IRLGSep 16, 2025

Efficient Cold-Start Recommendation via BPE Token-Level Embedding Initialization with LLM

arXiv:2509.13179v17 citationsh-index: 42025 3rd International Conference on Artificial Intelligence and Automation Control (AIAC)
Originality Incremental advance
AI Analysis

This addresses the cold-start issue for recommender systems, offering an incremental improvement through a lightweight extension that enhances performance in zero-shot settings.

The paper tackles the cold-start problem in recommender systems by using Byte Pair Encoding tokenization and pre-trained LLM embeddings to initialize fine-grained token-level vectors for new users or items, achieving higher Recall@k, NDCG@k, and Hit Rate compared to baselines without requiring interaction history.

The cold-start issue is the challenge when we talk about recommender systems, especially in the case when we do not have the past interaction data of new users or new items. Content-based features or hybrid solutions are common as conventional solutions, but they can only work in a sparse metadata environment with shallow patterns. In this paper, the efficient cold-start recommendation strategy is presented, which is based on the sub word-level representations by applying Byte Pair Encoding (BPE) tokenization and pre-trained Large Language Model (LLM) embedding in the initialization procedure. We obtain fine-grained token-level vectors that are aligned with the BPE vocabulary as opposed to using coarse-grained sentence embeddings. Together, these token embeddings can be used as dense semantic priors on unseen entities, making immediate recommendation performance possible without user-item interaction history. Our mechanism can be compared to collaborative filtering systems and tested over benchmark datasets with stringent cold-start assumptions. Experimental findings show that the given BPE-LLM method achieves higher Recall@k, NDCG@k, and Hit Rate measurements compared to the standard baseline and displays the same capability of sufficient computational performance. Furthermore, we demonstrate that using subword-aware embeddings yields better generalizability and is more interpretable, especially within a multilingual and sparse input setting. The practical application of token-level semantic initialization as a lightweight, but nevertheless effective extension to modern recommender systems in the zero-shot setting is indicated within this work.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes