Author
Listed:
- Shuang Geng
(Shenzhen University, College of Management)
- Nan Yang
(Shenzhen University, College of Management)
- Yanghui Li
(Shenzhen University, College of Management)
- Rui Wang
(Shenzhen University, College of Management)
- Xusheng Wu
(Shenzhen Health Development Research and Data Management Center)
Abstract
This paper addresses the multi-objective optimization problem in health science popularization short video recommendation by proposing a Multi-Stage Iterative Optimization Algorithm based on Disease Label Detection Mutation Strategy (MSIO-DLD). The algorithm introduces a multi-stage optimization framework that iteratively optimizes the diversity, professionalism, and accuracy of the recommendation list at each stage, aiming to achieve a comprehensive balance among these three core objectives. During the diversity optimization phase, MSIO-DLD incorporates a mutation strategy based on disease label detection, effectively mitigating the over-concentration of recommended content within a single category. Simultaneously, cosine similarity is employed to control the deviation between the mutated recommendation list and the original one. Experimental results demonstrate that MSIO-DLD outperforms seven representative baseline algorithms across multiple evaluation metrics, particularly excelling in professionalism and accuracy. Furthermore, MSIO-DLD exhibits superior performance in key indicators such as Hypervolume and Inverted Generational Distance, validating its effectiveness and robustness in addressing multi-objective optimization problems. Future research will focus on integrating domain knowledge from the medical field to further refine the recommendation process and explore more innovative strategies to enhance algorithm performance.
Suggested Citation
Shuang Geng & Nan Yang & Yanghui Li & Rui Wang & Xusheng Wu, 2026.
"MSIO-DLD Algorithm: Multi-objective Optimization for Health Science Short Video Recommendation,"
Lecture Notes in Operations Research, in: Xiaolei Xie & Kejia Hu & Guiping Hu & Weiwei Chen & Robin Qiu (ed.), AI, Society and Digital Transformation, pages 158-172,
Springer.
Handle:
RePEc:spr:lnopch:978-3-032-13116-4_13
DOI: 10.1007/978-3-032-13116-4_13
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