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Running and Cycling Induced Fatigue on Wrapper vs. BLR Feature Selection for IBk Classification

机译:在包装纸上运行和循环诱导疲劳对IBK分类的包装网与BLR功能选择

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Running and cycling fatigue causes muscle pains, cramps and accidental injuries. Previous studies had considered the importance of tri-axial accelerometer to detect fatigue motion in stability, balance and postural deviation aspects. While tri-axial accelerometer is important, the capability to predict running and cycling fatigue from the biomechanical attributes were unclear. Therefore, the study aims to (i) compare the featured attributes selected from wrapper approach and Binary Logistic Regression (BLR) on running and cycling datasets and (ii) perform IBk classification accuracy comparison on the feature selection attributes. Public running, experimental running and cycling induced fatigue datasets were employed to test the analysis. The most significant attributes identified in the public running was RMS_ML, followed by RangeML and the cycle frequency in experimental running and cycling respectively. On 10 folds cross-validation classification test using the IBk algorithm in WEKA, accuracies for experimental running and cycling datasets were 93.1% and 90.5% from wrapper method, 65.6% and 76.2% from BLR respectively. Wrapper method performs better than BLR in data overfitting phenomenon. Findings reveal that the mediolateral variation at body trunk motion plays a major impact to predict fatigue running but fatigue cycling shows cycling frequency as the main attribute in fatigue cycling prediction.
机译:跑步和循环疲劳导致肌肉疼痛,痉挛和意外伤害。以前的研究考虑了三轴加速度计检测稳定性,平衡和姿势偏差方面的疲劳运动的重要性。虽然三轴加速度计很重要,但是从生物力学属性预测运行和循环疲劳的能力尚不清楚。因此,该研究旨在(i)将从包装方法和二进制逻辑回归(BLR)上选择的特征属性进行比较,并在运行和循环数据集中和(ii)对特征选择属性执行IBK分类精度比较。公共运行,实验运行和循环诱导的疲劳数据集用于测试分析。公共运行中标识的最重要的属性是RMS_ML,然后分别在实验运行和循环中进行rangeml和循环频率。在10倍折叠交叉验证分类测试中,使用Weka中的IBK算法,实验运行和循环数据集的精度分别为35.6%和来自BLR的35.6%和76.2%的93.1%和90.5%。包装方法在数据过度拟合现象中比BLR更好。结果表明,身体躯干运动的MedioLate模式对预测疲劳运行的重大影响,但疲劳循环显示循环频率作为疲劳循环预测中的主要属性。

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