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Highlighting
editHighlighting
editAllows to highlight search results on one or more fields. The
implementation uses either the lucene highlighter
, fast-vector-highlighter
or postings-highlighter
. The following is an example of the search request
body:
{ "query" : {...}, "highlight" : { "fields" : { "content" : {} } } }
In the above case, the content
field will be highlighted for each
search hit (there will be another element in each search hit, called
highlight
, which includes the highlighted fields and the highlighted
fragments).
In order to perform highlighting, the actual content of the field is
required. If the field in question is stored (has store
set to true
in the mapping) it will be used, otherwise, the actual _source
will
be loaded and the relevant field will be extracted from it.
The _all
field cannot be extracted from _source
, so it can only
be used for highlighting if it mapped to have store
set to true
.
The field name supports wildcard notation. For example, using comment_*
will cause all fields that match the expression to be highlighted.
Postings highlighter
editIf index_options
is set to offsets
in the mapping the postings highlighter
will be used instead of the plain highlighter. The postings highlighter:
- Is faster since it doesn’t require to reanalyze the text to be highlighted: the larger the documents the better the performance gain should be
- Requires less disk space than term_vectors, needed for the fast vector highlighter
- Breaks the text into sentences and highlights them. Plays really well with natural languages, not as well with fields containing for instance html markup
- Treats the document as the whole corpus, and scores individual sentences as if they were documents in this corpus, using the BM25 algorithm
Here is an example of setting the content
field to allow for
highlighting using the postings highlighter on it:
{ "type_name" : { "content" : {"index_options" : "offsets"} } }
Note that the postings highlighter is meant to perform simple query terms highlighting, regardless of their positions. That means that when used for instance in combination with a phrase query, it will highlight all the terms that the query is composed of, regardless of whether they are actually part of a query match, effectively ignoring their positions.
The postings highlighter does support highlighting of multi term queries, like prefix queries, wildcard queries and so on. On the other hand, this requires the queries to be rewritten using a proper rewrite method that supports multi term extraction, which is a potentially expensive operation.
Fast vector highlighter
editIf term_vector
information is provided by setting term_vector
to
with_positions_offsets
in the mapping then the fast vector highlighter
will be used instead of the plain highlighter. The fast vector highlighter:
-
Is faster especially for large fields (>
1MB
) -
Can be customized with
boundary_chars
,boundary_max_scan
, andfragment_offset
(see below) -
Requires setting
term_vector
towith_positions_offsets
which increases the size of the index -
Can combine matches from multiple fields into one result. See
matched_fields
- Can assign different weights to matches at different positions allowing for things like phrase matches being sorted above term matches when highlighting a Boosting Query that boosts phrase matches over term matches
Here is an example of setting the content
field to allow for
highlighting using the fast vector highlighter on it (this will cause
the index to be bigger):
{ "type_name" : { "content" : {"term_vector" : "with_positions_offsets"} } }
Force highlighter type
editThe type
field allows to force a specific highlighter type. This is useful
for instance when needing to use the plain highlighter on a field that has
term_vectors
enabled. The allowed values are: plain
, postings
and fvh
.
The following is an example that forces the use of the plain highlighter:
{ "query" : {...}, "highlight" : { "fields" : { "content" : {"type" : "plain"} } } }
Force highlighting on source
editForces the highlighting to highlight fields based on the source even if fields are
stored separately. Defaults to false
.
{ "query" : {...}, "highlight" : { "fields" : { "content" : {"force_source" : true} } } }
Highlighting Tags
editBy default, the highlighting will wrap highlighted text in <em>
and
</em>
. This can be controlled by setting pre_tags
and post_tags
,
for example:
{ "query" : {...}, "highlight" : { "pre_tags" : ["<tag1>"], "post_tags" : ["</tag1>"], "fields" : { "_all" : {} } } }
Using the fast vector highlighter there can be more tags, and the "importance" is ordered.
{ "query" : {...}, "highlight" : { "pre_tags" : ["<tag1>", "<tag2>"], "post_tags" : ["</tag1>", "</tag2>"], "fields" : { "_all" : {} } } }
There are also built in "tag" schemas, with currently a single schema
called styled
with the following pre_tags
:
<em class="hlt1">, <em class="hlt2">, <em class="hlt3">, <em class="hlt4">, <em class="hlt5">, <em class="hlt6">, <em class="hlt7">, <em class="hlt8">, <em class="hlt9">, <em class="hlt10">
and </em>
as post_tags
. If you think of more nice to have built in tag
schemas, just send an email to the mailing list or open an issue. Here
is an example of switching tag schemas:
{ "query" : {...}, "highlight" : { "tags_schema" : "styled", "fields" : { "content" : {} } } }
Encoder
editAn encoder
parameter can be used to define how highlighted text will
be encoded. It can be either default
(no encoding) or html
(will
escape html, if you use html highlighting tags).
Highlighted Fragments
editEach field highlighted can control the size of the highlighted fragment
in characters (defaults to 100
), and the maximum number of fragments
to return (defaults to 5
).
For example:
{ "query" : {...}, "highlight" : { "fields" : { "content" : {"fragment_size" : 150, "number_of_fragments" : 3} } } }
The fragment_size
is ignored when using the postings highlighter, as it
outputs sentences regardless of their length.
On top of this it is possible to specify that highlighted fragments need to be sorted by score:
{ "query" : {...}, "highlight" : { "order" : "score", "fields" : { "content" : {"fragment_size" : 150, "number_of_fragments" : 3} } } }
If the number_of_fragments
value is set to 0
then no fragments are
produced, instead the whole content of the field is returned, and of
course it is highlighted. This can be very handy if short texts (like
document title or address) need to be highlighted but no fragmentation
is required. Note that fragment_size
is ignored in this case.
