Although deep learning models have brought tremendous advancements to the field of open-domain dialogue response generation, recent research results have revealed that the trained models have undesirable generation behaviors, such as malicious responses and generic (boring) responses. In this work, we propose a framework named "Negative Training" to minimize such behaviors. Given a trained model, the framework will first find generated samples that exhibit the undesirable behavior, and then use them to feed negative training signals for fine-tuning the model. Our experiments show that negative training can significantly reduce the hit rate of malicious responses, or discourage frequent responses and improve response diversity.
@article{arxiv.1903.02134,
title = {Negative Training for Neural Dialogue Response Generation},
author = {Tianxing He and James Glass},
journal= {arXiv preprint arXiv:1903.02134},
year = {2020}
}