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Angelika Dimoka, PhD Director, Center for Neural Decision Making Department of Marketing

How Do You Really Decide? Looking “Under the Hood” and into the Brain. Angelika Dimoka, PhD Director, Center for Neural Decision Making Department of Marketing Fox School of Business Temple University. Guest Speaker: Paul A. Pavlou, PhD Associate Professor

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Angelika Dimoka, PhD Director, Center for Neural Decision Making Department of Marketing

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  1. How Do You Really Decide? Looking “Under the Hood” and into the Brain Angelika Dimoka, PhD Director, Center for Neural Decision Making Department of Marketing Fox School of Business Temple University Guest Speaker: Paul A. Pavlou, PhD Associate Professor Department of Management Information Systems Fox School of Business Temple University

  2. http://evilcyber.com

  3. http://www.compucount.org

  4. http://martin-goulding.com

  5. http://www.faa.gov Photo courtesy Federal Aviation Administration (FAA)

  6. http://www.sytronics.com

  7. DLPFC processing information

  8. functional Magnetic Resonance Imaging (fMRI) MRI scanners use RF signals to produce cross-sectional anatomical images fMRI captures brain activity by measuring changes in blood flow + = Brain Activity fMRI MRI

  9. Task Increased metabolism Oxygen consumption increased 5% Increased localized neuronal activity Decreased deoxy-Hb/voxel Increased blood flow 50% Local Vasodilation Less spin dephasing from magnetic field inhomogeneity Increased fMRI signal + = MRI Activation functional Magnetic Resonance Imaging (fMRI) fMRI Source: Manbir Singh, USC

  10. Motor Cortex DLPFC iPC ACC PCC CN VM PFC MPFC Visual Cortex IC NA OBF A H Cerebellum Prefrontal Cortex Brain Stem Limbic System Figure 2. The Major Areas of the Brain DLPFC: Dorsolateral Prefrontal Cortex - VMPFC: Ventromedial Prefrontal Cortex - OBF: Orbitofrontal Cortex - MPFC: Medial Prefrontal Cortex - ACC/PCC: Anterior/ Posterior Cingulate Cortex - NA: Nucleus Accumbens - A: Amygdala - H: Hippocampus - CN: Caudate Nucleus - IC: Insular Cortex

  11. This system is easy to use Strongly Disagree Strongly Agree Neutral 1 2 3 4 5 6 7

  12. The use of neuroscience knowledge and functional brain imaging tools to inform decision making Decision Neuroscience • Identify the brain functionality that underlie human processes (thoughts, beliefs, emotions, behaviors, decisions) • Understanding decision-making by “looking under the hood” • Open the black box of the brain

  13. Center for Neural Decision Making

  14. Center’s Objectives • Foster the advancement of decision neuroscience by enabling inter-disciplinary collaboration and knowledge sharing • Better understand decision making by building models that correspond to how the brain works • Design tools to enhance decision making, such as decision aids and advice-giving systems

  15. I can’t think http://www.newsweek.com/2011/02/27/i-can-t-think.html

  16. Reducing Information Overload of Air Traffic Controllers

  17. Problem: Information Overload due to Complex Decision Environment

  18. Solution:Interfaces that facilitate decision-making by reducing information overload • Advances in computational technologies enable interfaces that facilitate decision-making by: • Highlighting or emphasizing primary information • Downplaying or filtering out redundant information • Automating complex calculations and simple decisions • Streamlining routine tasks and straightforward decisions • Substituting difficult/complex tasks with easier/simpler ones • Moving decision-making to more appropriate times (down-time)

  19. Rationale for fMRI Study Air Traffic Controllers would engage in experimental scenarios of increasing level of complexity equipped with computer interfaces within an fMRI scanner: • fMRI data objectively capture level of information overload (i.e., DLPFC) and other emotional processes (e.g., stress) • fMRI data can capture the brain’s functionality in real-time to measure degree of information overload and other (unwanted) adverse emotional processes at all times • Design of interfaces can be guided, tested, and refined by fMRI data that directly measure brain activity

  20. Experimental Setup • Simulated Interfaces (DESIREE & TGF) • Basic En Route Automation Modernization system • Advanced Automation Support • Conflict probe & Traffic management advisory tools • Scenarios • Volume of traffic • Vertically transitioning aircrafts • Aircraft constrained by Miles-In-Trail restrictions • Traffic on separate but crossing trajectories • Traffic on conflicting crossing trajectories

  21. Pilot fMRI Results Level of brain activity Task difficulty DLPFC: dorsolateral prefrontal cortex Amygdala Insular Cortex

  22. Pilot fMRI Results (“Real-time” measurement of brain activity with fMRI) • Information Overload • DLPFC activation with increased task difficulty • Sudden drops in DLPFC activation during difficult tasks coupled with amygdala and insular cortex activation • Reduction in Information Overload with enhanced computational interfaces • Healthy levels of DLPFC activation throughout study • Prevent spikes and drops in DPLFC activation • Prevent unwanted adverse emotional reactions

  23. Design Implications • Design of computational interfaces that reduce information overload and facilitate decision-making based on real-time brain activity (through fMRI data) • Guiding design of specific decision-making interventions that prevent information overload at specific difficult tasks • Refinement of context-specific computational interfaces that are guided by brain’s underlying activity

  24. Decision Neuroscience can provide foundations for a deeper and richer understanding of decision making Build models based on how the brain works Design tools to enhance human decision-making Opening the ultimate “black box”: Measuring the brain at work How Do We Really Decide?

  25. Annual Interdisciplinary Symposium on Decision Neuroscience fox.temple.edu/neural

  26. Thank you

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