使用Facebook Prophet分析和预测印度自杀趋势

Kashvi Taunk, Pulkit Singh, Rajat Kumar Behera
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引用次数: 3

摘要

自杀分析对美国国家心理健康研究所和其他从事自杀预防工作的机构来说是一个至关重要的领域。这方面的研究有助于分析多年来自杀的模式和趋势。本文对印度发生的自杀事件的时间序列数据进行了研究,以确定在某个时间点之后是否存在显著的趋势变化。采用预测方法对未来自杀趋势进行预测。本文采用时间序列预测算法Facebook Prophet进行推论和结论。本文还提出了一种拐点算法,该算法突出了两个时间点之间的自杀趋势。此外,该模型还能够预测未来n年的趋势。我们使用MAPE和SMAPE误差技术进行精确测量。平均绝对百分比误差(MAPE)是一种预测精度度量,而对称平均绝对百分比误差(SMAPE)是一种百分比(或相对)误差依赖的精度度量。MAPE和SMAPE的取值范围分别在0.1 ~ 0.2之间,小于12。得出的结论是,今年的结果是增加的性质,需要高度重视。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Suicide Trend Analysis and Prediction in India using Facebook Prophet
Suicide analysis is an area of vital importance to the National Institute of Mental Health and various other agencies working in the field of suicide prevention. Studying on this aspect helps to analyze the suicide pattern and trends that suicides follow over the years. This paper explores time-series data of the suicides that occurred in India to find whether there is a notable change in trend after a certain time point. A predictive approach is applied to forecast into the future of the suicide trend. The paper applies Facebook Prophet, a time-series prediction algorithm for drawing inferences and conclusions. The paper also suggests an inflection point algorithm that highlights the suicide trend between two points in time. Additionally, the model is also capable of predicting the trend for “n” number of years to come. We have used MAPE and SMAPE error techniques for accurate measurement. The mean absolute percentage error (MAPE) is a predictive accuracy measure while the symmetric mean absolute percentage error (SMAPE) is a percentage (or relative) error-dependent accuracy measure. The values of MAPE and SMAPE were found to be in the range of 0.1-0.2 and less than 12 respectively. The conclusion derived is that the result is an increasing nature in the current year and there is a need for utmost attention.
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