Cross-linguistic comparisons on distributive universal quantification: <i>Each</i> vs. <i>every</i> vs. <i>mei</i>
Shi-Zhe Huang,
Tyler Knowlton,
Florian Schwarz
Abstract:This paper discusses differences between each and every with regard to (a) pair-list readings; (b) subject/object asymmetries seen with every but not with each; and (c) the long-held intuition that each is more individualistic whereas every is friendlier to groups. We propose that these phenomena can be captured by prior accounts of the Mandarin Chinese distributive universal quantifier mei. In particular, we consider the Double Variable Hypothesis (the idea that in DUQ, for every x, there must be a y) (S.-Z. … Show more
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