Aggregated Learning: A Vector-Quantization Approach to Learning Neural Network Classifiers
Abstract
We consider the problem of learning a neural network classifier. Under the information bottleneck (IB) principle, we associate with this classification problem a representation learning problem, which we call "IB learning". We show that IB learning is, in fact, equivalent to a special class of the quantization problem. The classical results in rate-distortion theory then suggest that IB learning can benefit from a "vector quantization" approach, namely, simultaneously learning the representations of multiple input objects. Such an approach assisted with some variational techniques, result in a novel learning framework, "Aggregated Learning", for classification with neural network models. In this framework, several objects are jointly classified by a single neural network. The effectiveness of this framework is verified through extensive experiments on standard image recognition and text classification tasks.
Cite
@article{arxiv.2001.03955,
title = {Aggregated Learning: A Vector-Quantization Approach to Learning Neural Network Classifiers},
author = {Masoumeh Soflaei and Hongyu Guo and Ali Al-Bashabsheh and Yongyi Mao and Richong Zhang},
journal= {arXiv preprint arXiv:2001.03955},
year = {2021}
}
Comments
Proof of theoretical results are provided