HyperAI

Image Classification On Kuzushiji Mnist

Metrics

Accuracy
Error

Results

Performance results of various models on this benchmark

Comparison Table
Model NameAccuracyError
training-neural-networks-with-local-error99.010.99
cnn-filter-db-an-empirical-investigation-of98.75-
toward-understanding-supervised98.63-
toward-understanding-supervised98.61-
efficient-global-neural-architecture-search99.35-
multi-complementary-and-unlabeled-learning79.90-
the-convolutional-tsetlin-machine96.3-
a-comprehensive-study-of-imagenet-pre98.79-
efficient-global-neural-architecture-search99.29-
mixup-beyond-empirical-risk-minimization98.41-
multi-complementary-and-unlabeled-learning79.5-
deep-learning-for-classical-japanese-1.10
toward-understanding-supervised98.60-
improved-efficient-capsule-network-for98.43-
complementary-label-learning-for-arbitrary67.1-
toward-understanding-supervised98.68-
kercnns-biologically-inspired-lateral93.13-
context-aware-multipath-networks99.050.95
toward-understanding-supervised98.80-
toward-understanding-supervised98.81-
spinalnet-deep-neural-network-with-gradual-199.150.85
identity-mappings-in-deep-residual-networks97.82-
learning-local-discrete-features-in98.781.22
toward-understanding-supervised98.72-
toward-understanding-supervised98.66-
toward-understanding-supervised98.84-