Dynamic Pricing mit Künstlicher Intelligenz - Fallstudie aus dem Ride-Sharing-Markt
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- Patrick Bajari & Denis Nekipelov & Stephen P. Ryan & Miaoyu Yang, 2015. "Machine Learning Methods for Demand Estimation," American Economic Review, American Economic Association, vol. 105(5), pages 481-485, May.
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