{ "query" : {...}, "highlight" : { "fields" : { "_all" : {}, "bio.title" : {"number_of_fragments" : 0} } } }
When using fast-vector-highlighter
one can use fragment_offset
parameter to control the margin to start highlighting from.
In the case where there is no matching fragment to highlight, the default is
to not return anything. Instead, we can return a snippet of text from the
beginning of the field by setting no_match_size
(default 0
) to the length
of the text that you want returned. The actual length may be shorter than
specified as it tries to break on a word boundary. When using the postings
highlighter it is not possible to control the actual size of the snippet,
therefore the first sentence gets returned whenever no_match_size
is
greater than 0
.
{ "query" : {...}, "highlight" : { "fields" : { "content" : { "fragment_size" : 150, "number_of_fragments" : 3, "no_match_size": 150 } } } }
Highlight query
editIt is also possible to highlight against a query other than the search
query by setting highlight_query
. This is especially useful if you
use a rescore query because those are not taken into account by
highlighting by default. Elasticsearch does not validate that
highlight_query
contains the search query in any way so it is possible
to define it so legitimate query results aren’t highlighted at all.
Generally it is better to include the search query in the
highlight_query
. Here is an example of including both the search
query and the rescore query in highlight_query
.
{ "fields": [ "_id" ], "query" : { "match": { "content": { "query": "foo bar" } } }, "rescore": { "window_size": 50, "query": { "rescore_query" : { "match_phrase": { "content": { "query": "foo bar", "phrase_slop": 1 } } }, "rescore_query_weight" : 10 } }, "highlight" : { "order" : "score", "fields" : { "content" : { "fragment_size" : 150, "number_of_fragments" : 3, "highlight_query": { "bool": { "must": { "match": { "content": { "query": "foo bar" } } }, "should": { "match_phrase": { "content": { "query": "foo bar", "phrase_slop": 1, "boost": 10.0 } } }, "minimum_should_match": 0 } } } } } }
Note that the score of text fragment in this case is calculated by the Lucene
highlighting framework. For implementation details you can check the
ScoreOrderFragmentsBuilder.java
class. On the other hand when using the
postings highlighter the fragments are scored using, as mentioned above,
the BM25 algorithm.
Global Settings
editHighlighting settings can be set on a global level and then overridden at the field level.
{ "query" : {...}, "highlight" : { "number_of_fragments" : 3, "fragment_size" : 150, "tag_schema" : "styled", "fields" : { "_all" : { "pre_tags" : ["<em>"], "post_tags" : ["</em>"] }, "bio.title" : { "number_of_fragments" : 0 }, "bio.author" : { "number_of_fragments" : 0 }, "bio.content" : { "number_of_fragments" : 5, "order" : "score" } } } }
Require Field Match
editrequire_field_match
can be set to true
which will cause a field to
be highlighted only if a query matched that field. false
means that
terms are highlighted on all requested fields regardless if the query
matches specifically on them.
Boundary Characters
editWhen highlighting a field using the fast vector highlighter,
boundary_chars
can be configured to define what constitutes a boundary
for highlighting. It’s a single string with each boundary character
defined in it. It defaults to .,!? \t\n
.
The boundary_max_scan
allows to control how far to look for boundary
characters, and defaults to 20
.
Matched Fields
editThe Fast Vector Highlighter can combine matches on multiple fields to
highlight a single field using matched_fields
. This is most
intuitive for multifields that analyze the same string in different
ways. All matched_fields
must have term_vector
set to
with_positions_offsets
but only the field to which the matches are
combined is loaded so only that field would benefit from having
store
set to yes
.
In the following examples content
is analyzed by the english
analyzer and content.plain
is analyzed by the standard
analyzer.
{ "query": { "query_string": { "query": "content.plain:running scissors", "fields": ["content"] } }, "highlight": { "order": "score", "fields": { "content": { "matched_fields": ["content", "content.plain"], "type" : "fvh" } } } }
The above matches both "run with scissors" and "running with scissors" and would highlight "running" and "scissors" but not "run". If both phrases appear in a large document then "running with scissors" is sorted above "run with scissors" in the fragments list because there are more matches in that fragment.
{ "query": { "query_string": { "query": "running scissors", "fields": ["content", "content.plain^10"] } }, "highlight": { "order": "score", "fields": { "content": { "matched_fields": ["content", "content.plain"], "type" : "fvh" } } } }
The above highlights "run" as well as "running" and "scissors" but still sorts "running with scissors" above "run with scissors" because the plain match ("running") is boosted.
{ "query": { "query_string": { "query": "running scissors", "fields": ["content", "content.plain^10"] } }, "highlight": { "order": "score", "fields": { "content": { "matched_fields": ["content.plain"], "type" : "fvh" } } } }
The above query wouldn’t highlight "run" or "scissor" but shows that
it is just fine not to list the field to which the matches are combined
(content
) in the matched fields.
Technically it is also fine to add fields to matched_fields
that
don’t share the same underlying string as the field to which the matches
are combined. The results might not make much sense and if one of the
matches is off the end of the text then the whole query will fail.
There is a small amount of overhead involved with setting
matched_fields
to a non-empty array so always prefer
"highlight": { "fields": { "content": {} } }
to
"highlight": { "fields": { "content": { "matched_fields": ["content"], "type" : "fvh" } } }
Phrase Limit
editThe fast-vector-highlighter
has a phrase_limit
parameter that prevents
it from analyzing too many phrases and eating tons of memory. It defaults
to 256 so only the first 256 matching phrases in the document scored
considered. You can raise the limit with the phrase_limit
parameter but
keep in mind that scoring more phrases consumes more time and memory.
If using matched_fields
keep in mind that phrase_limit
phrases per
matched field are considered.