Patents by Inventor Muhammad Oneeb Rehman Mian

Muhammad Oneeb Rehman Mian has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Publication number: 20240037123
    Abstract: Disclosed is a method for an intermediary mapping an de-identification comprising steps of retrieving datasets and meta data from a data source; selecting a target standard; mapping the retrieved datasets and the metadata to the target standard, wherein the datasets and the metadata are mapped to the target standard using one of, a schema mapping, a variable mapping, or a combination thereof; infer one or more of, variable classifications, variable connections, groupings, disclosure risk settings, and de-identification settings using the dataset mapping and metadata; perform a de-identification propagation using the mapped datasets, the mapped metadata, the inferred variable classifications, the inferred variable connections, the inferred groupings, the inferred disclosure risk settings, the inferred de-identification settings, or a combination thereof.
    Type: Application
    Filed: October 10, 2023
    Publication date: February 1, 2024
    Inventors: Muhammad Oneeb Rehman Mian, David Nicholas Maurice Di Valentino, George Wesley Bradley
  • Patent number: 11782956
    Abstract: Disclosed is a method for an intermediary mapping an de-identification comprising steps of retrieving datasets and meta data from a data source; selecting a target standard; mapping the retrieved datasets and the metadata to the target standard, wherein the datasets and the metadata are mapped to the target standard using one of, a schema mapping, a variable mapping, or a combination thereof; infer one or more of, variable classifications, variable connections, groupings, disclosure risk settings, and de-identification settings using the dataset mapping and metadata; perform a de-identification propagation using the mapped datasets, the mapped metadata, the inferred variable classifications, the inferred variable connections, the inferred groupings, the inferred disclosure risk settings, the inferred de-identification settings, or a combination thereof.
    Type: Grant
    Filed: October 20, 2021
    Date of Patent: October 10, 2023
    Assignee: PRIVACY ANALYTICS INC.
    Inventors: Muhammad Oneeb Rehman Mian, David Nicholas Maurice Di Valentino, George Wesley Bradley
  • Publication number: 20220129485
    Abstract: Disclosed is a method for an intermediary mapping an de-identification comprising steps of retrieving datasets and meta data from a data source; selecting a target standard; mapping the retrieved datasets and the metadata to the target standard, wherein the datasets and the metadata are mapped to the target standard using one of, a schema mapping, a variable mapping, or a combination thereof; infer one or more of, variable classifications, variable connections, groupings, disclosure risk settings, and de-identification settings using the dataset mapping and metadata; perform a de-identification propagation using the mapped datasets, the mapped metadata, the inferred variable classifications, the inferred variable connections, the inferred groupings, the inferred disclosure risk settings, the inferred de-identification settings, or a combination thereof.
    Type: Application
    Filed: October 20, 2021
    Publication date: April 28, 2022
    Inventors: Muhammad Oneeb Rehman Mian, David Nicholas Maurice Di Valentino, George Wesley Bradley
  • Publication number: 20210049282
    Abstract: Computing devices utilizing computer-readable media implement methods arranged for deriving risk contribution models from a dataset. Rather than inspect the entire data model in order to identify all quasi-identifying fields, the computing device develops a list of commonly-occurring but difficult-to-detect quasi-identifying fields. For each such field, the computing device creates a distribution of values/information values from other sources. Then, when risk measurement is performed, random simulated values (or information values) are selected for these fields. Quasi-identifying values are then selected for each field with multiplicity equal to the associated randomly-selected count. These are incorporated into the overall risk measurement and utilized in an anonymization process. In typical implementations, the overall average of re-identification risk measurement results prove to be generally consistent with the results which are obtained on the fully-classified data model.
    Type: Application
    Filed: August 12, 2020
    Publication date: February 18, 2021
    Inventors: David Nicholas Maurice Di Valentino, Muhammad Oneeb Rehman Mian