Heap (data structure) GudangMovies21 Rebahinxxi LK21

      In computer science, a heap is a tree-based data structure that satisfies the heap property: In a max heap, for any given node C, if P is the parent node of C, then the key (the value) of P is greater than or equal to the key of C. In a min heap, the key of P is less than or equal to the key of C. The node at the "top" of the heap (with no parents) is called the root node.
      The heap is one maximally efficient implementation of an abstract data type called a priority queue, and in fact, priority queues are often referred to as "heaps", regardless of how they may be implemented. In a heap, the highest (or lowest) priority element is always stored at the root. However, a heap is not a sorted structure; it can be regarded as being partially ordered. A heap is a useful data structure when it is necessary to repeatedly remove the object with the highest (or lowest) priority, or when insertions need to be interspersed with removals of the root node.
      A common implementation of a heap is the binary heap, in which the tree is a complete binary tree (see figure). The heap data structure, specifically the binary heap, was introduced by J. W. J. Williams in 1964, as a data structure for the heapsort sorting algorithm. Heaps are also crucial in several efficient graph algorithms such as Dijkstra's algorithm. When a heap is a complete binary tree, it has the smallest possible height—a heap with N nodes and a branches for each node always has loga N height.
      Note that, as shown in the graphic, there is no implied ordering between siblings or cousins and no implied sequence for an in-order traversal (as there would be in, e.g., a binary search tree). The heap relation mentioned above applies only between nodes and their parents, grandparents. The maximum number of children each node can have depends on the type of heap.
      Heaps are typically constructed in-place in the same array where the elements are stored, with their structure being implicit in the access pattern of the operations. Heaps differ in this way from other data structures with similar or in some cases better theoretic bounds such as Radix trees in that they require no additional memory beyond that used for storing the keys.


      Operations


      The common operations involving heaps are:

      Basic
      find-max (or find-min): find a maximum item of a max-heap, or a minimum item of a min-heap, respectively (a.k.a. peek)
      insert: adding a new key to the heap (a.k.a., push)
      extract-max (or extract-min): returns the node of maximum value from a max heap [or minimum value from a min heap] after removing it from the heap (a.k.a., pop)
      delete-max (or delete-min): removing the root node of a max heap (or min heap), respectively
      replace: pop root and push a new key. This is more efficient than a pop followed by a push, since it only needs to balance once, not twice, and is appropriate for fixed-size heaps.
      Creation
      create-heap: create an empty heap
      heapify: create a heap out of given array of elements
      merge (union): joining two heaps to form a valid new heap containing all the elements of both, preserving the original heaps.
      meld: joining two heaps to form a valid new heap containing all the elements of both, destroying the original heaps.
      Inspection
      size: return the number of items in the heap.
      is-empty: return true if the heap is empty, false otherwise.
      Internal
      increase-key or decrease-key: updating a key within a max- or min-heap, respectively
      delete: delete an arbitrary node (followed by moving last node and sifting to maintain heap)
      sift-up: move a node up in the tree, as long as needed; used to restore heap condition after insertion. Called "sift" because node moves up the tree until it reaches the correct level, as in a sieve.
      sift-down: move a node down in the tree, similar to sift-up; used to restore heap condition after deletion or replacement.


      Implementation


      Heaps are usually implemented with an array, as follows:

      Each element in the array represents a node of the heap, and
      The parent / child relationship is defined implicitly by the elements' indices in the array.

      For a binary heap, in the array, the first index contains the root element. The next two indices of the array contain the root's children. The next four indices contain the four children of the root's two child nodes, and so on. Therefore, given a node at index i, its children are at indices ⁠



      2
      i
      +
      1


      {\displaystyle 2i+1}

      ⁠ and ⁠



      2
      i
      +
      2


      {\displaystyle 2i+2}

      ⁠, and its parent is at index ⌊(i−1)/2⌋. This simple indexing scheme makes it efficient to move "up" or "down" the tree.
      Balancing a heap is done by sift-up or sift-down operations (swapping elements which are out of order). As we can build a heap from an array without requiring extra memory (for the nodes, for example), heapsort can be used to sort an array in-place.
      After an element is inserted into or deleted from a heap, the heap property may be violated, and the heap must be re-balanced by swapping elements within the array.
      Although different types of heaps implement the operations differently, the most common way is as follows:

      Insertion: Add the new element at the end of the heap, in the first available free space. If this will violate the heap property, sift up the new element (swim operation) until the heap property has been reestablished.
      Extraction: Remove the root and insert the last element of the heap in the root. If this will violate the heap property, sift down the new root (sink operation) to reestablish the heap property.
      Replacement: Remove the root and put the new element in the root and sift down. When compared to extraction followed by insertion, this avoids a sift up step.
      Construction of a binary (or d-ary) heap out of a given array of elements may be performed in linear time using the classic Floyd algorithm, with the worst-case number of comparisons equal to 2N − 2s2(N) − e2(N) (for a binary heap), where s2(N) is the sum of all digits of the binary representation of N and e2(N) is the exponent of 2 in the prime factorization of N. This is faster than a sequence of consecutive insertions into an originally empty heap, which is log-linear.


