Invention Application
- Patent Title: NORMALIZING ELECTRONIC COMMUNICATIONS USING NEURAL NETWORKS
- Patent Title (中): 使用神经网络正规化电子通信
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Application No.: US14937810Application Date: 2015-11-10
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Publication No.: US20160350650A1Publication Date: 2016-12-01
- Inventor: Samuel Paul Leeman-Munk , Wookhee Min , Bradford Wayne Mott , James Curtis Lester, II , James Allen Cox
- Applicant: SAS Institute Inc. , North Carolina State University
- Main IPC: G06N3/08
- IPC: G06N3/08 ; G06N3/04

Abstract:
Electronic communications can be normalized using neural networks. For example, an electronic representation of a noncanonical communication can be received. A normalized version of the noncanonical communication can be determined using a normalizer including a neural network. The neural network can receive a single vector at an input layer of the neural network and transform an output of a hidden layer of the neural network into multiple values that sum to a total value of one. Each value of the multiple values can be a number between zero and one and represent a probability of a particular character being in a particular position in the normalized version of the noncanonical communication. The neural network can determine the normalized version of the noncanonical communication based on the multiple values. Whether the normalized version should be output can be determined based on a result from a flagger including another neural network.
Public/Granted literature
- US09552547B2 Normalizing electronic communications using a neural-network normalizer and a neural-network flagger Public/Granted day:2017-01-24
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