论文标题
使用多元统计方法的农业发展多类模型
Multiclass Model for Agriculture development using Multivariate Statistical method
论文作者
论文摘要
Mahalanobis Taguchi系统(MTS)是一种多变量的统计方法,用于特征选择和二进制分类问题。 MTS中正交阵列和信噪比的计算使算法复杂化时,当分类问题中涉及更多因素时。该决定也基于数据集的正常和异常观察的准确性。在本文中,基于正常观察结果和用于农业发展的摩alano虫距离,提出了使用改进的Mahalanobis Taguchi系统(IMT)的多类模型。与农作物种植相关的26个输入因素已被鉴定出来并聚集在模型开发的六个主要因素中。在考虑因素的相对重要性的情况下,开发了多类模型。定义了三种农作物的分类,即稻田,甘蔗和花生。根据从该领域工作的农业专家获得的结果来验证分类结果。与其他传统分类器模型相比,提出的分类器提供了100%的准确性,召回,精度和0%的错误率。
Mahalanobis taguchi system (MTS) is a multi-variate statistical method extensively used for feature selection and binary classification problems. The calculation of orthogonal array and signal-to-noise ratio in MTS makes the algorithm complicated when more number of factors are involved in the classification problem. Also the decision is based on the accuracy of normal and abnormal observations of the dataset. In this paper, a multiclass model using Improved Mahalanobis Taguchi System (IMTS) is proposed based on normal observations and Mahalanobis distance for agriculture development. Twenty-six input factors relevant to crop cultivation have been identified and clustered into six main factors for the development of the model. The multiclass model is developed with the consideration of the relative importance of the factors. An objective function is defined for the classification of three crops, namely paddy, sugarcane and groundnut. The classification results are verified against the results obtained from the agriculture experts working in the field. The proposed classifier provides 100% accuracy, recall, precision and 0% error rate when compared with other traditional classifier models.