Streaming video
Author Johnson, Michael L., on-screen presenter

Title NLP from scratch : solving the cold start problem for natural language processing / Michael Johnson, Norris Heintzelman
Published [Place of publication not identified] : O'Reilly Media, 2019

Copies

Description 1 online resource (1 streaming video file (43 min., 17 sec.))
Summary "Michael Johnson and Norris Heintzelman (Lockheed Martin) share several techniques they've implemented to build classification and NER models from scratch. They lead a tour through this space as it applies to NLP and demonstrate their approach and architecture for the following techniques: Weak supervision for news documents: Using rules base classification alongside deep learning system for text classification; Active learning and human in the loop: Explaining how breakthroughs in transfer learning for NLP have impacted their active learning framework for building an LSTM-based relevance model; Creative training sets: Identifying and cleaning already-labeled datasets, training classifier on "only" positive examples; NER adjudication: Combining knowledge from several annotation sources that leverages the strengths of each source. For each of these topics, Michael and Norris outline the theoretical foundation, the implementation architecture, and tools used and discuss the problems they encountered, so you can avoid making the same mistakes."--Resource description page
Notes Title from title screen (viewed January 10, 2020)
Performer Presenters, Michael Johnson, Norris Heintzelman
Notes Copyright © O'Reilly Media, Inc
SUBJECT Strata Conference (2019 : San Francisco, Calif.)
Subject Natural language processing (Computer science)
Machine learning.
Business logistics -- Data processing
Big data.
Natural Language Processing
Big data.
Business logistics -- Data processing.
Machine learning.
Natural language processing (Computer science)
Form Streaming video
Author Heintzelman, Norris, on-screen presenter
O'Reilly & Associates, publisher.
Other Titles Natural language processing from scratch