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2021 | OriginalPaper | Chapter

Calibrated Viewability Prediction for Premium Inventory Expansion

Authors : Jonathan Schler, Allon Hammer

Published in: Information Management and Big Data

Publisher: Springer International Publishing

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Abstract

Billions of ads are displayed on a daily basis, making it a multi-billion industry. Most of web pages contain multiple ads, which are largely served in real time using a bidding process where buyers (advertisers) offer a price tag to the seller (publishers) for each given possible ad on the page. There are multiple factors that impact an ad price, one of the primary ones is the ad-location’s viewability likelihood. Due to the length of many web pages, certain ad locations are invisible to the visiting user, as he may not scroll far enough on the page to where the ads are placed. According to recent industry metrics, less than 60% of ads are viewable. This poses a challenge to both: buyers and sellers. Buyers want to optimize the likelihood they buy an ad that will be viewed, while sellers want to maximize ad prices (by setting higher floor prices) by providing as many possible ad placements with high viewability probability. This paper addresses the viewability prediction from the publisher’s side, and proposes a novel algorithm based on cascading gradient boosting. The algorithm enables sellers to predict an accurate viewability probability for ad impressions, which is optimized to match the actual viewability rate that will be measured for the served ads. Unlike other algorithms that optimize these problems to an average minimal difference from a central mean error, we propose an algorithm that increases the amount of extreme cases - which are the most valuable ones, thus expanding the premium ad inventory. We evaluate the algorithm on two datasets with a total of over 500 million impressions. We found that the algorithm outperforms other viewability prediction algorithms, works well for publishers while providing a measurable fairness metric to advertisers.

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Appendix
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Footnotes
1
As shown in [6].
 
2
Predicting very low probability is also useful for some publishers, for example by using it for campaigns that are based on pay per impression (and are not interested in clicks). These campaigns are for example about brand awareness and do not require high viewability, therefore the total ad inventory could be better utilized.
 
3
Closer to zero in case of a negative label, and closer to one when the label is positive.
 
4
A two-proportion-z-test was conducted (p-value > 0.05) to show that the proportions are indeed comparable to IAB [7] accredited viewability measures on those sites.
 
5
Since some of the features are real-time aggregated features, splitting by time-stamp is used to avoid information leakage. These results were reproduced with different cutoffs to avoid time-based bias. Using K-fold cross validation is not suitable for this matter.
 
6
The Probabilistic Latent Class (PLC) model presented in [14] was not added to the comparison, since it does not suit to our problem. Main reason is that our data consists of many first time users (without history) and hence can’t build a user level prior.
 
7
A Diebold-Mariano [2] test for statistical significance was conducted on \(RMSE_{agg}\) of the Baseline compared to CGB. The test yielded \(P_{value}>0.05\) suggesting no significant difference in the \(RMSE_{agg}\) between the Baseline and CGB.
 
Literature
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go back to reference Wang, C., Kalra, A., Borcea, C., Chen, Y.: Webpage depth-level dwell time prediction. In: Proceedings of the 25th ACM International on Conference on Information and Knowledge Management (CIKM’16), pp. 1937–1940. Association for Computing Machinery, New York, NY, USA (2016). https://doi.org/10.1145/2983323.2983878 Wang, C., Kalra, A., Borcea, C., Chen, Y.: Webpage depth-level dwell time prediction. In: Proceedings of the 25th ACM International on Conference on Information and Knowledge Management (CIKM’16), pp. 1937–1940. Association for Computing Machinery, New York, NY, USA (2016). https://​doi.​org/​10.​1145/​2983323.​2983878
Metadata
Title
Calibrated Viewability Prediction for Premium Inventory Expansion
Authors
Jonathan Schler
Allon Hammer
Copyright Year
2021
DOI
https://doi.org/10.1007/978-3-030-76228-5_29

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