论文标题
网络和身份驱动语言创新扩散的地理特性
Networks and Identity Drive Geographic Properties of the Diffusion of Linguistic Innovation
论文作者
论文摘要
采用文化创新(例如音乐,信念,语言)通常在地理上相关,采用者在很大程度上居住在相对较少的知识良好,具有社会意义的领域的边界内。这些文化区域通常被假设是(i)促进文化创新采用的(i)表现的结果,或者(ii)在基本扩散的网络中同义。在这项研究中,我们表明,人口认同和网络拓扑是建模创新的扩散所必需的,因为它们在产生其空间特性中起着互补的作用。我们开发了一种基于代理的文化采用模型,并根据我们从10%的Twitter样本中识别出的创新词的新型数据集验证了传输的地理模式。使用我们的模型,我们能够将扩散的组合网络 +身份模型与仅模拟网络和仅身份的反事实进行比较,从而使我们能够测试网络和身份的独立和组合的作用。尽管社会科学家通常将网络或身份视为建模文化变化的核心社会结构,但我们表明,扩散的关键地理特性实际上取决于这两个因素,因为每个因素都会影响不同的扩散机制。具体而言,该网络主要通过薄弱的传播传播在城市县之间传播,而身份通过强系扩散在农村县之间的传播中起着不成比例的作用。城市和农村地区之间的扩散是全国创新扩散的关键组成部分,需要网络和身份。我们的工作表明,模型必须整合这两个因素,以了解和重现创新的采用。
Adoption of cultural innovation (e.g., music, beliefs, language) is often geographically correlated, with adopters largely residing within the boundaries of relatively few well-studied, socially significant areas. These cultural regions are often hypothesized to be the result of either (i) identity performance driving the adoption of cultural innovation, or (ii) homophily in the networks underlying diffusion. In this study, we show that demographic identity and network topology are both required to model the diffusion of innovation, as they play complementary roles in producing its spatial properties. We develop an agent-based model of cultural adoption, and validate geographic patterns of transmission in our model against a novel dataset of innovative words that we identify from a 10% sample of Twitter. Using our model, we are able to directly compare a combined network + identity model of diffusion to simulated network-only and identity-only counterfactuals -- allowing us to test the separate and combined roles of network and identity. While social scientists often treat either network or identity as the core social structure in modeling culture change, we show that key geographic properties of diffusion actually depend on both factors as each one influences different mechanisms of diffusion. Specifically, the network principally drives spread among urban counties via weak-tie diffusion, while identity plays a disproportionate role in transmission among rural counties via strong-tie diffusion. Diffusion between urban and rural areas, a key component in innovation diffusing nationally, requires both network and identity. Our work suggests that models must integrate both factors in order to understand and reproduce the adoption of innovation.