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Artificial neural networks / Computational neuroscience / Deep learning / Recurrent neural network / Convolutional neural network / Long short-term memory / Tweet / Artificial intelligence / Autoencoder / Convolution / SemEval
Date: 2016-05-29 14:44:25
Artificial neural networks
Computational neuroscience
Deep learning
Recurrent neural network
Convolutional neural network
Long short-term memory
Tweet
Artificial intelligence
Autoencoder
Convolution
SemEval

Tweet2Vec: Learning Tweet Embeddings Using Character-level CNN-LSTM Encoder-Decoder Soroush Vosoughi∗ Prashanth Vijayaraghavan∗

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Source URL: socialmachines.media.mit.edu

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