D ary heap - """Implementation of a d-ary heap. The branching factor for the heap can be passed as an argument. It's 2 by default, which is also the minimum possible value. The branching factor is the maximum number of children that each internal node can have. For regular heaps, a node an have at most 2 children, so the branching factor is 2.

 
Description. This class implements an immutable priority queue. Internally, the d-ary heap is represented as dynamically sized array (std::vector), that directly stores the values. The template parameter T is the type to be managed by the container. The user can specify additional options and if no options are provided default options are used. . Gai 001 jav

c. Give an efficient implementation of Extract-Max in a d-ary max-heap. (Hint: How would you modify the existing code?) Analyze the running time of your implementation in terms of n and d. (Note that d must be part of your Θ expression even if it occurs in a constant term.) d. Give an efficient implementation of Insert in a d-ary max-heap. D-ary Heap D-ary heaps are an advanced variation of binary heaps where each internal node can have up to ‘D’ children instead of only (or at most) two. They offer better cache performance and reduced tree height compared to binary heaps, especially for large D values.Python functions for working with D-ary Heap (Heap with more than 2 child nodes). For more info about this Data Structure Please gothrough: ...It seems like if you got unlucky with your heap structure this could easily be causing your infinite loop. Similarly, in this loop you're never reassigning tempChild, so on each iteration tempChild will pick up where it left off on the previous iteration. If on one of those iterations tempChild was equal to size, then the inner loop will never ...c. Give an efficient implementation of Extract-Max in a d-ary max-heap. (Hint: How would you modify the existing code?) Analyze the running time of your implementation in terms of n and d. (Note that d must be part of your Θ expression even if it occurs in a constant term.) d. Give an efficient implementation of Insert in a d-ary max-heap. d-ARY-MAX-HEAPIFY (A, i) largest = i for k = 1 to d if d-ARY-CHILD (k, i) ≤ A. heap-size and A [d-ARY-CHILD (k, i)] > A [i] if A [d-ARY-CHILD (k, i)] > largest largest = A [d-ARY-CHILD (k, i)] if largest!= i exchange A [i] with A [largest] d-ARY-MAX-HEAPIFY (A, largest)d-ary heap O(log dV) O(d log dV) O((dV + E) log dV) Fibonacci heap O(1) amortized O(log V) O(E +V log V) Which is best depends on sparsityof graph: ratio E/V (average degree). Linked list vs. binary heap Dense graph: E = £(V2) Linked list is better: O(V2) Sparse graph: E = O(V) Binary heap is better: O(V log V) d-ary heap Best choice d ¼E/V ...The d-ary heap or d-heap is a priority queue data structure, a generalization of the binary heap in which the nodes have d children instead of 2. [1] [2] [3] Thus, a binary heap is a 2-heap, and a ternary heap is a 3-heap. According to Tarjan [2] and Jensen et al., [4] d -ary heaps were invented by Donald B. Johnson in 1975. Implement D-ary Heap 4-way. * Description - Implement D-ary Heap (4-way in this case each node has 4 children) max heap, each node has priority level and string value associated. System.out.println ("Error: heap is full!"); // if inserted element is larger we move the parent down, we continue doing this until heap order is correct and insert ...A d -ary heap is like a binary heap, but (with one possible exception) non-leaf nodes have d children instead of 2 children. How would you represent a d -ary heap in an array? What is the height of a d -ary heap of n elements in terms of n and d? Give an efficient implementation of EXTRACT-MAX in a d -ary max-heap.Suppose the Heap is a Max-Heap as: 10 / \ 5 3 / \ 2 4 The element to be deleted is root, i.e. 10. Process : The last element is 4. Step 1: Replace the last element with root, and delete it. 4 / \ 5 3 / 2 Step 2: Heapify root. Final Heap: 5 / \ 4 3 / 2. Time complexity: O (logn) where n is no of elements in the heap.Dec 7, 2012 · 1 Answer. From the explanation itself you can deduct that you have n delete min operations each requiring O (d log (n)/log (d)) and m decrease priority operations of O (log (n)/log (d)). The combined work is then (m*log (n)+n*d*log (n))/log (d). If you fill in the suggested d value, the global behavior is as stated O (m*log (n)/log (d)). Now I have this d-ary heap data structure. Note that for d = 2 this is a binary heap. The client programmer specifies the value of d when constructing the heap. See what I have: heap.h: #ifndef H...This problem has been solved! You'll get a detailed solution from a subject matter expert that helps you learn core concepts. Question: Give an efficient implementation of EXTRACT-MAX in a d-ary