Natural languages commonly display a trade-off among different strategies to convey constituent roles. A similar trade-off, however, has not been observed in recent simulations of iterated language learning with neural network based agents (Chaabouni et al., 2019b). In this work, we re-evaluate this result in the light of two important factors, namely: the lack of effort-based pressure in the agents and the lack of variability in the initial input language.
翻译:自然语言通常在传达构成作用的不同战略之间显示权衡,但在最近的神经网络代理器迭代语言学习模拟中,却没有看到类似的权衡(Chaabouni等人,2019b),在这项工作中,我们根据两个重要因素重新评估这一结果,即代理器缺乏努力压力和初始输入语言缺乏变异性。