Invention Grant
- Patent Title: Selectively generating word vector and paragraph vector representations of fields for machine learning
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Application No.: US16596282Application Date: 2019-10-08
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Publication No.: US10795923B2Publication Date: 2020-10-06
- Inventor: Baskar Jayaraman , Aniruddha Madhusudan Thakur , Chitrabharathi Ganapathy , Kannan Govindarajan , Shiva Shankar Ramanna
- Applicant: ServiceNow, Inc.
- Applicant Address: US CA Santa Clara
- Assignee: ServiceNow, Inc.
- Current Assignee: ServiceNow, Inc.
- Current Assignee Address: US CA Santa Clara
- Agency: Fletcher Yoder PC
- Main IPC: G06F17/27
- IPC: G06F17/27 ; G06F16/33 ; G06F16/332 ; G06F16/338 ; G06F11/30 ; G06N3/08 ; G06F40/30 ; G06F17/21

Abstract:
Word vectors are multi-dimensional vectors that represent words in a corpus of text and that are embedded in a semantically-encoded vector space; paragraph vectors extend word vectors to represent, in the same semantically-encoded space, the overall semantic content and context of a phrase, sentence, paragraph, or other multi-word sample of text. Word and paragraph vectors can be used for sentiment analysis, comparison of the topic or content of samples of text, or other natural language processing tasks. However, the generation of word and paragraph vectors can be computationally expensive. Accordingly, word and paragraph vectors can be determined only for user-specified subsets of fields of incident reports in a database.
Public/Granted literature
- US20200104313A1 SELECTIVELY GENERATING WORD VECTOR AND PARAGRAPH VECTOR REPRESENTATIONS OF FIELDS FOR MACHINE LEARNING Public/Granted day:2020-04-02
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