吉林大学学报(理学版) ›› 2025, Vol. 63 ›› Issue (3): 878-0884.

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无线局域网多模态数据标签自适应标注方法

陈琳1, 魏娟2   

  1. 1. 山东大学 信息化工作办公室, 济南 250100; 2. 山东省林业科学研究院 党群办公室, 济南 250014
  • 收稿日期:2024-04-22 出版日期:2025-05-26 发布日期:2025-05-26
  • 通讯作者: 魏娟 E-mail:82686039@qq.com

Adaptive Labeling Method for  Multimodal Data Labels in Wireless Local Area Networks

CHEN Lin1, WEI Juan2   

  1. 1. Information Office, Shandong University, Jinan 250100, China;2. Party and Mass Office, Shandong Academy of Forestry, Jinan 250014, China
  • Received:2024-04-22 Online:2025-05-26 Published:2025-05-26

摘要: 针对无线局域网的动态性导致数据标签有效性随时间变化, 需定期更新和重新标注数据, 增加了数据标签标注难度的问题, 提出一种无线局域网多模态数据标签自适应标注方法. 首先, 通过动态滑动邻近排序算法清洗重复的无线局域网多模态数据, 利用循环神经网络融合多模态数据, 获取更全面的数据信息. 其次, 将融合后的无线局域网数据划分为确定集和模糊集, 采用支持向量机标注确定集数据标签, 利用K-近邻(KNN)分类器标注模糊集数据标签, 从而实现无线局域网多模态数据标签自适应标注. 实验结果表明, 该方法的重复数据删除率始终高于12%, 一致指数为0.992 8, 平均绝对百分比误差为0.453 9, ROC曲线更靠近坐标轴左上角, AUC值为0.982 4, 内存占用率始终低于10%, 无线局域网多模态数据标签标注效果较好.

关键词: 无线局域网, 多模态数据, 标签标注, 支持向量机, KNN分类器

Abstract: Aiming at the problem of dynamicity of  the wireless local area networks (LAN), which led to the changes of the validity of data labels with time, and required regular  updates and relabeling of data,  increasing the difficulty of data label labeling, we proposed  an adaptive labeling method for multimodal data labels in  wireless local area networks. Firstly, the repetitive wireless LAN multimodal data was cleaned by using dynamic sliding neighbor sorting algorithm, and the multimodal data was fused by using recurrent  neural network to obtain more comprehensive data information. Secondly, the fused wireless LAN  data was divided into deterministic set and fuzzy set, and the deterministic set data was labeled by using support vector machine, and the fuzzy set data was labeled by using K-nearest neighbor (KNN) classifier, thus achieving  the adaptive labeling of wireless LAN multimodal data labels. The experimental results show that the deduplication ratio of the proposed method is always above 12%, the consistency index is 0.992 8, the average absolute percentage error is 0.453 9, the ROC curve is closer to the upper left corner of the coordinate axis, the AUC value is 0.982 4, and the memory occupancy rate is always below 10%. The wireless LAN multimodal data labeling effect is good.

Key words:  , wireless local area network, multimodal data, label annotation, support vector machine, KNN classifier

中图分类号: 

  • TP391