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Description

Data Science for Psychologists.

All datasets and functions required for the examples and exercises of the book "Data Science for Psychologists" (by Hansjoerg Neth, Konstanz University, 2022), available at <https://bookdown.org/hneth/ds4psy/>. The book and course introduce principles and methods of data science to students of psychology and other biological or social sciences. The 'ds4psy' package primarily provides datasets, but also functions for data generation and manipulation (e.g., of text and time data) and graphics that are used in the book and its exercises. All functions included in 'ds4psy' are designed to be explicit and instructive, rather than efficient or elegant.

CRANstatus Totaldownloads DOI

ds4psy

Data Science for Psychologists (ds4psy)

Welcome to the R package ds4psy — a software companion to the book and courseData Science for Psychologists.

This R package provides datasets and functions used in the ds4psy book and course. The book and course introduce the principles and methods of data science for students of psychology and other biological or social sciences.

Installation

The current release of ds4psy is available from CRAN at https://CRAN.R-project.org/package=ds4psy:

install.packages('ds4psy')  # install ds4psy from CRAN client
library('ds4psy')           # load to use the package

The current development version of ds4psy can be installed from its GitHub repository at https://github.com/hneth/ds4psy/:

# install.packages('devtools')  # (if not installed yet)
devtools::install_github('hneth/ds4psy')
library('ds4psy')  # load to use the package

The most recent version of the ds4psy book is available at https://bookdown.org/hneth/ds4psy/.

Course Coordinates

spds.uni.kn

Description

This book and course provide an introduction to data science that is tailored to the needs of students in psychology, but is also suitable for students of the humanities and other biological or social sciences. This audience typically has some knowledge of statistics, but rarely an idea how data is prepared and shaped to allow for statistical testing. By using various data types and working with many examples, we teach tools for transforming, summarizing, and visualizing data. By keeping our eyes open for the perils of misleading representations, the book fosters fundamental skills of data literacy and cultivates reproducible research practices that enable and precede any practical use of statistics.

Audience

Students of psychology and other social sciences are trained to analyze data. But the data they learn to work with (e.g., in courses on statistics and empirical research methods) is typically provided to them and structured in a (rectangular or “tidy”) format that presupposes many steps of data processing regarding the aggregation and spatial layout of variables. When beginning to collect their own data, students inevitably struggle with these pre-processing steps which — even for experienced data scientists — tend to require more time and effort than choosing and conducting statistical tests.

This course develops the foundations of data analysis that allow students to collect data from real-world sources and transform and shape such data to answer scientific and practical questions. Although there are many good introductions to data science (e.g., Grolemund & Wickham, 2017) they typically do not take into account the special needs — and often anxieties and reservations — of psychology students. As social scientists are not computer scientists, we introduce new concepts and commands without assuming a mathematical or computational background. Adopting a task-oriented perspective, we begin with a specific problem and then solve it with some combination of data collection, manipulation, and visualization.

Goals

Our main goal is to develop a set of useful skills in analyzing real-world data and conducting reproducible research. Upon completing this course, you will be able to use R to read, transform, analyze, and visualize data of various types. Many interactive exercises allow students to continuously check their understanding, practice their skills, and monitor their progress.

Requirements

This course assumes some basic familiarity with statistics and the R programming language, but enthusiastic programming novices are also welcome.

Resources

This package and the corresponding book are still being developed and are updated as new materials become available.

References

Course materials

The book and course was originally based on the following textbook:

  • Wickham, H., & Grolemund, G. (2017). R for data science: Import, tidy, transform, visualize, and model data. Sebastopol, Canada: O’Reilly Media, Inc. [Available online at https://r4ds.had.co.nz.]

Software

Please install the following open-source programs on your computer:

# Tidyverse packages: 
install.packages('tidyverse')

# Course packages: 
install.packages('ds4psy')  # datasets and functions
install.packages('unikn')   # color palettes and functions

Other resources

R manuals and books

Software tools

  • See also the link collections at the end of each chapter of the ds4psy book.

About

If you find these materials useful, or want to adopt or alter them for your purposes, please let me know.

Citation

ds4psy

To cite ds4psy in derivations and publications, please use:

A BibTeX entry for LaTeX users is:

@Manual{ds4psy,
  title = {ds4psy: Data Science for Psychologists},
  author = {Hansjörg Neth},
  year = {2023},
  organization = {Social Psychology and Decision Sciences, University of Konstanz},
  address = {Konstanz, Germany},
  note = {Textbook and R package (version 1.0.0, September 15, 2023)},
  url = {https://bookdown.org/hneth/ds4psy/},
  doi = {10.5281/zenodo.7229812}
}

The URL of the ds4psy R package is https://CRAN.R-project.org/package=ds4psy.

License

Creative Commons License

Data science for psychologists (ds4psy) by Hansjörg Neth is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.


[File README.md updated on 2023-09-15.]

Metadata

Version

1.0.0

License

Unknown

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