SOTAVerified

Beyond Fine Tuning: A Modular Approach to Learning on Small Data

2016-11-06Unverified0· sign in to hype

Ark Anderson, Kyle Shaffer, Artem Yankov, Court D. Corley, Nathan O. Hodas

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

In this paper we present a technique to train neural network models on small amounts of data. Current methods for training neural networks on small amounts of rich data typically rely on strategies such as fine-tuning a pre-trained neural network or the use of domain-specific hand-engineered features. Here we take the approach of treating network layers, or entire networks, as modules and combine pre-trained modules with untrained modules, to learn the shift in distributions between data sets. The central impact of using a modular approach comes from adding new representations to a network, as opposed to replacing representations via fine-tuning. Using this technique, we are able surpass results using standard fine-tuning transfer learning approaches, and we are also able to significantly increase performance over such approaches when using smaller amounts of data.

Tasks

Reproductions