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Main Authors: Zhigalskii, Ivan, Pudovikov, Andrey, Katrutsa, Aleksandr, Samosvat, Egor
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.01825
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author Zhigalskii, Ivan
Pudovikov, Andrey
Katrutsa, Aleksandr
Samosvat, Egor
author_facet Zhigalskii, Ivan
Pudovikov, Andrey
Katrutsa, Aleksandr
Samosvat, Egor
contents Modern e-commerce platforms employ various auction mechanisms to allocate paid slots for a given item. To scale this approach to the millions of auctions, the platforms suggest promotion tools based on the autobidding algorithms. These algorithms typically depend on the Click-Through-Rate (CTR) and Conversion-Rate (CVR) estimates provided by a pre-trained machine learning model. However, the predictions of such models are uncertain and can significantly affect the performance of the autobidding algorithm. To address this issue, we propose the DenoiseBid method, which corrects the generated CTRs and CVRs to make the resulting bids more efficient in auctions. The underlying idea of our method is to employ a Bayesian approach and replace noisy CTR or CVR estimates with those from recovered distributions. To demonstrate the performance of the proposed approach, we perform extensive experiments on the synthetic, iPinYou, and BAT datasets. To evaluate the robustness of our approach to the noise scale, we use synthetic noise and noise estimated from the predictions of the pre-trained machine learning model.
format Preprint
id arxiv_https___arxiv_org_abs_2603_01825
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Uncertainty Quantification of Click and Conversion Estimates for the Autobidding
Zhigalskii, Ivan
Pudovikov, Andrey
Katrutsa, Aleksandr
Samosvat, Egor
Machine Learning
Computer Science and Game Theory
91B26, 68T05, 62C10
I.2.6; K.4.4
Modern e-commerce platforms employ various auction mechanisms to allocate paid slots for a given item. To scale this approach to the millions of auctions, the platforms suggest promotion tools based on the autobidding algorithms. These algorithms typically depend on the Click-Through-Rate (CTR) and Conversion-Rate (CVR) estimates provided by a pre-trained machine learning model. However, the predictions of such models are uncertain and can significantly affect the performance of the autobidding algorithm. To address this issue, we propose the DenoiseBid method, which corrects the generated CTRs and CVRs to make the resulting bids more efficient in auctions. The underlying idea of our method is to employ a Bayesian approach and replace noisy CTR or CVR estimates with those from recovered distributions. To demonstrate the performance of the proposed approach, we perform extensive experiments on the synthetic, iPinYou, and BAT datasets. To evaluate the robustness of our approach to the noise scale, we use synthetic noise and noise estimated from the predictions of the pre-trained machine learning model.
title Uncertainty Quantification of Click and Conversion Estimates for the Autobidding
topic Machine Learning
Computer Science and Game Theory
91B26, 68T05, 62C10
I.2.6; K.4.4
url https://arxiv.org/abs/2603.01825