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DIY Fake News Detector: Unmask misinformation with Recurrent Neural Networks

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Manage episode 430865970 series 3474148
Indhold leveret af HackerNoon. Alt podcastindhold inklusive episoder, grafik og podcastbeskrivelser uploades og leveres direkte af HackerNoon eller deres podcastplatformspartner. Hvis du mener, at nogen bruger dit ophavsretligt beskyttede værk uden din tilladelse, kan du følge processen beskrevet her https://da.player.fm/legal.

This story was originally published on HackerNoon at: https://hackernoon.com/diy-fake-news-detector-unmask-misinformation-with-recurrent-neural-networks.
Explore the power of RNNs in fake news detection, from data preprocessing to model evaluation, showcasing their potential to combat misinformation.
Check more stories related to machine-learning at: https://hackernoon.com/c/machine-learning. You can also check exclusive content about #deep-learning, #fake-news, #machine-learning, #lstm, #rnn, #misinformation, #fake-news-detector, #recurrent-neural-networks, and more.
This story was written by: @kisican. Learn more about this writer by checking @kisican's about page, and for more stories, please visit hackernoon.com.
Though challenging, it is equally rewarding to be in a position to build a fake news detection system using RNNs. This code will walk you through the stage of data preprocessing to model evaluation. The power of RNNs, especially LSTMs, is utilised while decoding sequential data to make a distinction between real and fake news. If we could fine-tune these models and get hold of global news datasets, AI can then be core in battling misinformation.

  continue reading

474 episoder

Artwork
iconDel
 
Manage episode 430865970 series 3474148
Indhold leveret af HackerNoon. Alt podcastindhold inklusive episoder, grafik og podcastbeskrivelser uploades og leveres direkte af HackerNoon eller deres podcastplatformspartner. Hvis du mener, at nogen bruger dit ophavsretligt beskyttede værk uden din tilladelse, kan du følge processen beskrevet her https://da.player.fm/legal.

This story was originally published on HackerNoon at: https://hackernoon.com/diy-fake-news-detector-unmask-misinformation-with-recurrent-neural-networks.
Explore the power of RNNs in fake news detection, from data preprocessing to model evaluation, showcasing their potential to combat misinformation.
Check more stories related to machine-learning at: https://hackernoon.com/c/machine-learning. You can also check exclusive content about #deep-learning, #fake-news, #machine-learning, #lstm, #rnn, #misinformation, #fake-news-detector, #recurrent-neural-networks, and more.
This story was written by: @kisican. Learn more about this writer by checking @kisican's about page, and for more stories, please visit hackernoon.com.
Though challenging, it is equally rewarding to be in a position to build a fake news detection system using RNNs. This code will walk you through the stage of data preprocessing to model evaluation. The power of RNNs, especially LSTMs, is utilised while decoding sequential data to make a distinction between real and fake news. If we could fine-tune these models and get hold of global news datasets, AI can then be core in battling misinformation.

  continue reading

474 episoder

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