Papers with neural agent-based simulations of language emergence and change

    1 papers
    Communication Drives the Emergence of Language Universals in Neural Agents: Evidence from the Word-order/Case-marking Trade-off (2023.tacl-1)

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    Challenge: Existing models of language learning with neural agents lack appropriate cognitive biases in artificial learners.
    Approach: They propose a framework where speaking and listening agents learn a miniature language via supervised learning and optimize it for communication via reinforcement learning.
    Outcome: The proposed framework replicates the word-order/case-marking trade-off without hard-coding biases in the agents.

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