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Given an N-by-N array a of N2 distinct integers, design an O(N) algorithm to find a local minimum: an pair of indices i and j such that:

  • a[i][j] < a[i+1][j]
  • a[i][j] < a[i-1][j]
  • a[i][j] < a[i][j+1]
  • a[i][j] < a[i][j-1]

I found this question in a an online algorithm book, Introduction to Programming in Java, chapter 4.2: Sorting and Searching.

It is similar to problem 35 (same page):

  • Given an array of N real numbers, write a static method to find in logarithmic time a local minimum (an index i such that a[i-1] < a[i] < a[i+1]).

It has some sort of binary search based solution which I am not able to find out.

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marked as duplicate by Kate Gregory, Marius, Dave Alperovich, SchmitzIT, greg-449 Nov 25 '13 at 9:37

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

What do you mean by "N2" distinct integers? Is that N^2, N*2, N/2? – RBarryYoung Apr 8 '12 at 14:32
How are you guaranteed to have any local minima? – RBarryYoung Apr 8 '12 at 14:35
As the book says, N^2 is meant. Assuming you allow local minima on edges, the smallest unique element in the array is local minimum. – sdcvvc Apr 8 '12 at 14:39
anuja: 1-diensional case in logarithmic time: Ask for A[N/2]. If it is larger than A[1], you have a local minimum within first half. If it is larger than A[n], you have a local minimum within the second half. Otherwise, if A[N/2]<A[N/2-1],A[N/2+1] you have a local minimum at N/2. Otherwise, if A[N/2]>A[N/2+1], you have a local minimum within second half, and for A[N/2]>A[N/2+1] you have a local minimum within first half. Draw pictures to be convinced... – sdcvvc Apr 8 '12 at 14:46
To help understand the solution to problem 35 (and possibly this one), please note that you're not searching for the minimum, only a local minimum. – Lasse V. Karlsen Apr 8 '12 at 15:33

3 Answers 3

up vote 5 down vote accepted

The same problem is mentioned in web version of book Algorithms by Robert Sedgewick and Kevin Wayne. (See "Creative problems" section, problem 19).

The hint for the problem given by author in that link is:

Find the minimum in row N/2, check neighbors p and q in column, if p or q is smaller then recur in that half.

A better aprroach would be : Find the minimum in row N/2, check all entries in its column, if we get smaller entry in column, then recur in the row where smaller column entry belongs.

eg. For array below, N=5:

1  12  3   1  -23  
7   9  8   5   6
4   5  6  -1  77
7   0  35 -2  -4
6  83  1   7  -6

Step 1: The middle row is [4 5 6 -1 77]. ie. row number 3.

Step 2: Minimum entry in current row is -1.

Step 3: Column neighbors for min entry (ie. -1) are 5 and -2. -2 being the minimum neighbor. Its in the 4th row.

Continue with steps 2-3 till we get the local min.


For example mentioned in comment from @anuja (the main problem is for n-by-n array. This input is 3-by-4 array but we can work with that) :

1 2 3  4 
5 1 6 -1
7 3 4 -2

Step 1: The middle row is [5 1 6 -1]. ie. row number 2.

enter image description here

Step 2: Minimum entry in current row is -1.

enter image description here

Step 3: Column neighbors for min entry (ie. -1) are 4 and -2. -2 is the minimum column neighbor. Its in the 3rd row.

enter image description here

Iterating to Step 2: -2 is smallest in its row and smallest amongst its column neighbours. So we end with -2 as output for local minimum.

enter image description here

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Can you explain it for this 1 2 3 4 5 1 6 -1 7 3 4 -2 middle row is (5 ,1 , 6 ,-1), min element is -1, since -2 is less than -1,accding to you 3rd row should have the minima, but it is actually present in the 2nd row itself (1 in 2nd row is local minima) can you also clarify what would happen if multiple minimas are there? – learner Apr 8 '12 at 17:03
@anuja : see "EDIT" in my answer above. I dont get your point. The solution says to start with finding the lowest number in the middle row. Why should '1' be considered as the local min if we already have -1, a lower number, in the middle row ? – Tejas Patil Apr 8 '12 at 17:40
This is n^2 in the worst case. Consider an array that consists of a descending set of numbers going back and forth with each row separated by a wall of higher numbers. You will loop n*(n/2)/2 times to follow the chain to it's end. I think if we add a step after your #2 of repeating 1, 2 on the column containing the low value and then proceed with your 2, 3 loop that it's O(n). – Loren Pechtel Apr 8 '12 at 17:41
@anuja :for multiple minimas, there will be slight addition to the approach depending upon the accuracy of results required. If you have to get it done fast & dont care for exactness, choose one of the min and move ahead with it. Else visit all candidate mins, recurse and get the best one. – Tejas Patil Apr 8 '12 at 17:46
This algorithm is a bit cutesy, but it is not O(n). Finding the minimum in a row is O(n). The amount of times that we have to find a row minimum can be dependent on n (for some matrix patterns). It's possible to construct a matrix which forces the algorithm to visit all rows and columns. Consider the matrix with the rows: 8 3 4 8, 8 8 8 7, 8 8 5 6 and 1 2 8 8. Your algorithm would visit all rows and all columns, making it an O(n^2)algorithm. (So, for this input matrix, simply looping through all elements and finding the minimum element in the whole matrix would be more efficient) – Alderath Apr 10 '12 at 11:50

