MySQL多层级结构-树搜索介绍 |
本文标签:MySQL,树搜索 基本上在每个系统中都有那么几张表是自关联父子关系的结构 。往往有很多人都是使用pid来做关联 。在刚进入IT行业时使用CAKEPHP框架编写WEB的时候,使用它里面的一个ACL plugin实现权限管理的时候 。发现一个表结构硬是不明白是怎么回事 。具体表结构如下: CREATE TABLE acos ( id INTEGER(10) UNSIGNED NOT NULL AUTO_INCREMENT, parent_id INTEGER(10) DEFAULT NULL, model VARCHAR(255) DEFAULT '', foreign_key INTEGER(10) UNSIGNED DEFAULT NULL, alias VARCHAR(255) DEFAULT '', lft INTEGER(10) DEFAULT NULL, rght INTEGER(10) DEFAULT NULL, PRIMARY KEY (id) ); 我们可以看到上面 acos 表用有lft、rght这两个字段 。起初我根本就不明白这两个是做什么用的,几次直接修改数据导致数据错乱 。 1.2. 原理解释 其实这就是树的后续遍历的每个节点的左值、右值 。如下图表示: 1.3. 树的使用(引用上图树结构) 构造数据 DROP TABLE IF EXISTS comment; CREATE TABLE `comment` ( `comment_id` int(11) DEFAULT NULL, `left_num` int(11) DEFAULT NULL, `right_num` int(11) DEFAULT NULL ); INSERT INTO `comment` VALUES (1,1,14), (2,2,5), (3,3,4), (4,6,13), (5,7,8), (6,9,12), (7,10,11); CREATE INDEX idx$comment$left_num$right_num ON `comment` (`left_num`, `right_num`); 查找 '节点4' 的所有子节点 思路:我们只要查找出 节点左值在 '节点4' 左值和右值之间的节点 -- 获得 '节点4' 孩子 SELECT c.* FROM comment AS p, comment AS c WHERE c.left_num BETWEEN p.left_num AND p.right_num AND p.comment_id = 4; +------------+----------+-----------+ | comment_id | left_num | right_num | +------------+----------+-----------+ | 4 | 6 | 13 | | 5 | 7 | 8 | | 6 | 9 | 12 | | 7 | 10 | 11 | +------------+----------+-----------+ 查找 '节点6' 的所有父节点 -- 获得 '节点6' 父亲 SELECT p.* FROM comment AS p, comment AS c WHERE c.left_num BETWEEN p.left_num AND p.right_num AND c.comment_id = 6; +------------+----------+-----------+ | comment_id | left_num | right_num | +------------+----------+-----------+ | 1 | 1 | 14 | | 4 | 6 | 13 | | 6 | 9 | 12 | +------------+----------+-----------+ 计算 '节点4' 的深度 SET SESSION sql_mode = 'STRICT_TRANS_TABLES,NO_ZERO_IN_DATE,NO_ZERO_DATE,ERROR_FOR_DIVISION_BY_ZERO,NO_AUTO_CREATE_USER,NO_ENGINE_SUBSTITUTION'; SELECT c.*, COUNT(c.comment_id) AS depth FROM comment AS p, comment AS c WHERE c.left_num BETWEEN p.left_num AND p.right_num AND c.comment_id = 4 GROUP BY c.comment_id; +------------+----------+-----------+-------+ | comment_id | left_num | right_num | depth | +------------+----------+-----------+-------+ | 4 | 6 | 13 | 2 | +------------+----------+-----------+-------+ 获取 '节点4' 的所有子节点, 和相关深度 SELECT sub_child.*, (COUNT(sub_parent.comment_id) - 1) AS depth FROM ( SELECT child.* FROM comment AS parent, comment AS child WHERE child.left_num BETWEEN parent.left_num AND parent.right_num AND parent.comment_id = 4 ) AS sub_child, ( SELECT child.* FROM comment AS parent, comment AS child WHERE child.left_num BETWEEN parent.left_num AND parent.right_num AND parent.comment_id = 4 ) AS sub_parent WHERE sub_child.left_num BETWEEN sub_parent.left_num AND sub_parent.right_num GROUP BY sub_child.comment_id ORDER BY sub_child.left_num; +------------+----------+-----------+-------+ | comment_id | left_num | right_num | depth | +------------+----------+-----------+-------+ | 4 | 6 | 13 | 0 | | 5 | 7 | 8 | 1 | | 6 | 9 | 12 | 1 | | 7 | 10 | 11 | 2 | +------------+----------+-----------+-------+ 插入数据 最终我们获得的结果,如下图: 上图 '紫色' 的是节点需要变更的左值和右值,'绿色' 的是新增节点的值 。 -- 获得 '节点4' 和 '节点4'的第一个孩子的(节点5)的左右值 SELECT c.* FROM comment AS p, comment AS c WHERE c.left_num BETWEEN p.left_num AND p.right_num AND p.comment_id = 4; +------------+----------+-----------+ | comment_id | left_num | right_num | +------------+----------+-----------+ | 4 | 6 | 13 | | 5 | 7 | 8 | ... omit ... -- 通过上面获得的信息更新 '节点4' 的父子几点的左右值 UPDATE comment SET left_num = left_num + 2 WHERE left_num > 6; UPDATE comment SET right_num = right_num + 2 WHERE right_num > 6; 插入思路 INSERT INTO comment SELECT 44, left_num + 1, left_num + 2 FROM comment WHERE comment_id = 4; 验证 -- 获得 '节点4' 孩子 SELECT c.* FROM comment AS p, comment AS c WHERE c.left_num BETWEEN p.left_num AND p.right_num AND p.comment_id = 4; +------------+----------+-----------+ | comment_id | left_num | right_num | +------------+----------+-----------+ | 4 | 6 | 15 | | 5 | 9 | 10 | | 6 | 11 | 14 | | 7 | 12 | 13 | | 44 | 7 | 8 | +------------+----------+-----------+ -- 获得 '节点44' 父亲 SELECT p.* FROM comment AS p, comment AS c WHERE c.left_num BETWEEN p.left_num AND p.right_num AND c.comment_id = 44; +------------+----------+-----------+ | comment_id | left_num | right_num | +------------+----------+-----------+ | 1 | 1 | 16 | | 4 | 6 | 15 | | 44 | 7 | 8 | +------------+----------+-----------+ 1.4. 总结 这种树结构一般会用在查询多增加修改少的场景中(比如地区表,类别表之类的) 。 |