English

Labels, Information, and Computation: Efficient Learning Using Sufficient Labels

Machine Learning 2023-01-18 v3 Artificial Intelligence

Abstract

In supervised learning, obtaining a large set of fully-labeled training data is expensive. We show that we do not always need full label information on every single training example to train a competent classifier. Specifically, inspired by the principle of sufficiency in statistics, we present a statistic (a summary) of the fully-labeled training set that captures almost all the relevant information for classification but at the same time is easier to obtain directly. We call this statistic "sufficiently-labeled data" and prove its sufficiency and efficiency for finding the optimal hidden representations, on which competent classifier heads can be trained using as few as a single randomly-chosen fully-labeled example per class. Sufficiently-labeled data can be obtained from annotators directly without collecting the fully-labeled data first. And we prove that it is easier to directly obtain sufficiently-labeled data than obtaining fully-labeled data. Furthermore, sufficiently-labeled data is naturally more secure since it stores relative, instead of absolute, information. Extensive experimental results are provided to support our theory.

Keywords

Cite

@article{arxiv.2104.09015,
  title  = {Labels, Information, and Computation: Efficient Learning Using Sufficient Labels},
  author = {Shiyu Duan and Spencer Chang and Jose C. Principe},
  journal= {arXiv preprint arXiv:2104.09015},
  year   = {2023}
}