Institute of Physics, Budapest University of Technology and Economics, Budapest, Hungary.
PLoS One. 2013 Aug 21;8(8):e71226. doi: 10.1371/journal.pone.0071226. eCollection 2013.
Use of socially generated "big data" to access information about collective states of the minds in human societies has become a new paradigm in the emerging field of computational social science. A natural application of this would be the prediction of the society's reaction to a new product in the sense of popularity and adoption rate. However, bridging the gap between "real time monitoring" and "early predicting" remains a big challenge. Here we report on an endeavor to build a minimalistic predictive model for the financial success of movies based on collective activity data of online users. We show that the popularity of a movie can be predicted much before its release by measuring and analyzing the activity level of editors and viewers of the corresponding entry to the movie in Wikipedia, the well-known online encyclopedia.
利用社交生成的“大数据”来获取人类社会集体思维状态的信息,已经成为计算社会科学这一新兴领域的一个新范例。这种方法的一个自然应用就是预测社会对新产品的反应,比如受欢迎程度和采用率。然而,要实现“实时监测”和“早期预测”之间的衔接,仍然是一个巨大的挑战。在这里,我们报告了一项基于在线用户集体活动数据,为电影的财务成功建立一个简约预测模型的尝试。我们通过测量和分析维基百科(著名的在线百科全书)中电影对应条目的编辑和观众的活动水平,展示了在电影上映之前就可以对其受欢迎程度进行预测。