By default or with the IN NATURAL LANGUAGE
MODE
modifier, the
MATCH()
function performs a
natural language search for a string against a
text collection. A
collection is a set of one or more columns included in a
FULLTEXT
index. The search string is given as
the argument to AGAINST()
. For each row in
the table, MATCH()
returns a
relevance value; that is, a similarity measure between the
search string and the text in that row in the columns named in
the MATCH()
list.
mysql> CREATE TABLE articles (
-> id INT UNSIGNED AUTO_INCREMENT NOT NULL PRIMARY KEY,
-> title VARCHAR(200),
-> body TEXT,
-> FULLTEXT (title,body)
-> ) ENGINE=InnoDB;
Query OK, 0 rows affected (0.08 sec)
mysql> INSERT INTO articles (title,body) VALUES
-> ('MySQL Tutorial','DBMS stands for DataBase ...'),
-> ('How To Use MySQL Well','After you went through a ...'),
-> ('Optimizing MySQL','In this tutorial, we show ...'),
-> ('1001 MySQL Tricks','1. Never run mysqld as root. 2. ...'),
-> ('MySQL vs. YourSQL','In the following database comparison ...'),
-> ('MySQL Security','When configured properly, MySQL ...');
Query OK, 6 rows affected (0.01 sec)
Records: 6 Duplicates: 0 Warnings: 0
mysql> SELECT * FROM articles
-> WHERE MATCH (title,body)
-> AGAINST ('database' IN NATURAL LANGUAGE MODE);
+----+-------------------+------------------------------------------+
| id | title | body |
+----+-------------------+------------------------------------------+
| 1 | MySQL Tutorial | DBMS stands for DataBase ... |
| 5 | MySQL vs. YourSQL | In the following database comparison ... |
+----+-------------------+------------------------------------------+
2 rows in set (0.00 sec)
By default, the search is performed in case-insensitive fashion.
To perform a case-sensitive full-text search, use a binary
collation for the indexed columns. For example, a column that
uses the latin1
character set of can be
assigned a collation of latin1_bin
to make it
case-sensitive for full-text searches.
When MATCH()
is used in a
WHERE
clause, as in the example shown
earlier, the rows returned are automatically sorted with the
highest relevance first as long as the following conditions are
met:
There must be no explicit
ORDER BY
clause.The search must be performed using a full-text index scan rather than a table scan.
If the query joins tables, the full-text index scan must be the leftmost non-constant table in the join.
Given the conditions just listed, it is usually less effort to
specify using ORDER BY
an explicit sort order
when one is necessary or desired.
Relevance values are nonnegative floating-point numbers. Zero relevance means no similarity. Relevance is computed based on the number of words in the row (document), the number of unique words in the row, the total number of words in the collection, and the number of rows that contain a particular word.
The term “document” may be used interchangeably with the term “row”, and both terms refer to the indexed part of the row. The term “collection” refers to the indexed columns and encompasses all rows.
To simply count matches, you could use a query like this:
mysql> SELECT COUNT(*) FROM articles
-> WHERE MATCH (title,body)
-> AGAINST ('database' IN NATURAL LANGUAGE MODE);
+----------+
| COUNT(*) |
+----------+
| 2 |
+----------+
1 row in set (0.00 sec)
You might find it quicker to rewrite the query as follows:
mysql> SELECT
-> COUNT(IF(MATCH (title,body) AGAINST ('database' IN NATURAL LANGUAGE MODE), 1, NULL))
-> AS count
-> FROM articles;
+-------+
| count |
+-------+
| 2 |
+-------+
1 row in set (0.03 sec)
The first query does some extra work (sorting the results by
relevance) but also can use an index lookup based on the
WHERE
clause. The index lookup might make the
first query faster if the search matches few rows. The second
query performs a full table scan, which might be faster than the
index lookup if the search term was present in most rows.
For natural-language full-text searches, the columns named in
the MATCH()
function must be the
same columns included in some FULLTEXT
index
in your table. For the preceding query, the columns named in the
MATCH()
function
(title
and body
) are the
same as those named in the definition of the
article
table's FULLTEXT
index. To search the title
or
body
separately, you would create separate
FULLTEXT
indexes for each column.
You can also perform a boolean search or a search with query expansion. These search types are described in Section 12.9.2, “Boolean Full-Text Searches”, and Section 12.9.3, “Full-Text Searches with Query Expansion”.
A full-text search that uses an index can name columns only from
a single table in the MATCH()
clause because an index cannot span multiple tables. For
MyISAM
tables, a boolean search can be done
in the absence of an index (albeit more slowly), in which case
it is possible to name columns from multiple tables.
The preceding example is a basic illustration that shows how to
use the MATCH()
function where
rows are returned in order of decreasing relevance. The next
example shows how to retrieve the relevance values explicitly.
