Invention Grant
US08032448B2 Detecting and measuring risk with predictive models using content mining
有权
使用内容挖掘的预测模型检测和测量风险
- Patent Title: Detecting and measuring risk with predictive models using content mining
- Patent Title (中): 使用内容挖掘的预测模型检测和测量风险
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Application No.: US11867602Application Date: 2007-10-04
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Publication No.: US08032448B2Publication Date: 2011-10-04
- Inventor: Russell Anderson , Larry S. Peranich , Ricardo M. Dungca , Joseph P. Milana , Xuhui Shao , Paul C. Dulany , Khosrow M. Hassibi , James C. Baker
- Applicant: Russell Anderson , Larry S. Peranich , Ricardo M. Dungca , Joseph P. Milana , Xuhui Shao , Paul C. Dulany , Khosrow M. Hassibi , James C. Baker
- Applicant Address: US MN Minneapolis
- Assignee: Fair Isaac Corporation
- Current Assignee: Fair Isaac Corporation
- Current Assignee Address: US MN Minneapolis
- Agency: Mintz, Levin, Cohn, Ferris, Glovsky and Popeo, P.C.
- Main IPC: G06Q40/00
- IPC: G06Q40/00

Abstract:
Computer implemented methods and systems of processing transactions to determine the risk of transaction convert high categorical information, such as text data, to low categorical information, such as category or cluster IDs. The text data may be merchant names or other textual content of the transactions, or data related to a consumer, or any other type of entity which engages in the transaction. Content mining techniques are used to provide the conversion from high to low categorical information. In operation, the resulting low categorical information is input, along with other data, into a statistical model. The statistical model provides an output of the level of risk in the transaction. Methods of converting the high categorical information to low categorical clusters, of using such information, and other aspects of the use of such clusters are disclosed.
Public/Granted literature
- US20090234683A1 Detecting and Measuring Risk with Predictive Models Using Content Mining Public/Granted day:2009-09-17
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