Invention Grant
- Patent Title: Bi-directional contextualized text description
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Application No.: US16270328Application Date: 2019-02-07
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Publication No.: US10963645B2Publication Date: 2021-03-30
- Inventor: Christian Reisswig , Darko Velkoski , Sohyeong Kim , Hung Tu Dinh , Faisal El Hussein
- Applicant: SAP SE
- Applicant Address: DE Walldorf
- Assignee: SAP SE
- Current Assignee: SAP SE
- Current Assignee Address: DE Walldorf
- Agency: Schwegman Lundberg & Woessner, P.A.
- Main IPC: G06F40/30
- IPC: G06F40/30 ; G10L15/183

Abstract:
Various examples described herein are directed to systems and methods for analyzing text. A computing device may train an autoencoder language model using a plurality of language model training samples. The autoencoder language mode may comprise a first convolutional layer. Also, a first language model training sample of the plurality of language model training samples may comprise a first set of ordered strings comprising a masked string, a first string preceding the masked string in the first set of ordered strings, and a second string after the masked string in the first set of ordered strings. The computing device may generate a first feature vector using an input sample and the autoencoder language model. The computing device may also generate a descriptor of the input sample using a target model, the input sample, and the first feature vector.
Public/Granted literature
- US20200258498A1 BI-DIRECTIONAL CONTEXTUALIZED TEXT DESCRIPTION Public/Granted day:2020-08-13
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