Solving Problems with ML: ID Fake News Through Natural Language Processing

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Presented by

Mike Tamir - Chief Scientist and Head of Machine Learning, SIG

About this talk

Recorded at Rev 2 | May 23-24, 2019 | New York Day 1 - Practitioner - SIG In this talk, we explore real-world use case applications for automated “Fake News” evaluation using contemporary deep learning article vectorization and tagging. We begin with the use case and an evaluation of the appropriate context applications for various deep learning applications in fake news evaluation. Technical material will review several methodologies for article vectorization with classification pipelines, ranging from traditional to advanced deep architecture techniques. We close with a discussion on troubleshooting and performance optimization when consolidating and evaluating these various techniques on active data sets.

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