Li-Wei Chen


2023

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Latent Positional Information is in the Self-Attention Variance of Transformer Language Models Without Positional Embeddings
Ta-Chung Chi | Ting-Han Fan | Li-Wei Chen | Alexander Rudnicky | Peter Ramadge
Proceedings of the 61st Annual Meeting of the Association for Computational Linguistics (Volume 2: Short Papers)

The use of positional embeddings in transformer language models is widely accepted. However, recent research has called into question the necessity of such embeddings. We further extend this inquiry by demonstrating that a randomly initialized and frozen transformer language model, devoid of positional embeddings, inherently encodes strong positional information through the shrinkage of self-attention variance. To quantify this variance, we derive the underlying distribution of each step within a transformer layer. Through empirical validation using a fully pretrained model, we show that the variance shrinkage effect still persists after extensive gradient updates. Our findings serve to justify the decision to discard positional embeddings and thus facilitate more efficient pretraining of transformer language models.

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The North System for Formosa Speech Recognition Challenge 2023
Li-Wei Chen | Kai-Chen Cheng | Hung-Shin Lee
Proceedings of the 35th Conference on Computational Linguistics and Speech Processing (ROCLING 2023)