Multi-Agent Cooperative Bidding Games for Multi-Objective Optimization in e-Commercial Sponsored Search
Ziyu Guan, Hongchang Wu, Qingyu Cao, Hao Liu, Wei Zhao, Sheng Li, Cai, Xu, Guang Qiu, Jian Xu, Bo Zheng

TL;DR
This paper introduces MACG, a multi-agent cooperative bidding framework for multi-objective online advertising optimization that effectively balances individual and platform goals while preventing collusion.
Contribution
The paper proposes a novel multi-objective cooperative bidding game with a theoretical analysis and an evolutionary strategy for improved bid optimization in complex advertising environments.
Findings
Significant improvement in advertiser objectives and platform profit in experiments.
Effective prevention of collusion through platform revenue constraints.
Successful deployment and testing on the Taobao platform.
Abstract
Bid optimization for online advertising from single advertiser's perspective has been thoroughly investigated in both academic research and industrial practice. However, existing work typically assume competitors do not change their bids, i.e., the wining price is fixed, leading to poor performance of the derived solution. Although a few studies use multi-agent reinforcement learning to set up a cooperative game, they still suffer the following drawbacks: (1) They fail to avoid collusion solutions where all the advertisers involved in an auction collude to bid an extremely low price on purpose. (2) Previous works cannot well handle the underlying complex bidding environment, leading to poor model convergence. This problem could be amplified when handling multiple objectives of advertisers which are practical demands but not considered by previous work. In this paper, we propose a novel…
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Taxonomy
TopicsConsumer Market Behavior and Pricing · Auction Theory and Applications · Innovation Diffusion and Forecasting
