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基于大数据标签分析的娱乐场所安全监管研究

Investigation into safety regulation of entertainment venues based on big data label analysis.

作者信息

Li Zixuan, Wang Chengli

机构信息

School of Humanities and Law, Jiangsu Ocean University, Lianyungang City , 222005, China.

出版信息

Heliyon. 2024 Nov 19;10(24):e40536. doi: 10.1016/j.heliyon.2024.e40536. eCollection 2024 Dec 30.

Abstract

The recreational escape rooms have recently emerged as a rapidly growing and widely embraced form of consumer entertainment. However, the industry's expansion has brought forth certain challenges, notably the lack of authoritative oversight, which has led to issues such as piracy and theme infringement. To address these concerns, this study explores the management complexities of immersive entertainment venues from the perspective of responsive regulation. The study begins by abstracting a dataset of online cultural products related to entertainment venues into a complex network using specific measurement standards. A method employing the K-means clustering algorithm is then proposed to partition the associative structure of this complex network. The K-means clustering algorithm is particularly suitable for this task due to its efficiency in handling large-scale data, strong scalability, and ability to quickly and effectively group network nodes based on a defined objective function. Additionally, the algorithm allows for flexible adjustment of the number of clusters according to specific needs. Furthermore, the study enhances and tests the Practical Byzantine Fault Tolerance (PBFT) algorithm to validate its effectiveness and practicality. The findings reveal that when the distance criterion value is set at a = 2, the improved PBFT algorithm exhibits exceptional performance. This discovery significantly enhances the security and control measures in immersive entertainment venues, enriching the theoretical framework related to administrative regulation and providing crucial theoretical resources for future legislative efforts. Finally, the study presents policy recommendations to strengthen the regulation of immersive entertainment venues. This study offers effective technical support for optimizing consumer market management measures and contributes to the development of new entertainment venues.

摘要

娱乐密室逃脱最近已成为一种迅速发展且广受欢迎的消费者娱乐形式。然而,该行业的扩张带来了一些挑战,尤其是缺乏权威监管,这导致了盗版和主题侵权等问题。为了解决这些问题,本研究从响应式监管的角度探讨沉浸式娱乐场所的管理复杂性。该研究首先使用特定的测量标准将与娱乐场所有关的在线文化产品数据集抽象为一个复杂网络。然后提出一种采用K均值聚类算法的方法来划分这个复杂网络的关联结构。K均值聚类算法特别适合这项任务,因为它在处理大规模数据方面效率高、扩展性强,并且能够根据定义的目标函数快速有效地对网络节点进行分组。此外,该算法允许根据特定需求灵活调整聚类数量。此外,该研究对实用拜占庭容错(PBFT)算法进行了改进和测试,以验证其有效性和实用性。研究结果表明,当距离准则值设置为a = 2时,改进后的PBFT算法表现出卓越的性能。这一发现显著增强了沉浸式娱乐场所的安全和控制措施,丰富了与行政法规相关的理论框架,并为未来的立法工作提供了关键的理论资源。最后,该研究提出了加强对沉浸式娱乐场所监管的政策建议。本研究为优化消费者市场管理措施提供了有效的技术支持,并为新娱乐场所的发展做出了贡献。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/daef/11699059/e904048cb3d1/gr1.jpg

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