EPISODE · Jun 14, 2019 · 12 MIN
Episode 64: Get the best shot at NLP sentiment analysis
from Data Science at Home · host Francesco <frag> Gadaleta
The rapid diffusion of social media like Facebook and Twitter, and the massive use of different types of forums like Reddit, Quora, etc., is producing an impressive amount of text data every day. There is one specific activity that many business owners have been contemplating over the last five years, that is identifying the social sentiment of their brand, by analysing the conversations of their users.In this episode I explain how one can get the best shot at classifying sentences with deep learning and word embedding. Additional materialSchematic representation of how to learn a word embedding matrix E by training a neural network that, given the previous M words, predicts the next word in a sentence. Word2Vec example source codehttps://gist.github.com/rlangone/ded90673f65e932fd14ae53a26e89eee#file-word2vec_example-py References[1] Mikolov, T. et al., "Distributed Representations of Words and Phrases and their Compositionality", Advances in Neural Information Processing Systems 26, pages 3111-3119, 2013.[2] The Best Embedding Method for Sentiment Classification, https://medium.com/@bramblexu/blog-md-34c5d082a8c5[3] The state of sentiment analysis: word, sub-word and character embedding https://amethix.com/state-of-sentiment-analysis-embedding/ This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit datascienceathome.substack.com
NOW PLAYING
Episode 64: Get the best shot at NLP sentiment analysis
No transcript for this episode yet
Similar Episodes
Apr 20, 2026 ·75m
Apr 16, 2026 ·84m
Apr 13, 2026 ·79m
Apr 6, 2026 ·116m
Mar 30, 2026 ·126m
Mar 27, 2026 ·17m