Recommender systems are essential in E-Commerce platforms, with recent advancements leveraging users’ historical records to extract multi-interests. However, beyond these records, user profiles contain semantic information that inherently shapes their interests. Existing works mainly overlook that a user’s interests have: group influence, multi-level preference, and time relevance. To this end, a novel Enhanced User Profile-based Multi-interest Model (E-UPMiM) for recommendation is proposed to integrate enhanced user profiles with social relationships to model users’ multi-interests effectively. We propose to extract user preferences with three components: integrated input containing enhanced profiles with social relationships to meet users’ grouping needs; a multi-interest extraction module to obtain complex interest representations; and a time-aware ranking module to adjust the recommendations dynamically. Extensive experiments on three public datasets show that E-UPMiM significantly outperforms state-of-the-art recommendation models.