Self-attentive Model For Headline Generation · The Large Language Model Bible Contribute to LLM-Bible

Self-attentive Model For Headline Generation

Gavrilov Daniil, Kalaidin Pavel, Malykh Valentin. Arxiv 2019

[Paper]    
Applications Model Architecture Pretraining Methods Training Techniques Transformer

Headline generation is a special type of text summarization task. While the amount of available training data for this task is almost unlimited, it still remains challenging, as learning to generate headlines for news articles implies that the model has strong reasoning about natural language. To overcome this issue, we applied recent Universal Transformer architecture paired with byte-pair encoding technique and achieved new state-of-the-art results on the New York Times Annotated corpus with ROUGE-L F1-score 24.84 and ROUGE-2 F1-score 13.48. We also present the new RIA corpus and reach ROUGE-L F1-score 36.81 and ROUGE-2 F1-score 22.15 on it.

Similar Work