Towards a User Privacy-Aware Mobile Gaming App Installation Prediction Model
Ido Zehori, Nevo Itzhak, Yuval Shahar, Mia Dor Schiller

TL;DR
This paper explores privacy-preserving techniques for predicting mobile gaming app installs in real-time bidding systems, balancing user privacy with model effectiveness in digital advertising.
Contribution
It introduces a privacy-aware prediction model that operates without user-level data, addressing privacy threats and legal constraints in mobile advertising.
Findings
Privacy-preserving models can still effectively predict app installs.
Trade-offs exist between privacy protection and model accuracy.
Legal and ethical considerations influence data collection strategies.
Abstract
Over the past decade, programmatic advertising has received a great deal of attention in the online advertising industry. A real-time bidding (RTB) system is rapidly becoming the most popular method to buy and sell online advertising impressions. Within the RTB system, demand-side platforms (DSP) aim to spend advertisers' campaign budgets efficiently while maximizing profit, seeking impressions that result in high user responses, such as clicks or installs. In the current study, we investigate the process of predicting a mobile gaming app installation from the point of view of a particular DSP, while paying attention to user privacy, and exploring the trade-off between privacy preservation and model performance. There are multiple levels of potential threats to user privacy, depending on the privacy leaks associated with the data-sharing process, such as data transformation or…
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Taxonomy
TopicsPrivacy, Security, and Data Protection · Privacy-Preserving Technologies in Data · Human Mobility and Location-Based Analysis
MethodsOPT
