Prompt-Based LLMs for Position Bias-Aware Reranking in Personalized Recommendations
Journal:
arXiv
Published Date:
May 8, 2025
Abstract
Recommender systems are essential for delivering personalized content across
digital platforms by modeling user preferences and behaviors. Recently, large
language models (LLMs) have been adopted for prompt-based recommendation due to
their ability to generate personalized outputs without task-specific training.
However, LLM-based methods face limitations such as limited context window
size, inefficient pointwise and pairwise prompting, and difficulty handling
listwise ranking due to token constraints. LLMs can also be sensitive to
position bias, as they may overemphasize earlier items in the prompt regardless
of their true relevance. To address and investigate these issues, we propose a
hybrid framework that combines a traditional recommendation model with an LLM
for reranking top-k items using structured prompts. We evaluate the effects of
user history reordering and instructional prompts for mitigating position bias.
Experiments on MovieLens-100K show that randomizing user history improves
ranking quality, but LLM-based reranking does not outperform the base model.
Explicit instructions to reduce position bias are also ineffective. Our
evaluations reveal limitations in LLMs' ability to model ranking context and
mitigate bias. Our code is publicly available at
https://github.com/aminul7506/LLMForReRanking.