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LSTM stands for Long Short-Term Memory. When we use this term most of the time we refer to a recurrent neural network or a block (part) of a bigger network.
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Transformers (BERT) vs LSTM on Sentiment Analysis/NER - dataset sizes comparison
Presuming a result of N% (supposing that threshold is achievable for both LSTM and BERT), which architecture (LSTM or BERT) would require a bigger dataset (regardless of the size, I am aware dataset size … Does BERT need a bigger dataset to achieve "good results" (an empirical observation would help me) or a, say, bidirectional LSTM? …
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Accepted
LSTM Multivariate time series forecasting with multiple inputs for each time step
Evidently we cannot expect to throw 10 different unrelated time series into an LSTM and expect decent results. …