Real-time bidding has transformed the digital advertising landscape, allowing companies to buy website advertising space in a matter of milliseconds in the time it takes a webpage to load. Joint research between Cardiff University and Crimtan has employed statistical modelling in conjunction with machine-learning techniques on big data to develop computer algorithms that can select the most appropriate person to which an ad should be shown. These algorithms have been used to identify suitable bidding strategies for that particular advert in order to make the whole process as profitable as possible for businesses. Crimtan's use of the algorithms have enabled them to improve the service that they offer to clients, save money, make significant efficiency gains and attract new business. This has had a knock-on effect with the clients themselves, who have reported an increase in conversion rates as a result of more targeted, accurate and informed advertising. We have also used mixed Poisson processes for modelling for analysing repeat-buying behaviour of online customers. To make numerical comparisons, we use real data collected by Crimtan in the process of running several recent ad campaigns.
翻译:实时招标改变了数字广告格局,允许公司在上网时以毫秒的速度购买网站广告空间。卡迪夫大学和克里姆丹公司的联合研究结合大数据机学习技术,采用了统计模型,开发计算机算法,可以选择最合适的广告对象。这些算法被用来为这一特定广告确定适当的投标战略,以使整个过程尽可能为商业盈利。克里姆丹公司使用算法,使它们得以改进向客户提供的服务,节省资金,大幅提高效率并吸引新企业。这对客户本身产生了敲击效应,客户自己报告说,由于更有针对性的、准确的和知情的广告,转换率有所提高。我们还利用混合的Poisson程序来模拟分析网上客户的重复购买行为。为了进行数字比较,我们利用Crimtan公司最近几次广告活动过程中收集的真实数据。