Summary
This paper analyzes the standard practice of initializing new vocabulary tokens in Language Models (LMs) for domain-specific tasks like generative recommendation. Typically, these tokens are initialized as the mean of existing vocabulary embeddings, followed by supervised fine-tuning. The research systematically demonstrates that this mean initialization strategy causes all new tokens to collapse, hindering their effective representation learning.
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