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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.
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