# Algorithm Complexity Time

I am currently having trouble identifying and understanding the complexity time of the following algorithm.

Background: There is a list of files, each containing a list of candidate Ids. Both, number of files and number of candidates within them are not fixed.

How would you calculate the time complexity for an algorithm which is responsible for: Reading each file and adding all the unique candidate Ids into a Hashset?

Thanks.

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You should first of all give a brief summary of your own thoughts so far. Stack Overflow will not do your homework for you! –  Gareth McCaughan Apr 28 '12 at 23:34

## 2 Answers

It seems homework so let me give guidelines:

• Each HashSet insert is `O(1)`, on average.
• Each candidate from each file is added exactly once to the HashSet.
• Doing x times `O(f(n))` ops, results in `O(x*f(n))` algroithm 1

If you are after worst case performance - you should follow the same ideas, but consider that each insert is `O(n)` worst case. This time you will have to take footnote (1) into consideration [though it will not have affect on the result, in this specific case]
For this, you will have to calculate `f(1) + f(2) + ... + f(n)`, where `f(n) = n`. (which will give you sum of arithmetic progression)

EDIT: Since it is NOT homework, here are some specifics:

• Let `m` be the number of files, and `k` be the average number of candidates per file.
• Note that you `add()` each candidate into the Hash exactly once.
• As mentioned, each `HashSet.add()` is `O(1)` on average and `O(n)` worst case.
• Let `c` be the constant that is guaranteed from the big O notation [for simplicity, let it be `c` for both average and worst case complexity].
• Your average case complexity is then `c + c + .. + c [m*k times] = c * m* k = O(m*k)`
• And your worst case complexity is: `c*1 + c*2 + ... + c*m*k = c*(1+2+...+m*k) < c*(m^2 * k^2) = O(m^2 * k^2)`

Note that `c*(1+2+...+m*k) < c*(m^2 * k^2)` is derived from sum of arithmetic progression.

(1)Well, not exactly. If `n` varies over time this statement is not correct, but it is not the case in here, since `f(n)` in here does not actually depend on `n`.

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Hi Amit. Thanks for the quick reply. It is not homework. I have implemented a system for a user and I am trying to evaluate the performance of the algorithms. I have been reading about time complexities and having a difficult time to understand it. I would be grateful if you could further elaborate and add specific calculations on this. Thanks. –  user1339335 Apr 28 '12 at 23:48
I understand the first 2 points mentioned. A HashSet has an insert of O(1) because of the contains() method and as duplicates are not allowed. Did not quite understand the third point. –  user1339335 Apr 28 '12 at 23:51
@user1339335: Read the edit, since it is not homework, I explained it for your specific case, is it clear? –  amit Apr 28 '12 at 23:57
Hi, thanks for the explanation. Just confused with what you mean by "Let c be the constant that is guaranteed from the big O notation [for simplicity, let it be c for both average and worst case complexity]." –  user1339335 Apr 29 '12 at 0:58
@user1339335: if insert is `O(1)`, then each insert takes `t < c` ops. it if is `O(n)`, each insert takes `t < c*n` ops. This `c` is constant and is is promised that such `c` exists from the definition of big O notation. –  amit Apr 29 '12 at 1:00

i'm just repeating what amit said, so please give him the upvote if that is clear to you - i find that explanation a bit confusing.

your average complexity is O(n) where n is the total number of candidates (from all files). so if you have `a` files, each with `b` candidates then the time taken is proportional to `a * b`.

this is because the simplest way to solve your problem is to simply loop through all the data, adding them to the set. the set will discard duplicates as necessary.

looping over all values takes time proportional to the number of values (that is the O(n) part). adding a value to a hash set takes constant time (or O(1)). since that is constant time per entry, your overall time remains O(n).

however, hash sets have a strange worst case behaviour - they take time proportional to the size of the contents in some (unusual) cases. so in the very worst case, each time you add a value it requires O(m) amount of work, where m is the number of entries in the set.

now m is (approximately - it starts at zero and goes up to...) the number of distinct values. so we have two common cases:

• if the number of distinct candidates increases as we read more (so, for example, 90% of the files are always new candidates) then m is proportional to n. that means that the work of adding each candidate increases proportional to n. so the total work is proportional to n^2 (since for each candidate we do work proportional to n, and there are n candidates). so the worst case is O(n^2).

• if the number of distinct candidates is actually fixed, then as you read more and more files they tend to be just full of known candidates. in that case the extra work for inserting into the set is constant (you only get the strange behaviour a fixed number of times for the unique candidates - it doesn't depend on n). in that case the performance of the set does not keep getting worse as n gets larger and larger, so the worst case complexity remains O(n).

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Thank you so much for the explanation. It is very clear now. –  user1339335 Apr 29 '12 at 1:57