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SOTA
Time Series Classification
Time Series Classification On Physionet
Time Series Classification On Physionet
Métriques
AUPRC
Résultats
Résultats de performance de divers modèles sur ce benchmark
Columns
Nom du modèle
AUPRC
Paper Title
Repository
GRU-D - APC (n = 0)
53.3
As easy as APC: overcoming missing data and class imbalance in time series with self-supervised learning
GRU-D [12]
53.7
As easy as APC: overcoming missing data and class imbalance in time series with self-supervised learning
GRU-D - APC (n = 1)
55.1
As easy as APC: overcoming missing data and class imbalance in time series with self-supervised learning
IP-Nets
-
Set Functions for Time Series
ODE-RNN
-
Latent ODEs for Irregularly-Sampled Time Series
Phased-LSTM
-
Set Functions for Time Series
Latent ODE + Poisson
-
Latent ODEs for Irregularly-Sampled Time Series
GRU-APC (n = 0)
50.4
As easy as APC: overcoming missing data and class imbalance in time series with self-supervised learning
GRU-D [4]
-
As easy as APC: overcoming missing data and class imbalance in time series with self-supervised learning
SeFT-Attn
-
Set Functions for Time Series
GRU-Simple
-
Set Functions for Time Series
BRITS [4]
-
As easy as APC: overcoming missing data and class imbalance in time series with self-supervised learning
Transformer
-
Set Functions for Time Series
mTAND-Full
-
Multi-Time Attention Networks for Irregularly Sampled Time Series
GRU-D
-
Recurrent Neural Networks for Multivariate Time Series with Missing Values
GRU-Forward
52
As easy as APC: overcoming missing data and class imbalance in time series with self-supervised learning
Latent ODE (ODE enc
-
Latent ODEs for Irregularly-Sampled Time Series
GRU-Simple
53.8
As easy as APC: overcoming missing data and class imbalance in time series with self-supervised learning
IP-NETS
-
Interpolation-Prediction Networks for Irregularly Sampled Time Series
RNN ∆t
-
-
-
0 of 28 row(s) selected.
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