AI Agents 相关度: 8/10

The emergence of numerical representations in communicating artificial agents

Daniela Mihai, Lucas Weber, Francesca Franzon
arXiv: 2602.10996v1 发布: 2026-02-11 更新: 2026-02-11

AI 摘要

研究了神经网络智能体在交流中涌现数字表示的能力,发现通信压力不足以产生组合性的数字编码。

主要贡献

  • 研究了智能体在通信压力下涌现数字表示的能力
  • 对比了离散和连续两种通信方式
  • 发现通信压力虽能保证精度,但不足以产生组合性编码

方法论

使用基于神经网络的智能体进行参照博弈,考察它们在离散和连续通信通道中表达数字的能力。

原文摘要

Human languages provide efficient systems for expressing numerosities, but whether the sheer pressure to communicate is enough for numerical representations to arise in artificial agents, and whether the emergent codes resemble human numerals at all, remains an open question. We study two neural network-based agents that must communicate numerosities in a referential game using either discrete tokens or continuous sketches, thus exploring both symbolic and iconic representations. Without any pre-defined numeric concepts, the agents achieve high in-distribution communication accuracy in both communication channels and converge on high-precision symbol-meaning mappings. However, the emergent code is non-compositional: the agents fail to derive systematic messages for unseen numerosities, typically reusing the symbol of the highest trained numerosity (discrete), or collapsing extrapolated values onto a single sketch (continuous). We conclude that the communication pressure alone suffices for precise transmission of learned numerosities, but additional pressures are needed to yield compositional codes and generalisation abilities.

标签

多智能体通信 涌现通信 数字表示 神经网络

arXiv 分类

cs.MA cs.CL cs.LG