| Literature DB >> 24137120 |
Balder Onarheim1, Morten Friis-Olivarius.
Abstract
This article investigates how neuroscience in general, and neuroscience of creativity in particular, can be used in teaching "applied creativity" and the usefulness of this approach to creativity training. The article is based on empirical data and our experiences from the Applied NeuroCreativity (ANC) program, taught at business schools in Denmark and Canada. In line with previous studies of successful creativity training programs the ANC participants are first introduced to cognitive concepts of creativity, before applying these concepts to a relevant real world creative problem. The novelty in the ANC program is that the conceptualization of creativity is built on neuroscience, and a crucial aspect of the course is giving the students a thorough understanding of the neuroscience of creativity. Previous studies have reported that the conceptualization of creativity used in such training is of major importance for the success of the training, and we believe that the neuroscience of creativity offers a novel conceptualization for creativity training. Here we present pre/post-training tests showing that ANC students gained more fluency in divergent thinking (a traditional measure of trait creativity) than those in highly similar courses without the neuroscience component, suggesting that principles from neuroscience can contribute effectively to creativity training and produce measurable results on creativity tests. The evidence presented indicates that the inclusion of neuroscience principles in a creativity course can in 8 weeks increase divergent thinking skills with an individual relative average of 28.5%.Entities:
Keywords: application; creativity; neurocreativity; neuroscience; neuroscience of creativity; psychology; teaching; training
Year: 2013 PMID: 24137120 PMCID: PMC3797545 DOI: 10.3389/fnhum.2013.00656
Source DB: PubMed Journal: Front Hum Neurosci ISSN: 1662-5161 Impact factor: 3.169
Figure 1The Double Diamond (DD).
Figure 2The average number of uses generated per object on the first and second test for each group. Error bars represent the standard error of the mean.
Figure 3The negative correlation between individual increase calculated in percentage on the second test and performance on the first test.