Predictive data analysis techniques using graph-based code recommendation machine learning models
Assignee
Optum Technology, Inc.
Inventors
Nilav Baran Ghosh, Abhilash Sivva, Srikanth B. Adibhatla
Abstract
Solutions for more efficient and effective predictive code recommendation are disclosed. In one example, a method includes identifying a graph-based code recommendation machine learning model, wherein each inferred edge weight value of the graph-based code recommendation machine learning model is updated based at least in part on each compressed forward-adjusted temporal distance measure for an observed co-occurrence of any observed co-occurrences of a predictive code pair for the inferred edge weight value within one or more temporally-proximate occurrence subsets determined based at least in part on a plurality of training predictive code occurrences; processing the input predictive code using the graph-based code recommendation machine learning model to generate one or more related codes of the plurality of predictive codes for the input predictive code; and performing one or more prediction-based actions based at least in part on the one or more related codes.
CPC Classifications
Filing Date
2021-03-18
Application No.
17205704
Claims
20