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Prediction Model of Optimal Bid Price Based on Keyword Auction Data Through Machine Learning Algorithms

机译:基于计算机学习算法的关键字拍卖数据的最佳出价预测模型

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The RTB system is a bidding system for advertising in a specific area of on-line page. A typical RTB bidding system is a system provided by Google's search engine. In this paper, we use the data of the Naver advertisement bidding, a representative Korean search engine operated by a private bidding for the RTB system. Especially, in case of online keyword advertisement, the rank can be important factor the online page when a user enters a certain keyword into a search engine. For example, if a search keyword is ranked at the top of an online page, the probability of bid being directly connected will be increased for the link of related keyword. Therefore, the bid price of the keyword is changed according to the rank of the search keyword. In the end, it is necessary to find an appropriate bid price for registering a keyword in a private bid system. In this paper, we propose a prediction modeling mechanism to predict optimal bid price of the keyword in a specific ranking of search engine. In order to predict the optimal bid price and advertising ranking on the online page, we perform feature engineering on the related data set and define the prediction model using the machine learning algorithms for the corresponding data set.
机译:RTB系统是用于在线页面的特定区域广告的竞标系统。典型的RTB竞标系统是Google搜索引擎提供的系统。在本文中,我们使用Naver广告竞标的数据,由RTB系统的私人投标操作的代表韩国搜索引擎。特别是,在联机关键字广告的情况下,当用户将特定关键字进入搜索引擎时,秩可以是在线页面的重要因素。例如,如果搜索关键字在在线页面的顶部排列,则会增加相关关键字的链接的出价直接连接的概率。因此,根据搜索关键字的等级更改关键字的出价。最终,有必要找到适当的出价,用于在私有投标系统中注册关键字。在本文中,我们提出了一种预测建模机制,以预测搜索引擎的特定排名中关键字的最佳出价。为了预测在线页面上的最佳出价和广告排名,我们在相关数据集上执行功能工程,并使用机器学习算法为相应的数据集定义预测模型。

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