使用深度学习技术的网站流量预测

Himaswi Nunnagoppula, Kusuma Katragadda, M. Ramesh
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引用次数: 0

摘要

今天,预测网站流量是一个巨大的关注,因为它可能会影响关键网站的运营。随着越来越多的人访问网站,它可能会崩溃或加载非常慢。这样的中断可能导致许多干扰。用户对该网站的评分随后下降,用户转向其他网站,这对业务产生了影响。网络流量是指访问者在网站上发送和接收的数据量,从历史上看,它构成了互联网流量的大部分。预测互联网流量的能力完全依赖于从许多监控网络流量的来源收集的历史和实时流量数据。该领域最棘手的问题之一是对未来时间序列值的预测。然而,目前已有大量的网络流量预测系统和模型,但大多数都是基于基础的流量模型,并不能完全令人满意。这促使我们重新审视基于深度学习的模型,以预测大量可用的互联网流量数据。本研究使用的数据集包含Hour Index和Sessions的信息,并将其输入CNN和LSTM时间序列预测模型。该研究比较了模型中差异的重要性,以确定哪种模型对接下来24小时的交通做出了更好的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Website Traffic Forecasting Using Deep Learning Techniques
Today, predicting website traffic is a huge concern since it could influence the operation of critical websites. With more people visiting the website, it can crash or load very slowly. Such interruptions could resultin numerous disturbances. Users’ ratings of the site have subsequently dropped, and users have switched to other sites, which has an impact on the business. Web traffic is the volume of data that visitors send and receive on a website, and historically, it has made up the majority of internet traffic. The ability to forecast internet traffic flow is totally dependent on historical and real-time traffic data collected from many sources that monitor network flow. One of the toughest issues in this area is the prediction of future time series values. However, there are already a lot of systems and models for predicting internet traffic flow,the majority of them use basic traffic models and are still not completely satisfactory. This motivates us to revisit the deep learning-based model for predicting internet traffic flow given the abundance of available internet traffic data. The dataset used in this study contains information on the Hour Index and Sessions, and it was fed into CNN and LSTM time series forecasting models. The study compares the significance of the differences in the model to determine which makes better predictions for the traffic over the following 24 hours.
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