A Comprehensive Review on Harnessing Large Language Models to Overcome Recommender System Challenges
Rahul Raja, Anshaj Vats, Arpita Vats, Anirban Majumder

TL;DR
This paper surveys how large language models can revolutionize recommender systems by addressing data sparsity, cold-start issues, and enhancing personalization through unified, language-native approaches.
Contribution
It provides a comprehensive framework categorizing LLM-driven architectures and analyzes their effectiveness in overcoming traditional recommender system challenges.
Findings
LLMs improve personalization and semantic understanding.
LLMs enable zero- and few-shot reasoning for cold-start scenarios.
Structured framework for LLM-enhanced recommender architectures.
Abstract
Recommender systems have traditionally followed modular architectures comprising candidate generation, multi-stage ranking, and re-ranking, each trained separately with supervised objectives and hand-engineered features. While effective in many domains, such systems face persistent challenges including sparse and noisy interaction data, cold-start problems, limited personalization depth, and inadequate semantic understanding of user and item content. The recent emergence of Large Language Models (LLMs) offers a new paradigm for addressing these limitations through unified, language-native mechanisms that can generalize across tasks, domains, and modalities. In this paper, we present a comprehensive technical survey of how LLMs can be leveraged to tackle key challenges in modern recommender systems. We examine the use of LLMs for prompt-driven candidate retrieval, language-native…
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