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전국민이 알지만 99% 틀리는 퀴즈 2탄 착각퀴즈를 행사장 현장에서 사용하는지 방법을 담은 현장 영상으로 담아봤습니다! 여러분도 활용해보세요! 1번 문제: 사과 사과 사과 (반복) 백설공주가 먹고 죽은 과일은? (사과) 정답: 왕자와 오래오래 행복하다 살다가 늙어 죽었습니다. 백설공주는 사과를 먹고 잠에 빠졌다가 다시 깨어났기 때문에 죽은 것은 아니다. 2번 문제 : 사과 사과 사과 (반복) 사과가 10개 달려있는 사과 나무가 있습니다. 올라갈 때 반절 먹고, 내려올 때에 반절 먹었습니다 그럼 몇개 남았나요?(O) 정답: 올라갈 때에 반을 먹으면 50개, 내려갈 때에 반을 먹으면 25개 고로 정답은 25개 입니다. 3번 문제: A나라의 비행기와 B나라의 비행기가 있습니다. 두 비행기가 C나라에 추락을 했습니다. 그럼, 생존자는 어디다 묻어줘야 할까요? 정답: 생존자는 묻으면 큰 일 난다. 4번 문제: 8 8 8(반복) 문제 나갑니다. 신데렐라의 난쟁이수는 1명? 신데렐라의 난쟁이 수
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전국민이 알지만 99% 틀리는 퀴즈 2탄 착각퀴즈를 행사장 현장에서 사용하는…
1.1M viewsApr 29, 2024
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