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PPA-Game: Characterizing and Learning Competitive Dynamics Among Online Content Creators

22 March 2024
Renzhe Xu
Haotian Wang
Xingxuan Zhang
Bo-wen Li
Peng Cui
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Abstract

We introduce the Proportional Payoff Allocation Game (PPA-Game) to model how agents, akin to content creators on platforms like YouTube and TikTok, compete for divisible resources and consumers' attention. Payoffs are allocated to agents based on heterogeneous weights, reflecting the diversity in content quality among creators. Our analysis reveals that although a pure Nash equilibrium (PNE) is not guaranteed in every scenario, it is commonly observed, with its absence being rare in our simulations. Beyond analyzing static payoffs, we further discuss the agents' online learning about resource payoffs by integrating a multi-player multi-armed bandit framework. We propose an online algorithm facilitating each agent's maximization of cumulative payoffs over TTT rounds. Theoretically, we establish that the regret of any agent is bounded by O(log⁡1+ηT)O(\log^{1 + \eta} T)O(log1+ηT) for any η>0\eta > 0η>0. Empirical results further validate the effectiveness of our approach.

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