Log in
Enquire now
‌

US Patent 10573295 End-to-end speech recognition with policy learning

Patent 10573295 was granted and assigned to Salesforce.com, Inc. on February, 2020 by the United States Patent and Trademark Office.

OverviewStructured DataIssuesContributors

Contents

Is a
Patent
Patent
0

Patent attributes

Patent Applicant
0
Current Assignee
0
Patent Jurisdiction
United States Patent and Trademark Office
United States Patent and Trademark Office
0
Patent Number
105732950
Patent Inventor Names
Caiming Xiong0
Yingbo Zhou0
Date of Patent
February 25, 2020
0
Patent Application Number
158781130
Date Filed
January 23, 2018
0
Patent Citations
‌
US Patent 10346721 Training a neural network using augmented training datasets
‌
US Patent 10282663 Three-dimensional (3D) convolution with 3D batch normalization
‌
US Patent 10121467 Automatic speech recognition incorporating word usage information
Patent Citations Received
‌
US Patent 12086539 System and method for natural language processing using neural network with cross-task training
0
‌
US Patent 11487999 Spatial-temporal reasoning through pretrained language models for video-grounded dialogues
‌
US Patent 11527238 Internal language model for E2E models
‌
US Patent 11922303 Systems and methods for distilled BERT-based training model for text classification
0
‌
US Patent 11934781 Systems and methods for controllable text summarization
0
‌
US Patent 11934952 Systems and methods for natural language processing using joint energy-based models
0
‌
US Patent 11948665 Systems and methods for language modeling of protein engineering
0
‌
US Patent 11481636 Systems and methods for out-of-distribution classification
...
Patent Primary Examiner
‌
Andrew C Flanders
0
Patent abstract

The disclosed technology teaches a deep end-to-end speech recognition model, including using multi-objective learning criteria to train a deep end-to-end speech recognition model on training data comprising speech samples temporally labeled with ground truth transcriptions. The multi-objective learning criteria updates model parameters of the model over one thousand to millions of backpropagation iterations by combining, at each iteration, a maximum likelihood objective function that modifies the model parameters to maximize a probability of outputting a correct transcription and a policy gradient function that modifies the model parameters to maximize a positive reward defined based on a non-differentiable performance metric which penalizes incorrect transcriptions in accordance with their conformity to corresponding ground truth transcriptions; and upon convergence after a final backpropagation iteration, persisting the modified model parameters learned by using the multi-objective learning criteria with the model to be applied to further end-to-end speech recognition.

Timeline

No Timeline data yet.

Further Resources

Title
Author
Link
Type
Date
No Further Resources data yet.

References

Find more entities like US Patent 10573295 End-to-end speech recognition with policy learning

Use the Golden Query Tool to find similar entities by any field in the Knowledge Graph, including industry, location, and more.
Open Query Tool
Access by API
Golden Query Tool
Golden logo

Company

  • Home
  • Press & Media
  • Blog
  • Careers
  • WE'RE HIRING

Products

  • Knowledge Graph
  • Query Tool
  • Data Requests
  • Knowledge Storage
  • API
  • Pricing
  • Enterprise
  • ChatGPT Plugin

Legal

  • Terms of Service
  • Enterprise Terms of Service
  • Privacy Policy

Help

  • Help center
  • API Documentation
  • Contact Us
By using this site, you agree to our Terms of Service.