Warenkorb
 

Discovering Statistics Using R

Weitere Formate

Set mit diversen Artikeln
or contact your to discuss your course needs. to Discovering Statistics Using R

Keeping the uniquely humorous and self-deprecating style that has made students across the world fall in love with Andy Field's books, Discovering Statistics Using R takes students on a journey of statistical discovery using R, a free, flexible and dynamically changing software tool for data analysis that is becoming increasingly popular across the social and behavioural sciences throughout the world.

The journey begins by explaining basic statistical and research concepts before a guided tour of the R software environment. Next you discover the importance of exploring and graphing data, before moving onto statistical tests that are the foundations of the rest of the book (for example correlation and regression). You will then stride confidently into intermediate level analyses such as ANOVA, before ending your journey with advanced techniques such as MANOVA and multilevel models. Although there is enough theory to help you gain the necessary conceptual understanding of what you're doing, the emphasis is on applying what you learn to playful and real-world examples that should make the experience more fun than you might expect.

Like its sister textbooks, Discovering Statistics Using R is written in an irreverent style and follows the same ground-breaking structure and pedagogical approach. The core material is augmented by a cast of characters to help the reader on their way, together with hundreds of examples, self-assessment tests to consolidate knowledge, and for those wanting to learn more.

Given this book's accessibility, fun spirit, and use of bizarre real-world research it should be essential for anyone wanting to learn about statistics using the freely-available R software.

