Why is Binary Search a divide and conquer algorithm?

五迷三道 提交于 2019-11-28 20:38:18
Kenci

The book

Data Structures and Algorithm Analysis in Java, 2nd edtition, Mark Allen Weiss

Says that a D&C algorithm should have two disjoint recursive calls. I.e like QuickSort. Binary Search does not have this, even if it can be implemented recursively, so I guess this is the answer.

I think it is not divide and conquer, see first paragraph in http://en.wikipedia.org/wiki/Divide_and_conquer_algorithm

recursively breaking down a problem into two or more sub-problems which are then combined to give a solution

In binary search there is still only one problem which does just reducing data by half every step, so no conquer (merging) phase of the results is needed.

In a divide and conquer strategy :

1.Problem is divided into parts;

2.Each of these parts is attacked/solved independently, by applying the algorithm at hand (mostly recursion is used for this purpose) ;

3.And then the solutions of each partition/division and combined/merged together to arrive at the final solution to the problem as a whole (this comes under conquer)

Example, Quick sort, merge sort.

Basically, the binary search algorithm just divides its work space(input (ordered) array of size n) into half in each iteration. Therefore it is definitely deploying the divide strategy and as a result, the time complexity reduces down to O(lg n).So,this covers up the "divide" part of it.

As can be noticed, the final solution is obtained from the last comparison made, that is, when we are left with only one element for comparison. Binary search does not merge or combine solution.

In short, binary search divides the size of the problem (on which it has to work) into halves but doesn't find the solution in bits and pieces and hence no need of merging the solution occurs!

I know it's a bit too lengthy but i hope it helps :)

Also you can get some idea from : https://www.khanacademy.org/computing/computer-science/algorithms/binary-search/a/running-time-of-binary-search

Also i realised just now that this question was posted long back! My bad!

The divide part is of course dividing the set into halves.

The conquer part is determining whether and on what position in the processed part there is a searched element.

Apparently some people consider binary search a divide-and-conquer algorithm, and some are not. I quickly googled three references (all seem related to academia) that call it a D&C algorithm: http://www.cs.berkeley.edu/~vazirani/algorithms/chap2.pdf http://homepages.ius.edu/rwisman/C455/html/notes/Chapter2/DivConq.htm http://www.csc.liv.ac.uk/~ped/teachadmin/algor/d_and_c.html

I think it's common agreement that a D&C algorithm should have at least the first two phases of these three:

  • divide, i.e. decide how the whole problem is separated into sub-problems;
  • conquer, i.e. solve each of the sub-problems independently;
  • [optionally] combine, i.e. merge the results of independent computations together.

The second phase - conquer - should recursively apply the same technique to solve the subproblem by dividing into even smaller sub-sub-problems, and etc. In practice, however, often some threshold is used to limit the recursive approach, as for small size problems a different approach might be faster. For example, quick sort implementations often use e.g. bubble sort when the size of an array portion to sort becomes small.

The third phase might be a no-op, and in my opinion it does not disqualify an algorithm as D&C. A common example is recursive decomposition of a for-loop with all iterations working purely with independent data items (i.e. no reduction of any form). It might look useless at glance, but in fact it's very powerful way to e.g. execute the loop in parallel, and utilized by such frameworks as Cilk and Intel's TBB.

Returning to the original question: let's consider some code that implements the algorithm (I use C++; sorry if this is not the language you are comfortable with):

int search( int value, int* a, int begin, int end ) {
  // end is one past the last element, i.e. [begin, end) is a half-open interval.
  if (begin < end)
  {
    int m = (begin+end)/2;
    if (value==a[m])
      return m;
    else if (value<a[m])
      return search(value, a, begin, m);
    else
      return search(value, a, m+1, end);
  }
  else // begin>=end, i.e. no valid array to search
    return -1;
}

Here the divide part is int m = (begin+end)/2; and all the rest is the conquer part. The algorithm is explicitly written in a recursive D&C form, even though only one of the branches is taken. However, it can also be written in a loop form:

int search( int value, int* a, int size ) {
  int begin=0, end=size;
  while( begin<end ) {
    int m = (begin+end)/2;
    if (value==a[m])
      return m;
    else if (value<a[m])
      end = m;
    else
      begin = m+1;
  }
  return -1;
}

I think it's quite a common way to implement binary search with a loop; I deliberately used the same variable names as in the recursive example, so that commonality is easier to see. Therefore we might say that, again, calculating the midpoint is the divide part, and the rest of the loop body is the conquer part.

But of course if your examiners think differently, it might be hard to convince them it's D&C.

Update: just had a thought that if I were to develop a generic skeleton implementation of a D&C algorithm, I would certainly use binary search as one of API suitability tests to check whether the API is sufficiently powerful while also concise. Of course it does not prove anything :)

In addition to @Kenci's post, DnC algorithms have a few general/common properties; they:

  1. divide the original problem instance into a set of smaller sub-instances of itself;
  2. independently solve each sub-instance;
  3. combine smaller/independent sub-instance solutions to build a single solution for the larger/original instance

The problem with Binary Search is that it does not really even generate a set of independent sub-instances to be solved, as per step 1; it only simplifies the original problem by permanently discarding sections it's not interested in. In other words, it only reduces the problem's size and that's as far as it ever goes.

A DnC algorithm is supposed to not only identify/solve the smaller sub-instances of the original problem independently of each other, but also use that set of partial independent solutions to "build up" a single solution for the larger problem instance as a whole.

The book Fundamentals of Algorithmics, G. Brassard, P. Bratley says the following (bold my emphasis, italics in original):

It is probably the simplest application of divide-and-conquer, so simple in fact that strictly speaking this is an application of simplification rather than divide-and-conquer: the solution to any sufficiently large instance is reduced to that of a single smaller one, in this case of half size.

Section 7.3 Binary Search on p.226.

Binary search is tricky to describe with divide-and-conquer because the conquering step is not explicit. The result of the algorithm is the index of the needle in the haystack, and a pure D&C implementation would return the index of the needle in the smallest haystack (0 in the one-element list) and then recursively add the offsets in the larger haystacks that were divided in the divison step.

Pseudocode to explain:

function binary_search has arguments needle and haystack and returns index
    if haystack has size 1
       return 0
    else 
        divide haystack into upper and lower half
        if needle is smaller than smallest element of upper half
            return 0 + binary_search needle, lower half
        else
            return size of lower half + binary_search needle, upper half

The addition (0 + or size of lower half) is the conquer part. Most people skip it by providing indices into a larger list as arguments, and thus it is often not readily available.

A proper divide and conquer algorithm will require both parts to be processed.

Therefore, many people will not call binary-search a divide and conquer algorithm, it does divide the problem, but discards the other half.

But most likely, your examiners just wanted to see how you argue. (Good) exams aren't about the facts, but about how you react when the challenge goes beyond the original material.

So IMHO the proper answer would have been:

Well, technically, it consists only of a divide step, but needs to conquer only half of the original task then, the other half is trivially done already.

BTW: there is a nice variation of QuickSort, called QuickSelect, which actually exploits this difference to obtain an on average O(n) median search algorithm. It's like QuickSort - but descends only into the half it is interested in.

Divide and Conquer algorithm is based on 3 step as follows:

  1. Divide
  2. Conquer
  3. Combine

Binary Search problem can be defined as finding x in the sorted array A[n]. According to this information:

  1. Divide: compare x with middle
  2. Conquer: Recurse in one sub array. (Finding x in this array)
  3. Combine: it is not necessary.

The informal definition is more or less: Divide the problem into small problems. Then solve them and put them together (conquer). Solving is in fact deciding where to go next (left, right, element found).

Here a quote from wikipedia:

The name "divide and conquer" is sometimes applied also to algorithms that reduce each problem to only one subproblem, such as the binary search algorithm for finding a record in a sorted list.

This states, it's NOT [update: misread this phrase:)] only one part of divide and conquer.

Update: This article made it clear for me. I was confused since the definition says you have to solve every sub problem. But you solved the sub problem if you know you don't have to keep on searching..

The Binary Search is a divide and conquer algorithm:

1) In Divide and Conquer algorithms, we try to solve a problem by solving a smaller sub problem (Divide part) and use the solution to build the solution for our bigger problem(Conquer).

2) Here our problem is to find an element in the sorted array. We can solve this by solving a similar sub problem. (We are creating sub problems here based on a decision that the element being searched is smaller or bigger than the middle element). Thus once we know that the element can not exist surely in one half, we solve a similar sub-problem in the the other half.

3) This way we recurse.

4) The conquer part here is just returning the value returned by the sub problem to the top the recursive tree

Dichotomic in computer science refers to choosing between two antithetical choices, between two distinct alternatives. A dichotomy is any splitting of a whole into exactly two non-overlapping parts, meaning it is a procedure in which a whole is divided into two parts. It is a partition of a whole (or a set) into two parts (subsets) that are: 1. Jointly Exhaustive: everything must belong to one part or the other, and 2. Mutually Exclusive: nothing can belong simultaneously to both parts.

Divide and conquer works by recursively breaking down a problem into two or more sub-problems of the same type, until these become simple enough to be solved directly.

So the binary search halves the number of items to check with each iteration and determines if it has a chance of locating the "key" item in that half or moving on to the other half if it is able to determine keys absence. As the algorithm is dichotomic in nature so the binary search will believe that the "key" has to be in one part until it reaches the exit condition where it returns that the key is missing.

I think it is Decrease and Conquer.

Here is a quote from wikipedia.

"The name decrease and conquer has been proposed instead for the single-subproblem class"

http://en.wikipedia.org/wiki/Divide_and_conquer_algorithms#Decrease_and_conquer

According to my understanding, "Conquer" part is at the end when you find the target element of the Binary search. The "Decrease" part is reducing the search space.

Binary Search and Ternary Search Algorithms are based on Decrease and Conquer technique. Because, you do not divide the problem, you actually decrease the problem by dividing by 2(3 in ternary search).

Merge Sort and Quick Sort Algorithms can be given as examples of Divide and Conquer technique. You divide the problem into two subproblems and use the algorithm for these subproblems again to sort an array. But, you discard the half of array in binary search. It means you DECREASE the size of array, not divide.

Alan Kurtzberg

No, binary search is not divide and conquer. Yes, binary search is decrease and conquer. I believe divide and conquer algorithms have an efficiency of O(n log(n)) while decrease and conquer algorithms have an efficiency of O(log(n)). The difference being whether or not you need to evaluate both parts of the split in data or not.

易学教程内所有资源均来自网络或用户发布的内容,如有违反法律规定的内容欢迎反馈
该文章没有解决你所遇到的问题?点击提问,说说你的问题,让更多的人一起探讨吧!