改进Naïve基于Bayes的作物产量预测模型

Kefaya Qaddoum
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引用次数: 6

摘要

大多数温室种植者希望有一个确定的产量,以便准确地满足市场需求。本文的目的是建立一种简单但通常令人满意的监督分类方法。最初的朴素贝叶斯有一个严重的弱点,即产生冗余的预测量。本文在朴素贝叶斯的基础上,利用正则化技术得到了一个计算效率高的分类器。建议的构造利用l1惩罚,能够清除冗余的预测器,其中设计了对LARS算法的修改来解决这个问题,使该方法适用于广泛的数据范围。在实验部分,研究了冗余和不相关预测因子的影响,并在番茄产量的WSG数据集上测试了该方法,其中预测因子比数据多,并且迫切需要预测周产量是该方法的目标。最后,将改进后的方法与几种朴素贝叶斯变体和其他分类算法(SVM和kNN)进行了比较,结果表明改进后的方法具有较好的分类效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modified Naïve Bayes Based Prediction Modeling for Crop Yield Prediction
Most of greenhouse growers desire a determined amount of yields in order to accurately meet market requirements. The purpose of this paper is to model a simple but often satisfactory supervised classification method. The original naive Bayes have a serious weakness, which is producing redundant predictors. In this paper, utilized regularization technique was used to obtain a computationally efficient classifier based on naive Bayes. The suggested construction, utilized L1-penalty, is capable of clearing redundant predictors, where a modification of the LARS algorithm is devised to solve this problem, making this method applicable to a wide range of data. In the experimental section, a study conducted to examine the effect of redundant and irrelevant predictors, and test the method on WSG data set for tomato yields, where there are many more predictors than data, and the urge need to predict weekly yield is the goal of this approach. Finally, the modified approach is compared with several naive Bayes variants and other classification algorithms (SVM and kNN), and is shown to be fairly good.
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