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SOTA
分子性质预测
Molecular Property Prediction On Esol
Molecular Property Prediction On Esol
评估指标
R2
RMSE
评测结果
各个模型在此基准测试上的表现结果
Columns
模型名称
R2
RMSE
Paper Title
Repository
D-MPNN
-
1.050
Analyzing Learned Molecular Representations for Property Prediction
XGBoost
-
0.99
MoleculeNet: A Benchmark for Molecular Machine Learning
ChemBERTa-2 (MTR-77M)
-
0.889
ChemBERTa-2: Towards Chemical Foundation Models
ChemBFN
-
0.884
A Bayesian Flow Network Framework for Chemistry Tasks
S-CGIB
-
0.816±0.019
Pre-training Graph Neural Networks on Molecules by Using Subgraph-Conditioned Graph Information Bottleneck
-
SPMM
-
0.810
Bidirectional Generation of Structure and Properties Through a Single Molecular Foundation Model
ChemRL-GEM
-
0.798
ChemRL-GEM: Geometry Enhanced Molecular Representation Learning for Property Prediction
-
Uni-Mol
-
0.788
Uni-Mol: A Universal 3D Molecular Representation Learning Framework
-
TokenGT
0.892±0.036
0.667±0.103
Pure Transformers are Powerful Graph Learners
SMA
-
0.623
Self-Guided Masked Autoencoders for Domain-Agnostic Self-Supervised Learning
Graphormer
0.908±0.021
0.618±0.068
Do Transformers Really Perform Bad for Graph Representation?
GraphGPS
0.911±0.003
0.613±0.010
Recipe for a General, Powerful, Scalable Graph Transformer
MPNN
-
0.58
MoleculeNet: A Benchmark for Molecular Machine Learning
GATv2
0.928±0.005
0.549±0.020
How Attentive are Graph Attention Networks?
GAT
0.930±0.007
0.540±0.027
Graph Attention Networks
GCN
0.936±0.006
0.520±0.024
Semi-Supervised Classification with Graph Convolutional Networks
DropGIN
0.935±0.012
0.520±0.048
DropGNN: Random Dropouts Increase the Expressiveness of Graph Neural Networks
GIN
0.938±0.011
0.509±0.044
How Powerful are Graph Neural Networks?
PNA
0.942±0.006
0.493±0.026
Principal Neighbourhood Aggregation for Graph Nets
ESA (Edge set attention, no positional encodings)
0.944±0.002
0.485±0.009
An end-to-end attention-based approach for learning on graphs
0 of 20 row(s) selected.
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