English

Pretraining on Interactions for Learning Grounded Affordance Representations

Computation and Language 2022-07-07 v1 Artificial Intelligence

Abstract

Lexical semantics and cognitive science point to affordances (i.e. the actions that objects support) as critical for understanding and representing nouns and verbs. However, study of these semantic features has not yet been integrated with the "foundation" models that currently dominate language representation research. We hypothesize that predictive modeling of object state over time will result in representations that encode object affordance information "for free". We train a neural network to predict objects' trajectories in a simulated interaction and show that our network's latent representations differentiate between both observed and unobserved affordances. We find that models trained using 3D simulations from our SPATIAL dataset outperform conventional 2D computer vision models trained on a similar task, and, on initial inspection, that differences between concepts correspond to expected features (e.g., roll entails rotation). Our results suggest a way in which modern deep learning approaches to grounded language learning can be integrated with traditional formal semantic notions of lexical representations.

Keywords

Cite

@article{arxiv.2207.02272,
  title  = {Pretraining on Interactions for Learning Grounded Affordance Representations},
  author = {Jack Merullo and Dylan Ebert and Carsten Eickhoff and Ellie Pavlick},
  journal= {arXiv preprint arXiv:2207.02272},
  year   = {2022}
}

Comments

*SEM 2022

R2 v1 2026-06-24T12:15:01.080Z