Here is all my tables' structure and the query (please focus on the last query, appended below). As you see in the fiddle, here is the current output:
+---------+-----------+-------+------------+--------------+
| user_id | user_name | score | reputation | top_two_tags |
+---------+-----------+-------+------------+--------------+
| 1 | Jack | 0 | 18 | css,mysql |
| 4 | James | 1 | 5 | html |
| 2 | Peter | 0 | 0 | null |
| 3 | Ali | 0 | 0 | null |
+---------+-----------+-------+------------+--------------+
It's correct and all fine.
Now I have one more existence named "category". Each post can has only one category. And I also want to get top two categories for each user. And here is my new query. As you see in the result, some duplicates happened:
+---------+-----------+-------+------------+--------------+------------------------+
| user_id | user_name | score | reputation | top_two_tags | top_two_categories |
+---------+-----------+-------+------------+--------------+------------------------+
| 1 | Jack | 0 | 18 | css,css | technology,technology |
| 4 | James | 1 | 5 | html | political |
| 2 | Peter | 0 | 0 | null | null |
| 3 | Ali | 0 | 0 | null | null |
+---------+-----------+-------+------------+--------------+------------------------+
See? css,css, technology, technology. Why these are duplicate? I've just added one more LEFT JOIN for categories, exactly like tags. But it doesn't work as expected and even affects on the tags either.
Anyway, this is the expected result:
+---------+-----------+-------+------------+--------------+------------------------+
| user_id | user_name | score | reputation | top_two_tags | category |
+---------+-----------+-------+------------+--------------+------------------------+
| 1 | Jack | 0 | 18 | css,mysql | technology,social |
| 4 | James | 1 | 5 | html | political |
| 2 | Peter | 0 | 0 | null | null |
| 3 | Ali | 0 | 0 | null | null |
+---------+-----------+-------+------------+--------------+------------------------+
Does anybody know how can I achieve that?
CREATE TABLE users(id integer PRIMARY KEY, user_name varchar(5));
CREATE TABLE tags(id integer NOT NULL PRIMARY KEY, tag varchar(5));
CREATE TABLE reputations(
id integer PRIMARY KEY,
post_id integer /* REFERENCES posts(id) */,
user_id integer REFERENCES users(id),
score integer,
reputation integer,
date_time integer);
CREATE TABLE post_tag(
post_id integer /* REFERENCES posts(id) */,
tag_id integer REFERENCES tags(id),
PRIMARY KEY (post_id, tag_id));
CREATE TABLE categories(id INTEGER NOT NULL PRIMARY KEY, category varchar(10) NOT NULL);
CREATE TABLE post_category(
post_id INTEGER NOT NULL /* REFERENCES posts(id) */,
category_id INTEGER NOT NULL REFERENCES categories(id),
PRIMARY KEY(post_id, category_id)) ;
SELECT
q1.user_id, q1.user_name, q1.score, q1.reputation,
substring_index(group_concat(q2.tag ORDER BY q2.tag_reputation DESC SEPARATOR ','), ',', 2) AS top_two_tags,
substring_index(group_concat(q3.category ORDER BY q3.category_reputation DESC SEPARATOR ','), ',', 2) AS category
FROM
(SELECT
u.id AS user_Id,
u.user_name,
coalesce(sum(r.score), 0) as score,
coalesce(sum(r.reputation), 0) as reputation
FROM
users u
LEFT JOIN reputations r
ON r.user_id = u.id
AND r.date_time > 1500584821 /* unix_timestamp(DATE_SUB(now(), INTERVAL 1 WEEK)) */
GROUP BY
u.id, u.user_name
) AS q1
LEFT JOIN
(
SELECT
r.user_id AS user_id, t.tag, sum(r.reputation) AS tag_reputation
FROM
reputations r
JOIN post_tag pt ON pt.post_id = r.post_id
JOIN tags t ON t.id = pt.tag_id
WHERE
r.date_time > 1500584821 /* unix_timestamp(DATE_SUB(now(), INTERVAL 1 WEEK)) */
GROUP BY
user_id, t.tag
) AS q2
ON q2.user_id = q1.user_id
LEFT JOIN
(
SELECT
r.user_id AS user_id, c.category, sum(r.reputation) AS category_reputation
FROM
reputations r
JOIN post_category ct ON ct.post_id = r.post_id
JOIN categories c ON c.id = ct.category_id
WHERE
r.date_time > 1500584821 /* unix_timestamp(DATE_SUB(now(), INTERVAL 1 WEEK)) */
GROUP BY
user_id, c.category
) AS q3
ON q3.user_id = q1.user_id
GROUP BY
q1.user_id, q1.user_name, q1.score, q1.reputation
ORDER BY
q1.reputation DESC, q1.score DESC ;
Your second query is of the form:
q1 -- PK user_id
LEFT JOIN (...
