Google面试题中的两道趣题 | Matrix67: The Aha Moments



Google面试题中的两道趣题 | Matrix67: The Aha Moments

1. 给你一个长度为N的链表。N很大,但你不知道N有多大。你的任务是从这N个元素中随机取出k个元素。你只能遍历这个链表一次。你的算法必须保证取出的元素恰好有k个,且它们是完全随机的(出现概率均等)。

2. 给你一个数组A[1..n],请你在O(n)的时间里构造一个新的数组B[1..n],使得B[i]=A[1]*A[2]*…*A[n]/A[i]。你不能使用除法运算。

Solution:
1. 遍历链表,给每个元素赋一个0到1之间的随机数作为权重(像Treap一样),最后取出权重最大的k个元素。你可以用一个堆来维护当前最大的k个数。
2. 从前往后扫一遍,然后从后往前再扫一遍。也就是说,线性时间构造两个新数组,P[i]=A[1]*A[2]*…*A[i],Q[i]=A[n]*A[n-1]*…*A[i]。于是,B[i]=P[i-1]*Q[i+1]。

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