基于GridSearchCV超参数调优的优化k近邻算法的菲律宾降雨分类模型

D. D. C. Maceda, Jennifer C.Dela Cruz
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引用次数: 0

摘要

可能会下多少雨取决于一些重要的因素,比如温度、云的数量、湿度、风速和风向。因为很难预测会下多少雨,所以写了这篇研究论文。重要的是要知道什么时候会下雨,尤其是在像菲律宾这样的农业区,那里的降雨时间很奇怪。这项研究的目的是开发一种方法,可以用来代替菲律宾大气、地球物理和天文服务管理局的日常天气预报,以确定菲律宾是否会下雨。在此分析中,使用k -最近邻机器学习技术将输入数据分为四类,分别对应于不下雨、小雨、中雨和大雨。成功可以通过多种方式进行评估,包括使用准确性、内存、f1分数、精度和混淆矩阵等指标。最后,通过使用网格搜索对K-NN的设置进行微调,评估和改进了它们的分类性能,平均准确率达到85%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rainfall Classification Model for the Philippines using Optimized K-nearest Neighbor Algorithm with GridSearchCV Hyperparameter Tuning
How much rain is likely to fall depends on a number of important things, such as the temperature, the number of clouds, the humidity, the speed of the wind, and the direction of the wind. Because it’s hard to tell how much rain will fall, this study paper was written. It’s important to know when it will rain, especially in a farming area like the Philippines, where it rains at strange times. The purpose of this research was to develop a method that could be used in place of the Philippine Atmospheric, Geophysical, and Astronomical Services Administration’s daily weather forecasts to determine whether or not it will rain in the Philippines. In this analysis, the K-Nearest Neighbor machine learning technique is used to categorize the input data into four classes, corresponding to the absence of rain, the presence of light rain, moderate rain, and heavy rain. Success may be evaluated in a number of ways, including via the use of metrics like accuracy, memory, f1-score, precision, and the confusion matrix. Lastly, their classification performance is evaluated and improved by fine-tuning the settings of K-NN using grid search, which gives a better mean accuracy of 85%.
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