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목록dataStructure (2)
Jaegool_'s log
Priority Queues could be implemented as a list, but that has efficiency issues. At least one of insertion and deletion will be O(n). Binary heaps are an alternative that offers better performance Min Binary Heap: Min binary tree + a complete tree(insert from the left child) percolate up: when inserting a smaller value in a min binary heap Constant to insert the value at the end. Must swap with a..

Progress Check 11 on Hash Tables 1. Insertion and searching in a search tree dictionary has a best case of O(log(n)) and we sometimes aren't even that lucky. What is the best search time that we can reasonably achieve in a hash table? O(1), constant time search 2. Which of the following hash functions is correct for an integer key being stored in a dictionary of size tableSize? hash(key) = key %..