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ElasticSearch 5.x introduced some (breaking) changes to the Suggester API (Documentation). Most notable change is the following:

Completion suggester is document-oriented

Suggestions are aware of the document they belong to. Now, associated documents (_source) are returned as part of completion suggestions.

In short, all completion queries return all matching documents instead of just matched words. And herein lies the problem - duplication of autocompleted words if they occur in more than one document.

Let's say we have this simple mapping:

{
   "my-index": {
      "mappings": {
         "users": {
            "properties": {
               "firstName": {
                  "type": "text"
               },
               "lastName": {
                  "type": "text"
               },
               "suggest": {
                  "type": "completion",
                  "analyzer": "simple"
               }
            }
         }
      }
   }
}

With a few test documents:

{
   "_index": "my-index",
   "_type": "users",
   "_id": "1",
   "_source": {
      "firstName": "John",
      "lastName": "Doe",
      "suggest": [
         {
            "input": [
               "John",
               "Doe"
            ]
         }
      ]
   }
},
{
   "_index": "my-index",
   "_type": "users",
   "_id": "2",
   "_source": {
      "firstName": "John",
      "lastName": "Smith",
      "suggest": [
         {
            "input": [
               "John",
               "Smith"
            ]
         }
      ]
   }
}

And a by-the-book query:

POST /my-index/_suggest?pretty
{
    "my-suggest" : {
        "text" : "joh",
        "completion" : {
            "field" : "suggest"
        }
    }
}

Which yields the following results:

{
   "_shards": {
      "total": 5,
      "successful": 5,
      "failed": 0
   },
   "my-suggest": [
      {
         "text": "joh",
         "offset": 0,
         "length": 3,
         "options": [
            {
               "text": "John",
               "_index": "my-index",
               "_type": "users",
               "_id": "1",
               "_score": 1,
               "_source": {
                 "firstName": "John",
                 "lastName": "Doe",
                 "suggest": [
                    {
                       "input": [
                          "John",
                          "Doe"
                       ]
                    }
                 ]
               }
            },
            {
               "text": "John",
               "_index": "my-index",
               "_type": "users",
               "_id": "2",
               "_score": 1,
               "_source": {
                 "firstName": "John",
                 "lastName": "Smith",
                 "suggest": [
                    {
                       "input": [
                          "John",
                          "Smith"
                       ]
                    }
                 ]
               }
            }
         ]
      }
   ]
}

In short, for a completion suggest for text "joh", two (2) documents were returned - both John's and both had the same value of the text property.

However, I would like to receive one (1) word. Something simple like this:

{
   "_shards": {
      "total": 5,
      "successful": 5,
      "failed": 0
   },
   "my-suggest": [
      {
         "text": "joh",
         "offset": 0,
         "length": 3,
         "options": [
          "John"
         ]
      }
   ]
}

Question: how to implement a word-based completion suggester. There is no need to return any document related data, since I don't need it at this point.

Is the "Completion Suggester" even appropriate for my scenario? Or should I use a completely different approach?


EDIT: As many of you pointed out, an additional completion-only index would be a viable solution. However, I can see multiple issues with this approach:

  1. Keeping the new index in sync.
  2. Auto-completing subsequent words would probably be global, instead of narrowed down. For example, say you have the following words in the additional index: "John", "Doe", "David", "Smith". When querying for "John D", the result for the incomplete word should be "Doe" and not "Doe", "David".

To overcome the second point, only indexing single words wouldn't be enough, since you would also need to map all words to documents in order to properly narrow down auto-completing subsequent words. And with this, you actually have the same problem as querying the original index. Therefore, the additional index doesn't make sense anymore.

  • As hinted at in this issue, this new behavior is "by design" and there's no plan to change it. Their suggestion is to create another index for the completion suggester. Pretty much as suggested by @EdgarVonk below. – Val Jan 22 '17 at 5:28
  • What about a custom query on the current index? Maybe creating an additional NGram field for all the suggestions with a distinct query (with terms aggregation)? As for the additional suggestion-only index, I can identify a few issues, which actually contradict your proposed solution (see my updated question). – alesc Jan 22 '17 at 8:51
  • Of course, a terms aggregation can also achieve a similar goal, but it depends on the load of documents you have. I'm not proposing that solution, Edgar and the ES folks (see issue) are ;-) – Val Jan 22 '17 at 9:18
19
+100

