Optimization and Scalability of Collaborative Filtering Algorithms in Large Language Models
December 25, 2024 Β· Declared Dead Β· π Academic Journal of Computing & Information Science
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Authors
Haowei Yang, Longfei Yun, Jinghan Cao, Qingyi Lu, Yuming Tu
arXiv ID
2412.18715
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.IR
Citations
2
Venue
Academic Journal of Computing & Information Science
Last Checked
4 months ago
Abstract
With the rapid development of large language models (LLMs) and the growing demand for personalized content, recommendation systems have become critical in enhancing user experience and driving engagement. Collaborative filtering algorithms, being core to many recommendation systems, have garnered significant attention for their efficiency and interpretability. However, traditional collaborative filtering approaches face numerous challenges when integrated into large-scale LLM-based systems, including high computational costs, severe data sparsity, cold start problems, and lack of scalability. This paper investigates the optimization and scalability of collaborative filtering algorithms in large language models, addressing these limitations through advanced optimization strategies. Firstly, we analyze the fundamental principles of collaborative filtering algorithms and their limitations when applied in LLM-based contexts. Next, several optimization techniques such as matrix factorization, approximate nearest neighbor search, and parallel computing are proposed to enhance computational efficiency and model accuracy. Additionally, strategies such as distributed architecture and model compression are explored to facilitate dynamic updates and scalability in data-intensive environments.
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