Joint Auction Framework Adapts to Externalities, Enhancing Advertising Revenue

The increasing popularity of joint advertising, where brands and stores collaborate on ad placement, presents a significant opportunity to improve advertising revenue and efficiency, but current auction methods struggle to fully capture its potential. Chun Fang, Luowen Liu, and Kun Huang, along with their colleagues, address this challenge by introducing a new framework that accounts for the complex interplay between joint and traditional advertising auctions. Their work overcomes limitations in existing approaches by incorporating the influence of broader market factors, known as externalities, and adapting to the varied bidding strategies of multiple advertisers. This innovative approach, leveraging a system called JEANet, not only satisfies key economic principles like individual rationality and incentive compatibility, but also demonstrably outperforms existing methods in complex, multi-slot auction scenarios, paving the way for more effective and profitable advertising platforms.

Auction and Feed Ad Allocation Design

This research presents a deep learning approach to designing more effective and efficient auction mechanisms for feed-based advertising, focusing on integrating the auction and allocation processes to maximize revenue and improve user experience. Scientists leveraged machine learning to automatically design auction rules, rather than relying on traditional, hand-crafted methods. Deep learning models predict advertiser willingness to pay, optimize revenue, model how one ad impacts others, and capture complex relationships between advertisers, users, and ad placements. This system addresses the unique challenges of advertising within a continuous feed, where ad placement significantly impacts user engagement and revenue.

Hybrid Advertising Auctions with Externalities and Adaptation

Scientists engineered a novel Joint Auction Framework incorporating Externalities and Adaptation, alongside a computational tool called JEANet, to address limitations in current advertising auction mechanisms. Recognizing that traditional approaches struggle to integrate both joint and traditional advertising formats, the team designed a system that accounts for the complex interplay between brand suppliers, stores, and platform revenue. The core innovation lies in the ability to model global externalities and optimize revenue while maintaining user experience. JEANet, the automated mechanism design tool, computes auction mechanisms that satisfy individual rationality and approximate dominant strategy incentive compatibility, ensuring fairness and encouraging truthful bidding.

Joint Advertising Framework Boosts Revenue and Efficiency

Scientists developed a novel Joint Auction Framework incorporating Externalities and Adaptation, designed to enhance revenue and efficiency in advertising slot allocation. This work addresses limitations in existing auction mechanisms that struggle to accommodate both joint and traditional advertising formats. The team’s approach tackles the challenges posed by global externalities and the variability in bidding behavior from multiple advertisers. Experiments demonstrate that the new framework, implemented through JEANet, outperforms state-of-the-art baseline methods in multi-slot joint auctions. Analysis of bid distributions revealed significant differences between store, brand, and joint advertisers, highlighting the need for an adaptive mechanism.

Joint Advertising Auctions via Reinforcement Learning

Researchers have developed a novel framework, JEANet, to improve the efficiency of advertising auctions, particularly those involving joint advertising arrangements. This work addresses limitations in existing auction designs, which often struggle to incorporate the complex interplay between collaborative and traditional advertising and fail to account for the broader impact of these arrangements on overall revenue. JEANet dynamically adapts to the bidding behaviour of advertisers and integrates both joint and traditional advertising within a unified auction system. Extensive experiments demonstrate that JEANet consistently outperforms current state-of-the-art auction methods in multi-slot joint advertising scenarios.

👉 More information
🗞 A Joint Auction Framework with Externalities and Adaptation
🧠 ArXiv: https://arxiv.org/abs/2512.15043

Rohail T.

Rohail T.

As a quantum scientist exploring the frontiers of physics and technology. My work focuses on uncovering how quantum mechanics, computing, and emerging technologies are transforming our understanding of reality. I share research-driven insights that make complex ideas in quantum science clear, engaging, and relevant to the modern world.

Latest Posts by Rohail T.:

Drive-Jepa Achieves Multimodal Driving with Video Pretraining and Single Trajectories

Drive-Jepa Achieves Multimodal Driving with Video Pretraining and Single Trajectories

February 1, 2026
Leviathan Achieves Superior Language Model Capacity with Sub-Billion Parameters

Leviathan Achieves Superior Language Model Capacity with Sub-Billion Parameters

February 1, 2026
Geonorm Achieves Consistent Performance Gains over Existing Normalization Methods in Models

Geonorm Achieves Consistent Performance Gains over Existing Normalization Methods in Models

February 1, 2026