人口普查数据集的贝叶斯推断

Hui-Chu Shu
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引用次数: 0

摘要

作为最流行的概率编程工具之一,PyMC3可以解决许多科学领域的推理问题。在本文中,我们使用PyMC3对人口普查数据集构建贝叶斯模型来预测美国人口与房价之间的对应关系,并使用该数据集对其进行评估,以确定所建立模型的有效性和准确性。通过对该数据集的评估,本文所建立的贝叶斯模型能够较准确地预测无COVID-19情况下的房价理论数据,这对于研究当前因COVID-19而大幅上涨的房价以及类似大型资产的到期价格具有一定的启示意义,研究人员可以预测无COVID-19情况下的房价;然后根据当前房价计算差异,从而研究COVID-19对房价的影响以及类似资产价格的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian Inference in Census-House Dataset
As one of the most popular probabilistic programming tools, PyMC3 can solve inference problems in many scientific fields. In this paper, we used PyMC3 to build a Bayesian model for the census-house dataset to predict the correspondence between the U.S. population and house prices, and evaluated it using the dataset to determine the validity and accuracy of the established model. Through the evaluation of this dataset, the Bayesian model established in this paper can predict the theoretical data of house prices with high accuracy in the absence of COVID-19, which has implications for the study of the current property prices that have increased significantly because of COVID-19 and the due prices of similar large assets, researchers can predict the house prices in the absence of COVID-19, and then based on the current house prices calculate the difference and thus study the impact of COVID-19 in terms of house prices as well as the impact of similar asset prices.
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