Patents Examined by Paul Gordon Smith
  • Patent number: 11531915
    Abstract: Herein are techniques to generate candidate rulesets for machine learning (ML) explainability (MLX) for black-box ML models. In an embodiment, an ML model generates classifications that each associates a distinct example with a label. A decision tree that, based on the classifications, contains tree nodes is received or generated. Each node contains label(s), a condition that identifies a feature of examples, and a split value for the feature. When a node has child nodes, the feature and the split value that are identified by the condition of the node are set to maximize information gain of the child nodes. Candidate rules are generated by traversing the tree. Each rule is built from a combination of nodes in a tree traversal path. Each rule contains a condition of at least one node and is assigned to a rule level. Candidate rules are subsequently optimized into an optimal ruleset for actual use.
    Type: Grant
    Filed: March 20, 2019
    Date of Patent: December 20, 2022
    Assignee: Oracle International Corporation
    Inventors: Tayler Hetherington, Zahra Zohrevand, Onur Kocberber, Karoon Rashedi Nia, Sam Idicula, Nipun Agarwal