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Future Prediction of Regional City Using Causal Inference Based on Time Series Data

机译:基于时间序列数据使用因果推断的未来预测

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Regional cities in Japan have a lot of social issues. Various measures are being considered to solve these social issues, but it is difficult to ascertain and implement practical and effective measures. In this study, we proposed a new causal inference for selecting indicators that have causal relations with the social issues. If there was a causal relation between two sets of time series data, the slope of the approximation line of the time-shifted correlation coefficients at the base time returned a negative value. The causal inference was verified by using samples of time series data. In addition, we achieved future predictions by the vector autoregressive model using the causal indicators. The model was verified using the actual time series data of 87 regional cities. As a result, it was possible to simulate future predictions and to calculate the effects by introducing practical and effective measures to solve social issues.
机译:日本的区域城市有很多社会问题。正在考虑各种措施来解决这些社会问题,但很难确定和实施实用和有效的措施。在这项研究中,我们提出了对选择与社会问题有因果关系的指标的新因果推断。如果两组时间序列数据之间存在因果关系,则基本时间的时移相关系数的近似线的斜率返回负值。通过使用时间序列数据的样本来验证因果推断。此外,我们使用因果指标来实现了矢量自回归模型的未来预测。使用87个区域城市的实际时间序列数据验证该模型。因此,可以通过引入解决社会问题的实用和有效措施来模拟未来的预测并计算效果。

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