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  • 1
    Online Resource
    Online Resource
    Oxford :Oxford University Press, Incorporated,
    Keywords: Science-Data processing. ; R (Computer program language). ; Electronic books.
    Description / Table of Contents: This accessible and engaging book provides readers with the knowledge, experience, and confidence to work with raw data and unlock essential information (insights) from data summaries and visualisations.
    Type of Medium: Online Resource
    Pages: 1 online resource (315 pages)
    Edition: 1st ed.
    ISBN: 9780192589736
    DDC: 502.85
    Language: English
    Note: Cover -- Insights from Data with R: An Introduction for the Life and Environmental Sciences -- Copyright -- Preface -- Overview -- The learning 'curve' -- Untidy and dirty data -- No statistical tests or models -- Exploratory data analysis -- Zen and the art of 'data science' -- Open-science trends -- Intended readers -- How is the book organized? -- Online companion material -- Boxes -- Some ideas for instructors using this book -- Relationship with Getting Started with R (GSwR), second edition, Beckerman, Childs, and Petchey (2017) -- Acknowledgements -- Contents -- Chapter 1: Introduction -- 1.1 What are insights? -- 1.1.1 Dictionary -- 1.1.2 The business perspective -- 1.1.3 Our definition -- 1.1.4 Our ecology example . . . we love fruit -- 1.2 Question, question, question (how are data born?) -- 1.3 But what exactly are data? -- 1.4 Response and predictor variables -- 1.5 Some key features of datasets -- 1.6 Demonstrations of getting insights from data -- 1.7 The general Insights workflow -- 1.8 Summing up and looking forward -- Chapter 2: Getting acquainted -- 2.1 Getting acquainted with R and RStudio -- 2.1.1 Why r? -- 2.1.2 Why rstudio? -- 2.1.3 Getting and installing r -- 2.1.4 Getting and installing rstudio -- 2.1.5 A brief tour of rstudio -- 2.2 Your first R command! -- 2.2.1 Getting to know r a little better -- 2.2.2 Storing and reusing results -- 2.2.3 What names should i use? -- 2.3 Writing scripts -- 2.3.1 Comments in your scripts -- 2.3.2 Save and keep safe your script file -- 2.3.3 Running your scripts -- 2.4 When things go wrong… -- 2.4.1 Errors -- 2.4.2 Warnings -- 2.4.3 The dreaded + -- 2.5 Functions -- 2.5.1 Functions, the sequel -- 2.6 Add-on packages -- 2.6.1 Finding add-on packages -- 2.6.2 Installing (downloading) packages -- 2.6.3 Loading packages -- 2.6.4 An analogy -- 2.6.5 Updating r, rstudio, and your packages. , 2.7 Getting help -- 2.7.1 R help system and files -- 2.7.2 Navigating help files -- 2.7.3 Vignettes -- 2.7.4 Cheat sheets -- 2.7.5 Other sources of help -- 2.7.6 Asking for help from others -- 2.8 Common pitfalls -- 2.9 Summing up and looking forward -- Chapter 3: Workflow Demonstration part 1: Preparation -- 3.1 What is the question? -- 3.1.1 The three response variables -- 3.1.2 The hypotheses -- 3.2 Design of the study -- 3.3 Preparing your data -- 3.3.1 Acquire the dataset -- 3.4 Preparing your computer -- 3.4.1 Making the project folder for the bat data -- 3.4.2 Projects in rstudio -- 3.4.3 create a new r script and load packages -- 3.5 Get the data into R -- 3.5.1 View and refine the import -- 3.6 Getting going with data management -- 3.6.1 How the data are stored in r -- 3.7 Clean and tidy the data -- 3.7.1 Tidying the data -- 3.7.2 Cleaning the data -- 3.7.3 Refine the variable names -- 3.7.4 Fix the dates -- 3.7.5 Rename some values in a variable -- 3.7.6 Check for duplicates -- 3.7.7 Check for implausible and invalid values -- 3.7.8 What about those nas? -- 3.8 Stop that! Don't even think about it! -- 3.8.1 Don't mess with the 'working directory' -- 3.8.2 Don't use the data import tool or -- 3.8.3 Don't even think about using the attach function -- 3.8.4 Avoid using square brackets or dollar signs -- 3.9 Summing up and looking forward -- Chapter 4: Workflow Demonstration part 2: Getting insights -- 4.1 Initial insights 1: Numbers and counting -- 4.1.1 Our first insights: the number, sex, and age of bats -- 4.2 Initial insights 2: Distributions -- 4.2.1 Insights . . . . you've done it! -- 4.3 Transform the data -- 4.4 Insights about our questions -- 4.4.1 Distribution of number of prey -- 4.4.2 Shapes: mean wingspan -- 4.4.3 Shapes: proportion migratory -- 4.4.4 relationships -- Dietary sex differences -- Age-sex interactions. , 4.4.5 Communication (beautifying the graphs) -- 4.4.6 Beautifying the wingspan, age and sex graph -- 4.5 Another view of the question and data -- 4.5.1 Before you continue… -- 4.5.2 A prey-centric view -- Transform the data -- Visualizing the proportions -- Odds and odds ratios -- 4.6 A caveat -- 4.7 Summing up and looking forward -- 4.8 A small reward, if you like dogs -- Chapter 5: Dealing with data 1: Digging into dplyr -- 5.1 Introducing dplyr -- 5.1.1 Selecting variables with the select function -- 5.1.2 Renaming variables with select and rename -- 5.1.3 Creating new variables with the mutatefunction -- 5.1.4 Getting particular observations with filter -- 5.1.5 Ordering observations with arrange -- 5.2 Grouping and summarizing data with dplyr -- 5.2.1 Summarizing data-the nitty-gritty -- 5.2.2 Grouped summaries using group_by magic -- 5.2.3 More than one grouping variable -- 5.2.4 Using group_by with other verbs -- 5.2.5 Removing grouping information -- 5.3 Summing up and looking forward -- Chapter 6: Dealing with data 2: Expanding your toolkit -- 6.1 Pipes and pipelines -- 6.1.1 Why do we need pipes? -- 6.1.2 On why you shouldn't nest functions -- 6.2 Subduing the pesky string -- 6.3 Elegantly managing dates and times -- 6.3.1 Date/time formats -- 6.3.2 Dtes in the bat project data -- 6.3.3 Why parse dates? -- 6.3.4 More about parsing dates/times -- 6.3.5 Calculations with dates/times -- 6.4 Changing between wider and longer data arrangements -- 6.4.1 Going longer -- 6.4.2 Going wider -- 6.5 Summing up and looking forward -- Chapter 7: Getting to grips with ggplot2 -- 7.1 Anatomy of a ggplot -- 7.1.1 Layers -- 7.1.2 Scales -- 7.1.3 Coordinate system -- 7.1.4 Fantastic faceting -- 7.2 Putting it into practice -- 7.2.1 Inheriting data and aesthetics from ggplot -- 7.3 Beautifying plots -- 7.3.1 Working with layer-specific geom properties. , 7.3.2 Adding titles and labels -- 7.3.3 Themes -- 7.4 Summing up and looking forward -- Chapter 8: Making deeper insights part 1: Working with single variables -- 8.1 Variables and data -- 8.1.1 Numeric versus categorical variables -- 8.1.2 Ratio versus interval scales -- 8.2 Samples and distributions -- 8.2.1 Understanding numerical variables -- 8.3 Graphical summaries of numeric variables -- 8.3.1 Making some insights about wingspan -- 8.3.2 Descriptive statistics for numeric variables -- 8.3.3 Measuring central tendency -- 8.3.4 Measuring dispersion -- 8.3.5 Mapping measures of central tendency and dispersion to a figure -- 8.3.6 Combining histograms and boxplots -- 8.4 A moment with missing values in numeric variables (NAs) -- 8.5 Exploring a categorical variable -- 8.5.1 Understanding categorical variables -- Numerical summaries -- Graphical summaries of categorical variables -- 8.6 Summing up and looking forward -- 8.7 A cat-related reward -- Chapter 9: Making deeper insights part 2: Relationships among (many) variables -- 9.1 Associations between two numeric variables -- 9.1.1 Descriptive statistics: correlations -- 9.1.2 Other measures of correlation -- 9.1.3 Graphical summaries between two numericvariables: the scatterplot -- 9.2 Associations between two categorical variables -- 9.2.1 Numerical summaries -- 9.2.2 Graphical summaries -- 9.2.3 An alternative, and perhaps more valuable -- 9.3 Categorical-numerical associations -- 9.3.1 Numerical summaries -- 9.3.2 Graphical summaries for numerical versus categorical data -- 9.3.3 Alternatives to box-and-whisker plots -- 9.4 Building in complexity: Relationships among three or morevariables -- 9.5 Summing up and looking forward -- Chapter 10: Looking back and looking forward -- 10.1 Next learning steps -- 10.2 Reproducibility: What, why, and how?. , 10.2.1 Why should you try and make your work reproducible? -- 10.2.2 How can you make your work more reproducible? -- 10.3 Congratulations! -- Index.
