An action classifier is proposed with LSTM model, where data are shaped with sequence data in 3D.
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Updated
Jun 16, 2022 - Jupyter Notebook
An action classifier is proposed with LSTM model, where data are shaped with sequence data in 3D.
a stacked LSTM to categorize textual news feeds
applying different RNN architecture to build character prediction model and a word based prediction model these model are trained on data of specific topics from wikipedia
Bayesian surprise is the result of mismatches between our expectations and actual results, hence the degree of surprise or anomalousness attached to a pattern will vary with respect to these differences. The implication of obtaining large surprise values identifies those patterns likely to be useful and interesting to the user.
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