Returned rows are not ordered because the
SELECT
statement includes neither
WHERE
nor ORDER BY
clauses:
mysql> SELECT id, MATCH (title,body)
-> AGAINST ('Tutorial' IN NATURAL LANGUAGE MODE) AS score
-> FROM articles;
+----+---------------------+
| id | score |
+----+---------------------+
| 1 | 0.22764469683170319 |
| 2 | 0 |
| 3 | 0.22764469683170319 |
| 4 | 0 |
| 5 | 0 |
| 6 | 0 |
+----+---------------------+
6 rows in set (0.00 sec)
The following example is more complex. The query returns the
relevance values and it also sorts the rows in order of
decreasing relevance. To achieve this result, specify
MATCH()
twice: once in the
SELECT
list and once in the
WHERE
clause. This causes no additional
overhead, because the MySQL optimizer notices that the two
MATCH()
calls are identical and
invokes the full-text search code only once.
mysql> SELECT id, body, MATCH (title,body)
-> AGAINST ('Security implications of running MySQL as root'
-> IN NATURAL LANGUAGE MODE) AS score
-> FROM articles
-> WHERE MATCH (title,body)
-> AGAINST('Security implications of running MySQL as root'
-> IN NATURAL LANGUAGE MODE);
+----+-------------------------------------+-----------------+
| id | body | score |
+----+-------------------------------------+-----------------+
| 4 | 1. Never run mysqld as root. 2. ... | 1.5219271183014 |
| 6 | When configured properly, MySQL ... | 1.3114095926285 |
+----+-------------------------------------+-----------------+
2 rows in set (0.00 sec)
A phrase that is enclosed within double quote
("
) characters matches only rows that contain
the phrase literally, as it was typed. The
full-text engine splits the phrase into words and performs a
search in the FULLTEXT
index for the words.
Nonword characters need not be matched exactly: Phrase searching
requires only that matches contain exactly the same words as the
phrase and in the same order. For example, "test
phrase"
matches "test, phrase"
. If
the phrase contains no words that are in the index, the result
is empty. For example, if all words are either stopwords or
shorter than the minimum length of indexed words, the result is
empty.
The MySQL FULLTEXT
implementation regards any
sequence of true word characters (letters, digits, and
underscores) as a word. That sequence may also contain
apostrophes ('
), but not more than one in a
row. This means that aaa'bbb
is regarded as
one word, but aaa''bbb
is regarded as two
words. Apostrophes at the beginning or the end of a word are
stripped by the FULLTEXT
parser;
'aaa'bbb'
would be parsed as
aaa'bbb
.
The built-in FULLTEXT
parser determines where
words start and end by looking for certain delimiter characters;
for example,
(space),
,
(comma), and .
(period).
If words are not separated by delimiters (as in, for example,
Chinese), the built-in FULLTEXT
parser cannot
determine where a word begins or ends. To be able to add words
or other indexed terms in such languages to a
FULLTEXT
index that uses the built-in
FULLTEXT
parser, you must preprocess them so
that they are separated by some arbitrary delimiter.
Alternatively, you can create FULLTEXT
indexes using the ngram parser plugin (for Chinese, Japanese, or
Korean) or the MeCab parser plugin (for Japanese).
It is possible to write a plugin that replaces the built-in
full-text parser. For details, see The MySQL Plugin API.
For example parser plugin source code, see the
plugin/fulltext
directory of a MySQL source
distribution.
Some words are ignored in full-text searches:
Any word that is too short is ignored. The default minimum length of words that are found by full-text searches is three characters for
InnoDB
search indexes, or four characters forMyISAM
. You can control the cutoff by setting a configuration option before creating the index:innodb_ft_min_token_size
configuration option forInnoDB
search indexes, orft_min_word_len
forMyISAM
.NoteThis behavior does not apply to
FULLTEXT
indexes that use the ngram parser. For the ngram parser, token length is defined by thengram_token_size
option.Words in the stopword list are ignored. A stopword is a word such as “the” or “some” that is so common that it is considered to have zero semantic value. There is a built-in stopword list, but it can be overridden by a user-defined list. The stopword lists and related configuration options are different for
InnoDB
search indexes andMyISAM
ones. Stopword processing is controlled by the configuration optionsinnodb_ft_enable_stopword
,innodb_ft_server_stopword_table
, andinnodb_ft_user_stopword_table
forInnoDB
search indexes, andft_stopword_file
forMyISAM
ones.
See Section 12.9.4, “Full-Text Stopwords” to view default stopword lists and how to change them. The default minimum word length can be changed as described in Section 12.9.6, “Fine-Tuning MySQL Full-Text Search”.
Every correct word in the collection and in the query is weighted according to its significance in the collection or query. Thus, a word that is present in many documents has a lower weight, because it has lower semantic value in this particular collection. Conversely, if the word is rare, it receives a higher weight. The weights of the words are combined to compute the relevance of the row. This technique works best with large collections.
For very small tables, word distribution does not adequately
reflect their semantic value, and this model may sometimes
produce bizarre results for search indexes on
MyISAM
tables. For example, although the
word “MySQL” is present in every row of the
articles
table shown earlier, a search for
the word in a MyISAM
search index produces
no results:
mysql> SELECT * FROM articles
-> WHERE MATCH (title,body)
-> AGAINST ('MySQL' IN NATURAL LANGUAGE MODE);
Empty set (0.00 sec)
The search result is empty because the word “MySQL” is present in at least 50% of the rows, and so is effectively treated as a stopword. This filtering technique is more suitable for large data sets, where you might not want the result set to return every second row from a 1GB table, than for small data sets where it might cause poor results for popular terms.
The 50% threshold can surprise you when you first try
full-text searching to see how it works, and makes
InnoDB
tables more suited to
experimentation with full-text searches. If you create a
MyISAM
table and insert only one or two
rows of text into it, every word in the text occurs in at
least 50% of the rows. As a result, no search returns any
results until the table contains more rows. Users who need to
bypass the 50% limitation can build search indexes on
InnoDB
tables, or use the boolean search
mode explained in Section 12.9.2, “Boolean Full-Text Searches”.