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US Patent 10217058 Predicting interesting things and concepts in content

Patent 10217058 was granted and assigned to Microsoft on February, 2019 by the United States Patent and Trademark Office.

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Contents

Is a
Patent
Patent

Patent attributes

Patent Applicant
Microsoft
Microsoft
Current Assignee
Microsoft
Microsoft
Patent Jurisdiction
United States Patent and Trademark Office
United States Patent and Trademark Office
Patent Number
10217058
Patent Inventor Names
Patrick Pantel0
Arjun Mukherjee0
Michael Gamon0
Date of Patent
February 26, 2019
Patent Application Number
14168936
Date Filed
January 30, 2014
Patent Citations Received
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US Patent 12124447 Data prefetching method and apparatus, electronic device, and computer-readable storage medium
0
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US Patent 11765121 Managing electronic messages with a message transfer agent
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US Patent 11775494 Multi-service business platform system having entity resolution systems and methods
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US Patent 11360967 Predictive search with context filtering
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US Patent 11836199 Methods and systems for a content development and management platform
0
0
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US Patent 12125045 Multi-client service system platform
0
‌
US Patent 10599640 Predictive search with context filtering
0
...
Patent Primary Examiner
‌
Stanley K. Hill
Patent abstract

An “Engagement Predictor” provides various techniques for predicting whether things and concepts (i.e., “nuggets”) in content will be engaging or interesting to a user in arbitrary content being consumed by the user. More specifically, the Engagement Predictor provides a notion of interestingness, i.e., an interestingness score, of a nugget on a page that is grounded in observable behavior during content consumption. This interestingness score is determined by evaluating arbitrary documents using a learned transition model. Training of the transition model combines web browsing log data and latent semantic features in training data (i.e., source and destination documents) automatically derived by a Joint Topic Transition (JTT) Model. The interestingness scores are then used for highlighting one or more nuggets, inserting one or more hyperlinks relating to one or more nuggets, importing content relating to one or more nuggets, predicting user clicks, etc.

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