Text highlighter for Java designed to be pluggable enough for easy experimentation. The idea being that it should be possible to play with how hits are weighed or how they are grouped into snippets without knowing about the guts of Lucene or Elasticsearch.
Comes in three flavors:
- Core: No dependencies jar containing most of the interesting logic
- Lucene: A jar containing a bridge between the core and lucene
- Elasticsearch: An Elasticsearch plugin
You can read more on how it works here.
This highlighter
- Doesn't need offsets in postings or term enums with offsets but can use either to speed itself up.
- Can fragment like the Postings Highlighter, the Fast Vector Highlighter, or it can highlight the entire field.
- Can combine hits using multiple different fields (aka
matched_fields
support). - Can boost matches that appear early in the document.
- By default boosts matches on unique query terms per fragment
This highlighter does not (currently):
- Support require_field_match
Experimental Highlighter Plugin | ElasticSearch |
---|---|
6.3.1.2, master branch | 6.3.1 |
5.5.2.2 | 5.5.2 |
5.4.3 | 5.4.3 |
5.3.2 | 5.3.2 |
5.3.1 | 5.3.1 |
5.3.0 | 5.3.0 |
5.2.2 | 5.2.2 |
5.2.1 | 5.2.1 |
5.2.0 | 5.2.0 |
5.1.2 | 5.1.2 |
2.4.1 | 2.4.1 |
2.4.0, | 2.4.0 |
2.3.5, 2.3 branch | 2.3.5 |
2.3.4 | 2.3.4 |
2.3.3 | 2.3.3 |
2.2.2, 2.2 branch | 2.2.2 |
2.1.2, 2.1 branch | 2.1.2 |
2.0.2, 2.0 branch | 2.0.2 |
1.7.0 -> 1.7.1, 1.7 branch | 1.7.X |
1.6.0, 1.6 branch | 1.6.X |
1.5.0 -> 1.5.1, 1.5 branch | 1.5.X |
1.4.0 -> 1.4.1, 1.4 branch | 1.4.X |
0.0.11 -> 1.3.0, 1.3 branch | 1.3.X |
0.0.10 | 1.2.X |
0.0.1 -> 0.0.9 | 1.1.X |
Install it like so for Elasticsearch 5.x.x:
./bin/elasticsearch-plugin install org.wikimedia.search.highlighter:experimental-highlighter-elasticsearch-plugin:5.x.x
Install it like so for Elasticsearch 2.x.x:
./bin/plugin install org.wikimedia.search.highlighter/experimental-highlighter-elasticsearch-plugin/2.x.x
Install it like so for Elasticsearch 1.7.x:
./bin/plugin --install org.wikimedia.search.highlighter/experimental-highlighter-elasticsearch-plugin/1.7.0
Then you can use it by searching like so:
{
"_source": false,
"query": {
"query_string": {
"query": "hello world"
}
},
"highlight": {
"order": "score",
"fields": {
"title": {
"number_of_fragments": 1,
"type": "experimental"
}
}
}
}
The fragmenter
field defaults to scan
but can also be set to
sentence
or none
. scan
produces results that look like the
Fast Vector Highlighter. sentence
produces results that look like the
Postings Highlighter. none
won't fragment on anything so it is cleaner
if you have to highlight the whole field. Multi-valued fields will always
fragment between each value, even on none
. Example:
"highlight": {
"fields": {
"title": {
"type": "experimental",
"fragmenter": "sentence",
"options": {
"locale": "en_us"
}
}
}
}
If using the sentence
fragmenter you should specify the locale used for
sentence rules with the locale
option as above.
Each fragmenter has different no_match_size
strategies based on the
spirit of the fragmenter.
By default fragments are weighed such that additional matches for the same
query term are worth less than unique matched query terms. This can be
customized with the fragment_weigher
option. Setting it to sum
will weight a fragment as the sum of all its matches, just like the FVH. The
default settings, exponential
weighs fragments as the sum of:
(base ^ match_count) * average_score
where match_count is the number of matches for that query term, average_score
is the average of the score of each of those matches, and base is a free
parameter that defaults to 1.1
. The default value of base is what
provides the discount on duplicate terms. It can be changed by setting
fragment_weigher
like this: {"exponential": {"base": 1.01}}
.
Setting the base
closer to 1
will make duplicate matches worth
less. Setting the base
between 0
and 1
will make duplicate
matches worth less than single matches which doesn't make much sense (but is
possible). Similarly, setting base
to a negative number or a number
greater then sqrt(2)
will do other probably less than desirable things.
The top_scoring
option can be set to true while sorting fragments by
source to return only the top scoring fragmenter but leave them in source
order. Example:
"highlight": {
"fields": {
"text": {
"type": "experimental",
"number_of_fragments": 2,
"fragmenter": "sentence",
"sort": "source",
"options": {
"locale": "en_us",
"top_scoring": true
}
}
}
}
The default_similarity
option defaults to true for queries with more than
one term. It will weigh each matched term using Lucene's default similarity
model similarly to how the Fast Vector Highlighter weighs terms. If can be
set to false to leave out that weighing. If there is only a single term in the
query it will never be used.
