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ggplot2 Self-deprecation

I've been in China working for a few weeks (where this blog is (oddly) blocked). So, I haven't been able to post much over the summer.

To kick things off for the new (academic) year, I thought I might just re-post something good I saw on the Book of Saturday blog. I think it was posted via Kieran Healy's blog.

Regardless of the origin, it's pretty funny (see especially the second box from the right, top row).



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