-
公开(公告)号:US20220383033A1
公开(公告)日:2022-12-01
申请号:US17303427
申请日:2021-05-28
Applicant: Oracle International Corporation
Inventor: John Frederick Courtney , Guang Chao Wang , Matthew Torin Gerdes , Kenny C. Gross
IPC: G06K9/62
Abstract: Techniques for generating imputation-based, uniformly sampled parallel streams of time-series data are disclosed. A system divides into two subsets a dataset made up of multiple data streams. The data streams include interpolated data. The system trains one data correlation model using one subset of the data and applies the trained model to the other subset. The system replaces the interpolated values in the other subset with estimated values generated by the model. The system trains another data correlation model using the revised subset. The system applies the new model to the initial subset to generate estimated values for the initial subset. The system replaces the interpolated values in the initial subset with the estimated values. The system repeats the process of training data correlation models and revising previously-interpolated data points in the subsets of data until a predetermined iteration threshold is met.
-
公开(公告)号:US20220237509A1
公开(公告)日:2022-07-28
申请号:US17379937
申请日:2021-07-19
Applicant: Oracle International Corporation
Inventor: John Frederick Courtney , Kenneth Paul Baclawski , Dieter Gawlick , Kenny C. Gross , Guang Chao Wang , Anna Chystiakova , Richard Paul Sonderegger , Zhen Hua Liu
Abstract: Techniques for providing decision rationales for machine-learning guided processes are described herein. In some embodiments, the techniques described herein include processing queries for an explanation of an outcome of a set of one or more decisions guided by one or more machine-learning processes with supervision by at least one human operator. Responsive to receiving the query, a system determines, based on a set of one or more rationale data structures, whether the outcome was caused by human operator error or the one or more machine-learning processes. The system then generates a query response indicating whether the outcome was caused by the human operator error or the one or more machine-learning processes.
-