Patent Issued for Heuristic Credit Risk Assessment Engine (USPTO 10,769,722) - Insurance News | InsuranceNewsNet

InsuranceNewsNet — Your Industry. One Source.™

Sign in
  • Subscribe
  • About
  • Advertise
  • Contact
Home Now reading Newswires
Topics
    • Advisor News
    • Annuity Index
    • Annuity News
    • Companies
    • Earnings
    • Fiduciary
    • From the Field: Expert Insights
    • Health/Employee Benefits
    • Insurance & Financial Fraud
    • INN Magazine
    • Insiders Only
    • Life Insurance News
    • Newswires
    • Property and Casualty
    • Regulation News
    • Sponsored Articles
    • Washington Wire
    • Videos
    • ———
    • About
    • Meet our Editorial Staff
    • Advertise
    • Contact
    • Newsletters
  • Exclusives
  • NewsWires
  • Magazine
  • Newsletters
Sign in or register to be an INNsider.
  • AdvisorNews
  • Annuity News
  • Companies
  • Earnings
  • Fiduciary
  • Health/Employee Benefits
  • Insurance & Financial Fraud
  • INN Exclusives
  • INN Magazine
  • Insurtech
  • Life Insurance News
  • Newswires
  • Property and Casualty
  • Regulation News
  • Sponsored Articles
  • Video
  • Washington Wire
  • Life Insurance
  • Annuities
  • Advisor
  • Health/Benefits
  • Property & Casualty
  • Insurtech
  • About
  • Advertise
  • Contact
  • Editorial Staff

Get Social

  • Facebook
  • X
  • LinkedIn
Newswires
Newswires RSS Get our newsletter
Order Prints
September 22, 2020 Newswires
Share
Share
Post
Email

Patent Issued for Heuristic Credit Risk Assessment Engine (USPTO 10,769,722)

Insurance Daily News

2020 SEP 22 (NewsRx) -- By a News Reporter-Staff News Editor at Insurance Daily News -- State Farm Mutual Automobile Insurance Company (Bloomington, Illinois, United States) has been issued patent number 10,769,722, according to news reporting originating out of Alexandria, Virginia, by NewsRx editors.

The patent’s inventors are Flowers, Elizabeth (Bloomington, IL); Dua, Puneit (Bloomington, IL); Balota, Eric (Bloomington, IL); Phillips, Shanna L. (Bloomington, IL).

This patent was filed on April 24, 2017 and was published online on September 21, 2020.

From the background information supplied by the inventors, news correspondents obtained the following quote: “Organizations involved in customer service activities often process large amounts of unstructured data to make decisions while interacting with a customer in real-time. For example, in the case of a customer service representative speaking on the telephone with a customer experiencing an issue with a product or service, appropriate solutions may include a combination of timeliness of response and accuracy in content.

“Such unstructured data may include voluminous transaction records spanning decades, unstructured customer service data, or real-time transcripts of customer service interactions with scattered contextual indicators. To reasonably expect a customer service representative to effectively leverage such large data sets in real-time places an unreasonable burden on a customer service representative. However, failing to do so robs the customer service representative of vital context not readily apparent, and the wealth of knowledge gained throughout the history of an organization that would otherwise need to be distilled to briefing materials and expensively trained over time. Thus, organizations may value tools to rapidly process large data sets, to infer context, suggest lessons learned based upon transaction data, while learning through successive process iterations. Furthermore, appropriate application of such tools may provide a competitive advantage in a crowded and competitive customer service industry.

“In an effort to automate and provide better predictability of customer service experiences, many organizations develop customer relationship management (CRM) software packages. Organizations that develop these software packages often develop custom solutions, at great expense, to best meet the needs of their customers in unique industries. Such tools while providing a great level of detail for the customer service representative, lack the flexibility to react to changing business conditions or fully exploit the underlying technology, driving additional cost into an already expensive solution.

“Some organizations where able to make concessions on customized solutions turn to off-the-shelf or commercially available software solutions that reduce the overall cost of implementation. Such solutions may provide customer service representative prompting tools with question and answer formats that allow for consistency of customer experience, however, at the expense of a less personalized experience required in many industries. While more flexible than fully-custom solutions, the impersonal question-answer format of customer interaction may not improve without costly software revisions, rarely performed by original equipment manufacturers (OEMs) of off-the-shelf solutions.

