CD-LLMCARS:上下文感知推荐系统的跨领域微调大型语言模型

Adeel Ashraf Cheema;Muhammad Shahzad Sarfraz;Usman Habib;Qamar Uz Zaman;Ekkarat Boonchieng
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引用次数: 0

摘要

推荐系统对于跨各种平台提供个性化内容至关重要。然而,传统的系统经常与有限的信息(称为冷启动问题)以及准确地解释用户的综合偏好(称为上下文)作斗争。提出的研究CD-LLMCARS(上下文感知推荐系统的跨域微调大语言模型)提出了解决这些问题的新方法。CD-LLMCARS利用了大型语言模型Llama 2的大量功能。利用来自多个领域的信息对Llama 2进行微调,可以增强与用户在电影、音乐、书籍和cd等领域的偏好相一致的上下文相关建议的生成。低秩自适应(LoRA)和半精度训练(FP16)等技术既有效又节约资源,使CD-LLMCARS在冷启动场景中表现最佳。CD-LLMCARS的大量测试表明其具有出色的准确性,特别是在具有挑战性的场景中,与冷启动问题相关的用户历史数据有限。CD-LLMCARS为用户提供精确和相关的推荐,有效地减轻了传统推荐系统的局限性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CD-LLMCARS: Cross Domain Fine-Tuned Large Language Model for Context-Aware Recommender Systems
Recommender systems are essential for providing personalized content across various platforms. However, traditional systems often struggle with limited information, known as the cold start problem, and with accurately interpreting a user's comprehensive preferences, referred to as context. The proposed study, CD-LLMCARS (Cross-Domain fine-tuned Large Language Model for Context-Aware Recommender Systems), presents a novel approach to addressing these issues. CD-LLMCARS leverages the substantial capabilities of the Large Language Model (LLM) Llama 2. Fine-tuning Llama 2 with information from multiple domains can enhance the generation of contextually relevant recommendations that align with a user's preferences in areas such as movies, music, books, and CDs. Techniques such as Low-Rank Adaptation (LoRA) and Half Precision Training (FP16) are both effective and resource-efficient, allowing CD-LLMCARS to perform optimally in cold start scenarios. Extensive testing of CD-LLMCARS indicates outstanding accuracy, particularly in challenging scenarios characterized by limited user history data relevant to the cold start problem. CD-LLMCARS offers precise and pertinent recommendations to users, effectively mitigating the limitations of traditional recommender systems.
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CiteScore
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