基于数据挖掘的混合天气预报方法

stutiii i, Shashwat Tandon, Manjula R, Shiv Kumar
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引用次数: 0

摘要

在本文中,工作重点是利用每天的实时数据进行天气预报。从一开始,天气预报就被证明是机器学习的一个非常重要的应用。对不同的模型进行了研究,找到了抛弃经典模型来提高预测精度的方法,采用了一种混合的方法,将一百多棵决策树包在一起形成一个总和。从每棵树获得的聚合结果被认为是数据的随机分割,节省了大量的计算时间。梯度增强用于显著提高精度,使其成为一个非常有效的模型。增强帮助弱学习者决策树选择一个随机的数据样本,将其与模型拟合,并对其进行顺序训练,以弥补其前身的弱点。为了提高模型在提升中的准确性,使用凸损失函数(衡量期望和目标输出之间的差距)和模型复杂性的惩罚项的组合来减少包含L1和L2回归树函数的正则化目标函数。当使用新数据进行测试时,所得到的模型达到了非常高的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hybrid Approach of Weather Forecasting using Data Mining
In the paper, the work focuses on weather prediction by using real time data from day to day. Weather Prediction has proven to be a very important application of Machine Learning since the beginning. Different models were studied and found out ways how prediction could be made more accurate by aban-doning the classical models and adopted a hybrid method of including more than hundred decision trees bagged to form an aggregate total. The aggregate results achieved from each tree was considered to be a random split of data, saving a lot of computation time. Gradient Boosting was used to increase accuracy significantly making it a very efficient model to work with. The boosting helped the weak learner Decision Tree to select a random sample of data, fit it with a model and train it sequentially to compensate for the weakness of its predecessor. To improve the accuracy of a model in boosting, a combination of a convex loss function, which measures the gap between the expected and goal outputs, and a penalty term for the complexity of the model were used to reduce a regularized objective function that included both L1 and L2 regression tree functions. The resulting model achieved a significantly high level of accuracy when tested with new data.
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