max-heap. (Hint: consider how you would modify existing code.) Analyze its running time in terms of n and d. (Note that d must be part of your Θ ...dary_heap. A priority queue implemented with a d -ary heap. Insertion and popping the largest element have O (log ( n )) time complexity. Checking the largest element is O (1). Converting a vector to a d -ary heap can be done in-place, and has O ( n) complexity. A d -ary heap can also be converted to a sorted vector in-place, allowing it to be ...node has d children. It is an almost complete,d-ary tre, and a node must be less than or equal to all its children. Design an array representation of the heap. Design a Deletemin and Increasekey procedure here. Solution: We generalize the representation of a 2-ary (binary) heap to a d -ary heap. Root is stored in array element 0. The children ... We would like to show you a description here but the site won’t allow us.The d_ary_heap_indirect is designed to only allow priorities to increase. If in the update () and push_or_update () functions you change: preserve_heap_property_up (index); to. preserve_heap_property_up (index); preserve_heap_property_down (); it seems to allow increasing or decreasing the priorities while keeping the queue sorted.Jun 23, 2015 · I've read that binary heaps are faster at delete minimum operations and d-ary heaps are faster at at decrease priority operations (although I don't get why), but then I've also read that a 4-heap is faster at both of them compared to a binary heap. A d-ary heap is like a binary heap, but (with one possible exception) non-leaf nodes have d children instead of 2 children.. How would you represent a d-ary heap in an array?A d-ary heap can be implemented using a dimensional array as follows.The root is kept in A[1], its d children are kept in order in A[2] through A[d+1] and so on.Sep 9, 2016 · 1 Answer. In a ternary heap, each node has up to three children. The heap is represented in the array in breadth-first order, with the root node at 0, and the children of node x at locations (x*3)+1, (x*3)+2, and (x*3)+3. The node at location x is at (x-1)/3. So, your array, [90,82,79,76,46,1,49,44,61,62], looks like this when displayed the ... A d-ary heap is like a binary heap, but (with one possible exception) non-leaf nodes have d children instead of 2 children. . a. How would you represent a d-ary heap in an array? . b. What is the height of a d-ary heap of n elements in terms of n and d? . c. Give an efficient implementation of EXTRACT-MAX in a d-ary max-heap. d-ARY-MAX-HEAPIFY (A, i) largest = i for k = 1 to d if d-ARY-CHILD (k, i) ≤ A. heap-size and A [d-ARY-CHILD (k, i)] > A [i] if A [d-ARY-CHILD (k, i)] > largest largest = A [d-ARY-CHILD (k, i)] if largest!= i exchange A [i] with A [largest] d-ARY-MAX-HEAPIFY (A, largest)By using a $ d $-ary heap with $ d = m/n $, the total times for these two types of operations may be balanced against each other, leading to a total time of $ O(m \log_{m/n} n) $ for the algorithm, an improvement over the $ O(m \log n) $ running time of binary heap versions of these algorithms whenever the number of edges is significantly ...2 Answers. Sorted by: 4. This uses the common identity to convert between logarithmic bases: logx(z) = logm(z) / logm(x) By multiplying both sides by log m (x), you get: logm(z) = logx(z) * logm(x) Which is equivalent to the answer in the question you site. More information is available here.A d-ary heap is just like a regular heap but instead of two childrens to each element, there are d childrens! d is given when building a heap, either by giving an argument or by passing it while calling init. Here is my Implementation:Sep 3, 2012 · The d_ary_heap_indirect is designed to only allow priorities to increase. If in the update () and push_or_update () functions you change: preserve_heap_property_up (index); to. preserve_heap_property_up (index); preserve_heap_property_down (); it seems to allow increasing or decreasing the priorities while keeping the queue sorted. 5. (CLRS 6-2) Analysis of d-ary heaps A d-ary heap is like a binary heap, but instead of 2 children, nodes have d children. a. How would you represent a d-ary heap in a array? b. What is the height of a d-ary heap of n elements in terms of n and d? c. Give an e cient implementation of Extract-Max. Analyze its running time in terms of d and n. d. the heap property, a single node's two children can be freely interchanged unless doing so violates the shape property (compare with treap).The binary heap is a special case of the d-ary heap in which d = 2. Heap operations Both the insert and remove operations modify the heap to conform to the shape property first, by adding or 2 Answers. Sorted by: 4. This uses the common identity to convert between logarithmic bases: logx(z) = logm(z) / logm(x) By