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Table 5 Performance of predicting medical codes of the next visit

From: EHR phenotyping via jointly embedding medical concepts and words into a unified vector space

Model

Top-20 recall

Top-30 recall

Top-40 recall

Concatenation-One

0.489 ±0.004

0.590 ±0.004

0.661 ±0.004

SVD

0.478 ±0.004

0.588 ±0.004

0.652 ±0.004

LDA

0.431 ±0.004

0.530 ±0.004

0.605 ±0.004

Codes-JointSG

0.499 ±0.003

0.592 ±0.003

0.662 ±0.003

Words-JointSG

0.437 ±0.004

0.536 ±0.004

0.609 ±0.004

Concatenation-JointSG

0.506 ±0.003

0.599 ±0.003

0.670 ±0.003

  1. The average and standard error of Top-k recall (k=20, 30, 40) are provided