44 research outputs found
A PTAS for Agnostically Learning Halfspaces
We present a PTAS for agnostically learning halfspaces w.r.t. the uniform
distribution on the dimensional sphere. Namely, we show that for every
there is an algorithm that runs in time
, and is guaranteed to return a classifier
with error at most , where is the
error of the best halfspace classifier. This improves on Awasthi, Balcan and
Long [ABL14] who showed an algorithm with an (unspecified) constant
approximation ratio. Our algorithm combines the classical technique of
polynomial regression (e.g. [LMN89, KKMS05]), together with the new
localization technique of [ABL14]