JOURNAL ARTICLE

Dual Conditional Diffusion Models and Generative Diffusion Models for Sequential Recommendations

Sajal Rokka

Year: 2025 Journal:   Proceedings of International Conference on Innovation in Computing Science Engineering and Technology Vol: 2 (1)

Abstract

Sequential recommendation systems are designed to forecast the subsequent item a user is expected to engage with, based on their past interactions. Both Generative Diffusion Models for Sequential Recommendations (known as DiffuRecSys) and Dual Conditional Diffusion Models for Sequential Recommendation (referred to as DCRec) utilize diffusion models to enhance the accuracy of recommendations. While DiffuRecSys emphasizes improving robustness and understanding user-item interactions via cross-attention and offset noise, DCRec adopts a dual conditional strategy that combines both implicit and explicit conditioning to boost recommendation accuracy and computational efficiency. This paper presents a comparative evaluation of the two methods, emphasizing their approaches, significant contributions, and findings. Both models show remarkable advances compared to leading baseline methods, with DiffuRecSys particularly adept at understanding varied user preferences, while DCRec stands out in terms of both accuracy and efficiency. The overview wraps up with an examination of their individual advantages, drawbacks, and possible paths for future development.

Keywords:
Generative grammar Robustness (evolution) Dual (grammatical number) Baseline (sea) Generative model Offset (computer science)

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Topics

Recommender Systems and Techniques
Physical Sciences →  Computer Science →  Information Systems
Sentiment Analysis and Opinion Mining
Physical Sciences →  Computer Science →  Artificial Intelligence
Advanced Bandit Algorithms Research
Social Sciences →  Decision Sciences →  Management Science and Operations Research

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