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arXiv 提交日期: 2026-06-08
📄 Abstract - Introducing multiplex semantic networks as multifaceted representations of creative associative knowledge across multilingual samples

Creativity is a complex cognitive ability that relies on knowledge organisation and retrieval from semantic memory. Yet most research uses a single task to measure it, capturing only a fraction of this complexity. This study investigates multiplex networks - layered semantic networks obtained from six cognitive tasks - as a more comprehensive approach to modelling the associative knowledge underlying creativity. We collected data from N=518 individuals from four countries (Austria, USA, Singapore, Italy). From their responses to verbal fluency, sentence-chain, free association, and narrative writing tasks, we constructed semantic networks and assembled them in a multiplex structure. AI persona-based responses provided a comparison baseline. Structural reducibility analyses showed that different task layers captured distinct, non-redundant information about semantic organisation, supporting the use of multiple tasks over any single one. The networks from high- and low-creative groups remained structurally distinct, while AI-generated networks showed near-identical structures regardless of creativity group. Finally, we used 12 features (network measures, emotional scores, and spreading activation simulations) in a machine learning model using ridge regression to predict individual creativity scores. The combination of structurally similar layers, as identified in the previous stage, improved a proof-of-concept prediction accuracy by 50%. Structural measures showed the highest feature importance, with spreading activation dynamics providing additional predictive power. Together, these findings indicate that multiplex semantic networks capture a richer, cross-cultural picture of associative knowledge underlying creativity. We also release our diverse dataset and code to foster diverse computational approaches within the creativity community.

顶级标签: machine learning general
详细标签: multiplex networks creativity semantic memory cross-cultural ridge regression 或 搜索:

引入多重语义网络:作为跨语言样本中创造性联想知识的多面表征 / Introducing multiplex semantic networks as multifaceted representations of creative associative knowledge across multilingual samples


1️⃣ 一句话总结

本研究通过构建来自六种不同认知任务的多层语义网络(多重网络),更全面地捕捉了创造力背后的联想知识结构,发现不同任务层提供了互补信息,且多层结构相比单一网络能更准确地预测个体创造力得分,同时验证了该方法的跨文化适用性。

源自 arXiv: 2606.09403