U.S. Unemployment Rate Prediction by Economic Indices in the COVID-19 Pandemic Using Neural Network, Random Forest, and Generalized Linear Regression

Zichen Zhao, Guanzhou Hou
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Abstract

Artificial neural network (ANN) has been showing its superior capability of modeling and prediction. Neural network model is capable of incorporating high dimensional data, and the model is significantly complex statistically. Sometimes, the complexity is treated as a Blackbox. However, due to the model complexity, the model is capable of capture and modeling an extensive number of patterns, and the prediction power is much stronger than traditional statistical models. Random forest algorithm is a combination of classification and regression trees, using bootstrap to randomly train the model from a set of data (called training set) and test the prediction by a testing set. Random forest has high prediction speed, moderate variance, and does not require any rescaling or transformation of the dataset. This study validates the relationship between the U.S. unemployment rate and economic indices during the COVID-19 pandemic and constructs three different predictive modeling for unemployment rate by economic indices through neural network, random forest, and generalized linear regression model.
基于神经网络、随机森林和广义线性回归的经济指标预测新冠肺炎疫情下美国失业率
人工神经网络(ANN)在建模和预测方面已显示出其优越的能力。神经网络模型具有纳入高维数据的能力,模型具有显著的统计复杂性。有时,复杂性被视为黑箱。然而,由于模型的复杂性,该模型能够捕获和建模大量的模式,并且预测能力比传统的统计模型强得多。随机森林算法是分类树和回归树的结合,使用自举法从一组数据(称为训练集)中随机训练模型,并通过测试集对预测结果进行测试。随机森林具有预测速度快、方差适中、不需要对数据集进行缩放和变换等特点。本研究验证了新冠肺炎大流行期间美国失业率与经济指标的关系,并通过神经网络、随机森林和广义线性回归模型构建了三种不同的经济指标对失业率的预测模型。
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