GROUP BY user_id, t.tag
) AS q2
ON q2.user_id = q1.user_id
LEFT JOIN (...
GROUP BY user_id, c.category
) AS q3
ON q3.user_id = q1.user_id
GROUP BY -- group_concats
The inner GROUP BYs result in (user_id, t.tag) & (user_id, c.category) being keys/UNIQUEs. Other than that I won't address those GROUP BYs.
TL;DR When you join (q1 JOIN q2) to q3 it is not on a key/UNIQUE of one of them so for each user_id you get a row for every possible combination of tag & category. So the final GROUP BY inputs duplicates per (user_id, tag) & per (user_id, category) and inappropriately GROUP_CONCATs duplicate tags & categories per user_id. Correct would be (q1 JOIN q2 GROUP BY) JOIN (q1 JOIN q3 GROUP BY) in which all joins are on common key/UNIQUE (user_id) & there is no spurious aggregation. Although sometimes you can undo such spurious aggregation.
A correct symmetrical INNER JOIN approach: LEFT JOIN q1 & q2--1:many--then GROUP BY & GROUP_CONCAT (which is what your first query did); then separately similarly LEFT JOIN q1 & q3--1:many--then GROUP BY & GROUP_CONCAT; then INNER JOIN the two results ON user_id--1:1.
A correct symmetrical scalar subquery approach: SELECT the GROUP_CONCATs from q1 as scalar subqueries each with a GROUP BY.
A correct cumulative LEFT JOIN approach: LEFT JOIN q1 & q2--1:many--then GROUP BY & GROUP_CONCAT; then LEFT JOIN that & q3--1:many--then GROUP BY & GROUP_CONCAT.
A correct approach like your 2nd query: You first LEFT JOIN q1 & q2--1:many. Then you LEFT JOIN that & q3--many:1:many. It gives a row for every possible combination of a tag & a category that appear with a user_id. Then after you GROUP BY you GROUP_CONCAT--over duplicate (user_id, tag) pairs and duplicate (user_id, category) pairs. That is why you have duplicate list elements. But adding DISTINCT to GROUP_CONCAT gives a correct result. (Per wchiquito's comment.)
Which you prefer is as usual an engineering tradeoff to be informed by query plans & timings, per actual data/usage/statistics. input & stats for expected amount of duplication), timing of actual queries, etc. One issue is whether the extra rows of the many:1:many JOIN approach offset its saving of a GROUP BY.
-- cumulative LEFT JOIN approach
SELECT
q1.user_id, q1.user_name, q1.score, q1.reputation,
top_two_tags,
substring_index(group_concat(q3.category ORDER BY q3.category_reputation DESC SEPARATOR ','), ',', 2) AS category
FROM
-- your 1st query (less ORDER BY) AS q1
(SELECT
q1.user_id, q1.user_name, q1.score, q1.reputation,
substring_index(group_concat(q2.tag ORDER BY q2.tag_reputation DESC SEPARATOR ','), ',', 2) AS top_two_tags
FROM
(SELECT
u.id AS user_Id,
u.user_name,
coalesce(sum(r.score), 0) as score,
coalesce(sum(r.reputation), 0) as reputation
FROM
users u
LEFT JOIN reputations r
ON r.user_id = u.id
AND r.date_time > 1500584821 /* unix_timestamp(DATE_SUB(now(), INTERVAL 1 WEEK)) */
GROUP BY
u.id, u.user_name
) AS q1
LEFT JOIN
(
SELECT
r.user_id AS user_id, t.tag, sum(r.reputation) AS tag_reputation
FROM
reputations r
JOIN post_tag pt ON pt.post_id = r.post_id
JOIN tags t ON t.id = pt.tag_id
WHERE
r.date_time > 1500584821 /* unix_timestamp(DATE_SUB(now(), INTERVAL 1 WEEK)) */
GROUP BY
user_id, t.tag
) AS q2
ON q2.user_id = q1.user_id
GROUP BY
q1.user_id, q1.user_name, q1.score, q1.reputation
) AS q1
-- finish like your 2nd query
LEFT JOIN
(
SELECT
r.user_id AS user_id, c.category, sum(r.reputation) AS category_reputation
FROM
reputations r
JOIN post_category ct ON ct.post_id = r.post_id
JOIN categories c ON c.id = ct.category_id
WHERE
r.date_time > 1500584821 /* unix_timestamp(DATE_SUB(now(), INTERVAL 1 WEEK)) */
GROUP BY
user_id, c.category
) AS q3
ON q3.user_id = q1.user_id
GROUP BY
q1.user_id, q1.user_name, q1.score, q1.reputation
ORDER BY
q1.reputation DESC, q1.score DESC ;
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