HyperAI
HyperAI
Startseite
Plattform
Dokumentation
Neuigkeiten
Forschungsarbeiten
Tutorials
Datensätze
Wiki
SOTA
LLM-Modelle
GPU-Rangliste
Veranstaltungen
Suche
Über
Nutzungsbedingungen
Datenschutzrichtlinie
Deutsch
HyperAI
HyperAI
Toggle Sidebar
Seite durchsuchen…
⌘
K
Command Palette
Search for a command to run...
Plattform
Startseite
SOTA
Moleküleigenschaftsvorhersage
Molecular Property Prediction On Esol
Molecular Property Prediction On Esol
Metriken
R2
RMSE
Ergebnisse
Leistungsergebnisse verschiedener Modelle zu diesem Benchmark
Columns
Modellname
R2
RMSE
Paper Title
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.
Previous
Next
Molecular Property Prediction On Esol | SOTA | HyperAI