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Veröffentlicht in dataand.me
Autor Mara Averick

This final installment in our series on using the Highcharts accessibility module with {highcharter} is basically “extra credit.” (Read: I took the time to figure this out, so I’m sharing it. But, it’s probably not the most helpful post if you’re just trying to get the accessibility module working with {highcharter}.) We covered enabling the accessibility module, and getting basic keyboard navigation in part one.

Veröffentlicht in dataand.me
Autor Mara Averick

Back in the first post in this series I mentioned that the impetus for this whole endeavor was Silvia Canelón’s excellent collection of R-specific resources for making data visualizations more accessible (Canelón 2021). I wanted to fill the gap between the possibilities afforded by Highcharts’ accessibility module, and documented examples of module use with the {highcharter} package (Kunst 2021). Don’t worry, I have pull requests in the works

Veröffentlicht in dataand.me
Autor Mara Averick

In the first two parts of this series we introduced the Highcharts accessibility module, the {highcharter} R package, and created some working examples with accessibility features turned on. Here, we’ll follow in the vein as part 2 by re-creating one of the accessible chart demos from Highcharts.

Veröffentlicht in Andrew Heiss's blog

At the end of my previous post on beta and zero-inflated-beta regression, I included an example of a multilevel model that predicted the proportion of women members of parliament based on whether a country implements gender-based quotas for their legislatures, along with a few different control variables. I also included random effects for year and region in order to capture time- and geography-specific trends.

Veröffentlicht in Andrew Heiss's blog

In the data I work with, it’s really common to come across data that’s measured as proportions: the percent of women in the public sector workforce, the amount of foreign aid a country receives as a percent of its GDP, the percent of religious organizations in a state’s nonprofit sector, and so on. When working with this kind of data as an outcome variable (or dependent variable) in a model, analysis gets tricky if you use standard models like

Veröffentlicht in Andrew Heiss's blog

The world of econometrics has been roiled over the past couple years with a bunch of new papers showing how two-way fixed effects (TWFE; situations with nested levels of observations, like country-year, state-month, etc.) estimates of causal effects from difference-in-differences-based natural experiments can be biased when treatment is applied at different times.

Veröffentlicht in Andrew Heiss's blog

Regression is the core of my statistics and program evaluation/causal inference courses. As I’ve taught different stats classes, I’ve found that one of the regression diagnostic statistics that students really glom onto is . Unlike lots of regression diagnostics like AIC, BIC, and the joint F-statistic, has a really intuitive interpretation—it’s the percent of variation in the outcome variable explained by all the explanatory variables.