Invention Grant
US07827125B1 Learning based on feedback for contextual personalized information retrieval
有权
基于上下文个性化信息检索的反馈进行学习
- Patent Title: Learning based on feedback for contextual personalized information retrieval
- Patent Title (中): 基于上下文个性化信息检索的反馈进行学习
-
Application No.: US11757088Application Date: 2007-06-01
-
Publication No.: US07827125B1Publication Date: 2010-11-02
- Inventor: Earl Rennison
- Applicant: Earl Rennison
- Applicant Address: US CA Mountain View
- Assignee: TROVIX, Inc.
- Current Assignee: TROVIX, Inc.
- Current Assignee Address: US CA Mountain View
- Agency: Fenwick & West LLP
- Main IPC: G06F15/18
- IPC: G06F15/18

Abstract:
Information retrieval systems face challenging problems with delivering highly relevant and highly inclusive search results in response to a user's query. Contextual personalized information retrieval uses a set of integrated methodologies that can combine automatic concept extraction/matching from text, a powerful fuzzy search engine, and a collaborative user preference learning engine to provide accurate and personalized search results. The system can include constructing a search query to execute a search of a database parsing an input query from a user conducting the search of the database into sub-strings, and matching the sub-strings to concepts in a semantic concept network of a knowledge base. The system can further map the matched concepts to criteria and criteria values that specify a set of constraints on and scoring parameters for the matched concepts. Furthermore, the system can learn user preferences to construct one or more profiles for producing personalized search results.
Information query