12

I have the following query to add fuzziness to my search. However, I now realize that the match query doesn't consider the order of the words in the search string, as the match_phrase does. However, I can't get match_phrase to give me results with fuzziness. Is there a way to tell match to consider the order and distance between words?

{
    "query": {
        "match": {
            "content": {
                "query": "some search terms like this",
                "fuzziness": 1,
                "operator": "and"
            }
        }
    }
}
19

Eventually figured out that I needed to use a combination of span queries, which give an excellent amount of fine tuning to fuzziness and slop. I needed to add a function to manually tokenize my phrases and add to the "clauses" array in an programmatically:

{"query":
{
  "span_near": {
    "clauses": [
      {
        "span_multi": {
          "match": {
            "fuzzy": {
              "content": {
                "fuzziness": "2",
                "value": "word"
              }
            }
          }
        }
      },
      {
        "span_multi": {
          "match": {
            "fuzzy": {
              "content": {
                "fuzziness": "2",
                "value": "another"
              }
            }
          }
        }
      }                   
    ],
    "slop": 1,
    "in_order": "true"
| improve this answer | |
  • Thank you for the response, it worked for me, but I think I should mention that the content should be replaced with the field_name that you want to search. For instance, if you want to search the title field, then replace "content": {"fuziness": "2", "value": "word"} with "title": {"fuziness": "2", "value": "word"}. – Dan Lupascu Jan 20 at 2:54
  • I wish there were a way for elasticsearch to tokenize the phrases and then pass them into this span_near clause. Is there a way? – GNG May 19 at 8:23
2

@econgineer Excellent post.

I wanted to try this for an ES query we are working on - but I am too lazy to keep doing the JSON data....

I think this code works... strangely it causes jq to complain but ElasticSearch work....

import json
import pprint
from collections import defaultdict
nested_dict = lambda: defaultdict(nested_dict)
query=nested_dict()
query['span_near']['clauses']=list()
query['slop']='1'
query['in_order']="true"


words=['what','is','this']
for w in words:
    nest = nested_dict()
    nest["span_multi"]["match"]["fuzzy"]["msg"]["fuzziness"]["value"]=w
    nest["span_multi"]["match"]["fuzzy"]["msg"]["fuzziness"]["fuzziness"]="2"
    json.dumps(nest)
    query['span_near']['clauses'].append(json.loads(json.dumps(nest)))


pprint.pprint(json.loads(json.dumps(query)))

If you beautify the output by

cat t2.json | tr  "\'" "\""  | jq '.'

You should see something like

{
  "in_order": "true",
  "slop": "1",
  "span_near": {
    "clauses": [
      {
        "span_multi": {
          "match": {
            "fuzzy": {
              "msg": {
                "fuzziness": {
                  "fuzziness": "2",
                  "value": "what"
                }
              }
            }
          }
        }
      },
      {
        "span_multi": {
          "match": {
            "fuzzy": {
              "msg": {
                "fuzziness": {
                  "fuzziness": "2",
                  "value": "is"
                }
              }
            }
          }
        }
      },
      {
        "span_multi": {
          "match": {
            "fuzzy": {
              "msg": {
                "fuzziness": {
                  "fuzziness": "2",
                  "value": "this"
                }
              }
            }
          }
        }
      }
    ]
  }
}

And then to query ES it is just a normal

curl --silent My_ES_Server:9200:/INDEX/_search -d @t2.json

Many thanks for the initial guidance, I hope someone else find this of use.

| improve this answer | |
  • How can you make any of the span_multi be optional? – perrohunter Feb 7 '18 at 20:47
0

Indeed, an excellent question and answer. I'm surprised that this 'fuzzy phrase match' doesn't have support out of the box.

Here's a tested NodeJS code that generates the fuzzy phrase match (multi clause) query block, in the context of a multi search (msearch), but that should work just the same with a single search.

Usage:

let queryBody = [];
client.msearch({
   body: queryBody
})

queryBody.push({ index: 'YOUR_INDEX' });
queryBody.push(createESFuzzyPhraseQueryBlock('YOUR PHRASE', 'YOUR_FIELD_NAME', 2));   // 2 <- fuzziness

Functions:

const createESFuzzyPhraseClauseBlock = (word, esFieldName, fuzziness) => {
    let clauseBlock = JSON.parse(
        `{
            "span_multi": {
                "match": {
                    "fuzzy": {
                        "${esFieldName}": {
                            "fuzziness": "${fuzziness}",
                            "value": "${word}"
                        }
                    }
                }
            }
        }`);

    return clauseBlock;
};


const createESFuzzyPhraseQueryBlock = (phrase, esFieldName, fuzziness) => {
    let clauses = [];

    let words = phrase.split(' ');
    words.forEach(word => clauses.push(createESFuzzyPhraseClauseBlock(word, esFieldName, fuzziness)));

    let queryBlock =
        {
            "query":
                {
                    "span_near": {
                        "clauses": clauses,
                        "slop": 1,
                        "in_order": "true"
                    }
                }
        };

    return queryBlock;
};
| improve this answer | |
  • How can you make any of the span_multi be optional? – perrohunter Feb 7 '18 at 20:47
0

Consider also mixing the queries, for me basic query looked like this - for phrases of length 2 I've used prefix query and for the rest I've used match query with fuziness set to AUTO.

| improve this answer | |

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