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在大数据时代映射集体行为。

Mapping collective behavior in the big-data era.

机构信息

Department of Archaeology and Anthropology, University of Bristol, Bristol BS8 1UU, United Kingdom.

Department of Anthropology, University of Missouri, Columbia, MO 65211

出版信息

Behav Brain Sci. 2014 Feb;37(1):63-76. doi: 10.1017/S0140525X13000289.

Abstract

The behavioral sciences have flourished by studying how traditional and/or rational behavior has been governed throughout most of human history by relatively well-informed individual and social learning. In the online age, however, social phenomena can occur with unprecedented scale and unpredictability, and individuals have access to social connections never before possible. Similarly, behavioral scientists now have access to "big data" sets - those from Twitter and Facebook, for example - that did not exist a few years ago. Studies of human dynamics based on these data sets are novel and exciting but, if not placed in context, can foster the misconception that mass-scale online behavior is all we need to understand, for example, how humans make decisions. To overcome that misconception, we draw on the field of discrete-choice theory to create a multiscale comparative "map" that, like a principal-components representation, captures the essence of decision making along two axes: (1) an east-west dimension that represents the degree to which an agent makes a decision independently versus one that is socially influenced, and (2) a north-south dimension that represents the degree to which there is transparency in the payoffs and risks associated with the decisions agents make. We divide the map into quadrants, each of which features a signature behavioral pattern. When taken together, the map and its signatures provide an easily understood empirical framework for evaluating how modern collective behavior may be changing in the digital age, including whether behavior is becoming more individualistic, as people seek out exactly what they want, or more social, as people become more inextricably linked, even "herdlike," in their decision making. We believe the map will lead to many new testable hypotheses concerning human behavior as well as to similar applications throughout the social sciences.

摘要

行为科学通过研究传统和/或理性行为如何在人类历史的大部分时间里受到相对知情的个体和社会学习的影响而蓬勃发展。然而,在网络时代,社会现象可以以前所未有的规模和不可预测性发生,并且个体可以获得以前不可能获得的社会联系。同样,行为科学家现在可以访问“大数据”集,例如来自 Twitter 和 Facebook 的数据集,这些数据集在几年前是不存在的。基于这些数据集的人类动态研究是新颖而令人兴奋的,但如果不将其置于上下文中,可能会产生误解,即大规模的在线行为是我们理解人类如何做出决策等现象所需的全部。为了克服这种误解,我们借鉴离散选择理论领域创建了一个多尺度比较“地图”,该地图与主成分表示类似,沿着两个轴捕捉决策的本质:(1)东西方向,表示代理做出决策的独立性程度与受社会影响的程度,以及(2)南北方向,表示与代理做出的决策相关的收益和风险的透明度程度。我们将地图分为四个象限,每个象限都具有一个签名行为模式。当一起考虑时,地图及其签名为评估现代集体行为在数字时代可能如何发生变化提供了一个易于理解的经验框架,包括行为是否变得更加个人主义,因为人们在寻找自己想要的东西,或者更加社交,因为人们在决策时变得更加不可分割,甚至“像羊群一样”。我们相信,该地图将为人类行为带来许多新的可测试假设,并且在整个社会科学领域也将有类似的应用。

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