The paper presents two case studies of multi-agent information exchange involving generalized quantifiers. We focus on scenarios
in which agents successfully converge to knowledge on the basis of the information about the knowledge of others, so-called
Muddy Children puzzle [1] and Top Hat puzzle. We investigate the relationship between certain invariance properties of quantifiers
and the successful convergence to knowledge in such situations. We generalize the scenarios to account for public announcements
with arbitrary quantifiers. We show that the Muddy Children puzzle is solvable for any number of agents if and only if the
quantifier in the announcement is positively active (satisfies a version of the variety condition). In order to get the characterization
result, we propose a new concise logical modeling of the puzzle based on the number triangle representation of generalized
quantifiers. In a similar vein, we also study the Top Hat puzzle. We observe that in this case an announcement needs to satisfy
stronger conditions in order to guarantee solvability. Hence, we introduce a new property, called bounded thickness, and show
that the solvability of the Top Hat puzzle for arbitrary number of agents is equivalent to the announcement being 1-thick.
Keywords generalized quantifiers – number triangle – invariance properties – Muddy Children Puzzle – Top Hat Puzzle – epistemic logic