基于计算智能的高校体育考试成绩预测与分析

J. Sensors Pub Date : 2022-08-24 DOI:10.1155/2022/4070030
Pengtao Cui
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引用次数: 0

摘要

如今,高校越来越重视学生的身体状况。许多学校开设体育课程来锻炼学生,提高他们的身体素质。他们还每学期进行体检,以测试学生的身体状况。为了保证更准确的运动结果,本文采用优化的神经群粒子群模型方法对被调查学生的体育考试成绩进行预测。此外,为了保证粒子群优化神经网络模型方法的准确性,我们将GXD方法和LM方法与我们的方法进行了比较。它具有精度高、预测效果最佳、通用性强、召回率高、抗噪性能强、适用范围广等优点。为了保证粒子群优化的精度,本文将神经网络模型方法与GXD方法和LM方法进行了比较。
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Prediction and Analysis of College Sports Test Scores Based on Computational Intelligence
Nowadays, colleges and universities are paying more and more attention to the physical condition of students. Many schools set up physical education courses to exercise students and improve their physical quality. They also conduct physical examinations every semester to test students’ conditions. In order to ensure more accurate sports results, this paper uses optimization of the neural group particle group model method to forecast the physical culture test scores of the investigated students. In addition, to guarantee accuracy the particle swarm optimization neural network model method, we compare the GXD method and the LM method with our method. It has the advantage of high precision, optimal prediction effect, strong versatility, higher recall rate, stronger antinoise performance, and wider application range. The article compares the neural network model method for particle swarm optimization with the GXD way and the LM way to ensure precision the neural network model method for particle swarm optimization.
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