TrueCar, Inc.
MACHINE LEARNING SYSTEMS AND METHODS FOR SELECTION, FILTERING OR PRESENTATION OF AVAILABLE SALES OUTLETS IN A DISTRIBUTED NETWORKED COMPUTING ENVIRONMENT

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Abstract:

Lead to recognition time delay data, leads and sales data, and lead distance data for leads arriving at a system within a time range can be used to determine a time variable close rate and a distance adjustment thereof which, in turn, can be used to generate a predicted close rate for each lead. Using the predicted close rate for each lead, an address drive distance for each lead, and dealer-level discount information, a logistic regression model can be trained to generate a score for each combination of a dealer, make, and zip code. Each score indicates a probability of closing a sale between a lead in the zip code and the dealer in the combination. Scores thus generated can be used by a computing facility in recommending dealers to a consumer in the zip code who has expressed an interest in purchasing a vehicle of the same make.

Status:
Application
Type:

Utility

Filling date:

1 Nov 2021

Issue date:

5 May 2022