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| "text": "The Long Short-Term Memory", |
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| "text": " LSTM networks learns long-term dependencies better", |
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| "text": " Optimization", |
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| "text": ": Clipping gradient", |
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| "text": ". Regularizing: encourage information flow", |
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| "text": ". Case studies:", |
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| "text": " Memory networks (Westion et al., 2014)", |
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| "text": " Neural Turing machine (Graves et al., 2014)", |
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| "text": " Multiple object recognition with attention (Ba et al.)", |
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| "text": ": Image captioning", |
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| { |
| "text": "ecturer: Duc Dung Nguyen, PhD. Contact: nddung@hcmut.edu.vn", |
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| "text": "Deep Learning", |
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| { |
| "text": "47/ 47", |
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