. Principal Components and Factor Analysis

    18.1 Research Situations
    18.2 Path Model for Factor Analysis
    18.3 Factor Analysis as a Method of Data Reduction
    18.4 Introduction of an Empirical Example
    18.5 Screening for Violations of Assumptions
    18.6 Issues in Planning a Factor Analytic Study
    18.7 Computation of Loadings
    18.8 Steps in the Computation of Principal Components or Factor Analysis
    18.9 Analysis 1: Principal Components Analysis of Three Items Retaining All Three Components
    18.10 Analysis 2: Principal Component Analysis of Three Items Retaining Only the First Component
    18.11 Principal Components Versus Principal Axis Factoring
    18.12 Analysis 3: PAF of Nine Items, Two Factors Retained, No Rotation
    18.13 Geometric Representation of Correlations Between Variables and Correlations Between Components or Factors
    18.14 The Two Multiple Regressions
    18.15 Analysis 4: PAF With Varimax Rotation
    18.16 Questions to Address in the Interpretation of Factor Analysis
    18.17 Results Section for Analysis 4: PAF With Varimax Rotation
    18.18 Factor Scores Versus Unit-Weighted Composites
    18.19 Summary of Issues in Factor Analysis
    18.20 Optional: Brief Introduction to Concepts in Structural Equation Modeling
    Appendix: The Matrix Algebra of Factor Analysis
    Comprehension Questions

    Chapter 19. Reliability, Validity, and Multiple-Item Scales

    19.1 Assessment of Measurement Quality
    19.2 Cost and Invasiveness of Measurements
    19.3 Empirical Examples of Reliability Assessment
    19.4 Concepts From Classical Measurement Theory
    19.5 Use of Multiple-Item Measures to Improve Measurement Reliability
    19.6 Three Methods for the Computation of Summated Scales
    19.7 Assessment of Internal Homogeneity for Multiple-Item Measures
    19.8 Correlations Among Scores Obtained Using Different Methods of Summing Items
    19.9 Validity Assessment
    19.10 Typical Scale Development Study
    19.11 Summary
    Appendix: The CESD Scale
    Comprehension Questions
    Chapter 20. Analysis of Repeated Measures
    20.1 Introduction
    20.2 Empirical Example: Experiment to Assess Effect of Stress on Heart Rate
    20.3 Discussion of Sources of Within-Group Error in Between-S Versus Within-S Data
    20.4 The Conceptual Basis for the Paired Samples t Test and One-Way Repeated Measures ANOVA
    20.5 Computation of a Paired Samples t Test to Compare Mean HR Between Baseline and Pain Conditions
    20.6 SPSS Example: Analysis of Stress/HR Data Using a Paired Samples t Test
    20.7 Comparison Between Independent Samples t Test and Paired Samples t Test
    20.8 SPSS Example: Analysis of Stress/HR Data Using a Univariate One-Way Repeated Measures ANOVA
    20.9 Using the SPSS GLM Procedure for Repeated Measures ANOVA
    20.10 Screening for Violations of Assumptions in Univariate Repeated Measures
    20.11 The Greenhouse-Geisser e and Huynh Feldt e Correction Factors
    20.12 MANOVA Approach to Analysis of Repeated Measures Data
    20.13 Effect Size
    20.14 Statistical Power
    20.15 Planned Contrasts
    20.16 Results
    20.17 Design Problems in Repeated Measures Studies
    20.18 More Complex Designs
    20.19 Alternative Analyses for Pretest and Posttest Scores
    20.20 Summary
    Comprehension Questions
    Chapter 21. Binary Logistic Regression
    21.1 Research Situations
    21.2 Simple Empirical Example: Dog Ownership and Odds of Death
    21.3 Conceptual Basis for Binary Logistic Regression Analysis
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    1.4DefinitionandInterpretationofOdd
    21.5 A New Type of Dependent Variable: The Logit
    21.6 Terms Involved in Binary Logistic Regression Analysis
    21.7 Analysis of Data for First Empirical Example: Dog Ownership/Death Study
    21.8 Issues in Planning and Conducting a Study
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    1.9MoreComplexModels
    21.10 Binary Logistic Regression for Second Empirical Analysis: Drug Dose and Gender as Predictors of Odds of Death
    21.11 Comparison of Discriminant Analysis to Binary Logistic Regression
    21.12 Summary
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    Appendix A: Proportions of AreaUndStandardNormaurve
    Appendix B: Critical Values for t Distribution
    Appendix C: Critical Values of F
    Appendix D: Critical Values of Chi-Square
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    ndixE:CriticalValuesoftheCorrelationCoefficient
    Appendix F: Critical Values of the Studentized Range Statistic
    Appendix G: Transformation of r (Pearson Correlation) to Fisher Z
    Glossary
    References
    Index
    About the Author

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    دانلود کتاب Applied Statistics: From Bivariate Through Multivariate Techniques دانلود ایبوک با فرمت EPUB Author Rebecca M. Warner 141299134X, 9781412991346 گیگاپیپر
    دانلود کتاب Applied Statistics: From Bivariate Through Multivariate Techniques دانلود ایبوک با فرمت EPUB 9781412991346