Emergent Communication for Understanding Human Language Evolution:
What's Missing?
- URL: http://arxiv.org/abs/2204.10590v1
- Date: Fri, 22 Apr 2022 09:21:53 GMT
- Title: Emergent Communication for Understanding Human Language Evolution:
What's Missing?
- Authors: Lukas Galke, Yoav Ram, Limor Raviv
- Abstract summary: We discuss three important phenomena with respect to the emergence and benefits of compositionality.
We argue that one possible reason for these mismatches is that key cognitive and communicative constraints of humans are not yet integrated.
- Score: 1.2891210250935146
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Emergent communication protocols among humans and artificial neural network
agents do not yet share the same properties and show some critical mismatches
in results. We describe three important phenomena with respect to the emergence
and benefits of compositionality: ease-of-learning, generalization, and group
size effects (i.e., larger groups create more systematic languages). The latter
two are not fully replicated with neural agents, which hinders the use of
neural emergent communication for language evolution research. We argue that
one possible reason for these mismatches is that key cognitive and
communicative constraints of humans are not yet integrated. Specifically, in
humans, memory constraints and the alternation between the roles of speaker and
listener underlie the emergence of linguistic structure, yet these constraints
are typically absent in neural simulations. We suggest that introducing such
communicative and cognitive constraints would promote more linguistically
plausible behaviors with neural agents.
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