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Models/RETAIN

RETAIN

Reported on 7 benchmarks across 1 task · 1 paper · 7 SOTA

Note: results are matched by exact model name. Different papers may use the same name for different model variants.

Medical7 results

  • Disease PredictiononUK CF trust
    AUC (ABPA)· 2016-08-19
    0.685
    best: 0.687 (PASS)
    SOTA
    RETAIN: An Interpretable Predictive Model for Healthcare using Reverse Time Attention MechanismarXiv:1608.05745
  • Disease PredictiononUK CF trust
    AUC (Aspergillus)· 2016-08-19
    0.641
    SOTA
    RETAIN: An Interpretable Predictive Model for Healthcare using Reverse Time Attention MechanismarXiv:1608.05745
  • Disease PredictiononUK CF trust
    AUC (Diabetes)· 2016-08-19
    0.764
    best: 0.771 (PASS)
    SOTA
    RETAIN: An Interpretable Predictive Model for Healthcare using Reverse Time Attention MechanismarXiv:1608.05745
  • Disease PredictiononUK CF trust
    AUC (E. Coli)· 2016-08-19
    0.697
    best: 0.701 (PASS)
    SOTA
    RETAIN: An Interpretable Predictive Model for Healthcare using Reverse Time Attention MechanismarXiv:1608.05745
  • Disease PredictiononUK CF trust
    AUC (I. Obstruction)· 2016-08-19
    0.578
    SOTA
    RETAIN: An Interpretable Predictive Model for Healthcare using Reverse Time Attention MechanismarXiv:1608.05745
  • Disease PredictiononUK CF trust
    AUC (K. Pneumonia)· 2016-08-19
    0.715
    best: 0.718 (PASS)
    SOTA
    RETAIN: An Interpretable Predictive Model for Healthcare using Reverse Time Attention MechanismarXiv:1608.05745
  • Disease PredictiononUK CF trust
    I. Obstruction· 2016-08-19
    0.578
    SOTA
    RETAIN: An Interpretable Predictive Model for Healthcare using Reverse Time Attention MechanismarXiv:1608.05745