HyperAI超神经

Sequential Image Classification On Sequential

评估指标

Permuted Accuracy

评测结果

各个模型在此基准测试上的表现结果

比较表格
模型名称Permuted Accuracy
unicornn-a-recurrent-model-for-learning-very98.4
ckconv-continuous-kernel-convolution-for98.54%
dilated-recurrent-neural-networks94.6%
flexconv-continuous-kernel-convolutions-with-1-
combining-recurrent-convolutional-and98.76%
long-expressive-memory-for-sequence-modeling-196.6%
gating-revisited-deep-multi-layer-rnns-that-1-
recurrent-highway-networks-with-grouped96.8%
ckconv-continuous-kernel-convolution-for98%
recurrent-batch-normalization95.4%
recursive-construction-of-stable-assemblies96.94
an-empirical-evaluation-of-generic97.2%
egru-event-based-gru-for-activity-sparse95.1%
flexconv-continuous-kernel-convolutions-with-198.72%
hippo-recurrent-memory-with-optimal98.3%
deep-independently-recurrent-neural-network97.2%
coupled-oscillatory-recurrent-neural-network97.34%
adaptive-saturated-rnn-remember-more-with-196.96%
legendre-memory-units-continuous-time97.2%
learning-long-term-dependencies-in97.83%
full-capacity-unitary-recurrent-neural94.1%
parallelizing-legendre-memory-unit-training98.49%
independently-recurrent-neural-network-indrnn96%
efficiently-modeling-long-sequences-with-198.70%
learning-to-remember-more-with-less96.3%
a-simple-way-to-initialize-recurrent-networks82%
r-transformer-recurrent-neural-network-
lipschitz-recurrent-neural-networks96.3%
unitary-evolution-recurrent-neural-networks88%
smpconv-self-moving-point-representations-for99.10