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Main Authors: Khirianova, Alexandra, Solodneva, Ekaterina, Pudovikov, Andrey, Osokin, Sergey, Samosvat, Egor, Dorn, Yuriy, Ledovsky, Alexander, Zenkova, Yana
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2505.08485
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author Khirianova, Alexandra
Solodneva, Ekaterina
Pudovikov, Andrey
Osokin, Sergey
Samosvat, Egor
Dorn, Yuriy
Ledovsky, Alexander
Zenkova, Yana
author_facet Khirianova, Alexandra
Solodneva, Ekaterina
Pudovikov, Andrey
Osokin, Sergey
Samosvat, Egor
Dorn, Yuriy
Ledovsky, Alexander
Zenkova, Yana
contents The optimization of bidding strategies for online advertising slot auctions presents a critical challenge across numerous digital marketplaces. A significant obstacle to the development, evaluation, and refinement of real-time autobidding algorithms is the scarcity of comprehensive datasets and standardized benchmarks. To address this deficiency, we present an auction benchmark encompassing the two most prevalent auction formats. We implement a series of robust baselines on a novel dataset, addressing the most salient Real-Time Bidding (RTB) problem domains: budget pacing uniformity and Cost Per Click (CPC) constraint optimization. This benchmark provides a user-friendly and intuitive framework for researchers and practitioners to develop and refine innovative autobidding algorithms, thereby facilitating advancements in the field of programmatic advertising. The implementation and additional resources can be accessed at the following repository (https://github.com/avito-tech/bat-autobidding-benchmark, https://doi.org/10.5281/zenodo.14794182).
format Preprint
id arxiv_https___arxiv_org_abs_2505_08485
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle BAT: Benchmark for Auto-bidding Task
Khirianova, Alexandra
Solodneva, Ekaterina
Pudovikov, Andrey
Osokin, Sergey
Samosvat, Egor
Dorn, Yuriy
Ledovsky, Alexander
Zenkova, Yana
Artificial Intelligence
Machine Learning
91B26
The optimization of bidding strategies for online advertising slot auctions presents a critical challenge across numerous digital marketplaces. A significant obstacle to the development, evaluation, and refinement of real-time autobidding algorithms is the scarcity of comprehensive datasets and standardized benchmarks. To address this deficiency, we present an auction benchmark encompassing the two most prevalent auction formats. We implement a series of robust baselines on a novel dataset, addressing the most salient Real-Time Bidding (RTB) problem domains: budget pacing uniformity and Cost Per Click (CPC) constraint optimization. This benchmark provides a user-friendly and intuitive framework for researchers and practitioners to develop and refine innovative autobidding algorithms, thereby facilitating advancements in the field of programmatic advertising. The implementation and additional resources can be accessed at the following repository (https://github.com/avito-tech/bat-autobidding-benchmark, https://doi.org/10.5281/zenodo.14794182).
title BAT: Benchmark for Auto-bidding Task
topic Artificial Intelligence
Machine Learning
91B26
url https://arxiv.org/abs/2505.08485