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When i use an analyzer with edgengram (min=3, max=7, front) + term_vector=with_positions_offsets

With document having text = "CouchDB"

When i search for "couc"

My highlight is on "cou" and not "couc"

It seems my highlight is only on the minimum matching token "cou" while i would expect to be on the exact token (if possible) or at least the longest token found.

It works fine without analyzing the text with term_vector=with_positions_offsets

What's the impact of removing the term_vector=with_positions_offsets for perfomances?

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nobody has any solution or answer about the impact of with_positions_offsets ? – Sebastien Lorber Jan 1 '13 at 21:16
up vote 7 down vote accepted

When you set term_vector=with_positions_offsets for a specific field it means that you are storing the term vectors per document, for that field.

When it comes to highlighting, term vectors allow you to use the lucene fast vector highlighter, which is faster than the standard highlighter. The reason is that the standard highlighter doesn't have any fast way to highlight since the index doesn't contain enough information (positions and offsets). It can only re-analyze the field content, intercept offsets and positions and make highlighting based on that information. This can take quite a while, especially with long text fields.

Using term vectors you do have enough information and don't need to re-analyze the text. The downside is the size of the index, which will notably increase. I must add that since Lucene 4.2 term vectors are better compressed and stored in an optimized way though. And there's also the new PostingsHighlighter based on the ability to store offsets in the postings list, which requires even less space.

elasticsearch uses automatically the best way to make highlighting based on the information available. If term vectors are stored, it will use the fast vector highlighter, otherwise the standard one. After you reindex without term vectors, highlighting will be made using the standard highlighter. It will be slower but the index will be smaller.

Regarding ngram fields, the described behaviour is weird since fast vector highlighter should have a better support for ngram fields, thus I would expect exactly the opposite result.

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Thanks, so I know the performance impact now. Hope someone will be able to explain this behavior. Maybe it's because the ngram logic is applied to the search query too, while it shouldn't? – Sebastien Lorber Mar 29 '13 at 15:03
Didn't think about it, yes it makes sense. Usually for ngrams you have a different analysis chain at query time, without ngrams. Otherwise you make ngrams of the query too and you get way more results than expected and weird behaviours. – javanna Mar 29 '13 at 15:05
ok thanks I should try that then ;) – Sebastien Lorber Mar 29 '13 at 15:06

I know this question is old, but it was not yet answered completely:

There is another option that can yield to such a strange behaviour:

You have to set require_field_match to true if you don't want that other results of documents should influence the current document highlighting, see: http://www.elasticsearch.org/guide/reference/api/search/highlighting/

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require_field_match is only about field names, I don't think it relates to this case. I mean that if you have a query on the title field and you highlight title and description, the matching terms on the description field won't be highlighted, while by default they are. – javanna May 7 '13 at 14:47

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