A Comparative Study on the Time Series Models for Forecasting Facebook Reactions

Yong Poh Yu, Khai Lone Lim, T. Lim
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Abstract

The Facebook reactions were used over 300 billion times during their first year of existence. Research on reaction activity is essential especially for the digital marketing purpose. The market needs to understand how Facebook reactions fluctuate to forecast the best period to post advertisements on Facebook that yields the highest number of reactions. In this study, several time-series models are used to forecast the number of Facebook reactions over a certain period for different domains. A comparative study is done to evaluate the performance of each model, in terms of strengths and weaknesses. Keywords: Forecasting, Facebook reactions, time series model, ARIMA, SARIMA
预测Facebook反应的时间序列模型比较研究
Facebook上的反应在第一年就被使用了超过3000亿次。对反应活性的研究对于数字营销来说尤为重要。市场需要了解Facebook的反应如何波动,以预测在Facebook上发布广告的最佳时期,从而产生最多的反应。在这项研究中,几个时间序列模型被用来预测Facebook在一段时间内对不同领域的反应数量。通过比较研究,对每个模型的优缺点进行了评价。关键词:预测,Facebook反应,时间序列模型,ARIMA, SARIMA
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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