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By some measures, Millennials (people ages 18-34) have very different lives than earlier generations did when they were young. Theyre slow to adopt many of the traditional markers of adulthood. For the first time in more than 130 years, young adults are more likely to be living in their parents home than in any other living arrangement. In fact, a larger share of them are living with their parents than with a romantic partner marking a significant historical shift.
Assume there were 77 million (77,000,000) Millennials in 2014. According to the graphic, in 2014 how many more Millennials lived in their parent(s) home than were married or cohabitating in their own household? Note that although the numbers displayed within the graphic don't display the % sign, they are percentages.
??? more Millennials lived in their parent(s)' home than were married or cohabitating in their own household
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