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Since i'm working around time complexity, i've been searching through the oracle Java class library for the time complexity of some standard methods used on Lists, Maps and Classes. (more specifically, ArrayList, HashSet and HashMap)

Now, when looking at the HashMap javadoc page, they only really speak about the get() and put() methods.

The methods i still need to know are:

remove(Object o)

I think that remove() will be the same complexity as get(), O(1), assuming we don't have a giant HashMap with equal hashCodes, etc etc...

For size() i'd also assume O(1), since a HashSet, which also has no order, has a size() method with complexity O(1).

The one i have no idea of is values() - I'm not sure whether this method will just somehow "copy" the HashMap, giving a time complexity of O(1), or if it will have to iterate over the HashMap, making the complexity equal to the amount of elements stored in the HashMap.


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Btw how could values() give O(1) if it even if it just somehow "copy" the HashMap ? – Pacerier Nov 10 '11 at 11:09
by the way, your link is broken – Hengameh Jun 10 '15 at 9:53
Could you please mention the exact complexity (average or worst) you are looking for in your question ? The complexity of remove() will be different accordingly, as rightly pointed by @JavaGuy – Dinesh Oct 6 '15 at 10:35
up vote 18 down vote accepted

The source is often helpful:

  • remove: O(1)
  • size: O(1)
  • values: O(n) (on traversal through iterator)
share|improve this answer
remove has amortized complexity O(1+a), where a depends on how many items are in the slot for the hash key of the removed object – Tim Feb 3 '13 at 21:01
@Tim , what is a? – Hengameh Jun 10 '15 at 9:51
@Hengameh a - is a load factor. A load factor is a ratio between a number of elements and the number of slots the hash map has. Please refer to Introduction to Algorithms 11.2 Hash Tables for more detailed explanation. – Tim Jun 10 '15 at 14:14

The code for remove(as in rt.jar for HashMap) is:

 * Removes and returns the entry associated with the specified key
 * in the HashMap.  Returns null if the HashMap contains no mapping
 * for this key.
final Entry<K,V> removeEntryForKey(Object key) {
    int hash = (key == null) ? 0 : hash(key.hashCode());
    int i = indexFor(hash, table.length);
    Entry<K,V> prev = table[i];
    Entry<K,V> e = prev;

    while (e != null) {
        Entry<K,V> next =;
        Object k;
        if (e.hash == hash &&
            ((k = e.key) == key || (key != null && key.equals(k)))) {
            if (prev == e)
                table[i] = next;
       = next;
            return e;
        prev = e;
        e = next;

    return e;

Clearly, the worst case is O(n).

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You can always take a look on the source code and check it yourself.
Anyway... I once checked the source code and what I remember is that there is a variable named size that always hold the number of items in the HashMap so size() is O(1).

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I'm new to Java so i have no idea about source codes, but i'll give it a try. Thanks! – Koeneuze Jan 2 '11 at 10:40
where can I find source code? – Hengameh Jun 10 '15 at 10:05

Search: O(1+k/n)
Insert: O(1)
Delete: O(1+k/n) where k is the no. of collision elements added to the same LinkedList (k elements had same hashCode)

Insertion is O(1) because you add the element right at the head of LinkedList.

Amortized Time complexities are close to O(1) given a good hashFunction. If you are too concerned about lookup time then try resolving the collisions using a BinarySearchTree instead of Default implementation of java i.e LinkedList

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"Insertion is O(1) because you add the element right at the head of LinkedList." It still has to go through the list to check if that element already exists by comparing the key along with hash (Ref - source code). – Swapnil Jul 31 '14 at 22:03
better to use lookup, put, and remove :) – Hengameh Jun 10 '15 at 10:05

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