PhD Dissertation Defense: Toward Intelligent Personalization: Integrating Large Language Models with Recommender Systems by Danial Ebrat

Tuesday, May 19, 2026 - 12:00

Toward Intelligent Personalization: Integrating Large Language Models with Recommender Systems

PhD Dissertation Defense by: Danial Ebrat

 

Date: May 19th, Tuesday

Time:  12:00 PM

Teams Link: https://teams.microsoft.com/meet/286038174789864?p=C63FbrDYh1YKLM8ES0

Meeting ID: 286 038 174 789 864
Passcode: tJ7yr9BD

 

Abstract:

Recommender systems power the digital services we use daily, yet they struggle with sparse data, new users, and opaque decisions. This thesis investigates how Large Language Models (LLMs) can be systematically integrated with graph-based collaborative filtering to build recommender systems that are simultaneously more accurate, robust, and interpretable. The proposed framework transforms rich textual metadata into semantic embeddings that initialize user–item graphs, propagated through Graph Attention Networks to blend meaning with structure. A modular agent-based architecture coordinates semantic profiling, ranking, reranking via a confidence-weighted search tree, and natural-language explanation generation. A custom hybrid loss aligns semantic and interaction-based signals, with particular gains for users who have little interaction history. The thesis also introduces Lusifer, a simulation environment that generates realistic evolving user feedback for controlled training and evaluation. Experiments across movie, book, and music datasets show consistent improvements over state-of-the-art baselines, especially under cold-start and data-sparse conditions.

 

Keywords:

Recommender Systems, Large Language Models, Vector Embeddings

 

Doctoral Committee:

Internal Reader: Dr. Jianguo Lu

Internal Reader: Dr. Ikjot Saini   

External Reader: Dr. Esraa Abdelhalim

External Examiner: Dr. Miguel Vargas Martin      

Advisor(s): Dr. Luis Rueda

Chair: Dr. Beth-Anne Schuelke-Leech