Word delimiter graph token filter
Splits tokens at non-alphanumeric characters. The word_delimiter_graph
filter also performs optional token normalization based on a set of rules. By default, the filter uses the following rules:
- Split tokens at non-alphanumeric characters. The filter uses these characters as delimiters. For example:
Super-Duper
→Super
,Duper
- Remove leading or trailing delimiters from each token. For example:
XL---42+'Autocoder'
→XL
,42
,Autocoder
- Split tokens at letter case transitions. For example:
PowerShot
→Power
,Shot
- Split tokens at letter-number transitions. For example:
XL500
→XL
,500
- Remove the English possessive (
's
) from the end of each token. For example:Neil's
→Neil
The word_delimiter_graph
filter uses Lucene’s WordDelimiterGraphFilter.
The word_delimiter_graph
filter was designed to remove punctuation from complex identifiers, such as product IDs or part numbers. For these use cases, we recommend using the word_delimiter_graph
filter with the keyword
tokenizer.
Avoid using the word_delimiter_graph
filter to split hyphenated words, such as wi-fi
. Because users often search for these words both with and without hyphens, we recommend using the synonym_graph
filter instead.
The following analyze API request uses the word_delimiter_graph
filter to split Neil's-Super-Duper-XL500--42+AutoCoder
into normalized tokens using the filter’s default rules:
GET /_analyze
{
"tokenizer": "keyword",
"filter": [ "word_delimiter_graph" ],
"text": "Neil's-Super-Duper-XL500--42+AutoCoder"
}
The filter produces the following tokens:
[ Neil, Super, Duper, XL, 500, 42, Auto, Coder ]
The following create index API request uses the word_delimiter_graph
filter to configure a new custom analyzer.
PUT /my-index-000001
{
"settings": {
"analysis": {
"analyzer": {
"my_analyzer": {
"tokenizer": "keyword",
"filter": [ "word_delimiter_graph" ]
}
}
}
}
}
Avoid using the word_delimiter_graph
filter with tokenizers that remove punctuation, such as the standard
tokenizer. This could prevent the word_delimiter_graph
filter from splitting tokens correctly. It can also interfere with the filter’s configurable parameters, such as catenate_all
or preserve_original
. We recommend using the keyword
or whitespace
tokenizer instead.
adjust_offsets
- (Optional, Boolean) If
true
, the filter adjusts the offsets of split or catenated tokens to better reflect their actual position in the token stream. Defaults totrue
.
Set adjust_offsets
to false
if your analyzer uses filters, such as the trim
filter, that change the length of tokens without changing their offsets. Otherwise, the word_delimiter_graph
filter could produce tokens with illegal offsets.
catenate_all
- (Optional, Boolean) If
true
, the filter produces catenated tokens for chains of alphanumeric characters separated by non-alphabetic delimiters. For example:super-duper-xl-500
→ [superduperxl500
,super
,duper
,xl
,500
]. Defaults tofalse
.
Setting this parameter to true
produces multi-position tokens, which are not supported by indexing.
If this parameter is true
, avoid using this filter in an index analyzer or use the flatten_graph
filter after this filter to make the token stream suitable for indexing.
When used for search analysis, catenated tokens can cause problems for the match_phrase
query and other queries that rely on token position for matching. Avoid setting this parameter to true
if you plan to use these queries.
catenate_numbers
- (Optional, Boolean) If
true
, the filter produces catenated tokens for chains of numeric characters separated by non-alphabetic delimiters. For example:01-02-03
→ [010203
,01
,02
,03
]. Defaults tofalse
.
Setting this parameter to true
produces multi-position tokens, which are not supported by indexing.
If this parameter is true
, avoid using this filter in an index analyzer or use the flatten_graph
filter after this filter to make the token stream suitable for indexing.
When used for search analysis, catenated tokens can cause problems for the match_phrase
query and other queries that rely on token position for matching. Avoid setting this parameter to true
if you plan to use these queries.
catenate_words
- (Optional, Boolean) If
true
, the filter produces catenated tokens for chains of alphabetical characters separated by non-alphabetic delimiters. For example:super-duper-xl
→ [superduperxl
,super
,duper
,xl
]. Defaults tofalse
.
Setting this parameter to true
produces multi-position tokens, which are not supported by indexing.
If this parameter is true
, avoid using this filter in an index analyzer or use the flatten_graph
filter after this filter to make the token stream suitable for indexing.
When used for search analysis, catenated tokens can cause problems for the match_phrase
query and other queries that rely on token position for matching. Avoid setting this parameter to true
if you plan to use these queries.
generate_number_parts
- (Optional, Boolean) If
true
, the filter includes tokens consisting of only numeric characters in the output. Iffalse
, the filter excludes these tokens from the output. Defaults totrue
. generate_word_parts
- (Optional, Boolean) If
true
, the filter includes tokens consisting of only alphabetical characters in the output. Iffalse
, the filter excludes these tokens from the output. Defaults totrue
. ignore_keywords
- (Optional, Boolean) If
true
, the filter skips tokens with akeyword
attribute oftrue
. Defaults tofalse
.
preserve_original
- (Optional, Boolean) If
true
, the filter includes the original version of any split tokens in the output. This original version includes non-alphanumeric delimiters. For example:super-duper-xl-500
→ [super-duper-xl-500
,super
,duper
,xl
,500
]. Defaults tofalse
.
