Systems and methods for identifying user types using multi-modal clustering and information scent

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United States of America Patent

PATENT NO 7260643
APP PUB NO 20030018636A1
SERIAL NO

09820988

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Abstract

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Techniques for determining user types based on multi-modal clustering are provided. The topology, content and usage of a document collection or web site is determined. The user paths are identified using longest repeating subsequence techniques and a multi-modal information need vector is determined for each significant user path. Multi-modal vectors for each document in the significant path, content, uniform resource locators, inlink and outlink multi-modal vectors are determined and combined based on path position and access frequency. Multi-modal clustering is performed based on a multi-modal similarity function and a specified measure of similarity using a type of multi-modal clustering such as K-means or wavefront clustering. The identified clusters may be further analyzed based on changes to the weighting of the corresponding content, url, inlinks and outlinks multi-modal feature vectors.

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Patent Owner(s)

  • XEROX CORPORATION

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Inventor(s)

Inventor Name Address # of filed Patents Total Citations
Chi, Ed H Palo Alto, CA 43 3317
Heer, Jeffery M Berkeley, CA 2 9
Pirolli, Peter L T San Francisco, CA 58 4275

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