论文标题
结合传感器和调查来研究社会环境:科学会议的案例
Combining sensors and surveys to study social contexts: Case of scientific conferences
论文作者
论文摘要
在本文中,我们提供了四个数据集的独特集合来研究社会行为。数据是在四个国际科学会议上收集的,在此期间,我们衡量了面对面的联系以及有关个人的其他信息。建立在过去十年来研究人类社会行为的创新方法的基础上,使用Sociopatterns平台对参与者之间的互动进行了监控,该平台允许在明确定义的社会环境中每20秒收集面对面的身体接近事件。通过伴随的调查,我们收集了有关参与者的广泛信息,包括社会人口统计学特征,五个人格特征,钻石情境感知,衡量科学吸引力的度量,参加会议的动机以及对人群的看法(例如,就性别分布而言)。链接传感器和调查数据为社会行为提供了丰富的窗口:在个人层面上,数据集允许人格科学家研究社会行为的个体差异,并查明个人特征(例如,社会角色,人格特征,情境感知)驱动这些个人差异。在小组级别,数据还允许研究在社交,网络和思想共享事件期间,在科学人群中进行互动模式的机制。数据可用于辅助分析。
In this paper, we present a unique collection of four data sets to study social behaviour. The data were collected at four international scientific conferences, during which we measured face-to-face contacts along with additional information about individuals. Building on innovative methods developed in the last decade to study human social behaviour, interactions between participants were monitored using the SocioPatterns platform, which allows collecting face-to-face physical proximity events every 20 seconds in a well-defined social context. Through accompanying surveys, we gathered extensive information about the participants, including sociodemographic characteristics, Big Five personality traits, DIAMONDS situational perceptions, measure of scientific attractiveness, motivations for attending the conferences, and perceptions of the crowd (e.g., in terms of gender distribution). Linking the sensor and survey data provides a rich window into social behaviour: At the individual level, the data sets allow personality scientists to investigate individual differences in social behaviour and pinpoint which individual characteristics (e.g., social roles, personality traits, situational perceptions) drive these individual differences. At the group level, the data also allow studying the mechanisms responsible for interacting patterns within a scientific crowd during a social, networking and idea-sharing event. The data are available for secondary analysis.