Live Session
Chamber of Commerce
Poster
17 Oct
 
8:00
CEST
Thursday Posters
Add Session to Calendar 2024-10-17 08:00 am 2024-10-17 05:10 pm Europe/Rome Thursday Posters Thursday Posters is taking place on the RecSys Hub. Https://recsyshub.org
Research

EmbSum: Leveraging the Summarization Capabilities of Large Language Models for Content-Based Recommendations

View on ACM Digital Library

Chiyu Zhang (University of British Columbia), Yifei Sun (Meta), Minghao Wu (Monash University), Jun Chen (Meta), Jie Lei (Meta), Muhammad Abdul-Mageed (The University of British Columbia), Rong Jin (Meta), Angli Liu (Meta), Ji Zhu (Meta), Sem Park (Meta), Ning Yao (Meta) and Bo Long (Meta)

View Paper PDFView Poster
Abstract

Content-based recommendation systems play a crucial role in delivering personalized content to users in the digital world. In this work, we introduce EmbSum, a novel framework that enables offline pre-computations of users and candidate items while capturing the interactions within the user engagement history. By utilizing the pretrained encoder-decoder model and poly-attention layers, EmbSum derives User Poly-Embedding (UPE) and Content Poly-Embedding (CPE) to calculate relevance scores between users and candidate items. EmbSum actively learns the long user engagement histories by generating user-interest summary with supervision from large language model (LLM). The effectiveness of EmbSum is validated on two datasets from different domains, surpassing state-of-the-art (SoTA) methods with higher accuracy and fewer parameters. Additionally, the model's ability to generate summaries of user interests serves as a valuable by-product, enhancing its usefulness for personalized content recommendations.

Join the Conversation

Head to Slido and select the paper's assigned session to join the live discussion.

Conference Agenda

View Full Agenda →
No items found.