multiplying both sides by log m (x), you get: logm(z) = logx(z) * logm(x) Which is equivalent to the answer in the question you site. More information is available here.Jul 16, 2015 · I implemented a D-ary max heap backed by a vector for resizing. I would like to know any possible improvements in performance, design, and in the code in general. #pragma once #include &lt;vector... The problem is that d d can exceed n n, and if d d keeps increasing while n n is fixed, then logd n log d n will approach 0 0. Also, one can show that the height is at least logd(n(d − 1) + 1) − 1 ≥ logd n − 1 log d ( n ( d − 1) + 1) − 1 ≥ log d n − 1 for d d sufficiently large. Why is this in Ω(logd n) Ω ( log d n)?1. In a d-ary heap, up-heaps (e.g., insert, decrease-key if you track heap nodes as they move around) take time O (log_d n) and down-heaps (e.g., delete-min) take time O (d log_d n), where n is the number of nodes. The reason that down-heaps are more expensive is that we have to find the minimum child to promote, whereas up-heaps just compare ...c. Give an efficient implementation of Extract-Max in a d-ary max-heap. (Hint: How would you modify the existing code?) Analyze the running time of your implementation in terms of n and d. (Note that d must be part of your Θ expression even if it occurs in a constant term.) d. Give an efficient implementation of Insert in a d-ary max-heap. 6-2 Analysis of. d. d. -ary heaps. A d d-ary heap is like a binary heap, but (with one possible exception) non-leaf nodes have d d children instead of 2 2 children. a.2 Answers. Sorted by: 4. This uses the common identity to convert between logarithmic bases: logx(z) = logm(z) / logm(x) By multiplying both sides by log m (x), you get: logm(z) = logx(z) * logm(x) Which is equivalent to the answer in the question you site. More information is available here.DHeap - Fast d-ary heap for ruby. A fast d -ary heap priority queue implementation for ruby, implemented as a C extension. A regular queue has "FIFO" behavior: first in, first out. A stack is "LIFO": last in first out. A priority queue pushes each element with a score and pops out in order by score. Priority queues are often used in algorithms ...1 Answer. From the explanation itself you can deduct that you have n delete min operations each requiring O (d log (n)/log (d)) and m decrease priority operations of O (log (n)/log (d)). The combined work is then (m*log (n)+n*d*log (n))/log (d). If you fill in the suggested d value, the global behavior is as stated O (m*log (n)/log (d)).D-ary Heap in Java. The d-ary heap or d-heap is a priority queue data structure, a generalization of the binary heap in which the nodes have d children instead of 2. Thus, a binary heap is a 2-heap, and a ternary heap is a 3-heap.The d-ary heap or d-heap is a priority queue data structure, a generalization of the binary heap in which the nodes have d children instead of 2 This data structure allows decrease priority operations to be performed more quickly than binary heaps, at the expense of slower delete minimum operations.Apr 7, 2016 · By using a $ d $-ary heap with $ d = m/n $, the total times for these two types of operations may be balanced against each other, leading to a total time of $ O(m \log_{m/n} n) $ for the algorithm, an improvement over the $ O(m \log n) $ running time of binary heap versions of these algorithms whenever the number of edges is significantly ... Internally, the d-ary heap is represented as dynamically sized array (std::vector), that directly stores the values. The template parameter T is the type to be managed by the container. The user can specify additional options and if no options are provided default options are used. May 9, 2017 · When the tree in question is the infinite d-ary tree, this algorithm becomes (naively) initialize a queue Q = [1] nextID = 2 forever (Q is always nonempty) pop the head of Q into v repeat d times let w = nextID (w is a child of v) increment nextChildID push w into Q Jun 29, 2022 · K-ary heap. K-ary heaps are similar to the binary heap (where K = 2) just having one difference that instead of 2 child nodes, there can be k child nodes for every node in the heap. It is nearly like a complete binary tree, i.e. all the levels are having maximum number of nodes except the last level, which is filled from left to right. Sep 3, 2012 · The d_ary_heap_indirect is designed to only allow priorities to increase. If in the update () and push_or_update () functions you change: preserve_heap_property_up (index); to. preserve_heap_property_up (index); preserve_heap_property_down (); it seems to allow increasing or decreasing the priorities while keeping the queue sorted. D-ary heap. D-ary heap is a complete d-ary tree filled in left to right manner, in which holds, that every parent node has