“The ability for a customer service experience to learn and improve over successive iterations remains paramount for organizations to offer discriminating customer service experiences. Often the burden of continual improvement falls to the customer service representative, as a human being able to adapt and learn to changing conditions more rapidly even within the confines of a rigid customer service software application. However, with the advent of outsourcing prevalent in the customer service industry, the customer service representative may lack much of the necessary context required to provide high levels of relevant customer service. This lack of context in an interconnected company is less an issue of distance and more an issue of data access and the ability to contextually process data to present relevant solutions in a timely manner.”

Supplementing the background information on this patent, NewsRx reporters also obtained the inventors’ summary information for this patent: “One exemplary embodiment includes a computer-implemented method, executed with a computer processor, that generates a credit score. This method may include retrieving an un-structured data set including an aggregated transaction set that includes a plurality of users and at least one correlation of a user to a credit score. This method may include receiving a plurality of financial transactions, accessing and executing a heuristic algorithm to generate a credit score using the aggregated transaction set, the correlation, and/or the plurality of financial transactions. The method may include additional, less, or alternate actions, including those discussed elsewhere herein.

“Yet another alternative embodiment includes a computer-implemented method, executed with a computer processor, that generates cross-selling recommendations using an aggregated customer transaction list. The method may include retrieving an aggregated transaction list from a plurality of customers and receiving a natural language input in a customer service environment. The method may also include accessing and executing a heuristic algorithm to generate at least one product recommendation using the language input and the transaction list. A product category of the recommendation, for example, may correlate with a predicted need. The method may include receiving an indication of interest in the recommendation and/or updating the algorithm using a calculated correlation between the recommendation and the indication. The method may include additional, less, or alternate actions, including those discussed elsewhere herein.

“Still another embodiment includes a computer-implemented method, executed with a computer processor, that predicts an impact on a book of business by a change in an offered credit interest rate. The method may include retrieving an aggregated behavior list from a plurality of customers including offered credit interest rate data, and/or receiving the offered credit interest rate. The method may also include accessing and executing a heuristic algorithm to generate a predicted impact on a book of business, including the number of customers using the offered credit interest rate and the behavior list. Further, the method may include receiving an actual behavior with a human machine interface and/or updating the algorithm using a calculated correlation between the offered rate and the behavior. The method may include additional, less, or alternate actions, including those discussed elsewhere herein.

“In yet another embodiment, a computer-implemented method, executed in a computer processor, includes targeting a portion of a business process for modification. The method may include retrieving an un-structured transaction set from a plurality of customers including a time associated with a plurality of portions of the business process. Furthermore, the process may include accessing and executing a heuristic algorithm to generate an indication associated with the portion of the business process that exceeds a threshold required for modification, using the un-structured transaction set. Still further, the method may include receiving a quantified impact on the portion of the business process and/or updating the algorithm using the quantified impact. The method may include additional, less, or alternate actions, including those discussed elsewhere herein.

“An exemplary embodiment includes a computer-implemented method, executed with a computer processor, that generates a financial literacy suggestion using a transaction history. The method may include retrieving an un-structured transaction set, associated with a customer, accessing and executing a heuristic algorithm to generate the financial literacy suggestion using the transaction history. Furthermore, the method may include receiving an indication of relevance from the customer and updating, the algorithm using a calculated correlation between the suggestion and the relevance. The method may include additional, less, or alternate actions, including those discussed elsewhere herein.

“Exemplary embodiments may include computer-implemented methods that may in other embodiments include apparatus configured to implement the method, and/or non-transitory computer readable mediums comprising computer-executable instructions that cause a processor to perform the method.

“Advantages will become more apparent to those skilled in the art from the following description of the preferred embodiments which have been shown and described by way of illustration. As will be realized, the present embodiments may be capable of other and different embodiments, and their details are capable of modification in various respects. Accordingly, the drawings and description are to be regarded as illustrative in nature and not as restrictive.”

The claims supplied by the inventors are:

“What is claimed is:

“1. A computer-implemented method, executed by one or more computer processors, to generate a credit score, comprising: retrieving, by the one or more computer processors and from a first memory, an unstructured data set comprising an aggregated transaction set for a plurality of users, the aggregated transaction set including at least a first correlation between a user of the plurality of users and a first credit score; receiving, by the one or more computer processors and from a network interface device, unstructured background data related to the aggregated transaction set and a plurality of pending transactions; encoding, by the one or more computer processors, the unstructured background data to create encoded background data; accessing, by the one or more computer processors, a heuristic algorithm stored in a second memory; generating, by the one or more computer processors, a second credit score by executing the heuristic algorithm using the aggregated transaction set, the first correlation, and the encoded background data; generating, by the one or more computer processors, a second correlation between the second credit score and a subset of the encoded background data associated with a pending transaction of the plurality of pending transactions; determining, by the one or more computer processors, that the second correlation exceeds a predefined credit score threshold; and executing, by the one or more computer processors and based at least in part on the determining, the pending transaction.

