TL;DR
This paper presents a practical framework for evaluating bid prediction models in large-scale online advertising, emphasizing ROI as a key metric and proposing a robust online evaluation method to improve model comparison and campaign efficiency.
Contribution
It introduces an ROI-based evaluation framework and a meta-analysis approach for more accurate, reliable, and faster online model assessment in complex advertising environments.
Findings
ROI is a more effective success metric than CTR or CVR.
The proposed evaluation method yields statistically robust conclusions.
Experiments demonstrate improved model comparison reliability.
Abstract
Online media provides opportunities for marketers through which they can deliver effective brand messages to a wide range of audiences. Advertising technology platforms enable advertisers to reach their target audience by delivering ad impressions to online users in real time. In order to identify the best marketing message for a user and to purchase impressions at the right price, we rely heavily on bid prediction and optimization models. Even though the bid prediction models are well studied in the literature, the equally important subject of model evaluation is usually overlooked. Effective and reliable evaluation of an online bidding model is crucial for making faster model improvements as well as for utilizing the marketing budgets more efficiently. In this paper, we present an experimentation framework for bid prediction models where our focus is on the practical aspects of model…
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