Portrait








Zitat
"This work should be in the library of every institution where statistics is taught. It contains much more content than what is required for a beginning or advanced undergraduate course, but instructors for such courses would do well to consider this book; it is priced comparably to books which contain only basic material, and students who are fascinated by the subject may find the additional material a real bonus. The book would also be very good for self-study. Overall, an excellent resource."
… weiterlesen
  • Artikelbild-0
  • Why Is My Evil Lecturer Forcing Me to Learn Statistics?
    What will this chapter tell me?
    What the hell am I doing here? I don't belong here
    Initial observation: finding something that needs explaining
    Generating theories and testing them
    Data collection 1: what to measure
    Data collection 2: how to measure
    Analysing data
    What have I discovered about statistics?
    Key terms that I've discovered
    Smart Alex's tasks
    Further reading
    Interesting real research
    Everything You Ever Wanted to Know About Statistics (Well, Sort of)
    What will this chapter tell me?
    Building statistical models
    Populations and samples
    Simple statistical models
    Going beyond the data
    Using statistical models to test research questions
    What have I discovered about statistics?
    Key terms that I've discovered
    Smart Alex's tasks
    Further reading
    Interesting real research
    The R Environment
    What will this chapter tell me?
    Before you start
    Getting started
    Using R
    Getting data into R
    Entering data with R Commander
    Using other software to enter and edit data
    Saving Data
    Manipulating Data
    What have I discovered about statistics?
    R Packages Used in This Chapter
    R Functions Used in This Chapter
    Key terms that I've discovered
    Smart Alex's Tasks
    Further reading
    Exploring Data with Graphs
    What will this chapter tell me?
    The art of presenting data
    Packages used in this chapter
    Introducing ggplot2
    Graphing relationships: the scatterplot
    Histograms: a good way to spot obvious problems
    Boxplots (box-whisker diagrams)
    Density plots
    Graphing means
    Themes and options
    What have I discovered about statistics?
    R packages used in this chapter
    R functions used in this chapter
    Key terms that I've discovered
    Smart Alex's tasks
    Further reading
    Interesting real research
    Exploring Assumptions
    What will this chapter tell me?
    What are assumptions?
    Assumptions of parametric data
    Packages used in this chapter
    The assumption of normality
    Testing whether a distribution is normal
    Testing for homogeneity of variance
    Correcting problems in the data
    What have I discovered about statistics?
    R packages used in this chapter
    R functions used in this chapter
    Key terms that I've discovered
    Smart Alex's tasks
    Further reading
    Correlation
    What will this chapter tell me?
    Looking at relationships
    How do we measure relationships?
    Data entry for correlation analysis
    Bivariate correlation
    Partial correlation
    Comparing correlations
    Calculating the effect size
    How to report correlation coefficents
    What have I discovered about statistics?
    R packages used in this chapter
    R functions used in this chapter
    Regression
    What will this chapter tell me?
    An Introduction to regression
    Packages used in this chapter
    General procedure for regression in R
    Interpreting a simple regression
    Multiple regression: the basics
    How accurate is my regression model?
    How to do multiple regression using R Commander and R
    Testing the accuracy of your regression model
    Robust regression: bootstrapping
    How to report multiple regression
    Categorical predictors and multiple regression
    What have I discovered about statistics?
    R packages used in this chapter
    R functions used in this chapter
    Key terms that I've discovered
    Smart Alex's tasks
    Further reading
    Interesting real research
    Logistic Regression
    What will this chapter tell me?
    Background to logistic regression
    What are the principles behind logistic regression?
    Assumptions and things that can go wrong
    Packages used in this chapter
    Binary logistic regression: an example that will make you feel eel
    How to report logistic regression
    Testing assumptions: another example
    Predicting several categories: multinomial logistic regression
    What have I discovered about statistics?
    R packages used in this chapter
    R functions used in this chapter
    Key terms that I've discovered
    Smart Alex's tasks
    Further reading
    Interesting real research
    Comparing Two Means
    What will this chapter tell me?
    Packages used in this chapter
    Looking at differences
    The t-test
    The independent t-test
    The dependent t-test
    Between groups or repeated measures?
    What have I discovered about statistics?
    R packages used in this chapter
    R functions used in this chapter
    Key terms that I've discovered
    Smart Alex's tasks
    Further reading
    Interesting real research
    Comparing Several Means: ANOVA (GLM 1)
    What will this chapter tell me?
    The theory behind ANOVA
    Assumptions of ANOVA
    Planned contrasts
    Post hoc procedures
    One-way ANOVA using R
    Calculating the effect size
    Reporting results from one-way independent ANOVA
    What have I discovered about statistics?
    R packages used in this chapter
    R functions used in this chapter
    Key terms that I've discovered
    Smart Alex's tasks
    Further reading
    Interesting real research
    Analysis of Covariance, ANCOVA (GLM 2)
    What will this chapter tell me?
    What is ANCOVA?
    Assumptions and issues in ANCOVA
    ANCOVA using R
    Robust ANCOVA
    Calculating the effect size
    Reporting results
    What have I discovered about statistics?
    R packages used in this chapter
    R functions used in this chapter
    Key terms that I've discovered
    Smart Alex's tasks
    Further reading
    Interesting real research
    Factorial ANOVA (GLM 3)
    What will this chapter tell me?
    Theory of factorial ANOVA (independant design)
    Factorial ANOVA as regression
    Two-Way ANOVA: Behind the scenes
    Factorial ANOVA using R
    Interpreting interaction graphs
    Robust factorial ANOVA
    Calculating effect sizes
    Reporting the results of two-way ANOVA
    What have I discovered about statistics?
    R packages used in this chapter
    R functions used in this chapter
    Key terms that I've discovered
    Smart Alex's tasks
    Further reading
    Interesting real research
    Repeated-Measures Designs (GLM 4)
    What will this chapter tell me?
    Introduction to repeated-measures designs
    Theory of one-way repeated-measures ANOVA
    One-way repeated measures designs using R
    Effect sizes for repeated measures designs
    Reporting one-way repeated measures designs
    Factorisal repeated measures designs
    Effect Sizes for factorial repeated measures designs
    Reporting the results from factorial repeated measures designs
    What have I discovered about statistics?
    R packages used in this chapter
    R functions used in this chapter
    Key terms that I've discovered
    Smart Alex's tasks
    Further reading
    Interesting real research
    Mixed Designs (GLM 5)
    What will this chapter tell me?
    Mixed designs
    What do men and women look for in a partner?
    Entering and exploring your data
    Mixed ANOVA
    Mixed designs as a GLM
    Calculating effect sizes
    Reporting the results of mixed ANOVA
    Robust analysis for mixed designs
    What have I discovered about statistics?
    R packages used in this chapter
    R functions used in this chapter
    Key terms that I've discovered
    Smart Alex's tasks
    Further reading
    Interesting real research
    Non-Parametric Tests
    What will this chapter tell me?
    When to use non-parametric tests
    Packages used in this chapter
    Comparing two independent conditions: the Wilcoxon rank-sum test
    Comparing two related conditions: the Wilcoxon signed-rank test
    Differences between several independent groups: the Kruskal-Wallis test
    Differences between several related groups: Friedman's ANOVA
    What have I discovered about statistics?
    R packages used in this chapter
    R functions used in this chapter
    Key terms that I've discovered
    Smart Alex's tasks
    Further reading
    Interesting real research
    Multivariate Analysis of Variance (MANOVA)
    What will this chapter tell me?
    When to use MANOVA
    Introduction: similarities and differences to ANOVA
    Theory of MANOVA
    Practical issues when conducting MANOVA
    MANOVA using R
    Robust MANOVA
    Reporting results from MANOVA
    Following up MANOVA with discriminant analysis
    Reporting results from discriminant analysis
    Some final remarks
    What have I discovered about statistics?
    R packages used in this chapter
    R functions used in this chapter
    Key terms that I've discovered
    Smart Alex's tasks
    Further reading
    Interesting real research
    Exploratory Factor Analysis
    What will this chapter tell me?
    When to use factor analysis
    Factors
    Research example
    Running the analysis with R Commander
    Running the analysis with R
    Factor scores
    How to report factor analysis
    Reliability analysis
    Reporting reliability analysis
    What have I discovered about statistics?
    R Packages Used in This Chapter
    R Functions Used in This Chapter
    Key terms that I've discovered
    Smart Alex's tasks
    Further reading
    Interesting real research
    Categorical Data
    What will this chapter tell me?
    Packages used in this chapter
    Analysing categorical data
    Theory of Analysing Categorical Data
    Assumptions of the chi-square test
    Doing the chi-square test using R
    Several categorical variables: loglinear analysis
    Assumptions in loglinear analysis
    Loglinear analysis using R
    Following up loglinear analysis
    Effect sizes in loglinear analysis
    Reporting the results of loglinear analysis
    What have I discovered about statistics?
    R packages used in this chapter
    R functions used in this chapter
    Key terms that I've discovered
    Smart Alex's tasks
    Further reading
    Interesting real research
    Multilevel Linear Models
    What will this chapter tell me?
    Hierarchical data
    Theory of multilevel linear models
    The multilevel model
    Some practical issues
    Multilevel modelling on R
    Growth models
    How to report a multilevel model
    What have I discovered about statistics?
    R packages used in this chapter
    R functions used in this chapter
    Key terms that I've discovered
    Smart Alex's tasks
    Further reading
    Interesting real research
    Epilogue: Life After Discovering Statistics
    Troubleshooting R
    Glossary
    Appendix
    Table of the standard normal distribution
    Critical Values of the t-Distribution
    Critical Values of the F-Distribution
    Critical Values of the chi-square Distribution
    References
In den Warenkorb

