Perbandingan Algoritme Klasifikasi Untuk Prediksi Cuaca

Amril Mutoi Siregar, Sutan Faisal, Y. Cahyana, Bayu Priyatna
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引用次数: 5

Abstract

Weather conditions is an air condition in a place with a relatively short time, which is expressed by the value of parameters such as temperature, wind speed, pressure, rainfall, which is another atmospheric phenomenon as the main component. Human activities can be influenced by weather conditions, such as transportation, agriculture, plantation, construction or even sports. Therefore, for determining the weather, getting weather information needs to be made so that it can be utilized by the community. Problems that arise how to make weather predictions automatically so that it can be done by everyone. In this study proposed several algorithms Navie Bayes, Decision Tree, Random Forest to calculate the opportunities of one class from each of the existing group attributes and determine which class is the most optimal, meaning that grouping can be done based on the categories that users enter in the application. The prediction system has been made to obtain an accuracy rate of Navie Bayes of 77.22% with a standard deviation of 29%, a Decision Tree accuracy rate of 79.46% with a standard deviation of 15%, a random forest accuracy rate of 82.38% with a standard deviation of 43%.
比较天气预报的分类算法
天气状况是一个地方在较短时间内的空气状况,用温度、风速、气压、降雨等参数的值来表示,是另一种以大气现象为主要成分的气象现象。人类活动可以受到天气条件的影响,例如交通、农业、种植园、建筑甚至体育。因此,为了确定天气,需要获取天气信息,使其能够被社会所利用。出现的问题是如何自动进行天气预报,使每个人都能做到。本研究提出了几种算法,分别是Navie Bayes, Decision Tree, Random Forest,从现有的每个组属性中计算出一个类的机会,并确定哪个类是最优的,这意味着可以根据用户在应用程序中输入的类别进行分组。该预测系统得到了纳维贝叶斯准确率77.22%,标准差为29%,决策树准确率79.46%,标准差为15%,随机森林准确率82.38%,标准差为43%。
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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