利用机器学习预测幸福指数

Lexin You
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引用次数: 4

摘要

近年来,机器学习已经成为技术领域一个非常热门的话题。大量的研究正试图采用这项技术来提高政府服务的效率。我们利用机器学习来分析与幸福指数相关的特征,并做出一些预测。利用获得的调查数据集,随机收集一些中国人的幸福指数并提出相关问题,我们提供了几种算法来分析人们的幸福指数与他们回答的问题的答案之间的关系。我们可以利用结果在新的数据集中做出与实际值近似一致的预测。在我们的研究中,我们获得了一些重要的特征,如收入、教育和健康。本文为电子政务服务的改进提供了一些新的视角。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Utilizing Machine Learning to Predict Happiness Index
In recent years, machine learning has become an extremely popular topic in the technology domain. A significant number of researches are trying to adopt this technology to improve the efficiency of government services. We utilize machine learning to analyze the features related to the happiness index and to make some predictions. Using the obtained dataset of the survey that collects a random number of Chinese people's happiness index and asks relevant questions, we provide several algorithms to analyze the relationship between people's happiness index and the answers to the problems they have answered. We can make predictions in the new dataset approximately consistent with the actual values by utilizing the results. In our study, we gain some important features like income, education, and health. This paper provides some novel perspectives to improve service for e-governance.
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