Skip to content
Ebook code for Data Science with R: A Resource Compendium
Branch: master
Clone or download
Latest commit 7242684 May 19, 2019
Permalink
Type Name Latest commit message Commit time
Failed to load latest commit information.
.gitignore initial commit Feb 4, 2019
.here
01_Introduction.Rmd further Intro revisions May 3, 2019
02_data_science_defined.Rmd more formatting etc May 11, 2019
03_data_science_practice.Rmd add reference to redoc May 12, 2019
04_data_science_tools.Rmd Merge pull request #5 from katrinleinweber/canonicalize-cran-links May 19, 2019
10_data_theory.rmd revise introduction May 3, 2019
11_data_sources.rmd
12_data_reading_fileformat.rmd Canonicalize CRAN links May 2, 2019
13_api.Rmd
15_anonymity_confidentiality.Rmd
20_data_wrangling.Rmd
40_data_visualization.Rmd format, add ggplot flipbook May 16, 2019
41_chart_types.Rmd Canonicalize CRAN links May 2, 2019
50_quantitative_methods.Rmd Merge pull request #5 from katrinleinweber/canonicalize-cran-links May 19, 2019
51_bayesian.Rmd Merge pull request #5 from katrinleinweber/canonicalize-cran-links May 19, 2019
52_machine_learning.Rmd
53_regression.Rmd
59_quantitative_methods.Rmd
60_spatial_data.Rmd
61_small_area_estimation.Rmd Merge pull request #5 from katrinleinweber/canonicalize-cran-links May 19, 2019
70_text_analysis.rmd Merge pull request #5 from katrinleinweber/canonicalize-cran-links May 19, 2019
80_communicating.rmd
81_writing.Rmd
82_writing_about_numbers.Rmd Update 82_writing_about_numbers.Rmd Apr 29, 2019
86_presentations.Rmd Canonicalize CRAN links May 2, 2019
89_RMarkdown.Rmd add reference to redoc May 12, 2019
99_references.Rmd initial commit Feb 4, 2019
DataScienceResources.Rproj
README.md Update README.md May 19, 2019
_bookdown.yml
_output.yml Time Being Feb 4, 2019
book.bib add Hicks and Peng (2019b) May 6, 2019
dystopian_moonscape.jpg
index.Rmd
preamble.tex initial commit Feb 4, 2019
style.css initial commit Feb 4, 2019

README.md

An incomplete compendium (yes, that's an oxymoron) of resources that cover data science topics (a.k.a. statistics, econometrics, actuarial science, etc.). These will cover general theory, methodology, applications, and R tools and methods. The listing is not intended to be comprehensive, but will be resources I find as part of my projects or random happenstance. The emphasis will be on web resources, although published texts will also be included where appropriate.

The ebook can be found on bookdown.org, here: https://bookdown.org/martin_monkman/DataScienceResources_book/

You can’t perform that action at this time.