Deep Temporal Logistic Bag-of-Features For Forecasting High Frequency Limit Order Book Time Series

Published on ● Video Link: https://www.youtube.com/watch?v=fzNRncQpsJw



Duration: 1:26:26
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For more details including paper and slides, visit

https://aisc.a-i.science/events/2019-05-06/




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Tags:
deep learning
machine learning
gcn
graphsage
graph neural networks
graphnn
cnn
inductive learning
learning representation
representation learning
inductive representation learning