TripleWin: Fixed-Point Equilibrium Pricing for Data-Model Coupled Markets

arXiv — cs.LGThursday, November 6, 2025 at 5:00:00 AM

TripleWin: Fixed-Point Equilibrium Pricing for Data-Model Coupled Markets

The introduction of TripleWin, a new pricing model for the intertwined markets of training datasets and pre-trained models, marks a significant advancement in the machine learning economy. This model addresses the limitations of traditional pricing approaches that often favor one side, ensuring a more balanced interaction among data sellers, model producers, and buyers. By promoting a simultaneous and symmetric mechanism, TripleWin could enhance fairness and efficiency in these markets, making it a noteworthy development for stakeholders in the ML field.
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