Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

So if I have to choose between a hash table or a prefix tree what are the discriminating factors that would lead me to choose one over the other. From my own naive point of view it seems as though using a trie has some extra overhead since it isn't stored as an array but that in terms of run time (assuming the longest key is the longest english word) it can be essentially O(1) (in relation to the upper bound). Maybe the longest english word is 50 characters?

Hash tables are instant look up once you get the index. Hashing the key to get the index however seems like it could easily take near 50 steps.

Can someone provide me a more experienced perspective on this? Thanks!

share|improve this question
up vote 74 down vote accepted

Advantages of tries:

The basics:

  • Predictable O(k) lookup time where k is the size of the key
  • Lookup can take less than k time if it's not there
  • Supports ordered traversal
  • No need for a hash function
  • Deletion is straightforward

New operations:

  • You can quickly look up prefixes of keys, enumerate all entries with a given prefix, etc.

Advantages of linked structure:

  • If there are many common prefixes, the space they require is shared.
  • Immutable tries can share structure. Instead of updating a trie in place, you can build a new one that's different only along one branch, elsewhere pointing into the old trie. This can be useful for concurrency, multiple simultaneous versions of a table, etc.
  • An immutable trie is compressible. That is, it can share structure on the suffixes as well, by hash-consing.

Advantages of hashtables:

  • Everyone knows hashtables, right? Your system will already have a nice well-optimized implementation, faster than tries for most purposes.
  • Your keys need not have any special structure.
  • More space-efficient than the obvious linked trie structure (see comments below)
share|improve this answer
can not quite agree with "More space-efficient than the obvious linked trie structure" -- in a general hash table implementation, it occupies a much larger space to contain keys, while in tries, each node represents a word. In this sense, tries are more space-efficient. – galactica Aug 14 '13 at 18:12
how about accesing data from one structure vs the other? I'm thinking cache and location – Richard Lenoir Apr 14 '14 at 22:38
@galactica, that conflicts with my experience: for example, in this answer of all the structures I measured for space, a trie fared the worst. This makes sense since a pointer is much larger than a byte. Yes, the sharing of prefixes helps, but it must overcome a lot of overhead to reach parity. A more space-efficient representation can help a lot, but then we're no longer talking about the obvious linked structure. – Darius Bacon May 23 '14 at 1:44
@DariusBacon handling telephone numbering plans seems like a reasonable scenario for tries. Sample scenario: telephone number to carrier matching incl. numbers ported from one carrier to another. For usual dictionaries it may depend on the language (Mandarin vs English), you'd need n-grams and/or other statistical data. For a rhyme book, a suffix tree also seems a good option. – mbx Nov 24 '15 at 10:15

It all depends on what problem you're trying to solve. If all you need to do is insertions and lookups, go with a hash table. If you need to solve more complex problems such as prefix-related queries, then a trie might be the better solution.

share|improve this answer

Everyone knows hash table and its uses but it is not exactly constant look up time , it depends on how big the hash table is , the computational complexity of the hash function.

Creating huge hash tables for efficient lookup is not an elegant solution in most of the industrial scenarios where even small latency/scalability matters (e.g.: high frequency trading). You have to care about the data structures to be optimized for space it takes up in memory too to reduce cache miss.

A very good example where trie better suits the requirements is messaging middleware . You have a million subscribers and publishers of messages to various categories (in JMS terms - Topics or exchanges) , in such cases if you want to filter out messages based on topics (which are actually strings) , you definitely do not want create hash table for the million subscriptions with million topics . A better approach is store the topics in trie , so when filtering is done based on topic match , its complexity is independent of number of topics/subscriptions/publishers (only depends on the length of string). I like it because you can be creative with this data structure to optimize space requirements and hence have lower cache miss.

share|improve this answer
nice example :) – hqt May 7 '13 at 19:06

Use a tree:

  1. If you need auto complete feature
  2. Find all words beginning with 'a' or 'axe' so on.
  3. A suffix tree is a special form of a tree. Suffix trees have a whole list of advantages that hash cannot cover.
share|improve this answer

Some (usually embedded, real-time) applications require that the processing time be independent of the data. In that case, a hash table can guarantee a known execution time, while a trie varies based on the data.

share|improve this answer
Most hash tables don't guarantee a known execution time - the worst case is O(n), if every element collides and gets chained – Adam Rosenfield Oct 29 '08 at 5:38
For any data set, you can compute a perfect hash function that will guarantee O(1) lookups for that data. Of course, computing the perfect hash ain't free. – George V. Reilly Oct 29 '08 at 6:21
Also, chaining is not the only way to handle collisions; there are all sorts of interesting, clever ways to handle this—cuckoo hashing ( for one—and the best choice depends on the needs of the client code. – Hank Gay Oct 29 '08 at 12:11
didn't know about cuckoo hashing and its relation to the bloom filter, will make for an interesting read, thanks! – Richard Lenoir Apr 14 '14 at 22:42
Don't forget about Robin-hood Hashing, which is superior for cache and variance.… – Jarred Nicholls Aug 8 '15 at 16:20

There's something I haven't seen anyone mention explicitly that I think is important to keep in mind. Both hash tables and tries of various kinds will typically have O(k) operations, where k is the length of the string in bits (or equivalently in chars).

This is assuming you have a good hash function. If you don't want "farm" and "farm animals" to hash to the same value, then the hash function will have to use all the bits of the key, and so hashing "farm animals" should take about twice as long as "farm" (unless you're in some sort of rolling hash scenario, but there are somewhat similar operation-saving scenarios with tries too). And with a vanilla try, it's clear why inserting "farm animals" will take about twice as long as just "farm". In the long run it's true with compressed tries as well.

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.