Matching Items (2)
Filtering by

Clear all filters

134541-Thumbnail Image.png
Description
Creativity is a critical element of human cognition for which any complete explanation of the human mind must account, and it presents a unique problem to cognitive science because the apparent "something from nothing" nature of creativity confounds simple transformations of existing information. Emergentism provides a philosophical framework for explaining

Creativity is a critical element of human cognition for which any complete explanation of the human mind must account, and it presents a unique problem to cognitive science because the apparent "something from nothing" nature of creativity confounds simple transformations of existing information. Emergentism provides a philosophical framework for explaining this feature of creativity by elaborating how novel properties of a system can be created from the complex interactions of simple elements within that system. Previous advances in cognitive science have been built the traditional information processing models of cognition. These models are limited in their ability to explain emergentism or allow for detailed behavioral measurement and understanding of cognition as it unfolds in time. In this study, I piloted the use state-of-the-art dynamical systems models of cognition and motion capture technology to measure information about cognitive and neural processes in the moments preceding creative insight. Insight problem solving refers to the phenomenon of experiencing an impasse when attempting to solve a problem that is later overcome in a flash of insight, sometimes called an "Aha!" or "Eureka!" moment. The use of these techniques to study insight problem solving provides evidence of the dynamical nature of cognition during creative tasks that may help us explore how creativity emerges from neural activity.
ContributorsHart Jr, John Thomas (Author) / Duran, Nicholas (Thesis director) / Nishimura, Joel (Committee member) / School of Social and Behavioral Sciences (Contributor, Contributor) / Barrett, The Honors College (Contributor)
Created2017-05
165089-Thumbnail Image.png
Description

Collaborative problem solving (CPS) skills are critical for students and workers in the 21st century. However, reports show that students and workers routinely underperform at CPS-related tasks. While many studies have investigated the factors that contribute to CPS performance, few have focused on prediction, and even fewer have focused exclusively

Collaborative problem solving (CPS) skills are critical for students and workers in the 21st century. However, reports show that students and workers routinely underperform at CPS-related tasks. While many studies have investigated the factors that contribute to CPS performance, few have focused on prediction, and even fewer have focused exclusively on language. This study takes a unique prediction-first approach, where the goal is to identify the features of language that best predict CPS performance, and then use those linguistic features to build explanatory models of CPS performance. Overall, we found that more sophisticated content words indicate worse CPS performance, while more sophisticated function words indicate better CPS performance. Additionally, we saw that teams using more concrete content words performed worse at the CPS task, while teams using more abstract content words performed better. Finally, we found that teams performed better when using positive emotion words (especially positive nouns) and words indicating high arousal.

ContributorsMabrey V, William (Author) / Duran, Nicholas (Thesis director) / Nishimura, Joel (Committee member) / Barrett, The Honors College (Contributor) / Neuroscience (Contributor)
Created2022-05