Patents by Inventor Ameya PATHARE

Ameya PATHARE 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).

  • Patent number: 12039553
    Abstract: Systems and methods for dynamically determining an optimal baseline algorithm for calculating lift values are disclosed. The system receives data associated with a control strategy, and then randomly selects a control location, a time period, and an item that may not be associated with the control strategy but meets the one or more criteria of the control strategy such as relevance and sales volume. Using the randomly selected inputs and a plurality of null baselines values determined by a plurality of null baseline algorithms, the system iteratively calculates a plurality of null lift values for each of the applied plurality of null baselines values to determine a likelihood for a false positive lift for each of the applied plurality of null baselines values. An optimal baseline algorithm is selected from the plurality of null baselines algorithms based on their corresponding likelihood of false positive lifts.
    Type: Grant
    Filed: July 5, 2022
    Date of Patent: July 16, 2024
    Assignee: MASTERCARD INTERNATIONAL INCORPORATED
    Inventors: Ameya Pathare, Brian Pujanauski, Simon Krauss, Jenna Kanterman, Cornelius Kaestner, Christopher Piccoli
  • Publication number: 20220335453
    Abstract: Systems and methods for dynamically determining an optimal baseline algorithm for calculating lift values are disclosed. The system receives data associated with a control strategy, and then randomly selects a control location, a time period, and an item that may not be associated with the control strategy but meets the one or more criteria of the control strategy such as relevance and sales volume. Using the randomly selected inputs and a plurality of null baselines values determined by a plurality of null baseline algorithms, the system iteratively calculates a plurality of null lift values for each of the applied plurality of null baselines values to determine a likelihood for a false positive lift for each of the applied plurality of null baselines values. An optimal baseline algorithm is selected from the plurality of null baselines algorithms based on their corresponding likelihood of false positive lifts.
    Type: Application
    Filed: July 5, 2022
    Publication date: October 20, 2022
    Applicant: Mastercard International Incorporated
    Inventors: Ameya Pathare, Brian Pujanauski, Simon Krauss, Jenna Kanterman, Cornelius Kaestner, Christopher Piccoli
  • Patent number: 11379860
    Abstract: Systems and methods for dynamically determining an optimal baseline algorithm for calculating lift values are disclosed. The system receives data associated with a control strategy, and then randomly selects a control location, a time period, and an item that may not be associated with the control strategy but meets the one or more criteria of the control strategy such as relevance and sales volume. Using the randomly selected inputs and a plurality of null baselines values determined by a plurality of null baseline algorithms, the system iteratively calculates a plurality of null lift values for each of the applied plurality of null baselines values to determine a likelihood for a false positive lift for each of the applied plurality of null baselines values. An optimal baseline algorithm is selected from the plurality of null baselines algorithms based on their corresponding likelihood of false positive lifts.
    Type: Grant
    Filed: January 19, 2017
    Date of Patent: July 5, 2022
    Assignee: MASTERCARD INTERNATIONAL INCORPORATED
    Inventors: Ameya Pathare, Brian Pujanauski, Simon Krauss, Jenna Kanterman, Cornelius Kaestner, Christopher Piccoli
  • Patent number: 10970263
    Abstract: The computer system and method described herein attempt to address the deficiencies by analyzing all relevant data points for each test and control location collectively determine outliers and then exclude the individual outlier data points from the data when analyzing an initiative during a relevant test period. Rather than exclude outliers at the site level, the particular time increment having the outlier data can be extracted and the site can remain in the analysis.
    Type: Grant
    Filed: October 29, 2018
    Date of Patent: April 6, 2021
    Assignee: Applied Predictive Technologies, Inc.
    Inventors: Jeffrey Campbell, Kai Fei, Stephen Kent, Ameya Pathare
  • Patent number: 10127255
    Abstract: The computer system and method described herein attempt to address the deficiencies by analyzing all relevant data points for each test and control location collectively determine outliers and then exclude the individual outlier data points from the data when analyzing an initiative during a relevant test period. Rather than exclude outliers at the site level, the particular time increment having the outlier data can be extracted and the site can remain in the analysis.
    Type: Grant
    Filed: October 7, 2015
    Date of Patent: November 13, 2018
    Assignee: Applied Predictive Technologies, Inc.
    Inventors: Jeffrey Campbell, Kai Fei, Stephen Kent, Ameya Pathare
  • Publication number: 20180204224
    Abstract: Systems and methods for dynamically determining an optimal baseline algorithm for calculating lift values are disclosed. The system receives data associated with a control strategy, and then randomly selects a control location, a time period, and an item that may not be associated with the control strategy but meets the one or more criteria of the control strategy such as relevance and sales volume. Using the randomly selected inputs and a plurality of null baselines values determined by a plurality of null baseline algorithms, the system iteratively calculates a plurality of null lift values for each of the applied plurality of null baselines values to determine a likelihood for a false positive lift for each of the applied plurality of null baselines values. An optimal baseline algorithm is selected from the plurality of null baselines algorithms based on their corresponding likelihood of false positive lifts.
    Type: Application
    Filed: January 19, 2017
    Publication date: July 19, 2018
    Inventors: Ameya PATHARE, Brian PUJANAUSKI, Simon KRAUSS, Jenna KANTERMAN, Cornelius KAESTNER, Christopher PICCOLI