Prefix Search with ArangoSearch
Search for strings or tokens that start with one or more substrings
A typical use case for matching prefixes is to provide word completion
(auto-complete). If the requirement is to find exact prefix matches only then
indexing strings with the identity
Analyzer is sufficient. The search term
needs to have the original capitalization to match (case-sensitive) in that
case.
Prefix matching can be used together with normalizing Analyzers (norm
, text
)
for case-insensitive and accent-insensitive searches. This is often preferable
over exact prefix matching in auto-complete scenarios, because users may type
everything in lower case and not use characters with diacritical marks but just
the base characters.
The fastest option for prefix matching is to use edge n-grams, a feature
supported by text
Analyzers. They make it possible for Views and inverted indexes
to simply look up prefixes in the index. The downsides are that the minimum
and maximum n-gram length needs to be defined upfront and only prefixes in
this range will be found, and that edge n-grams can take up more space.
Exact Prefix Matching
In its basic form without case normalization and accent removal, prefix
matching can be done if a field is indexed with just the identity
Analyzer.
It creates the necessary index data to perform prefix queries with
STARTS_WITH()
but also wildcard queries with LIKE()
.
Dataset
View definition
db.imdb_vertices.ensureIndex({ name: "inv-exact", type: "inverted", fields: [ "title" ] });
db._createView("imdb", "search-alias", { indexes: [ { collection: "imdb_vertices", index: "inv-exact" } ] });
{
"links": {
"imdb_vertices": {
"fields": {
"title": {
"analyzers": [
"identity"
]
}
}
}
}
}
AQL queries
Match all movie titles that start with "The Matri"
(case-sensitive):
FOR doc IN imdb
SEARCH STARTS_WITH(doc.title, "The Matr")
RETURN doc.title
Result |
---|
The Matrix |
The Matrix Reloaded |
The Matrix Revolutions |
The Matrix Trilogy |
The Matrix Revisited |
Match movie titles that start with either "The Matr"
or "Harry Pot"
using OR
:
FOR doc IN imdb
SEARCH STARTS_WITH(doc.title, "The Matr") OR STARTS_WITH(doc.title, "Harry Pot")
RETURN doc.title
Result |
---|
The Matrix Revisited |
The Matrix |
The Matrix Reloaded |
The Matrix Revolutions |
Harry Potter and the Sorcerer’s Stone |
Harry Potter and the Chamber Of Secrets |
Harry Potter and the Prisoner of Azkaban |
Harry Potter and the Goblet Of Fire |
Harry Potter and the Order of the Phoenix |
Harry Potter and the Half-Blood Prince |
Harry Potter Collection |
The Matrix Trilogy |
Harry Potter and the Deathly Hallows: Part I |
Harry Potter and the Deathly Hallows: Part II |
Match movie titles that start with either "The Matr"
or "Harry Pot"
utilizing the feature of the STARTS_WITH()
function that allows you to pass
multiple possible prefixes as array of strings, of which one must match:
FOR doc IN imdb
SEARCH STARTS_WITH(doc.title, ["The Matr", "Harry Pot"])
RETURN doc.title
Result |
---|
The Matrix Revisited |
The Matrix |
The Matrix Reloaded |
The Matrix Revolutions |
Harry Potter and the Sorcerer’s Stone |
Harry Potter and the Chamber Of Secrets |
Harry Potter and the Prisoner of Azkaban |
Harry Potter and the Goblet Of Fire |
Harry Potter and the Order of the Phoenix |
Harry Potter and the Half-Blood Prince |
Harry Potter Collection |
The Matrix Trilogy |
Harry Potter and the Deathly Hallows: Part I |
Harry Potter and the Deathly Hallows: Part II |
Match Multiple Token Prefixes
It is possible to match strings if one out of multiple prefix conditions
is fulfilled with a single call to STARTS_WITH()
, as it supports an array of
prefixes. The STARTS_WITH()
function also accepts an optional third argument
to define how many of the given prefixes must match. This is handy if the input
is full-text tokenized by a text
Analyzer or an array of strings, where
conditions for different tokens can be fulfilled.
Dataset
View definition
db.imdb_vertices.ensureIndex({ name: "inv-text", type: "inverted", fields: [ { name: "title", analyzer: "text_en" } ] });
db._createView("imdb_alias", "search-alias", { indexes: [ { collection: "imdb_vertices", index: "inv-text" } ] });
{
"links": {
"imdb_vertices": {
"fields": {
"title": {
"analyzers": [
"text_en"
]
}
}
}
}
}
AQL queries
Match movie titles that contain three out of five prefixes.
FOR doc IN imdb_alias
SEARCH STARTS_WITH(doc.title, TOKENS("Sec Cham Har Pot Phoe", "text_en"), 3)
RETURN doc.title
FOR doc IN imdb
SEARCH ANALYZER(STARTS_WITH(doc.title, TOKENS("Sec Cham Har Pot Phoe", "text_en"), 3), "text_en")
RETURN doc.title
Result |
---|
Harry Potter and the Chamber Of Secrets |
Harry Potter and the Order of the Phoenix |
You can calculate the number of prefixes that need to match dynamically, for example to require that all prefixes must match.
