SOTAVerified

Relational Reasoning

The goal of Relational Reasoning is to figure out the relationships among different entities, such as image pixels, words or sentences, human skeletons or interactive moving agents.

Source: Social-WaGDAT: Interaction-aware Trajectory Prediction via Wasserstein Graph Double-Attention Network

Papers

Showing 3140 of 483 papers

TitleStatusHype
Visual-Linguistic Agent: Towards Collaborative Contextual Object Reasoning0
RESOLVE: Relational Reasoning with Symbolic and Object-Level Features Using Vector Symbolic ProcessingCode0
Post-Hoc Robustness Enhancement in Graph Neural Networks with Conditional Random Fields0
Two pathways to resolve relational inconsistencies0
FlexMol: A Flexible Toolkit for Benchmarking Molecular Relational LearningCode0
SOLD: Slot Object-Centric Latent Dynamics Models for Relational Manipulation Learning from Pixels0
Privately Learning from Graphs with Applications in Fine-tuning Large Language ModelsCode0
Temporal Relational Reasoning of Large Language Models for Detecting Stock Portfolio Crashes0
Shifting the Human-AI Relationship: Toward a Dynamic Relational Learning-Partner Model0
Inferring Scientific Cross-Document Coreference and Hierarchy with Definition-Augmented Relational ReasoningCode0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1CTP A4 Hops0.99Unverified