a higher (or equal value) than all of its descendands. Heap respecting this ordering is called max-heap, because the node with the maximal value is on the top of the tree. Analogously min-heap is a heap, in which every ...boost.heap is an implementation of priority queues. Priority queues are queue data structures, that order their elements by a priority. The STL provides a single template class std::priority_queue , which only provides a limited functionality. To overcome these limitations, boost.heap implements data structures with more functionality and ... boost::heap::priority_queue. The priority_queue class is a wrapper to the stl heap functions. It implements a heap as container adaptor ontop of a std::vector and is immutable. boost::heap::d_ary_heap. D-ary heaps are a generalization of binary heap with each non-leaf node having N children. For a low arity, the height of the heap is larger ...Now I have this d-ary heap data structure. Note that for d = 2 this is a binary heap. The client programmer specifies the value of d when constructing the heap. See what I have: heap.h: #ifndef H...•Can think of heap as a completebinary tree that maintains the heap property: –Heap Property: Every parent is better-than[less-than if min-heap, or greater-than if max-heap] bothchildren, but no ordering property between children •Minimum/Maximum value is always the top element Min-Heap 7 18 9 19 35 14 10 2839 3643 1625 Always a complete tree Sep 4, 2023 · A D-ary heap is a data structure that generalizes the concept of a binary heap to allow each node to have D children, where D is a positive integer greater than or equal to 2. It’s a specialized tree-based data structure used primarily for efficient implementation of priority queues and heap-sort algorithms. Jun 1, 2023 · D-ary Heap D-ary heaps are an advanced variation of binary heaps where each internal node can have up to ‘D’ children instead of only (or at most) two. They offer better cache performance and reduced tree height compared to binary heaps, especially for large D values. Implement D-ary Heap 4-way. * Description - Implement D-ary Heap (4-way in this case each node has 4 children) max heap, each node has priority level and string value associated. System.out.println ("Error: heap is full!"); // if inserted element is larger we move the parent down, we continue doing this until heap order is correct and insert ...Jun 30, 2023 · Implementation (Max Heap) We will store the n-ary heap in the form of an array where: The maximum value node will be at the 0th index. The parent of a node at the ith index will be at (i-1)/k. The children of a node at the ith index will be at indices: (k*i)+1, (k*i)+2 … (k*i)+k. getMax (): It returns the maximum element in the heap. I implemented a D-ary max heap backed by a vector for resizing. I would like to know any possible improvements in performance, design, and in the code in general. #pragma once #include &lt;vector...The d-ary heap or d-heap is a priority queue data structure, a generalization of the binary heap in which the nodes have d children instead of 2. Here is the source code of the Java program to implement D-ary Heap. The Java program is successfully compiled and run on a Windows system. The program output is also shown below. K-ary heap has better memory cache behaviour than a binary heap which allows them to run more quickly in practice, although it has a larger worst case running time of both extractMin () and delete () operation (both being O (k log k n) ). Implementation:Computer Science. Computer Science questions and answers. c++ part 1 answer questions 1) List 5 uses of heaps 2) Define a d-ary heap 3) Define a complete binary heap 4) Why do most implementations of heaps use arrays or vectors 5) What is a heap called a Parent Child sort order heap ? 2 Answers. Sorted by: 4. This uses the common identity to convert between logarithmic bases: logx(z) = logm(z) / logm(x) By multiplying both sides by log m (x), you get: logm(z) = logx(z) * logm(x) Which is equivalent to the answer in the question you site. More information is available here.When the tree in question is the infinite d-ary tree, this algorithm becomes (naively) initialize a queue Q = [1] nextID = 2 forever (Q is always nonempty) pop the head of Q into v repeat d times let w = nextID (w is a child of v) increment nextChildID push w into QA D-ary heap is a data structure that generalizes the concept of a binary heap to allow each node to have D children, where D is a positive integer greater than or equal to 2. It’s a specialized tree-based data structure used primarily for efficient implementation of priority queues and heap-sort algorithms.boost.heap is an implementation of priority queues. Priority queues are queue data structures, that order their elements by a