Prediction Model based on Iris Dataset Via Some Machine Learning Algorithms

Chya Fatah Aziz, B. Awrahman
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引用次数: 0

Abstract

Abstract— Supervised Machine Learning algorithm has an important approach to Classification. We are predicting the deal type of the Iris plant using various algorithms of machine learning. Iris plants are determined by numerous factors such as the size of the length and width of the property. A horticultural skill announces that some of the plants are different in some physical appearances like size, shape, and color. Hence it is difficult to recognize any species. Versicolor, Setosa, and Virginica have three identical subspecies of The Iris flower species. This paper uses machine learning algorithms to recognize all classes of the flower with an accuracy degree of %100 for KNN, %95 for RF, %97 for DT, and %98 for LR. The Iris dataset is frequently available, and it is implemented using Scikit tools. and build the prediction model for Plants. Here, algorithms of machine learning such as Logistic Regression (LR), Decision Tree (DT),  K Nearest Neighbor (KNN), and Random Forest (RF) are employed to construct a predictive model.
基于Iris数据集的机器学习预测模型
有监督机器学习算法是分类的重要方法。我们正在使用各种机器学习算法预测鸢尾植物的交易类型。鸢尾植物的大小是由许多因素决定的,如长度和宽度的性质。一项园艺技术表明,有些植物在某些物理外观上是不同的,比如大小、形状和颜色。因此,很难识别任何物种。Versicolor, Setosa和Virginica有鸢尾花的三个相同的亚种。本文使用机器学习算法对花的所有类别进行识别,KNN的准确率为%100,RF的准确率为%95,DT的准确率为%97,LR的准确率为%98。Iris数据集经常可用,它是使用Scikit工具实现的。并建立植物的预测模型。本文采用逻辑回归(LR)、决策树(DT)、K近邻(KNN)和随机森林(RF)等机器学习算法构建预测模型。
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