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Application of the K Nearest Neighbor Algorithm Based on Scaling Weight in Intelligent Attendance System

机译:基于缩放权重的K最近邻算法在智能考勤系统中的应用

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This paper aims at the research and analysis of indoor positioning technology for realizing non-perceptual attendance problem in intelligent attendance system. Firstly, the classical KNN (K Nearest Neighbor) algorithm is elaborated, and an improved scaled weight-based KNN (SW-KNN) algorithm is proposed. The algorithm is simulated and analyzed through experiments. The experimental results show that SW-KNN algorithm improves the positioning accuracy and reduces the error compared with the classical K-nearest neighbor algorithm. The fingerprint positioning algorithm can realize the non-perceptual attendance of students, and the application effect is better.
机译:本文针对室内定位技术的研究与分析,以实现智能考勤系统中的非感性考勤问题。首先,阐述了经典的KNN(K近邻)算法,并提出了一种改进的基于比例加权的KNN(SW-KNN)算法。通过实验对算法进行了仿真和分析。实验结果表明,与经典的K近邻算法相比,SW-KNN算法提高了定位精度,减少了误差。指纹定位算法可以实现学生的非感性出勤,应用效果更好。

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