Patents by Inventor Andrea L Allmon

Andrea L Allmon 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: 8639522
    Abstract: Transaction-based behavioral profiling, whereby the entity to be profiled is represented by a stream of transactions, is required in a variety of data mining and predictive modeling applications. An approach is described for assessing inconsistency in the activity of an entity, as a way of detecting fraud and abuse, using service-code information available on each transaction. Inconsistency is based on the concept that certain service-codes naturally co-occur more than do others. An assessment is made of activity consistency looking at the overall activity of an individual entity, as well as looking at the interaction of entities. Several approaches for measuring consistency are provided, including one inspired by latent semantic analysis as used in text analysis. While the description is in the context of fraud detection in healthcare, the techniques are relevant to application in other industries and for purposes other than fraud detection.
    Type: Grant
    Filed: April 16, 2008
    Date of Patent: January 28, 2014
    Assignee: Fair Isaac Corporation
    Inventors: Anu Kumar Pathria, Andrea L. Allmon, Jean de Traversay, Krassimir G. Ianakiev, Nallan Suresh, Michael K. Tyler
  • Patent number: 7813937
    Abstract: Transaction-based behavioral profiling, whereby the entity to be profiled is represented by a stream of transactions, is required in a variety of data mining and predictive modeling applications. An approach is described for assessing inconsistency in the activity of an entity, as a way of detecting fraud and abuse, using service-code information available on each transaction. Inconsistency is based on the concept that certain service-codes naturally co-occur more than do others. An assessment is made of activity consistency looking at the overall activity of an individual entity, as well as looking at the interaction of entities. Several approaches for measuring consistency are provided, including one inspired by latent semantic analysis as used in text analysis. While the description is in the context of fraud detection in healthcare, the techniques are relevant to application in other industries and for purposes other than fraud detection.
    Type: Grant
    Filed: February 6, 2003
    Date of Patent: October 12, 2010
    Assignee: Fair Isaac Corporation
    Inventors: Anu K Pathria, Andrea L Allmon, Jean de Traversay, Krassimir G Ianakiev, Nallan C Suresh, Michael K Tyler
  • Publication number: 20080249820
    Abstract: Transaction-based behavioral profiling, whereby the entity to be profiled is represented by a stream of transactions, is required in a variety of data mining and predictive modeling applications. An approach is described for assessing inconsistency in the activity of an entity, as a way of detecting fraud and abuse, using service-code information available on each transaction. Inconsistency is based on the concept that certain service-codes naturally co-occur more than do others. An assessment is made of activity consistency looking at the overall activity of an individual entity, as well as looking at the interaction of entities. Several approaches for measuring consistency are provided, including one inspired by latent semantic analysis as used in text analysis. While the description is in the context of fraud detection in healthcare, the techniques are relevant to application in other industries and for purposes other than fraud detection.
    Type: Application
    Filed: April 16, 2008
    Publication date: October 9, 2008
    Inventors: Anu K. Pathria, Andrea L. Allmon, Jean de Traversay, Krassimir G. Ianakiev, Nallan C. Suresh, Michael K. Tyler