Segatron: Segment-aware Transformer For Language Modeling And Understanding · The Large Language Model Bible Contribute to LLM-Bible

Segatron: Segment-aware Transformer For Language Modeling And Understanding

Bai He, Shi Peng, Lin Jimmy, Xie Yuqing, Tan Luchen, Xiong Kun, Gao Wen, Li Ming. Arxiv 2020

[Paper]    
BERT Language Modeling Masked Language Model Model Architecture Pretraining Methods RAG Reinforcement Learning Training Techniques Transformer

Transformers are powerful for sequence modeling. Nearly all state-of-the-art language models and pre-trained language models are based on the Transformer architecture. However, it distinguishes sequential tokens only with the token position index. We hypothesize that better contextual representations can be generated from the Transformer with richer positional information. To verify this, we propose a segment-aware Transformer (Segatron), by replacing the original token position encoding with a combined position encoding of paragraph, sentence, and token. We first introduce the segment-aware mechanism to Transformer-XL, which is a popular Transformer-based language model with memory extension and relative position encoding. We find that our method can further improve the Transformer-XL base model and large model, achieving 17.1 perplexity on the WikiText-103 dataset. We further investigate the pre-training masked language modeling task with Segatron. Experimental results show that BERT pre-trained with Segatron (SegaBERT) can outperform BERT with vanilla Transformer on various NLP tasks, and outperforms RoBERTa on zero-shot sentence representation learning.

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