论文标题
寻求者还是Avoider?用户建模以大规模的构想中的灵感部署
Seeker or Avoider? User Modeling for Inspiration Deployment in Large-Scale Ideation
论文作者
论文摘要
人们对在集思广益期间向他们展示的灵感做出不同的反应。现有关于大规模构思系统的研究通过时间安排,灵感相似性和灵感整合的各个方面研究了这一现象。但是,这些方法并不能解决人们的个人偏好。在提出的研究中,我们旨在解决有关灵感的缺乏。第一步,我们与15名参与者进行了共同确定的头脑风暴研究,这使我们能够区分两种类型的想法者:寻求灵感的人和灵感避免者。这些见解为第二步的研究设计提供了信息,我们在其中提出了一个用户模型,以根据他们的构想者类型对人们进行分类,该模型被转化为基于规则的和随机的基于森林的分类器。我们通过与380名参与者进行在线实验来评估用户模型的有效性。结果证实了我们提出的构思类型,表明,尽管寻求者从灵感的可用性中受益,但避开者受到负面影响。随机的森林分类器使我们能够在仅三分钟的构想后以73 \%准确性的方式与众不同。这些见解表明,提出的构想类型是大规模构思的有前途的用户模型。在将来的工作中,这种区别可能有助于设计更多个性化的大规模构想系统,以适应灵感。
People react differently to inspirations shown to them during brainstorming. Existing research on large-scale ideation systems has investigated this phenomenon through aspects of timing, inspiration similarity and inspiration integration. However, these approaches do not address people's individual preferences. In the research presented, we aim to address this lack with regards to inspirations. In a first step, we conducted a co-located brainstorming study with 15 participants, which allowed us to differentiate two types of ideators: Inspiration seekers and inspiration avoiders. These insights informed the study design of the second step, where we propose a user model for classifying people depending on their ideator types, which was translated into a rule-based and a random forest-based classifier. We evaluated the validity of our user model by conducting an online experiment with 380 participants. The results confirmed our proposed ideator types, showing that, while seekers benefit from the availability of inspiration, avoiders were influenced negatively. The random forest classifier enabled us to differentiate people with a 73 \% accuracy after only three minutes of ideation. These insights show that the proposed ideator types are a promising user model for large-scale ideation. In future work, this distinction may help to design more personalized large-scale ideation systems that recommend inspirations adaptively.