Invention Grant
- Patent Title: Topic models
- Patent Title (中): 主题模型
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Application No.: US12912428Application Date: 2010-10-26
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Publication No.: US08645298B2Publication Date: 2014-02-04
- Inventor: Philipp Hennig , David Stern , Thore Graepel , Ralf Herbrich
- Applicant: Philipp Hennig , David Stern , Thore Graepel , Ralf Herbrich
- Applicant Address: US WA Redmond
- Assignee: Microsoft Corporation
- Current Assignee: Microsoft Corporation
- Current Assignee Address: US WA Redmond
- Agency: Microsoft Corporation
- Main IPC: G06F17/00
- IPC: G06F17/00 ; G06F15/18 ; G06N5/00 ; G06F7/00 ; G06F17/30

Abstract:
Machine learning techniques may be used to train computing devices to understand a variety of documents (e.g., text files, web pages, articles, spreadsheets, etc.). Machine learning techniques may be used to address the issue that computing devices may lack the human intellect used to understand such documents, such as their semantic meaning. Accordingly, a topic model may be trained by sequentially processing documents and/or their features (e.g., document author, geographical location of author, creation date, social network information of author, and/or document metadata). Additionally, as provided herein, the topic model may be used to predict probabilities that words, features, documents, and/or document corpora, for example, are indicative of particular topics.
Public/Granted literature
- US20120101965A1 TOPIC MODELS Public/Granted day:2012-04-26
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