HyperAI

Image Classification On Kuzushiji Mnist

Metrics

Accuracy
Error

Results

Performance results of various models on this benchmark

Model Name
Accuracy
Error
Paper TitleRepository
VGG8B(2x) + LocalLearning + CO99.010.99Training Neural Networks with Local Error Signals
ResNet-1498.75-CNN Filter DB: An Empirical Investigation of Trained Convolutional Filters
NSRL (log D) (d=32)98.63-Toward Understanding Supervised Representation Learning with RKHS and GAN-
NSRL (log D) (d=8)98.61-Toward Understanding Supervised Representation Learning with RKHS and GAN-
KMNIST-Tiny99.35-Efficient Global Neural Architecture Search
linear/flexible model79.90-Multi-Complementary and Unlabeled Learning for Arbitrary Losses and Models-
Convolutional Tsetlin Machine96.3-The Convolutional Tsetlin Machine
Resnet-15298.79-A Comprehensive Study of ImageNet Pre-Training for Historical Document Image Analysis-
KMNIST-Mobile99.29-Efficient Global Neural Architecture Search
PreActResNet-18 + Input Mixup98.41-mixup: Beyond Empirical Risk Minimization
FWD79.5-Multi-Complementary and Unlabeled Learning for Arbitrary Losses and Models-
ResNet18 + VGG Ensemble-1.10Deep Learning for Classical Japanese Literature
CN(d=8)98.60-Toward Understanding Supervised Representation Learning with RKHS and GAN-
Efficient Capsnet98.43-Improved efficient capsule network for Kuzushiji-MNIST benchmark dataset classification
Complementary-Label Learning67.1-Complementary-Label Learning for Arbitrary Losses and Models
NSRL (WGAN) (d=8)98.68-Toward Understanding Supervised Representation Learning with RKHS and GAN-
KerCNN93.13-KerCNNs: biologically inspired lateral connections for classification of corrupted images-
CAMNet399.050.95Context-Aware Multipath Networks-
CN(d=16)98.80-Toward Understanding Supervised Representation Learning with RKHS and GAN-
NSRL (log D) (d=16)98.81-Toward Understanding Supervised Representation Learning with RKHS and GAN-
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