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on 18-Jan-2026 (Sun)

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Flashcard 7788246207756

Tags
#DAG #causal #edx #has-images #inference
[unknown IMAGE 7096178707724]
Question
As you may have already noticed, the case-control design selects individuals based on their [...]
Answer
outcome

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repetition number in this series0memorised on               scheduled repetition               
scheduled repetition interval               last repetition or drill

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As you may have already noticed, the case-control design selects individuals based on their outcome

Original toplevel document (pdf)

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Flashcard 7788248567052

Tags
#feature-engineering #lstm #recurrent-neural-networks #rnn
Question
The HMM has N [...] hidden states (where N is typically small) and, therefore, has only log 2 (N) bits of information available to capture the sequence history (Brown & Hinton, 2001)
Answer
discrete

statusnot learnedmeasured difficulty37% [default]last interval [days]               
repetition number in this series0memorised on               scheduled repetition               
scheduled repetition interval               last repetition or drill

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The HMM has N discrete hidden states (where N is typically small) and, therefore, has only log 2 (N) bits of information available to capture the sequence history (Brown & Hinton, 2001)

Original toplevel document (pdf)

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Flashcard 7788250664204

Tags
#deep-learning #keras #lstm #python #sequence
Question
building a deep RNN by stacking multiple recurrent hidden states on top of each other. This approach potentially allows the hidden state at each level to operate at [...]
Answer
different timescale

statusnot learnedmeasured difficulty37% [default]last interval [days]               
repetition number in this series0memorised on               scheduled repetition               
scheduled repetition interval               last repetition or drill

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building a deep RNN by stacking multiple recurrent hidden states on top of each other. This approach potentially allows the hidden state at each level to operate at different timescale

Original toplevel document (pdf)

cannot see any pdfs