Pre-Learning Environment Representations for Data-Efficient Neural Instruction Following
Computation and Language
2019-07-24 v1 Artificial Intelligence
Machine Learning
Abstract
We consider the problem of learning to map from natural language instructions to state transitions (actions) in a data-efficient manner. Our method takes inspiration from the idea that it should be easier to ground language to concepts that have already been formed through pre-linguistic observation. We augment a baseline instruction-following learner with an initial environment-learning phase that uses observations of language-free state transitions to induce a suitable latent representation of actions before processing the instruction-following training data. We show that mapping to pre-learned representations substantially improves performance over systems whose representations are learned from limited instructional data alone.
Cite
@article{arxiv.1907.09671,
title = {Pre-Learning Environment Representations for Data-Efficient Neural Instruction Following},
author = {David Gaddy and Dan Klein},
journal= {arXiv preprint arXiv:1907.09671},
year = {2019}
}
Comments
ACL 2019