Deep daxes: mutual exclusivity arises through both learning biases and pragmatic strategies in neural networks
Deep daxes: mutual exclusivity arises through both learning biases and pragmatic strategies in neural networks
Citació
- Gulordava K, Brochhagen T, Boleda G. Deep daxes: mutual exclusivity arises through both learning biases and pragmatic strategies in neural networks. In: Denison S, Mack M, Xu Y, Armstrong BC. Proceedings for the 42nd Annual Meeting of the Cognitive Science Society; 2020 Jul 29 - 1 Aug. [S.l]: Cognitive Science Society, 2020. p. 2089-95.
Enllaç permanent
Descripció
Resum
Children’s tendency to associate novel words with novel referents has been taken to reflect a bias toward mutual exclusivity. This tendency may be advantageous both as (1) an ad-hoc referent selection heuristic to single out referents lacking a label and as (2) an organizing principle of lexical acquisition. This paper investigates under which circumstances cross-situational neural models can come to exhibit analogous behavior to children, focusing on these two possibilities and their interaction. To this end, we evaluate neural networks’ on both symbolic data and, as a first, on large-scale image data. We find that constraints in both learning and selection can foster mutual exclusivity, as long as they put words in competition for lexical meaning. For computational models, these findings clarify the role of available options for better performance in tasks where mutual exclusivity is advantageous. For cognitive research, they highlight latent interactions between word learning, referent selection mechanisms, and the structure of stimuli of varying complexity: symbolic and visual