Evidence Contrary to the Statistical View of Boosting

In this recent JMLR paper, David Mease and Abraham Wyner experimentally show that the statistical viewpoint to boosting, which is defined as a stagewise optimization problem, does not give a sufficient interpretation for understanding the behavior of boosting algorithms (I guess they just focus on AdaBoost).

Fortunately, the paper is followed by a series of discussions by people like Andreas Buja, Yoav Freund, Robert Schapire, Jerome Friedman, Trevor Hastie, Robert Tibshirani, Peter Bickel, and other great researchers.

I have to find time and read all these papers closely. Boosting is an interesting subject for me (and probably many others). Its “automatic” and performance-dependent feature selection property deserves better understanding.

Good Writing by Marc H. Raibert

In this short piece of advice, Marc H. Raibert tells you about the way you can produce good writings. His advices are simple. He foremost suggestion is that you must believe you can write produce a good writing, and for doing so, you need to start from a [possibly] bad one and gradually improve it be several rounds of revising.