I heard somebody say that since binary search halves the input required to search hence it is log(n) algorithm. Since I am not from a mathematics background I am not able to relate to it. Can somebody explain it in a little more detail? does it have to do something with the logarithmic series?

1this might help you: stackoverflow.com/a/13093274/550393 – 2cupsOfTech May 20 '16 at 4:00
Here a more mathematical way of seeing it, though not really complicated. IMO much clearer as informal ones:
The question is, how many times can you divide N by 2 until you have 1? This is essentially saying, do a binary search (half the elements) until you found it. In a formula this would be this:
1 = N / 2^{x}
multiply by 2^{x}:
2^{x} = N
now do the log_{2}:
log_{2}(2^{x}) = log_{2} N
x * log_{2}(2) = log_{2} N
x * 1 = log_{2} N
this means you can divide log N times until you have everything divided. Which means you have to divide log N ("do the binary search step") until you found your element.


1the same concept explained graphically: stackoverflow.com/a/13093274/550393 – 2cupsOfTech Feb 22 '16 at 16:51


The part I'm missing is, if you have a BST with 7 entries, what is its formula? log2(7)? I did a brute force calculation with every possible outcome, and came to an answer that did not equal log2(7), so what am I doing wrong? – Perry Monschau Nov 27 '16 at 17:08

With this formula you can't calculate all there is about BST. If you have a BST counting only the leaves, it would be correct. Then you'd have 4 leaves, giving you log2(4) = 2, which is the correct tree depth. Apart from that, you have to define what you want to calculate. In your case I guess you want to calculate some expectancy, which is more complex. – duedl0r Dec 6 '16 at 23:37
For Binary Search, T(N) = T(N/2) + O(1) // the recurrence relation
Apply Masters Theorem for computing Run time complexity of recurrence relations : T(N) = aT(N/b) + f(N)
Here, a = 1, b = 2 => log (a base b) = 1
also, here f(N) = n^c log^k(n) //k = 0 & c = log (a base b)
So, T(N) = O(N^c log^(k+1)N) = O(log(N))

1
T(n)=T(n/2)+1
T(n/2)= T(n/4)+1+1
Put the value of The(n/2) in above so T(n)=T(n/4)+1+1 . . . . T(n/2^k)+1+1+1.....+1
=T(2^k/2^k)+1+1....+1 up to k
=T(1)+k
As we taken 2^k=n
K = log n
So Time complexity is O(log n)
It doesn't half search time, that wouldn't make it log(n). It decreases it logarithmicly. Think about this for a moment. If you had 128 entries in a table and had to search linearly for your value, it would probably take around 64 entries on average to find your value. That's n/2 or linear time. With a binary search, you eliminate 1/2 the possible entries each iteration, such that at most it would only take 7 compares to find your value (log base 2 of 128 is 7 or 2 to the 7 power is 128.) This is the power of binary search.

Sorry for the necropost but 128 is not an evenly filled out tree. I used a basic example to get my head around this, and I found that 7 entries evenly fills a tree with 3 layers. I calculated that the complexity should be 17/7 (the mean of the sum total of compares) which is 2.43. But log2(7) is 2.81. So what am I missing here? – Perry Monschau Nov 23 '16 at 21:06

Two answers  First one here: Even if there is no error in the math, we can see that 2.43 average is still better than 3.5 average for linear, and this is at a low value. Once you get into the 100s of entries, log2() is much much better than linear. I think you see this though, so onto next. – Michael Dorgan Nov 28 '16 at 19:14

1Second answer: I'm not sure what kind of tree you have where 7 has everything filled out. When I think about a perfect tree of 8 entries, I see a 3 level deep tree with 8 total leaves. In this tree, no matter which number you search, it takes 3 total compares to get from root to leaf. For 7 entries, one of paths would take one less compare so 20/7 (6 nodes of 3 compares, 1 node of 2 compares) which is ~2.85. Log2(7) is ~2.81. I don't have the math background to explain away the .04 difference, but I guess it has to do with not having fractional bits available or some other magic :) – Michael Dorgan Nov 28 '16 at 19:26

