Invention Grant
- Patent Title: Machine-learning techniques for monotonic neural networks
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Application No.: US16173427Application Date: 2018-10-29
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Publication No.: US10558913B1Publication Date: 2020-02-11
- Inventor: Matthew Turner , Lewis Jordan , Allan Joshua
- Applicant: Equifax Inc.
- Applicant Address: US GA Atlanta
- Assignee: EQUIFAX INC.
- Current Assignee: EQUIFAX INC.
- Current Assignee Address: US GA Atlanta
- Agency: Kilpatrick Townsend & Stockton LLP
- Main IPC: G06N3/08
- IPC: G06N3/08 ; G06N3/04

Abstract:
In some aspects, a computing system can generate and optimize a neural network for risk assessment. The neural network can be trained to enforce a monotonic relationship between each of the input predictor variables and an output risk indicator. The training of the neural network can involve solving an optimization problem under a monotonic constraint. This constrained optimization problem can be converted to an unconstrained problem by introducing a Lagrangian expression and by introducing a term approximating the monotonic constraint. Additional regularization terms can also be introduced into the optimization problem. The optimized neural network can be used both for accurately determining risk indicators for target entities using predictor variables and determining explanation codes for the predictor variables. Further, the risk indicators can be utilized to control the access by a target entity to an interactive computing environment for accessing services provided by one or more institutions.
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