      Variants




      Comparison of theoretic bounds for variants


      Here are time complexities of various heap data structures. The abbreviation am. indicates that the given complexity is amortized, otherwise it is a worst-case complexity. For the meaning of "O(f)" and "Θ(f)" see Big O notation. Names of operations assume a max-heap.


      Applications


      The heap data structure has many applications.

      Heapsort: One of the best sorting methods being in-place and with no quadratic worst-case scenarios.
      Selection algorithms: A heap allows access to the min or max element in constant time, and other selections (such as median or kth-element) can be done in sub-linear time on data that is in a heap.
      Graph algorithms: By using heaps as internal traversal data structures, run time will be reduced by polynomial order. Examples of such problems are Prim's minimal-spanning-tree algorithm and Dijkstra's shortest-path algorithm.
      Priority queue: A priority queue is an abstract concept like "a list" or "a map"; just as a list can be implemented with a linked list or an array, a priority queue can be implemented with a heap or a variety of other methods.
      K-way merge: A heap data structure is useful to merge many already-sorted input streams into a single sorted output stream. Examples of the need for merging include external sorting and streaming results from distributed data such as a log structured merge tree. The inner loop is obtaining the min element, replacing with the next element for the corresponding input stream, then doing a sift-down heap operation. (Alternatively the replace function.) (Using extract-max and insert functions of a priority queue are much less efficient.)


      Programming language implementations


      The C++ Standard Library provides the make_heap, push_heap and pop_heap algorithms for heaps (usually implemented as binary heaps), which operate on arbitrary random access iterators. It treats the iterators as a reference to an array, and uses the array-to-heap conversion. It also provides the container adaptor priority_queue, which wraps these facilities in a container-like class. However, there is no standard support for the replace, sift-up/sift-down, or decrease/increase-key operations.
      The Boost C++ libraries include a heaps library. Unlike the STL, it supports decrease and increase operations, and supports additional types of heap: specifically, it supports d-ary, binomial, Fibonacci, pairing and skew heaps.
      There is a generic heap implementation for C and C++ with D-ary heap and B-heap support. It provides an STL-like API.
      The standard library of the D programming language includes std.container.BinaryHeap, which is implemented in terms of D's ranges. Instances can be constructed from any random-access range. BinaryHeap exposes an input range interface that allows iteration with D's built-in foreach statements and integration with the range-based API of the std.algorithm package.
      For Haskell there is the Data.Heap module.
      The Java platform (since version 1.5) provides a binary heap implementation with the class java.util.PriorityQueue in the Java Collections Framework. This class implements by default a min-heap; to implement a max-heap, programmer should write a custom comparator. There is no support for the replace, sift-up/sift-down, or decrease/increase-key operations.
      Python has a heapq module that implements a priority queue using a binary heap. The library exposes a heapreplace function to support k-way merging.
      PHP has both max-heap (SplMaxHeap) and min-heap (SplMinHeap) as of version 5.3 in the Standard PHP Library.
      Perl has implementations of binary, binomial, and Fibonacci heaps in the Heap distribution available on CPAN.
      The Go language contains a heap package with heap algorithms that operate on an arbitrary type that satisfies a given interface. That package does not support the replace, sift-up/sift-down, or decrease/increase-key operations.
      Apple's Core Foundation library contains a CFBinaryHeap structure.
      Pharo has an implementation of a heap in the Collections-Sequenceable package along with a set of test cases. A heap is used in the implementation of the timer event loop.
      The Rust programming language has a binary max-heap implementation, BinaryHeap, in the collections module of its standard library.
      .NET has PriorityQueue class which uses quaternary (d-ary) min-heap implementation. It is available from .NET 6.


