Announcing Stack Overflow Documentation

We started with Q&A. Technical documentation is next, and we need your help.

Whether you're a beginner or an experienced developer, you can contribute.

Sign up and start helping → Learn more about Documentation →

I am trying to make a search by partial word, ignoring casing and ignoring the accentuation of some letters. Is it possible? I think ngram with default tokenizer should do the trick but i don't understand how to do it with NEST.

Example: "musiic" should match records that have "music"

The version I am using of Elasticsearch is 1.9.

I am doing like this but it doesn't work...

var ix = new IndexSettings();
               'index_analyzer' : {
                          'my_index_analyzer' : {
                                        'type' : 'custom',
                                        'tokenizer' : 'standard',
                                        'filter' : ['lowercase', 'mynGram']
               'search_analyzer' : {
                          'my_search_analyzer' : {
                                        'type' : 'custom',
                                        'tokenizer' : 'standard',
                                        'filter' : ['standard', 'lowercase', 'mynGram']
               'filter' : {
                        'mynGram' : {
                                   'type' : 'nGram',
                                   'min_gram' : 2,
                                   'max_gram' : 50
        client.CreateIndex("sample", ix);



share|improve this question
up vote 2 down vote accepted

Short Answer

I think what you're looking for is a fuzzy query, which uses the Levenshtein distance algorithm to match similar words.

Long Answer on nGrams

The nGram filter splits the text into many smaller tokens based on the defined min/max range.

For example, from your 'music' query the filter will generate: 'mu', 'us', 'si', 'ic', 'mus', 'usi', 'sic', 'musi', 'usic', and 'music'

As you can see musiic does not match any of these nGram tokens.

Why nGrams

One benefit of nGrams is that it makes wildcard queries significantly faster because all potential substrings are pre-generated and indexed at insert time (I have seen queries speed up from multi-seconds to 15 milliseconds using nGrams).

Without the nGrams, each string must be searched at query time for a match [O(n^2)] instead of directly looked up in the index [O(1)]. As pseudocode:

hits = []
foreach string in index:
    if string.substring(query):
return hits


return index[query]

Note that this comes at the expense of making inserts slower, requiring more storage, and heavier memory usage.

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.