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Predicting traffic of online advertising in real-time bidding systems from perspective of demand-side platforms

机译:从需求方平台的角度预测实时出价系统中在线广告的流量

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Online advertising has been all the rage these years. Budget control and traffic prediction turn out to be important issues for the demand-side platforms (DSPs). However, DSPs cannot easily grab the information of audiences and media platforms. Although DSPs might have the information immediately, it is still hard to response the request of advertisements in real-time due to the high volume of features. Therefore, we propose a method predicting traffic of requests from perspective of DSPs. The features we used are simple to be extracted from historical data. The prediction model we chose is regression model with closed-form solution. Both the features and regression model make our prediction adaptive in real-time systems. Our method can detect traffic anomalies and prevent it from overwhelming prediction. Moreover, our method can also keep pace of the trend. Experiment results show that our method's error rate of prediction is about 0.9% in total, and 10% per time unit.
机译:这些年来,在线广告风靡一时。预算控制和流量预测对于需求方平台(DSP)来说是重要的问题。但是,DSP无法轻松获取受众和媒体平台的信息。尽管DSP可能会立即获得信息,但由于功能众多,因此仍然难以实时响应广告请求。因此,我们提出了一种从DSP角度预测请求流量的方法。我们使用的功能很容易从历史数据中提取。我们选择的预测模型是带有闭式解的回归模型。特征和回归模型都使我们的预测适应实时系统。我们的方法可以检测流量异常并防止其压倒性的预测。而且,我们的方法还可以跟上潮流的步伐。实验结果表明,该方法的预测错误率总计约为0.9%,每时间单位为10%。

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