A Non-generative Framework and Convex Relaxations for Unsupervised Learning
Machine Learning
2016-12-28 v3 Data Structures and Algorithms
Machine Learning
Abstract
We give a novel formal theoretical framework for unsupervised learning with two distinctive characteristics. First, it does not assume any generative model and based on a worst-case performance metric. Second, it is comparative, namely performance is measured with respect to a given hypothesis class. This allows to avoid known computational hardness results and improper algorithms based on convex relaxations. We show how several families of unsupervised learning models, which were previously only analyzed under probabilistic assumptions and are otherwise provably intractable, can be efficiently learned in our framework by convex optimization.
Cite
@article{arxiv.1610.01132,
title = {A Non-generative Framework and Convex Relaxations for Unsupervised Learning},
author = {Elad Hazan and Tengyu Ma},
journal= {arXiv preprint arXiv:1610.01132},
year = {2016}
}
Comments
NIPS 2016