Adobe Inc.
UTILIZING MACHINE LEARNING TO GENERATE PARAMETRIC DISTRIBUTIONS FOR DIGITAL BIDS IN A REAL-TIME DIGITAL BIDDING ENVIRONMENT

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Abstract:

The present disclosure relates to generating digital bids for providing digital content to remote client devices based on parametric bid distributions generated using a machine learning model (e.g., a mixture density network). For example, in response to identifying a digital bid request in a real-time bidding environment, the disclosed systems can utilize a trained parametric censored machine learning model to generate a parametric bid distribution. To illustrate, the disclosed systems can utilize a parametric censored, mixture density machine learning model to analyze bid request characteristics and generate a parametric, multi-modal distribution reflecting a plurality of parametric means, parametric variances, and combination weights. The disclosed systems can then utilize the parametric, multi-modal distribution to generate digital bids in response to the digital bid request in real-time (e.g., while a client device accesses digital assets corresponding to the bid request).

Status:
Application
Type:

Utility

Filling date:

15 Jan 2019

Issue date:

16 Jul 2020