Defection-Free Collaboration between Competitors in a Learning System
We study collaborative learning systems in which the participants are competitors who will defect from the system if they lose revenue by collaborating. As such, we frame the system as a duopoly of competitive firms who are each engaged in training machine-learning models and selling their predictio...
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Zusammenfassung: | We study collaborative learning systems in which the participants are
competitors who will defect from the system if they lose revenue by
collaborating. As such, we frame the system as a duopoly of competitive firms
who are each engaged in training machine-learning models and selling their
predictions to a market of consumers. We first examine a fully collaborative
scheme in which both firms share their models with each other and show that
this leads to a market collapse with the revenues of both firms going to zero.
We next show that one-sided collaboration in which only the firm with the
lower-quality model shares improves the revenue of both firms. Finally, we
propose a more equitable, *defection-free* scheme in which both firms share
with each other while losing no revenue, and we show that our algorithm
converges to the Nash bargaining solution. |
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DOI: | 10.48550/arxiv.2406.15898 |