Setting this parameter to true
produces multi-position tokens, which are not supported by indexing.
If this parameter is true
, avoid using this filter in an index analyzer or use the flatten_graph
filter after this filter to make the token stream suitable for indexing.
protected_words
- (Optional, array of strings) Array of tokens the filter won’t split.
protected_words_path
- (Optional, string) Path to a file that contains a list of tokens the filter won’t split.
This path must be absolute or relative to the config
location, and the file must be UTF-8 encoded. Each token in the file must be separated by a line break.
split_on_case_change
- (Optional, Boolean) If
true
, the filter splits tokens at letter case transitions. For example:camelCase
→ [camel
,Case
]. Defaults totrue
. split_on_numerics
- (Optional, Boolean) If
true
, the filter splits tokens at letter-number transitions. For example:j2se
→ [j
,2
,se
]. Defaults totrue
. stem_english_possessive
- (Optional, Boolean) If
true
, the filter removes the English possessive ('s
) from the end of each token. For example:O'Neil's
→ [O
,Neil
]. Defaults totrue
. type_table
- (Optional, array of strings) Array of custom type mappings for characters. This allows you to map non-alphanumeric characters as numeric or alphanumeric to avoid splitting on those characters.
For example, the following array maps the plus (+
) and hyphen (-
) characters as alphanumeric, which means they won’t be treated as delimiters:
[ "+ => ALPHA", "- => ALPHA" ]
Supported types include:
ALPHA
(Alphabetical)ALPHANUM
(Alphanumeric)DIGIT
(Numeric)LOWER
(Lowercase alphabetical)SUBWORD_DELIM
(Non-alphanumeric delimiter)UPPER
(Uppercase alphabetical)
type_table_path
- (Optional, string) Path to a file that contains custom type mappings for characters. This allows you to map non-alphanumeric characters as numeric or alphanumeric to avoid splitting on those characters.
For example, the contents of this file may contain the following:
# Map the $, %, '.', and ',' characters to DIGIT
# This might be useful for financial data.
$ => DIGIT
% => DIGIT
. => DIGIT
\\u002C => DIGIT
# in some cases you might not want to split on ZWJ
# this also tests the case where we need a bigger byte[]
# see https://en.wikipedia.org/wiki/Zero-width_joiner
\\u200D => ALPHANUM
Supported types include:
ALPHA
(Alphabetical)ALPHANUM
(Alphanumeric)DIGIT
(Numeric)LOWER
(Lowercase alphabetical)SUBWORD_DELIM
(Non-alphanumeric delimiter)UPPER
(Uppercase alphabetical)
This file path must be absolute or relative to the config
location, and the file must be UTF-8 encoded. Each mapping in the file must be separated by a line break.
To customize the word_delimiter_graph
filter, duplicate it to create the basis for a new custom token filter. You can modify the filter using its configurable parameters.
For example, the following request creates a word_delimiter_graph
filter that uses the following rules:
- Split tokens at non-alphanumeric characters, except the hyphen (
-
) character. - Remove leading or trailing delimiters from each token.
- Do not split tokens at letter case transitions.
- Do not split tokens at letter-number transitions.
- Remove the English possessive (
's
) from the end of each token.
PUT /my-index-000001
{
"settings": {
"analysis": {
"analyzer": {
"my_analyzer": {
"tokenizer": "keyword",
"filter": [ "my_custom_word_delimiter_graph_filter" ]
}
},
"filter": {
"my_custom_word_delimiter_graph_filter": {
"type": "word_delimiter_graph",
"type_table": [ "- => ALPHA" ],
"split_on_case_change": false,
"split_on_numerics": false,
"stem_english_possessive": true
}
}
}
}
}
Both the word_delimiter_graph
and word_delimiter
filters produce tokens that span multiple positions when any of the following parameters are true
:
However, only the word_delimiter_graph
filter assigns multi-position tokens a positionLength
attribute, which indicates the number of positions a token spans. This ensures the word_delimiter_graph
filter always produces valid token graphs.
The word_delimiter
filter does not assign multi-position tokens a positionLength
attribute. This means it produces invalid graphs for streams including these tokens.
While indexing does not support token graphs containing multi-position tokens, queries, such as the match_phrase
query, can use these graphs to generate multiple sub-queries from a single query string.
To see how token graphs produced by the word_delimiter
and word_delimiter_graph
filters differ, check out the following example.
**Example**
Both the word_delimiter
and word_delimiter_graph
produce the following token graph for PowerShot2000
when the following parameters are false
:
This graph does not contain multi-position tokens. All tokens span only one position.
word_delimiter_graph
graph with a multi-position token
The word_delimiter_graph
filter produces the following token graph for PowerShot2000
when catenate_words
is true
.
This graph correctly indicates the catenated PowerShot
token spans two positions.
word_delimiter
graph with a multi-position token
When catenate_words
is true
, the word_delimiter
filter produces the following token graph for PowerShot2000
.
Note that the catenated PowerShot
token should span two positions but only spans one in the token graph, making it invalid.