Apple Inc.
NEURAL TYPOGRAPHICAL ERROR MODELING VIA GENERATIVE ADVERSARIAL NETWORKS

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Abstract:

Systems and processes for operating an intelligent automated assistant are provided. In one example process, one or more input words can be received. The process can extract, based on the one or more input words, seed data for unsupervised training of a first learning network. Training data that includes a collection of words having typographical errors for the first learning network can be obtained. The process can determine, using the first learning network and based on the seed data and the training data, one or more output words having a probability distribution corresponding to a probability distribution of the training data. The one or more output words can include typographical errors. The process can generate, based on the determined one or more output words, a data set for supervised training of a second learning network. The second learning network can provide one or more typographical error suggestions.

Status:
Application
Type:

Utility

Filling date:

20 Dec 2018

Issue date:

2 Apr 2020