Complementary recommendations suggest combinations of useful items that play important roles in e-commerce. However, complementary relationships are often subjective and vary among individuals, making them difficult to infer from historical data. Unlike conventional history-based methods that rely on statistical co-occurrence, we focus on the underlying usage context that motivates item combinations. We hypothesized that people select complementary items by imagining specific usage scenarios and identifying the needs in such situations. Based on this idea, we explored the use of large language models (LLMs) to generate item usage scenarios as a starting point for constructing complementary recommendation systems. First, we evaluated the plausibility of LLM-generated scenarios through manual annotation. The results demonstrated that approximately 85% of the generated scenarios were determined to be plausible, suggesting that LLMs can effectively generate realistic item usage scenarios.
翻译:互补推荐在电子商务中发挥着重要作用,它通过推荐具有协同作用的商品组合来提升用户体验。然而,互补关系通常具有主观性,且因人而异,这使得从历史数据中推断此类关系变得困难。与依赖统计共现的传统基于历史数据的方法不同,我们关注于驱动商品组合的底层使用情境。我们假设,人们是通过设想具体的使用场景并识别该情境下的需求来选择互补商品的。基于这一想法,我们探索了利用大语言模型生成商品使用场景,以此作为构建互补推荐系统的起点。首先,我们通过人工标注评估了LLM生成场景的合理性。结果表明,约85%的生成场景被判定为合理,这表明LLM能够有效生成真实的商品使用场景。