Invention Grant
- Patent Title: Adaptable on-deployment learning platform for driver analysis output generation
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Application No.: US16580353Application Date: 2019-09-24
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Publication No.: US11620494B2Publication Date: 2023-04-04
- Inventor: Juan Carlos Aragon , Regina Madigan
- Applicant: Allstate Insurance Company
- Applicant Address: US IL Northbrook
- Assignee: Allstate Insurance Company
- Current Assignee: Allstate Insurance Company
- Current Assignee Address: US IL Northbrook
- Agency: Polsinelli PC
- Main IPC: G06N3/04
- IPC: G06N3/04 ; G06N3/08 ; H04L67/10 ; H04W76/10

Abstract:
Aspects of the disclosure relate to enhanced processing systems for providing dynamic driving metric outputs using improved machine learning methods. A computing platform may receive sensor data from vehicle sensors. The computing platform may generate a pattern deviation output corresponding to an output of a sensor data analysis model, an actual outcome associated with a lowest TTC value, and driving actions that occurred over a prediction horizon corresponding to the pattern deviation output. The computing platform may cluster the pattern deviation outputs to maximize a ratio of inter-cluster variance to intra-cluster variance. The computing platform may train a long short term memory (LSTM) for each cluster, and may verify consistency of the pattern deviation outputs in the respective clusters. After verifying the consistency of the pattern deviation outputs in each cluster, the computing platform may modify the sensor data analysis model to reflect pattern deviation outputs associated with verified consistency.
Public/Granted literature
- US20200097797A1 Adaptable On-Deployment Learning Platform for Driver Analysis Output Generation Public/Granted day:2020-03-26
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