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Web Traffic Time Series Forecasting using ARIMA and LSTM RNN

机译:使用Arima和LSTM RNN的Web交通时间序列预测

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摘要

Nowadays, web traffic forecasting is a major problem as this can cause setbacks to the workings of major websites. Time-series forecasting has been a hot topic for research. Predicting future time series values is one of the most difficult problems in the industry. The time series field encompasses many different issues, ranging from inference and analysis to forecasting and classification. Forecasting the network traffic and displaying it in a dashboard that updates in real-time would be the most efficient way to convey the information. Creating a Dashboard would help in monitoring and analyzing real-time data. In this day and age, we are too dependent on Google server but if we want to host a server for large users we could have predicted the number of users from previous years to avoid server breakdown. Time Series forecasting is crucial to multiple domains. ARIMA; LSTM RNN; web traffic; prediction;time series;
机译:如今,Web流量预测是一个主要问题,因为这可能导致主要网站的运作挫折。时间系列预测一直是研究的热门话题。预测未来时间序列值是该行业中最困难的问题之一。时间序列字段包含许多不同的问题,从推断和分析到预测和分类。预测网络流量并在仪表板中显示它,即实时更新将是传达信息的最有效方式。创建仪表板将有助于监控和分析实时数据。在这一天和年龄,我们太依赖了Google服务器,但如果我们想要为大型用户托管服务器,我们本可以预测前几年的用户数以避免服务器故障。时间序列预测对多个域来说至关重要。阿玛玛; LSTM RNN; Web流量;预测;时间序列;

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