priority. The STL provides a single template class std::priority_queue , which only provides a limited functionality. To overcome these limitations, boost.heap implements data structures with more functionality and ...Based on my understanding, different questions where HEAP is common data structure to use can be categorized in following 4 categories: Top K Pattern. Merge K Sorted Pattern. Two Heaps Pattern. Minimum Number Pattern. All questions under one patterns has some similarities in terms of using HEAP as a data structure.1 Answer. Since you declared your heap as mutable, the push operation is supposed to return the handle_t you typedefed as the handle_type: mpl::if_c< is_mutable, handle_type, void >::type push (value_type const & v); In the respect of obtaining the handle, your code is fine. To simplify a bit to make it clearer:Now I have this d-ary heap data structure. Note that for d = 2 this is a binary heap. The client programmer specifies the value of d when constructing the heap. See what I have: heap.h: #ifndef H...the heap property, a single node's two children can be freely interchanged unless doing so violates the shape property (compare with treap).The binary heap is a special case of the d-ary heap in which d = 2. Heap operations Both the insert and remove operations modify the heap to conform to the shape property first, by adding or1. Which of the following is true? a) Prim’s algorithm initialises with a vertex. b) Prim’s algorithm initialises with a edge. c) Prim’s algorithm initialises with a vertex which has smallest edge. d) Prim’s algorithm initialises with a forest. View Answer. 2. Consider the given graph.1 Answer. In a ternary heap, each node has up to three children. The heap is represented in the array in breadth-first order, with the root node at 0, and the children of node x at locations (x*3)+1, (x*3)+2, and (x*3)+3. The node at location x is at (x-1)/3. So, your array, [90,82,79,76,46,1,49,44,61,62], looks like this when displayed the ...c. Give an efficient implementation of Extract-Max in a d-ary max-heap. (Hint: How would you modify the existing code?) Analyze the running time of your implementation in terms of n and d. (Note that d must be part of your Θ expression even if it occurs in a constant term.) d. Give an efficient implementation of Insert in a d-ary max-heap. See Answer. Question: How would you represent a d-ary heap in an array? Answer this question by: Giving an expression for J-th-Child (i,j): the index of the j-th child as a function of the index i of the given node, and the child index j within the given node. Giving an expression for D-Ary-Parent (i): the index of the parent of a node as a ...It seems like if you got unlucky with your heap structure this could easily be causing your infinite loop. Similarly, in this loop you're never reassigning tempChild, so on each iteration tempChild will pick up where it left off on the previous iteration. If on one of those iterations tempChild was equal to size, then the inner loop will never ...Expert Answer. (a) In d-ary heaps, every non-leaf nodes have d childern. So, In array representation of d-ary heap, root is present in A [1], the d children of root are present in the cells having index from 2 to d+1 and their children are in cells having index from …. A d-ary heap is like a binary heap, but (with one possible exception) non ... boost.heap is an implementation of priority queues. Priority queues are queue data structures, that order their elements by a priority. The STL provides a single template class std::priority_queue , which only provides a limited functionality. To overcome these limitations, boost.heap implements data structures with more functionality and ...D-ary heap. D-ary heap is a complete d-ary tree filled in left to right manner, in which holds, that every parent node has a higher (or equal value) than all of its descendands. Heap respecting this ordering is called max-heap, because the node with the maximal value is on the top of the tree. Analogously min-heap is a heap, in which every ...Jun 11, 2017 · Stack Exchange network consists of 183 Q&A communities including Stack Overflow, the largest, most trusted online community for developers to learn, share their knowledge, and build their careers. b. What is the height of a d-ary heap of n elements in terms of n and d? c. Give an efficient implementation of EXTRACT-MAX in a d-ary max-heap. 6-2 Analysis of d-ary heaps. A d-ary heap is like a binary heap, but (with one possible exception) non-leaf. nodes have d children instead of 2 children. a.1 Answer. Add the d parameter to all your functions, and generalise. The formula for where to start the heapify function is (num + 1) // d - 1. Where you have left and right indices and choose the one that has the greatest value, instead