Update: This answer is assuming that edges are not local minima, as they are not defined as such by the four comparisons in the original problem statement. In this case this answer is correct (it is not possible). If you redefine the question such that edges can be local minima, than every matrix contains at least one local minima - and hence you can use a a divide-and-conquer approach.

If edge cells cannot be local minima:

There is no solution to the question as stated. An N-by-N array takes O(N^2) time just to read the elements. As there could be a single local minimum "hiding" anywhere in the matrix, this is provably necessary to do.

If you meant to ask for an O(N^2) algorithm, than simply walking each element and comparing it to its 4 neighbours takes O(N^2) time.

Either you have misremembered the interview question (and there was more to it), or this is just a trivial coding exercise.


1. Construct a NxN matrix such that each cell has the value M[i,j] = N*i + j.
2. Select a random x,y (1 < x < N and 1 < y < N) and assign M[x,y] = -1

This matrix has exactly one local minima (M[x,y]), and its location is independent of the values in the other cells. Therefore the other cells provide no information about its location, and so it is impossible to have any system to search for it that has better than an expected (N^2/2) cells searched = O(N^2).

(In other words you may as well be searching a near all zero matrix M[i,j] = 0 except for M[x,y] = -1 for the minima.)

This proof depends on being able to construct a matrix with no local minima in step 1. If edge cells are possible local minima than every matrix must have one, and this proof no longer holds.

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I'm not convinced by this argument. If there was just single local minimum, that means the array has some structure that you could use to find it. – svick Apr 8 '12 at 14:02
It would have a local minimum at 1,1 (if the random location of your 3x3 structure doesn't overlap it). – Lasse V. Karlsen Apr 8 '12 at 14:16
I think it is rather intuitive to assume that comparisons outside the grid do not count (i.e. a local minimum can be at an edge). – sdcvvc Apr 8 '12 at 14:24
I guess my main concern is that your claim that you cannot do better than O(N^2) seems way too strong here. Even if my algorithm doesn't work, I see no reason to believe that you are correct, and you haven't provided a compelling reason why O(N^2) is optimal. The example you've posted is in a very small case, and unless you can exhibit a general construction for which O(N^2) work is required I'm not convinced that brute force is optimal. – templatetypedef Apr 8 '12 at 17:54
@Falaque: Yes, it is possible to use a divide-and-conquer approach to find a local minimum if edge cells can be local minima. Search the middle column (using the two neighbouring columns as well) for a minima. If none is found recurse on the side that contains the neighbouring column with the lowest element (notice that the lowest element cannot be in the center column, otherwise it would be a minima). This is already O(nlogn). There may be even faster solutions. – Andrew Tomazos Oct 1 '12 at 5:36

Visit a random cell. If any of its four neigbors have a smaller value: go to that cell. If none of the neigbors are smaller, you are in a local minimum. Will be a bit harder to avoid loops if cells with equal values are possible.


Instead of visiting one neigbor, we could pick the smallest neigbor.

The most difficult topology seems to be the case of two "concentric" spirals, one of them functioning as a spiralling dike. That would in the worst case still take about N/2 steps. (with N=number of cells.)

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How do you show it is O(N)? – Michael J. Barber Apr 8 '12 at 14:11
In general, it is not (you could create a "spiral" forcing to visit O(N^2) cells in expectation) – sdcvvc Apr 8 '12 at 14:13
What do you do if you reach an edge? – Andrew Tomazos Apr 8 '12 at 14:17
Though it is not O(n), the steepst ascent approach will probably be more effective then a brute-force search. – amit Apr 8 '12 at 14:19
This is not bad. The real flaw in it though is that you are not at all guaranteed to have any local minima. Or for any that do exist to be find-able by any "local" procedure that is two or more cells away from it. – RBarryYoung Apr 8 '12 at 14:37

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