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An Industrial Application of Data Mining Techniques to Enhance the Effectiveness of On-Line Advertising

机译:数据挖掘技术的工业应用,提升在线广告的有效性

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Nowadays, online behavioural targeting is one of the most popular and profitable business strategies on the display advertising. It is based on data analysis of web user behaviours with the usage of machine learning aiming to optimise web advertising. The objective of this paper is to identify consumers who have no previously observed an advert but are "possible prospects" more likely to purchase an advertisement's product. By identifying prospect customers, online advertisers may be able to optimise campaign performance, maximise their revenue as well as deliver advertisements tailored to a variety of user interests. Our work presents various benchmark machine-learning algorithms and attribute pre-processing techniques in the context of behavioural targeting. The performance of the experiments is evaluated using the key performance metric which is the predicted conversion rate. Our experimental results indicate that the presented data mining framework can significantly identify prospect customers in the vast majority of cases. Our results seem promising, indicating that there is a need for further studies in the area of data mining in online display advertising.
机译:如今,在线行为目标是显示广告上最受欢迎和最有利可图的业务战略之一。它基于Web用户行为的数据分析,利用机器学习旨在优化Web广告。本文的目的是识别未以前观察过广告的消费者,但更有可能购买广告产品的“可能的前景”。通过识别前景客户,在线广告商可能能够优化竞选表现,最大限度地提高他们的收入,以及为各种用户兴趣量身定制的广告。我们的工作在行为目标的背景下呈现了各种基准机器学习算法和属性预处理技术。使用预测的转换速率的关键性能度量来评估实验的性能。我们的实验结果表明,呈现的数据挖掘框架可以在绝大多数案例中显着识别前景客户。我们的结果似乎很有希望,表明在线显示广告中的数据挖掘领域需要进一步研究。

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