      See also


      Sorting algorithm
      Search data structure
      Stack (abstract data type)
      Queue (abstract data type)
      Tree (data structure)
      Treap, a form of binary search tree based on heap-ordered trees


      References




      External links



      Heap at Wolfram MathWorld
      Explanation of how the basic heap algorithms work
      Bentley, Jon Louis (2000). Programming Pearls (2nd ed.). Addison Wesley. pp. 147–162. ISBN 0201657880.

    Kata Kunci Pencarian:

    heap data structureheap data structure animationheap data structure c++heap data structure in javaheap data structure pythonheap data structure time complexityheap data structure visualizationheap data structure explainedheap data structure exampleheap data structure definition
    Heap Data Structures - Computer Science Junction

    Heap Data Structures - Computer Science Junction

    7 things about heap data structure you should know in 2023 - Naiveskill

    7 things about heap data structure you should know in 2023 - Naiveskill

    Heap Data Structure | Types of Heap Data Structure

    Heap Data Structure | Types of Heap Data Structure

    Heap Data Structure - Page 2 of 2 - Basics Behind

    Heap Data Structure - Page 2 of 2 - Basics Behind

    Heap Data Structure - Basics Behind

    Heap Data Structure - Basics Behind

    Heap Data Structure - Basics Behind

    Heap Data Structure - Basics Behind

    Heap (data structure) - Wikipedia

    Heap (data structure) - Wikipedia

    Heap Data Structure - GeeksforGeeks

    Heap Data Structure - GeeksforGeeks

    Heap Data Structure

    Heap Data Structure

    Heap Data Structure

    Heap Data Structure

    Heap Data Structure: What is Heap? Min & Max Heap (Example)

    Heap Data Structure: What is Heap? Min & Max Heap (Example)

    Heap Data Structure: What is Heap? Min & Max Heap (Example)

    Heap Data Structure: What is Heap? Min & Max Heap (Example)

    Search Results

    heap data structure

    Daftar Isi

    Heap Data Structure - GeeksforGeeks

    Feb 7, 2025 · A Heap is a complete binary tree data structure that satisfies the heap property: for every node, the value of its children is greater than or equal to its own value. Heaps are usually used to implement priority queues, where the smallest (or largest) element is …

    Heap (data structure) - Wikipedia

    In computer science, a heap is a tree-based data structure that satisfies the heap property: In a max heap, for any given node C, if P is the parent node of C, then the key (the value) of P is greater than or equal to the key of C.

    Heap Data Structure - Programiz

    Heap data structure is a complete binary tree that satisfies the heap property. In this tutorial, you will understand heap and its operations with working codes in C, C++, Java, and Python.

    Introduction to Heap – Data Structure and Algorithm Tutorials

    Dec 17, 2024 · A Heap is a complete binary tree data structure that satisfies the heap property: for every node, the value of its children is greater than or equal to its own value. Heaps are usually used to implement priority queues, where the smallest (or largest) element is …

    Heap Data Structure - Online Tutorials Library

    Oct 14, 2019 · Heap is a special case of balanced binary tree data structure where the root-node key is compared with its children and arranged accordingly. If α has child node β then −. key (α) ≥ key (β) As the value of parent is greater than that of child, this property generates Max Heap. Based on this criteria, a heap can be of two types −.

    Heap Data Structure: A Guide - Built In

    Jan 22, 2025 · What Is a Heap Data Structure? A heap is a data structure that can be represented by a complete binary tree. It’s a useful data structure for sorting algorithms, priority queues and autocomplete and caching mechanisms. Below is an example of a heap. There are two types of heaps, namely a Max Heap and a Min Heap.

    Heap Data Structure: What is Heap? Min & Max Heap (Example)

    Sep 26, 2024 · Heap is a specialized tree data structure. The heap comprises the topmost node called a root (parent). Its second child is the root’s left child, while the third node is the root’s right child. The successive nodes are filled from left to right. The parent-node key compares to that of its offspring, and a proper arrangement occurs.

    Types of Heap Data Structure - GeeksforGeeks

    Jan 23, 2024 · Different types of heap data structures include fundamental types like min heap and max heap, binary heap and many more. In this post, we will look into their characteristics, and their use cases.

    What is Heap Data Structure? Properties and Applications

    Heap is a complete binary tree structure where each node satisfies a heap property. We learn two types of heap data structure: 1) Max heap, which satisfies the max heap property, and 2) Min heap, which satisfies the min-heap property.

    Heap Data Structures Explained: Applications, Problem-Solving …

    Aug 9, 2024 · Heap is a tree-based data structure that has to maintain some property known as Heap Property. These properties define the relationship between parent nodes and their children. There are two main types of heaps based on this property: