首页> 外文期刊>The European physical journal, B. Condensed matter physics >Identification of a core-periphery structure among participants of a business climate survey: An investigation based on the ZEW survey data
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Identification of a core-periphery structure among participants of a business climate survey: An investigation based on the ZEW survey data

机译:确定商业环境调查参与者之间的核心外围结构:基于ZEW调查数据的调查

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Processes of social opinion formation might be dominated by a set of closely connected agents who constitute the cohesive 'core' of a network and have a higher influence on the overall outcome of the process than those agents in the more sparsely connected 'periphery'. Here we explore whether such a perspective could shed light on the dynamics of a well known economic sentiment index. To this end, we hypothesize that the respondents of the survey under investigation form a core-periphery network, and we identify those agents that define the core (in a discrete setting) or the proximity of each agent to the core (in a continuous setting). As it turns out, there is significant correlation between the so identified cores of different survey questions. Both the discrete and the continuous cores allow an almost perfect replication of the original series with a reduced data set of core members or weighted entries according to core proximity. Using a monthly time series on industrial production in Germany, we also compared experts' predictions with the real economic development. The core members identified in the discrete setting showed significantly better prediction capabilities than those agents assigned to the periphery of the network.
机译:社会舆论形成的过程可能由一组紧密联系的主体所主导,这些主体构成了网络的凝聚力“核心”,并且比那些关系更为疏散的“外围”中的主体具有更高的影响力。在这里,我们探讨了这种观点是否可以揭示一个众所周知的经济信心指数的动态。为此,我们假设被调查的受访者形成了核心-外围网络,并且我们确定了定义核心(离散设置)或每个代理与核心的接近度(连续设置)的那些主体。 )。事实证明,如此确定的不同调查问题的核心之间存在显着相关性。离散核心和连续核心都可以通过减少核心成员数据集或根据核心接近度加权条目的方式,对原始系列进行几乎完美的复制。使用德国工业生产的每月时间序列,我们还将专家的预测与实际经济发展进行了比较。在离散设置中确定的核心成员显示出比分配给网络外围的代理更好的预测能力。

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