Beschreibung

Produktdetails

Einband gebundene Ausgabe
Seitenzahl 992
Erscheinungsdatum 22.03.2012
Sprache Englisch
ISBN 978-1-4462-0045-2
Verlag Sage Publications
Maße (L/B/H) 27.9/20.2/5.1 cm
Gewicht 2550 g
Abbildungen mit Illustrationen
Buch (gebundene Ausgabe, Englisch)
Buch (gebundene Ausgabe, Englisch)
Fr. 239.00
Fr. 239.00
inkl. gesetzl. MwSt.
inkl. gesetzl. MwSt.
Versandfertig innert 1 - 2 Wochen Versandkostenfrei
Versandfertig innert 1 - 2 Wochen
Versandkostenfrei
In den Warenkorb
Vielen Dank für Ihr Feedback!
Entschuldigung, beim Absenden Ihres Feedbacks ist ein Fehler passiert. Bitte versuchen Sie es erneut.
Ihr Feedback zur Seite
Haben Sie alle relevanten Informationen erhalten?

Kundenbewertungen

Durchschnitt
1 Bewertungen
Übersicht
1
0
0
0
0

Eines der besten Statistikbücher für R, die es gibt
von einer Kundin/einem Kunden aus Potsdam am 22.11.2016
Bewertet: Einband: Taschenbuch

Ich verwende dieses Buch, um Studierenden an einer Universität Statistik beizubringen. Es macht wirklich viel Spaß mit diesem Buch zu arbeiten und findet auf einem guten Niveau statt. Wenn meine Kollegen mit Statistikfragen zu mir kommen, schaue ich meist direkt ins Buch und zeige ihnen den Text. Ich kann es jedem empfehlen, der... Ich verwende dieses Buch, um Studierenden an einer Universität Statistik beizubringen. Es macht wirklich viel Spaß mit diesem Buch zu arbeiten und findet auf einem guten Niveau statt. Wenn meine Kollegen mit Statistikfragen zu mir kommen, schaue ich meist direkt ins Buch und zeige ihnen den Text. Ich kann es jedem empfehlen, der einen Rumdumblick von statistischem Wissen benötigt - das steht alles hier drin.