LET prefixes = TOKENS("Brot Blu", "text_en")
FOR doc IN imdb_alias
SEARCH STARTS_WITH(doc.title, prefixes, LENGTH(prefixes))
RETURN doc.title
LET prefixes = TOKENS("Brot Blu", "text_en")
FOR doc IN imdb
SEARCH ANALYZER(STARTS_WITH(doc.title, prefixes, LENGTH(prefixes)), "text_en")
RETURN doc.title
Result |
---|
The Blues Brothers |
Blues Brothers 2000 |
Edge N-Grams
Edge n-grams is a feature of the text
Analyzer type. It generates n-grams
for each token (usually a word), but anchored to the beginning of the token.
It thus creates prefix n-grams only and not all n-grams for the input.
Dataset
Custom Analyzer
Create a text
Analyzer in arangosh to normalize case to all lowercase, remove
diacritics, with no stemming, with edge n-grams of size 3 to 6 for example and
including the original string as well:
//db._useDatabase("your_database"); // Analyzer will be created in current database
var analyzers = require("@arangodb/analyzers");
analyzers.save("edge_ngram", "text", { locale: "en", accent: false, case: "lower", stemming: false, edgeNgram: { min: 3, max: 6, preserveOriginal: true } }, []);
No Analyzer features are set because the examples on this page don’t require them.
Test the Analyzer:
db._query(`RETURN TOKENS("Ocean Equilibrium", "edge_ngram")`);
[
[
"oce",
"ocea",
"ocean",
"equ",
"equi",
"equil",
"equili",
"equilibrium"
]
]
View definition
db.imdb_vertices.ensureIndex({ name: "inv-ngram", type: "inverted", fields: [ { name: "title", analyzer: "edge_ngram" } ] });
db._createView("imdb_alias", "search-alias", { indexes: [ { collection: "imdb_vertices", index: "inv-ngram" } ] });
{
"links": {
"imdb_vertices": {
"fields": {
"title": {
"analyzers": [
"edge_ngram"
]
}
}
}
}
}
AQL queries
Match movie titles that have a word starting with "ocea"
FOR doc IN imdb_alias
SEARCH doc.title == "ocea"
RETURN doc.title
FOR doc IN imdb
SEARCH ANALYZER(doc.title == "ocea", "edge_ngram")
RETURN doc.title
Result |
---|
Ocean Voyagers |
Ocean’s Eleven |
Ocean’s Twelve |
Ocean’s Thirteen |
Ocean’s Eleven |
Ocean’s Collection |
Note that the search term must be normalized in order to match something.
You can create a text
Analyzer that matches the configuration of the
edge n-gram text
Analyzer to pre-process the search terms in the same way,
but without creating any n-grams:
//db._useDatabase("your_database"); // Analyzer will be created in current database
var analyzers = require("@arangodb/analyzers");
analyzers.save("match_edge_ngram", "text", { locale: "en", accent: false, case: "lower", stemming: false }, []);
No Analyzer features are set because the examples on this page don’t require them.
Now we can also match movie titles that start with "Oceä"
(normalized to "ocea"
):
FOR doc IN imdb_alias
SEARCH doc.title == TOKENS("Oceä", "match_edge_ngram")[0]
RETURN doc.title
FOR doc IN imdb
SEARCH ANALYZER(doc.title == TOKENS("Oceä", "match_edge_ngram")[0], "edge_ngram")
RETURN doc.title
Result |
---|
Ocean Voyagers |
Ocean’s Eleven |
Ocean’s Twelve |
Ocean’s Thirteen |
Ocean’s Eleven |
Ocean’s Collection |
What we cannot match search terms that are longer than the maximum edge n-gram
size (or shorter than the minimum edge n-gram size), except for full tokens
if preserveOriginal
is enabled. For example, this query does not match
anything because the longest indexed edge n-gram is "equili"
but the search
term is nine characters long:
FOR doc IN imdb_alias
SEARCH doc.title == TOKENS("Equilibri", "match_edge_ngram")[0]
RETURN doc.title
FOR doc IN imdb
SEARCH ANALYZER(doc.title == TOKENS("Equilibri", "match_edge_ngram")[0], "edge_ngram")
RETURN doc.title
Searching for "Equilibrium"
does match because the full token "equilibrium"
is indexed by our custom Analyzer thanks to preserveOriginal
. We can take
advantage of the full token being indexed with the STARTS_WITH()
function:
FOR doc IN imdb_alias
SEARCH STARTS_WITH(doc.title, TOKENS("Equilibri", "match_edge_ngram"))
RETURN doc.title
FOR doc IN imdb
SEARCH ANALYZER(STARTS_WITH(doc.title, TOKENS("Equilibri", "match_edge_ngram")), "edge_ngram")
RETURN doc.title
Result |
---|
Equilibrium |
Note however, that this will not be as fast as matching an edge n-gram directly.