NS-SVM: Bolstering Chicken Egg Harvesting Prediction with Normalization and Standardization

Aji Gautama Putrada, Nur Alamsyah, Muhamad Nurkamal Fauzan, Syafrial Fachri Pane
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引用次数: 2

Abstract

Breeding chickens and chicken eggs are poignant, and recent studies have applied computer science to optimize this field, including chicken egg harvesting prediction. However, existing research does not emphasize the importance of data transformation to obtain optimum chicken egg harvesting prediction. This paper proposes the normalization and standardization-bolstered support vector machine (NS-SVM) method, namely normalization, and standardization, to improve the prediction of chicken egg harvest using SVM. First, we obtain the chicken egg dataset from Africa using Kaggle. The problem and solution become urgent, whereas chicken egg production can ease businesspeople to invest in chicken eggs. We adopt the normalization and standardization method from previous research. However, the notation is to differentiate the method from legacy SVM. The dataset has up to 13 features. Then we apply standard pre- processing such as label encoding and random oversampling. We also review the dataset feature using the Pearson correlation coefficient (PCC). We use two SVM kernels: radial basis function (RBF) and the 2nd-degree polynomial. Then we again apply the same model but by applying normalization and standardization. We use cross- validation with 𝑲 = 𝟏𝟎 to measure the Accuracy of the compared models. The results show that normalization and standardization positively affect the prediction model of the two SVM kernels. The model with the highest performance is NS-SVM with a 2nd-degree kernel, namely 𝑨𝒄𝒄𝒖𝒓𝒂𝒄𝒚 = 𝟎. 𝟗𝟗𝟔. At the same time, the model with the lowest performance is SVM with RBF, namely𝑨𝒄𝒄𝒖𝒓𝒂𝒄𝒚 = 𝟎. 𝟗𝟖𝟔. In addition, the results of ROC AUC analysis show that the performance of our model on the imbalanced dataset with a moderate degree is 𝑨𝑼𝑪 = 𝟎.𝟗𝟐𝟕 to 𝟎.𝟗𝟗𝟑.
NS-SVM:支持归一化和标准化的鸡蛋收获预测
饲养鸡和鸡蛋是令人痛苦的,最近的研究已经应用计算机科学来优化这一领域,包括鸡蛋收获预测。然而,现有的研究并没有强调数据转换对于获得最佳的鸡蛋收获预测的重要性。本文提出了一种归一化和标准化增强支持向量机(NS-SVM)方法,即归一化和标准化,以改进支持向量机对鸡蛋收获的预测。首先,我们使用Kaggle获得来自非洲的鸡蛋数据集。问题和解决方案变得紧迫,而鸡蛋生产可以让商人更容易投资鸡蛋。我们采用了前人研究的归一化和标准化方法。然而,符号是区别于传统支持向量机的方法。该数据集有多达13个特征。然后采用标准的预处理方法,如标签编码和随机过采样。我们还使用Pearson相关系数(PCC)对数据集特征进行了审查。我们使用两个支持向量机核:径向基函数(RBF)和二次多项式。然后我们再次应用相同的模型,但通过应用规范化和标准化。我们使用𝑲= 的交叉验证来衡量比较模型的准确性。结果表明,归一化和标准化对两种支持向量机核的预测模型有正向影响。性能最好的模型是具有二度核的NS-SVM,即𝑨𝒖 𝒚= 。𝟗𝟗𝟔。同时,性能最低的模型为支持向量机与RBF,即𝑨𝒖 𝒚= 。𝟗𝟖𝟔。此外,ROC AUC分析结果表明,我们的模型在中等程度的不平衡数据集上的性能为𝑨𝑼𝑪=𝟗𝟕到𝟗𝟗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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