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Implementation of SVM Kernels for Identifying Irregularities Usage of Smart Electric Voucher

机译:SVM内核的实现,以识别智能电子代金券的不当使用情况

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Statistical methods and machine learning have been widely used to identify deviations in the use of electrical energy for prepaid services. The paper applies the Support Vector Machine method to identify prepaid electricity usage irregularities that can overcome classification and regression problems with linear or nonlinear kernels with high accuracy and relatively small error rates. The results showed that the predictions of morbidity of electricity voucher purchase transactions, the amount of test data used did not affect the accuracy, precision, and memory values of the Linear and Polynomial kernels, the values obtained were all 100%. This shows that the addition of test data, the value of False Positive and False Negative remains 0. Thus, in each additional test data value of precision, accuracy and memory do not change. However, in the RBF kernel, the value of accuracy and precision decreases as the amount of test data increases.
机译:统计方法和机器学习已被广​​泛用于识别预付费服务中电能使用的偏差。本文采用支持向量机方法来识别预付费用电不规则性,该不规则性可以克服线性或非线性核的分类和回归问题,并且具有较高的准确性和相对较小的错误率。结果表明,电力代金券购买交易的发病率预测,测试数据的使用量不会影响线性和多项式内核的准确性,精度和存储值,获得的值均为100%。这表明添加测试数据后,“假阳性”和“假阴性”的值保持为0。因此,在每个其他测试数据中,精度,准确性和存储性的值均未更改。但是,在RBF内核中,精度和精度的值随测试数据量的增加而降低。

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