“2. The computer-implemented method of claim 1, wherein the second credit score complies with a credit reporting standard.

“3. The computer-implemented method of claim 1, wherein the aggregated transaction set comprises a plurality of recent transactions.

“4. The computer-implemented method of claim 1, wherein the aggregated transaction set comprises transactions related to at least one account.

“5. The computer-implemented method of claim 1, wherein the first memory comprises an external transaction server.

“6. The computer-implemented method of claim 1, wherein the second memory comprises an external heuristic server.

“7. The computer-implemented method of claim 1, wherein the second credit score complies with a standard measure of credit worthiness issued by a regulatory authority.

“8. A computer system configured to generate a credit score, the computer system comprising at least one of one or more processors or one or more transceivers configured to: retrieve an unstructured data set from a first memory, the unstructured data set comprising an aggregated transaction set for a plurality of users, the aggregated transaction set including at least a first correlation between a user of the plurality of users and a first credit score; receive, from a network interface device, unstructured background data related to the aggregated transaction set and a plurality of pending transactions; encode the unstructured background data to create encoded background data; access a heuristic algorithm stored in a second memory; generate a second credit score by executing the heuristic algorithm using the aggregated transaction set, the first correlation, and the encoded background data; generate a second correlation between the second credit score and a subset of the encoded background data, the subset including at least one pending transaction of the plurality of pending transactions; determine that the second correlation exceeds a predefined credit score threshold; and execute, based at least in part on the determining, the at least one pending transaction.

“9. The computer system of claim 8, wherein the second credit score complies with a credit reporting standard.

“10. The computer system of claim 8, wherein the aggregated transaction set comprises a plurality of recent transactions.

“11. The computer system of claim 8, wherein the aggregated transaction set comprises transactions related to at least one account.

“12. The computer system of claim 8, wherein the first memory comprises an external transaction server.

“13. The computer system of claim 8, wherein the second memory comprises an external heuristic server.

“14. A non-transitory computer readable medium, comprising computer readable instructions that, when executed, cause one or more computer processors to: retrieve, by the one or more computer processors and from a first memory, an unstructured data set comprising an aggregated transaction set for a plurality of users, the aggregated transaction set including at least a first correlation between a user of the plurality of users and a first credit score; receive, by the one or more computer processors and from a network interface device, unstructured background data related to the aggregated transaction set and a plurality of pending transactions; encode, by the one or more computer processors, the unstructured background data to create encoded background data; access, by the one or more computer processors, a heuristic algorithm stored in a second memory; and generate, by the one or more computer processors, a second credit score by executing the heuristic algorithm using the aggregated transaction set, the first correlation, and the encoded background data; generate, by the one or more computer processors, a second correlation between the second credit score and a subset of the encoded background data; determine, by the one or more computer processors, that the second correlation exceeds a predefined credit score threshold; and execute, by the one or more computer processors and based at least in part on the determining, a pending transaction in the subset of the encoded background data.

“15. The non-transitory computer readable medium of claim 14, wherein the second credit score complies with a credit reporting standard.

“16. The non-transitory computer readable medium of claim 14, wherein the aggregated transaction set comprises a plurality of recent transactions.

“17. The non-transitory computer readable medium of claim 14, wherein the aggregated transaction set comprises transactions related to at least one account.

“18. The non-transitory computer readable medium of claim 14, wherein the first memory comprises an external transaction server.

“19. The non-transitory computer readable medium of claim 14, wherein the second memory comprises an external heuristic server.

“20. The non-transitory computer readable medium of claim 14, wherein the second credit score complies with a standard measure of credit worthiness issued by a regulatory authority.”

For the URL and additional information on this patent, see: Flowers, Elizabeth; Dua, Puneit; Balota, Eric; Phillips, Shanna L. Heuristic Credit Risk Assessment Engine. U.S. Patent Number 10,769,722, filed April 24, 2017, and published online on September 21, 2020. Patent URL: http://patft.uspto.gov/netacgi/nph-Parser?Sect1=PTO1&Sect2=HITOFF&d=PALL&p=1&u=%2Fnetahtml%2FPTO%2Fsrchnum.htm&r=1&f=G&l=50&s1=10,769,722.PN.&OS=PN/10,769,722RS=PN/10,769,722

(Our reports deliver fact-based news of research and discoveries from around the world.)

