Periodic Reporting for period 1 - SOURCES (Sources of rationality: arousal and the use of rational and heuristic decision strategies)
Période du rapport: 2018-08-15 au 2020-08-14
Unlike other models, SNNs can produce brain phenomena, such as synchronised oscillations of neural activity. Thus, they are in good position to link neural and behavoral data from experiments. To take advantage of this, we conducted an ET-EEG laboratory study on the impact of arousal on decision making, where we checked if arousal elicited by affective pictures impacts information processing prior to making a choice, and if this impact is reflected in pupil size and EEG. Our earlier studies show that emotional arousal and mental effort impact pupil size during complex decision making and that EEG reflects the degree of information processing prior to making a decision. With the current study, we hoped to replicate these separate findings in one dataset. Initial insights into our behavioral data highlight the importance of individual differences in anxiety for understanding the effects of experimental manipulations of arousal. Highly anxious individuals, when stimulated with arousing pictures, tend to decrease the amount of information processed before a decision, which replicates our earlier findings and points to attention narrowing under high arousal as the mechanism underlying simplified decision making. In contrast, individuals with low anxiety, when presented with arousing pictures, tend to increase the amount of information before a decision – this is a novel finding demanding explanation. The rich data from our ET-EEG experiment are currently being processed, and the further analyses should tell us how the momentary changes in arousal, indexed by pupil dynamics, translate to information processing in individuals high and low in anxiety.
To achieve the applied objective of the project, we conducted an ET usability study in cooperation with Bidfood NL company. In this study, participants interacted with Bidfood NL website to perform a task of wholesale ordering of multiple food items for a restaurant, in ‘time pressure’ and no ‘time pressure’ conditions. We wanted to know if information processing load imposed by the necessity to perform within time limit would translate to indices of mental effort – namely the subjective feeling of effort as well as pupil size increase.
Indeed, we showed that participants’ pupils were larger in the time pressure condition, indicating more processing effort, even though the overall amount of information to process was the same in both conditions. Pupil size during information processing was also positively associated with subjective measures of cognitive effort. We also showed that large pupil size was associated with a characteristic visual search pattern suggesting that high cognitive effort leads to shallow information processing. Last but not least, we showed that the subjective measure of cognitive effort predicted the liking of the website, suggesting that processing effort can negatively impact evaluations of websites. We translated these findings into practical advice for Bidfood NL and we are curently preparing a publication reporting the results.
Another method to understand the mind is to employ fine-grained measurement techniques that can inform us about momentary changes in brain state and link them to behavior. To this end, we went beyond the traditional ‘single method study’ by simultaneously recording eye movements and EEG, together with behavior on a complex decision task. With the rich data obtained, we will be able to answer the precise questions about the nature of brain-behavior link posited with our computational model. We have also stepped out of the laboratory to test the applicability of eyetracking in the real world. We showed that pupil size, not frequently measured in real life contexts, reflects information processing effort and predicts visual search indicative of shallow, unfocused information processing.
Our results can impact both the basic research and business. Due to the increase in computational power, large models of complex cognition are likely to become the norm rather than the exception in neuroscience, and our model is one example how it can be done. Also, using multiple measurement techniques should become the norm, due to the progress in recording hardware and software. Even though such simultaneous recordings generate a wealth of data which take long to process, this can be aided by the developments in machine data analysis. And last but not least, by showing the applicability of pupil measurement in web usability context, we demonstrate the usefulness of neuroscience to business.