Document Classification On Reuters 21578
评估指标
F1
评测结果
各个模型在此基准测试上的表现结果
模型名称 | F1 | Paper Title | Repository |
---|---|---|---|
MAGNET | 89.9 | MAGNET: Multi-Label Text Classification using Attention-based Graph Neural Network | |
VLAWE | 89.3 | Vector of Locally-Aggregated Word Embeddings (VLAWE): A Novel Document-level Representation | |
ApproxRepSet | - | Rep the Set: Neural Networks for Learning Set Representations | |
LSTM-reg (single model) | 87.0 | Rethinking Complex Neural Network Architectures for Document Classification | |
REL-RWMD k-NN | - | Speeding up Word Mover's Distance and its variants via properties of distances between embeddings | |
KD-LSTMreg | 88.9 | DocBERT: BERT for Document Classification | |
SCDV-MS | 82.71 | Improving Document Classification with Multi-Sense Embeddings | |
Orthogonalized Soft VSM | - | Text classification with word embedding regularization and soft similarity measure |
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