Older

Health Department to offer flu vaccine clinic Sept. 26

Newer

Removing Financial Disincentives to Living Organ Donation

Advisor News

  • Trump targets ‘retirement gap’ with new executive order
  • Younger investors are engaged and advisors must adapt
  • Plugging the hidden budget leaks of retirement
  • Hagens Berman: Retired First Responders Sue Washington State over Rights to $3.3B Pension Funds Threatened by Lawmakers
  • Financially support your adult children without risking your future
More Advisor News

Annuity News

  • A new opportunity for advisors: Younger indexed annuity buyers
  • Most employers support embedding guaranteed lifetime income options into DC Plans
  • InspereX Partners with AuguStar Retirement for Strategic Expansion into Annuity Market
  • FACC and DOL enter stipulation to dismiss 2020 guidance lawsuit
  • Zinnia’s Zahara policy admin system adds FIA chassis to product library
More Annuity News

Health/Employee Benefits News

  • UHC claims ECU Health refused to continue negotiations
  • Rob Sand unveils water quality, public health plan
  • NC Senate aims to curb Medicaid costs and allow more insight into hospital charges
  • A beloved insurer? This goal calls for AI UnitedHealthcare's mission control targets customer woes to build its brand
  • Rep. Rebecca Alexander sponsors bill to expand step therapy exemptions, help cancer patients
More Health/Employee Benefits News

Life Insurance News

  • Ann Heiss
  • Convertible market dynamics and the portfolio implications for insurers
  • Finalists announced for Lincoln's 2026 Best Places to Work
  • Investors Heritage Promotes Anna Reynolds to Senior Vice President and General Counsel
  • AM Best Affirms Credit Ratings of Old Republic International Corporation’s Subsidiaries
More Life Insurance News

- Presented By -

NEWS INSIDE

  • Companies
  • Earnings
  • Economic News
  • INN Magazine
  • Insurtech News
  • Newswires Feed
  • Regulation News
  • Washington Wire
  • Videos

FEATURED OFFERS

Why Blend in When You Can Make a Splash?
Pacific Life’s registered index-linked annuity offers what many love about RILAs—plus more!

Life moves fast. Your BGA should, too.
Stay ahead with Modern Life's AI-powered tech and expert support.

Bring a Real FIA Case. Leave Ready to Close.
A practical working session for agents who want a clearer, repeatable sales process.

Discipline Over Headline Rates
Discover a disciplined strategy built for consistency, transparency, and long-term value.

Inside the Evolution of Index-Linked Investing
Hear from top issuers and allocators driving growth in index-linked solutions.

Press Releases

  • Highland Capital Brokerage Acquires Premier Financial, Inc.
  • ePIC Services Company Joins wealth.com on Featured Panel at PEAK Brokerage Services’ SPARK! Event, Signaling a Shift in How Advisors Deliver Estate and Legacy Planning
  • Hexure Offers Real-Time Case Status Visibility and Enhanced Post-Issue Servicing in FireLight Through Expanded DTCC Partnership
  • RFP #T01325
  • RFP #T01325
More Press Releases > Add Your Press Release >

How to Write For InsuranceNewsNet

Find out how you can submit content for publishing on our website.
View Guidelines

Topics

  • Advisor News
  • Annuity Index
  • Annuity News
  • Companies
  • Earnings
  • Fiduciary
  • From the Field: Expert Insights
  • Health/Employee Benefits
  • Insurance & Financial Fraud
  • INN Magazine
  • Insiders Only
  • Life Insurance News
  • Newswires
  • Property and Casualty
  • Regulation News
  • Sponsored Articles
  • Washington Wire
  • Videos
  • ———
  • About
  • Meet our Editorial Staff
  • Advertise
  • Contact
  • Newsletters

Top Sections

  • AdvisorNews
  • Annuity News
  • Health/Employee Benefits News
  • InsuranceNewsNet Magazine
  • Life Insurance News
  • Property and Casualty News
  • Washington Wire

Our Company

  • About
  • Advertise
  • Contact
  • Meet our Editorial Staff
  • Magazine Subscription
  • Write for INN

Sign up for our FREE e-Newsletter!

Get breaking news, exclusive stories, and money- making insights straight into your inbox.

select Newsletter Options
Facebook Linkedin Twitter
© 2026 InsuranceNewsNet.com, Inc. All rights reserved.
  • Terms & Conditions
  • Privacy Policy
  • InsuranceNewsNet Magazine

Sign in with your Insider Pro Account

Not registered? Become an Insider Pro.
Insurance News | InsuranceNewsNet