arXiv Open Access 2025

RARe: Raising Ad Revenue Framework with Context-Aware Reranking

Ekaterina Solodneva Alexandra Khirianova Aleksandr Katrutsa Roman Loginov Andrey Tikhanov +2 lainnya
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Abstrak

Modern recommender systems excel at optimizing search result relevance for e-commerce platforms. While maintaining this relevance, platforms seek opportunities to maximize revenue through search result adjustments. To address the trade-off between relevance and revenue, we propose the $\mathsf{RARe}$ ($\textbf{R}$aising $\textbf{A}$dvertisement $\textbf{Re}$venue) framework. $\mathsf{RARe}$ stacks a click model and a reranking model. We train the $\mathsf{RARe}$ framework with a loss function to find revenue and relevance trade-offs. According to our experience, the click model is crucial in the $\mathsf{RARe}$ framework. We propose and compare two different click models that take into account the context of items in a search result. The first click model is a Gradient-Boosting Decision Tree with Concatenation (GBDT-C), which includes a context in the traditional GBDT model for click prediction. The second model, SAINT-Q, adapts the Sequential Attention model to capture influences between search results. Our experiments indicate that the proposed click models outperform baselines and improve the overall quality of our framework. Experiments on the industrial dataset, which will be released publicly, show $\mathsf{RARe}$'s significant revenue improvements while preserving a high relevance.

Topik & Kata Kunci

Penulis (7)

E

Ekaterina Solodneva

A

Alexandra Khirianova

A

Aleksandr Katrutsa

R

Roman Loginov

A

Andrey Tikhanov

E

Egor Samosvat

Y

Yuriy Dorn

Format Sitasi

Solodneva, E., Khirianova, A., Katrutsa, A., Loginov, R., Tikhanov, A., Samosvat, E. et al. (2025). RARe: Raising Ad Revenue Framework with Context-Aware Reranking. https://arxiv.org/abs/2504.05308

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Informasi Jurnal
Tahun Terbit
2025
Bahasa
en
Sumber Database
arXiv
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Open Access ✓