Sentence paraphrase generation at the sentence level
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Updated
Dec 7, 2022 - Python
Sentence paraphrase generation at the sentence level
⚛️ It is keras based implementation of siamese architecture using lstm encoders to compute text similarity
TensorFlow Implementation of the paper "End-to-End Relation Extraction using LSTMs on Sequences and Tree Structures" and "Classifying Relations via Long Short Term Memory Networks along Shortest Dependency Paths" for classifying relations
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Chinese Poetry Generation
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This repo contains code written by MXNet for ocr tasks, which uses an cnn-lstm-ctc architecture to do text recognition.
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Tensorflow Implementation of Im2Latex
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Deep-learning system presented in "EmoSence at SemEval-2019 Task 3: Bidirectional LSTM Network for Contextual Emotion Detection in Textual Conversations" at SemEval-2019.
A deep learning model for extracting references from text
Multitask learning: protein secondary structure prediction, b-values prediction and solvent-accessibility prediction
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