Patents by Inventor Wayne DeCesaris
Wayne DeCesaris 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).
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Patent number: 12008484Abstract: Systems, methods, and apparatuses for determining feature importance of analytics data in predicting a response value include receiving data records, each data record including a response value and values of features associated with the response value; splitting the data records into datasets, each dataset including a part of the data records; generating a machine learning model using each of the datasets, the machine learning model outputting one or more predicting features having influence in predicting the response value for each of the datasets; determining an important feature based on the one or more predicting features; and generating report data indicating that a business metric associated with the important feature has the highest predicted influence among the features on predicting the response value.Type: GrantFiled: August 4, 2022Date of Patent: June 11, 2024Assignee: CAPITAL ONE SERVICES, LLCInventors: Yasong Zhou, Wayne Decesaris, Esmat Zare
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Patent number: 11941524Abstract: Methods and computer-readable media for repeated holdout validation include collecting independent data representing independent variables; collecting dependent data representing a dependent variable; correlating the independent data with the dependent data; creating a data set comprising the correlated independent and dependent data; generating a plurality of unique seeds; creating a plurality of training sets and a plurality of validation sets; associating each training set with a single validation set; training the neural network a plurality of times with the training sets and seeds to create a plurality of models; calculating accuracy metric values for the models using the validation sets associated with the training sets used to create respective models; performing a statistical analysis of the accuracy metric values; and ranking the independent variables by a strength of correlation of individual independent variables with the dependent variable, when a metric of the statistical analysis exceeds a thresType: GrantFiled: August 30, 2022Date of Patent: March 26, 2024Assignee: CAPITAL ONE SERVICES, LLCInventors: Esmat Zare, Yasong Zhou, Wayne Decesaris
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Publication number: 20220414471Abstract: Methods and computer-readable media for repeated holdout validation include collecting independent data representing independent variables; collecting dependent data representing a dependent variable; correlating the independent data with the dependent data; creating a data set comprising the correlated independent and dependent data; generating a plurality of unique seeds; creating a plurality of training sets and a plurality of validation sets; associating each training set with a single validation set; training the neural network a plurality of times with the training sets and seeds to create a plurality of models; calculating accuracy metric values for the models using the validation sets associated with the training sets used to create respective models; performing a statistical analysis of the accuracy metric values; and ranking the independent variables by a strength of correlation of individual independent variables with the dependent variable, when a metric of the statistical analysis exceeds a thresType: ApplicationFiled: August 30, 2022Publication date: December 29, 2022Inventors: Esmat ZARE, Yasong ZHOU, Wayne DECESARIS
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Publication number: 20220374743Abstract: Systems, methods, and apparatuses for determining feature importance of analytics data in predicting a response value include receiving data records, each data record including a response value and values of features associated with the response value; splitting the data records into datasets, each dataset including a part of the data records; generating a machine learning model using each of the datasets, the machine learning model outputting one or more predicting features having influence in predicting the response value for each of the datasets; determining an important feature based on the one or more predicting features; and generating report data indicating that a business metric associated with the important feature has the highest predicted influence among the features on predicting the response value.Type: ApplicationFiled: August 4, 2022Publication date: November 24, 2022Inventors: Yasong ZHOU, Wayne DECESARIS, Esmat ZARE
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Patent number: 11461646Abstract: Methods and computer-readable media for repeated holdout validation include collecting independent data representing independent variables; collecting dependent data representing a dependent variable; correlating the independent data with the dependent data; creating a data set comprising the correlated independent and dependent data; generating a plurality of unique seeds; creating a plurality of training sets and a plurality of validation sets; associating each training set with a single validation set; training the neural network a plurality of times with the training sets and seeds to create a plurality of models; calculating accuracy metric values for the models using the validation sets associated with the training sets used to create respective models; performing a statistical analysis of the accuracy metric values; and ranking the independent variables by a strength of correlation of individual independent variables with the dependent variable, when a metric of the statistical analysis exceeds a thresType: GrantFiled: December 5, 2019Date of Patent: October 4, 2022Assignee: CAPITAL ONE SERVICES, LLCInventors: Esmat Zare, Yasong Zhou, Wayne Decesaris
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Patent number: 11443207Abstract: Systems, methods, and apparatuses for determining feature importance of analytics data in predicting a response value include receiving data records, each data record including a response value and values of features associated with the response value; splitting the data records into datasets, each dataset including a part of the data records; generating a machine learning model using each of the datasets, the machine learning model outputting one or more predicting features having influence in predicting the response value for each of the datasets; determining an important feature based on the one or more predicting features; and generating report data indicating that a business metric associated with the important feature has the highest predicted influence among the features on predicting the response value.Type: GrantFiled: March 12, 2020Date of Patent: September 13, 2022Assignee: CAPITAL ONE SERVICES, LLCInventors: Yasong Zhou, Wayne Decesaris, Esmat Zare
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Publication number: 20210287111Abstract: Systems, methods, and apparatuses for determining feature importance of analytics data in predicting a response value include receiving data records, each data record including a response value and values of features associated with the response value; splitting the data records into datasets, each dataset including a part of the data records; generating a machine learning model using each of the datasets, the machine learning model outputting one or more predicting features having influence in predicting the response value for each of the datasets; determining an important feature based on the one or more predicting features; and generating report data indicating that a business metric associated with the important feature has the highest predicted influence among the features on predicting the response value.Type: ApplicationFiled: March 12, 2020Publication date: September 16, 2021Applicant: Capital One Services, LLCInventors: Yasong ZHOU, Wayne DECESARIS, Esmat ZARE
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Publication number: 20210174192Abstract: Methods and computer-readable media for repeated holdout validation include collecting independent data representing independent variables; collecting dependent data representing a dependent variable; correlating the independent data with the dependent data; creating a data set comprising the correlated independent and dependent data; generating a plurality of unique seeds; creating a plurality of training sets and a plurality of validation sets; associating each training set with a single validation set; training the neural network a plurality of times with the training sets and seeds to create a plurality of models; calculating accuracy metric values for the models using the validation sets associated with the training sets used to create respective models; performing a statistical analysis of the accuracy metric values; and ranking the independent variables by a strength of correlation of individual independent variables with the dependent variable, when a metric of the statistical analysis exceeds a thresType: ApplicationFiled: December 5, 2019Publication date: June 10, 2021Applicant: Capital One Services, LLCInventors: Esmat ZARE, Yasong ZHOU, Wayne DECESARIS
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Patent number: 7761083Abstract: Systems and methods for processing rebates for a telecommunication subscriber are disclosed herein. Call detail records, related to telecommunication service activity by the telecommunication subscriber, are obtained for a previous billing period. Based on the call detail records, the service cost under a current rate plan is calculated and hypothetical service costs are calculated had the telecommunication subscriber been subscribed under other available rate plans. Then, a rebate is provided to the subscriber based on at least one rate plan that is less expensive than the current rate plan.Type: GrantFiled: February 14, 2007Date of Patent: July 20, 2010Inventors: William Marsh, Wayne DeCesaris
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Publication number: 20070202846Abstract: Systems and methods for processing rebates for a telecommunication subscriber are disclosed herein. Call detail records, related to telecommunication service activity by the telecommunication subscriber, are obtained for a previous billing period. Based on the call detail records, the service cost under a current rate plan is calculated and hypothetical service costs are calculated had the telecommunication subscriber been subscribed under other available rate plans. Then, a rebate is provided to the subscriber based on at least one rate plan that is less expensive than the current rate plan.Type: ApplicationFiled: February 14, 2007Publication date: August 30, 2007Inventors: William Marsh, Wayne DeCesaris