the number is the number of leaves!? Not the number of nodes? Well that was a big piece of information that I was missing.. Seems strange to me that the function is based on leaves, when each branching node is also a potential stop point. Well anyway, thanks for straightening that out for me! – Perry Monschau Nov 29 '16 at 13:49
The time complexity of the binary search algorithm belongs to the O(log n) class. This is called big O notation. The way you should interpret this is that the asymptotic growth of the time the function takes to execute given an input set of size n will not exceed log n
.
This is just formal mathematical lingo in order to be able to prove statements, etc. It has a very straightforward explanation. When n grows very large, the log n function will outgrow the time it takes to execute the function. The size of the "input set", n, is just the length of the list.
Simply put, the reason binary search is in O(log n) is that it halves the input set in each iteration. It's easier to think about it in the reverse situation. On x iterations, how long list can the binary search algorithm at max examine? The answer is 2^x. From this we can see that the reverse is that on average the binary search algorithm needs log2 n iterations for a list of length n.
If why it is O(log n) and not O(log2 n), it's because simply put again  Using the big O notation constants don't count.
Log2(n) is the maximum number of searches that are required to find something in a binary search. The average case involves log2(n)1 searches. Here's more info:
Here is wikipedia entry
If you look at the simple iterative approach. You are just eliminating half of the elements to be searched for until you find the element you need.
Here is the explanation of how we come up with the formula.
Say initially you have N number of elements and then what you do is ⌊N/2⌋ as a first attempt. Where N is sum of lower bound and upper bound. The first time value of N would be equal to (L + H), where L is the first index (0) and H is the last index of the list you are searching for. If you are lucky, the element you try to find will be in the middle [eg. You are searching for 18 in the list {16, 17, 18, 19, 20} then you calculate ⌊(0+4)/2⌋ = 2 where 0 is lower bound (L  index of the first element of the array) and 4 is the higher bound (H  index of the last element of the array). In the above case L = 0 and H = 4. Now 2 is the index of the element 18 that you are searching found. Bingo! You found it.
If the case was a different array{15,16,17,18,19} but you were still searching for 18 then you would not be lucky and you would be doing first N/2 (which is ⌊(0+4)/2⌋ = 2 and then realize element 17 at the index 2 is not the number you are looking for. Now you know that you don’t have to look for at least half of the array in your next attempt to search iterative manner. Your effort of searching is halved. So basically, you do not search half the list of elements that you searched previously, every time you try to find the element that you were not able to find in your previous attempt.
So the worst case would be
[N]/2 + [(N/2)]/2 + [((N/2)/2)]/2.....
i.e:
N/2^{1} + N/2^{2} + N/2^{3} +..... + N/2^{x} …..
until …you have finished searching, where in the element you are trying to find is at the ends of the list.
That shows the worst case is when you reach N/2^{x} where x is such that 2^{x} = N
In other cases N/2^{x} where x is such that 2^{x} < N Minimum value of x can be 1, which is the best case.
Now since mathematically worst case is when the value of
2^{x} = N
=> log_{2}(2^{x}) = log_{2}(N)
=> x * log_{2}(2) = log_{2}(N)
=> x * 1 = log_{2}(N)
=> More formally ⌊log_{2}(N)+1⌋

1
A binary search works by dividing the problem in half repeatedly, something like this (details omitted):
Example looking for 3 in [4,1,3,8,5]
 Order your list of items [1,3,4,5,8]
 Look at the middle item (4),
 If it is what you are looking for, stop
 If it is greater, look at the first half
 If it is less, look at the second half
 Repeat step 2 with the new list [1, 3], find 3 and stop
It is a binary search when you divide the problem in 2.
The search only requires log2(n) steps to find the correct value.
I would recommend Introduction to Algorithms if you want to learn about algorithmic complexity.
Since we cut down a list in to half every time therefore we just need to know in how many steps we get 1 as we go on dividing a list by two. In the under given calculation x denotes the numbers of time we divide a list until we get one element(In Worst Case).
1 = N/2x
2x = N
Taking log2
log2(2x) = log2(N)
x*log2(2) = log2(N)
x = log2(N)
T(N) = T(N/2) + 1
T(N) = T(N/2) + 1 = (T(N/4) + 1)+ 1
...
T(N) = T(N/N) + (1 + 1 + 1 +... + 1) = 1 + logN (base 2 log) = 1 + logN
So the time complexity of binary search is O(logN)
ok see this
for(i=0;i<n;n=n/2)
{
i++;
}
1. Suppose at i=k the loop terminate. i.e. the loop execute k times.
2. at each iteration n is divided by half.
2.a n=n/2 .... AT I=1
2.b n=(n/2)/2=n/(2^2)
2.c n=((n/2)/2)/2=n/(2^3)....... aT I=3
2.d n=(((n/2)/2)/2)/2=n/(2^4)
So at i=k , n=1 which is obtain by dividing n 2^k times
n=2^k
1=n/2^k
k=log(N) //base 2
Let me make it easy for all of you with an example.
For simplicity purpose, let's assume there are 32 elements in an array in the sorted order out of which we are searching for an element using binary search.
1 2 3 4 5 6 ... 32
Assume we are searching for 32. after the first iteration, we will be left with
17 18 19 20 .... 32
after the second iteration, we will be left with
25 26 27 28 .... 32
after the third iteration, we will be left with
29 30 31 32
after the fourth iteration, we will be left with
31 32
In the fifth iteration, we will find the value 32.
So, If we convert this into a mathematical equation, we will get
(32 X (1/2^{5})) = 1
=> n X (2^{k}) = 1
=> (2^{k}) = n
=> k log_{2}2 = log_{2}n
=> k = log_{2}n
Hence the proof.
Let say the iteration in Binary Search terminates after k iterations. At each iteration, the array is divided by half. So let’s say the length of the array at any iteration is n At Iteration 1,
Length of array = n
At Iteration 2,
Length of array = n⁄2
At Iteration 3,
Length of array = (n⁄2)⁄2 = n⁄22
Therefore, after Iteration k,
Length of array = n⁄2k
Also, we know that after After k divisions, the length of the array becomes 1 Therefore
Length of array = n⁄2k = 1
=> n = 2k
Applying log function on both sides:
=> log2 (n) = log2 (2k)
=> log2 (n) = k log2 (2)
As (loga (a) = 1)
Therefore,
As (loga (a) = 1)
k = log2 (n)
Hence the time complexzity of Binary Search is
log2 (n)
protected by Community♦ Nov 3 '18 at 17:16
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