Join us at rstudio::conf(2022) to sharpen your R skills. | July 25-28th in D.C.
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rstudio::conf(2022) | July 25-28th in D.C. 7/25 - 7/28 in D.C.
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rstudio::conf 2019 modeling
Solving the model representation problem with broom
January 25, 2019
The R objects used to represent model fits are notoriously inconsistent, making data analysis inconvenient and frustrating. The broom package resolves this issue by defining a consistent way to represent model fits. By summarizing essential information about fits in tidy tibbles, broom makes it easy to programmatically work with model objects. Combining broom with list-columns results in an especially powerful way to work with many model fits at once. This talk will feature several case studies demonstrating how broom resolves common problems in data analysis
Alex is interested in how statistics can help people make better decisions. He’s active in the R and data science communities, particularly interested in improving interfaces to modeling sofware. In his free time, he tries to get outside to climb and bike.