iterate the children in a for loop to find the child with the greatest value.5. (CLRS 6-2) Analysis of d-ary heaps A d-ary heap is like a binary heap, but instead of 2 children, nodes have d children. a. How would you represent a d-ary heap in a array? b. What is the height of a d-ary heap of n elements in terms of n and d? c. Give an e cient implementation of Extract-Max. Analyze its running time in terms of d and n. d. Python functions for working with D-ary Heap (Heap with more than 2 child nodes). For more info about this Data Structure Please gothrough: ...D-way Heap. D-way heaps (aka d-ary heaps or d-heaps) are a simple but effective extension of standard binary heaps, but nonetheless the allow to drastically cut down the running time over the most common operation on this data structure. They are not as advanced as binomial or Fibonacci's heap: the latter, in particular, allows to improve the ...5. (CLRS 6-2) Analysis of d-ary heaps A d-ary heap is like a binary heap, but instead of 2 children, nodes have d children. a. How would you represent a d-ary heap in a array? b. What is the height of a d-ary heap of n elements in terms of n and d? c. Give an e cient implementation of Extract-Max. Analyze its running time in terms of d and n. d.the heap property, a single node's two children can be freely interchanged unless doing so violates the shape property (compare with treap).The binary heap is a special case of the d-ary heap in which d = 2. Heap operations Both the insert and remove operations modify the heap to conform to the shape property first, by adding or

A d -ary heap is like a binary heap, but (with one possible exception) non-leaf nodes have d children instead of 2 children. How would you represent a d -ary heap in an array? What is the height of a d -ary heap of n elements in terms of n and d? Give an efficient implementation of EXTRACT-MAX in a d -ary max-heap.. Syncopation 53 pvp

d ary heap

Implement D-ary Heap 4-way. * Description - Implement D-ary Heap (4-way in this case each node has 4 children) max heap, each node has priority level and string value associated. System.out.println ("Error: heap is full!"); // if inserted element is larger we move the parent down, we continue doing this until heap order is correct and insert ...We would like to show you a description here but the site won’t allow us. Nov 14, 2022 · Suppose the Heap is a Max-Heap as: 10 / \ 5 3 / \ 2 4 The element to be deleted is root, i.e. 10. Process : The last element is 4. Step 1: Replace the last element with root, and delete it. 4 / \ 5 3 / 2 Step 2: Heapify root. Final Heap: 5 / \ 4 3 / 2. Time complexity: O (logn) where n is no of elements in the heap. Explanation: d-ary heap is a priority queue based data structure that is a generalization of binary heaps. Sanfoundry Global Education & Learning Series – Data Structure. To practice all areas of Data Structure, here is complete set of 1000+ Multiple Choice Questions and Answers . 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 − 2s 2 (N) − e 2 (N) (for a binary heap), where s 2 (N) is the sum of all digits of the binary representation of N and e 2 (N) is the exponent of 2 ...Computer Science. Computer Science questions and answers. c++ part 1 answer questions 1) List 5 uses of heaps 2) Define a d-ary heap 3) Define a complete binary heap 4) Why do most implementations of heaps use arrays or vectors 5) What is a heap called a Parent Child sort order heap ?The d-ary heap or d-heap is a priority queue data structure, a generalization of the binary heap in which the nodes have d children instead of 2. Thus, a binary heap is a 2-heap, and a ternary heap is a 3-heap. According to Tarjan and Jensen et al., d-ary heaps were invented by Donald B. Johnson in 1975. The d-ary heap or d-heap is a priority queue data structure, a generalization of the binary heap in which the nodes have d children instead of 2 This data structure allows decrease priority operations to be performed more quickly than binary heaps, at the expense of slower delete minimum operations. Jun 22, 2021 · d-ary heap Article Creation Date : 22-Jun-2021 12:47:06 AM. d-heap: d-heap is generalization of binary heap.it is one kind f advantage in c++.d-heap is a priority ... I am using a Dijkstra for finding a shortest path in graph. I used to use std::set but I think a heap could perform better. But I am having troubles using the d_ary_heap or the priority_queue.Since the number of nodes in each layer of a d-ary heap grows exponentially by a factor of d at each step, the height of a d-ary heap is O (log d n) = O (log n / log d). This means that if you increase the value of d, the height of the d-ary heap will decrease, so decrease-keys and insertions will take less time..

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