As hinted at in the comment, another way of achieving this without getting the duplicate documents is to create a sub-field for the firstname field containing ngrams of the field. First you define your mapping like this:

PUT my-index
{
  "settings": {
    "analysis": {
      "analyzer": {
        "completion_analyzer": {
          "type": "custom",
          "filter": [
            "lowercase",
            "completion_filter"
          ],
          "tokenizer": "keyword"
        }
      },
      "filter": {
        "completion_filter": {
          "type": "edge_ngram",
          "min_gram": 1,
          "max_gram": 24
        }
      }
    }
  },
  "mappings": {
    "users": {
      "properties": {
        "autocomplete": {
          "type": "text",
          "fields": {
            "raw": {
              "type": "keyword"
            },
            "completion": {
              "type": "text",
              "analyzer": "completion_analyzer",
              "search_analyzer": "standard"
            }
          }
        },
        "firstName": {
          "type": "text"
        },
        "lastName": {
          "type": "text"
        }
      }
    }
  }
}

Then you index a few documents:

POST my-index/users/_bulk
{"index":{}}
{ "firstName": "John", "lastName": "Doe", "autocomplete": "John Doe"}
{"index":{}}
{ "firstName": "John", "lastName": "Deere", "autocomplete": "John Deere" }
{"index":{}}
{ "firstName": "Johnny", "lastName": "Cash", "autocomplete": "Johnny Cash" }

Then you can query for joh and get one result for John and another one for Johnny

{
  "size": 0,
  "query": {
    "term": {
      "autocomplete.completion": "john d"
    }
  },
  "aggs": {
    "suggestions": {
      "terms": {
        "field": "autocomplete.raw"
      }
    }
  }
}

Results:

{
  "aggregations": {
    "suggestions": {
      "doc_count_error_upper_bound": 0,
      "sum_other_doc_count": 0,
      "buckets": [
        {
          "key": "John Doe",
          "doc_count": 1
        },
        {
          "key": "John Deere",
          "doc_count": 1
        }
      ]
    }
  }
}

UPDATE (June 25th, 2019):

ES 7.2 introduced a new data type called search_as_you_type that allows this kind of behavior natively. Read more at: https://www.elastic.co/guide/en/elasticsearch/reference/7.2/search-as-you-type.html

  • What if you wanted to search through more than one field? Ideally, I would have an additional multi-value field named suggest, which would contain all of the values that I would like to autocomplete (name, surname, username, email etc.). – alesc Jan 23 '17 at 8:40
  • That would be the same thing, each of the tokens contained in that field will be indexed – Val Jan 23 '17 at 8:42
  • But would aggregation also work so that it would remove duplicate entries? – alesc Jan 23 '17 at 10:00
  • 1
    In a terms aggregation, you'll only ever get a single occurrence of each matching terms. There's no way you get two John buckets in the above aggregation. – Val Jan 23 '17 at 10:03
  • Your prototype works, but I will need to make a performance test to see if this solution is viable. Also, how do you propose to take subsequent words into account? Meaning that entering "johnny d" should not produce Doe and Deere, since no johnny has that surname? – alesc Jan 26 '17 at 18:07
2

An additional field skip_duplicates will be added in the next release 6.x.

From the docs at https://www.elastic.co/guide/en/elasticsearch/reference/master/search-suggesters-completion.html#skip_duplicates:

POST music/_search?pretty
{
    "suggest": {
        "song-suggest" : {
            "prefix" : "nor",
            "completion" : {
                "field" : "suggest",
                "skip_duplicates": true
            }
        }
    }
}
  • Thanks for the info! Is the 6.x release date already known? – alesc Sep 15 '17 at 6:48
  • Please note that "skip_duplicates": true works like a charm, but only for ES6.1 and it could be the best solution. For ES6.0, which is my case, it does not work. – sashaegorov Jan 20 '18 at 9:21
1

We face exactly the same problem. In Elasticsearch 2.4 the approach like you describe used to work fine for us but now as you say the suggester has become document-based while like you we are only interested in unique words, not in the documents.

The only 'solution' we could think of so far is to create a separate index just for the words on which we want to perform the suggestion queries and in this separate index make sure somehow that identical words are only indexed once. Then you could perform the suggestion queries on this separate index. This is far from ideal, if only because we will then need to make sure that this index remains in sync with the other index that we need for our other queries.

  • Could you elaborate how to create a mechanism to keep this index in sync? And how to avoid global suggestions for subsequent words? – alesc Jan 22 '17 at 8:37

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