Department of Sports and Arts, Bengbu Medical University, Bengbu, 233000, Anhui, China.
Sci Rep. 2024 Oct 15;14(1):24099. doi: 10.1038/s41598-024-74427-z.
To optimize the current college sports data information management system, this study combines the Apriori association rule algorithm with web application development technology to upgrade the management system. Firstly, this study explores novel log mining techniques in genetic algorithms and web application development technology. Secondly, by integrating log mining techniques to optimize the Apriori algorithm, associations between sports data and information are discovered. Through the optimized algorithm, this study identifies key association rules of sports data information and validates the optimized system's reliability and effectiveness through experiments. The experimental results show that the running time of the traditional Apriori algorithm exponentially grows with the increase in information volume, while the optimized execution efficiency is improved by approximately 10-15%. Additionally, the average retrieval accuracy of this optimized system can reach 98.3%, although the retrieval time also increased by 23%. Therefore, the technology and algorithms proposed in this study have certain application value in the sports information management system and contribute to the optimization of data information management in this field.
为优化当前高校体育数据信息管理系统,本研究结合 Apriori 关联规则算法与 Web 应用开发技术对管理系统进行升级。首先,本研究探索了遗传算法和 Web 应用开发技术中的新颖日志挖掘技术。其次,通过整合日志挖掘技术对 Apriori 算法进行优化,挖掘出体育数据和信息之间的关联。通过优化算法,确定了体育数据信息的关键关联规则,并通过实验验证了优化系统的可靠性和有效性。实验结果表明,传统 Apriori 算法的运行时间随信息量的增加呈指数级增长,而优化后的执行效率提高了约 10-15%。此外,该优化系统的平均检索准确率可达 98.3%,尽管检索时间也增加了 23%。因此,本研究提出的技术和算法在体育信息管理系统中具有一定的应用价值,为该领域的数据信息管理优化做出了贡献。