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STS515 Alison L. G. et al.
                  inquisitiveness, statistical thinking, and extroversion. People with this mindset
                  engage in problems with intellectual curiosity, approach solutions with mature
                  statistical  thinking,  and  are  inclined  to  contribute  to  other  domains.    For
                  illustration, we gave examples of how we are initiating the development of
                  such a mindset in introductory courses at our institution.

                  References
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