Personalising Mobile Advertising Based on Users Installed Apps
Jenna Reps, Uwe Aickelin, Jonathan Garibaldi, Chris Damski

TL;DR
This study explores using unsupervised learning and association rule mining to personalize mobile advertising based on installed apps, aiming to increase user interaction rates through targeted ad delivery.
Contribution
It introduces a novel approach combining user profiling via clustering and association rules to enhance mobile ad targeting effectiveness.
Findings
Distinct user profiles interact differently with ad genres
Time of day influences profile-ad interaction likelihood
Profile-based targeting can improve ad engagement
Abstract
Mobile advertising is a billion pound industry that is rapidly expanding. The success of an advert is measured based on how users interact with it. In this paper we investigate whether the application of unsupervised learning and association rule mining could be used to enable personalised targeting of mobile adverts with the aim of increasing the interaction rate. Over May and June 2014 we recorded advert interactions such as tapping the advert or watching the whole advert video along with the set of apps a user has installed at the time of the interaction. Based on the apps that the users have installed we applied k-means clustering to profile the users into one of ten classes. Due to the large number of apps considered we implemented dimension reduction to reduced the app feature space by mapping the apps to their iTunes category and clustered users based on the percentage of their…
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Taxonomy
Methodsk-Means Clustering