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  • 2
    Online Resource
    Online Resource
    Oxford :Oxford University Press, Incorporated,
    Keywords: R (Computer program language). ; Electronic books.
    Description / Table of Contents: A popular entry-level guide into the use of R as a statistical programming and data management language for students, post-docs, and seasoned researchers now in a new revised edition, incorporating the updates in the R environment, and also adding guidance on the use of more complex statistical analyses and tools.
    Type of Medium: Online Resource
    Pages: 1 online resource (251 pages)
    Edition: 2nd ed.
    ISBN: 9780191091926
    DDC: 570.2855133
    Language: English
    Note: Cover -- Contents -- Preface -- Introduction to the second edition -- What this book is about -- How the book is organized -- Why R? -- Updates -- Acknowledgements -- 1 Getting and Getting Acquainted with R -- 1.1 Getting started -- 1.2 Getting R -- 1.3 Getting RStudio -- 1.4 Let's play -- 1.5 Using R as a giant calculator (the size of your computer) -- 1.6 Your first script -- 1.7 Intermezzo remarks -- 1.8 Important functionality: packages -- 1.9 Getting help -- 1.10 A mini-practical-some in-depth play -- 1.11 Some more top tips and hints for a successful first (and more) R experience -- Appendix 1a Mini-tutorial solutions -- Appendix 1b File extensions and operating systems -- 2 Getting Your Data into R -- 2.1 Getting data ready for R -- 2.2 Getting your data into R -- 2.3 Checking that your data are your data -- 2.4 Basic troubleshooting while importing data -- 2.5 Summing up -- Appendix Advanced activity: dealing with untidy data -- 3 Data Management, Manipulation, and Exploration with dplyr -- 3.1 Summary statistics for each variable -- 3.2 dplyr verbs -- 3.3 Subsetting -- 3.4 Transforming -- 3.5 Sorting -- 3.6 Mini-summary and two top tips -- 3.7 Calculating summary statistics about groups of your data -- 3.8 What have you learned …lots -- Appendix 3a Comparing classic methods and dplyr -- Appendix 3b Advanced dplyr -- 4 Visualizing Your Data -- 4.1 The first step in every data analysis-making a picture -- 4.2 ggplot2: a grammar for graphics -- 4.3 Box-and-whisker plots -- 4.4 Distributions: making histograms of numeric variables -- 4.5 Saving your graphs for presentation, documents, etc. -- 4.6 Closing remarks -- 5 Introducing Statistics in R -- 5.1 Getting started doing statistics in R -- 5.2 χ2 contingency table analysis -- 5.3 Two-sample t-test -- 5.4 Introducing... linear models -- 5.5 Simple linear regression. , 5.6 Analysis of variance: the one-way ANOVA -- 5.7 Wrapping up -- Appendix Getting packages not on CRAN -- 6 Advancing Your Statistics in R -- 6.1 Getting started with more advanced statistics -- 6.2 The two-way ANOVA -- 6.3 Analysis of covariance (ANCOVA) -- 6.4 Overview: an analysis workflow -- 7 Getting Started with Generalized Linear Models -- 7.1 Introduction -- 7.2 Counts and rates-Poisson GLMs -- 7.3 Doing it wrong -- 7.4 Doing it right-the Poisson GLM -- 7.5 When a Poisson GLM isn't good for counts -- 7.6 Summary, and beyond simple Poisson regression -- 8 Pimping Your Plots: Scales and Themes in ggplot2 -- 8.1 What you already know about graphs -- 8.2 Preparation -- 8.3 What you may want to customize -- 8.4 Axis labels, axis limits, and annotation -- 8.5 Scales -- 8.6 The theme -- 8.7 Summing up -- 9 Closing Remarks: Final Comments andEncouragement -- General Appendices -- Appendix 1 Data Sources -- Appendix 2 Further Reading -- Appendix 3 R Markdown -- Index.
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