"highlight": {
"fields": {
"title": {
"type": "experimental",
"options": {
"default_similarity": false
}
}
}
}
The hit_source
option can force detecting matched terms from a particular
source. It can be either postings
, vectors
, or analyze
. If
set to postings
but the field isn't indexed with index_options
set
to offsets
or set to vectors
but term_vector
isn't set to
with_positions_offsets
then the highlight throw back an error. Defaults
to using the first option that wouldn't throw an error.
"highlight": {
"fields": {
"title": {
"type": "experimental",
"options": {
"hit_source": "analyze"
}
}
}
}
The boost_before
option lets you set up boosts before positions. For
example, this will multiply the weight of matches before the 20th position by
5 and before the 100th position by 1.5.
"highlight": {
"fields": {
"title": {
"type": "experimental",
"order": "score",
"options": {
"boost_before": {
"20": 5,
"100": 1.5
}
}
}
}
}
Note that the position is not reset between multiple values of the same field
but is handled independently for each of the matched_fields
.
Note also that boost_before
works with top_scoring
.
The max_fragments_scored
option lets you limit the number of fragments
scored. The default is Integer.MAX_VALUE so you'll score them all. This can
be used to limit the CPU cost of scoring many matches when it is likely that
the first few matches will have the highest score.
The matched_fields
field turns on combining matches from multiple fields,
just like the Fast Vector Highlighter. See the Elasticsearch documentation
for more on it. The only real difference is that if hit_source
is left
out then each field's HitSource is determined independently which isn't
possible with the fast vector highlighter as it only supports the
postings
hit source. Remember: For very short fields analyze
hit
source will be the most efficient because no secondary data has to be loaded
from disk.
A limitation in matched_fields
: if the highlighter has to analyze the
field value to find hits then you can't reuse analyzers in each matched field.
The fetch_fields
option can be used to return fields next to the
highlighted field. It is designed for use with object fields but has a number
of limitations. Read more about it here.
The phrase_as_terms
option can be set to true to highlight phrase queries
(and multi phrase prefix queries) as a set of terms rather then a phrase. This
defaults to false
so phrase queries are restricted to full phrase
matches.
The regex
option lets you set regular expressions that identify hits. It
can be specified as a string for a single regular expression or a list for
more than one. Your regex_flavor
option sets the flavor of regex. The
default flavor is lucene
and the other option is java.
It's also possible to skip matching the query entirely by setting the
skip_query
option to true
. The regex_case_insensitive
option
can be set to true to make the regex case insensitive using the case rules in
the locale specified by locale
. Example:
"highlight": {
"fields": {
"title": {
"type": "experimental",
"options": {
"regex": [
"fo+",
"bar|z",
"bor?t blah"
],
"regex_flavor": "lucene",
"skip_query": true,
"locale": "en_US",
"regex_case_insensitive": true
}
}
}
}
If a regex match is wider than the allowed snippet size it won't be returned.
The max_determinized_states
option can be used to limit the complexity
explosion that comes from compiling Lucene Regular Expressions into DFAs. It
defaults to 20,000 states. Increasing it allows more complex regexes to take
the memory and time that they need to compile. The default allows for
reasonably complex regexes.
The skip_if_last_matched
option can be used to entirely skip highlighting
if the last field matched. This can be used to form "chains" of fields only one
of which will return a match:
"highlight": {
"type": "experimental",
"fields": {
"text": {},
"aux_text": { "options": { "skip_if_last_matched": true } },
"title": {},
"redirect": { "options": { "skip_if_last_matched": true } },
"section_heading": { "options": { "skip_if_last_matched": true } },
"category": { "options": { "skip_if_last_matched": true } },
}
}
The above example creates two "chains":
- aux_text will only be highlighted if there isn't a match in text. -and-
- redirect will only be highlighted if there isn't a match in title.
- section_heading will only be highlighted if there isn't a match in redirect and title.
- category will only be highlighted if there isn't a match in section_heading, redirect, or title.
The remove_high_freq_terms_from_common_terms
option can be used to
highlight common terms when using the common_terms
query. It defaults to
true
meaning common terms will not be highlighted. Setting it to
false
will highlight common terms in common_terms
queries. Note
that this behavior was added in 1.3.1, 1.4.3, and 1.5.0 and before that common
terms were always highlighted by the common_terms
query.
The max_expanded_terms
option can be used to control how many terms the
highlighter expands multi term queries into. The default is 1024 which is the
same as the fvh
's default. Note that the highlighter doesn't need to
expand all multi term queries because it has special handling for many of them.
But when it does, this is how many terms it expands them into. This was added
in 1.3.1, 1.4.3, and 1.5.0 and before the value was hard coded to 100.
The return_offsets
option changes the results from a highlighted string
to the offsets in the highlighted that would have been highlighted. This is
useful if you need to do client side sanity checking on the highlighting.
Instead of a marked up snippet you'll get a result like 0:0-5,18-22:22
.
The outer numbers are the start and end offset of the snippet. The pairs of
numbers separated by the ,
s are the hits. The number before the -
is the start offset and the number after the -
is the end offset.
Multi-valued fields have a single character worth of offset between them.
Since adding offsets to the postings (set index_options
to offsets
in Elasticsearch) and creating term vectors with offsets (set term_vector
to with_positions_offsets
in Elasticsearch) both act to speed up
highlighting of this highlighter you have a choice which one to use. Unless
you have a compelling reason to use term vectors, go with adding offsets to the
postings because that is faster (by my tests, at least) and uses much less
space.