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Please consider the following tables.

users holds a couple of thousands of Twitter-users; their tweets are indexed with sp100_id, which is the id of the company (see sp100) the tweet was talking about. tweets.class holds the assigned sentiment class (1 = neutral, 2 = positive, 3 = negative) for each tweet. tweets.rt holds the amount of times the tweet has been retweeted. Finally, each user has been given a quality score and a follow score, as follows:

users                       tweets
-------------------------   -----------------------------------------------
user_id quality follow      tweet_id sp100_id nyse_date   user_id class  rt
-------------------------   -----------------------------------------------
1       2.50    5.00        1        1        2011-03-12  1       1      0
2       0.75    1.00        2        1        2011-03-13  1       2      2
                            3        1        2011-03-13  1       2      1
daterange                   4        1        2011-03-13  2       2      0
----------------            5        1        2011-03-13  2       3      3
_date                       6        2        2011-03-12  2       2      3
----------------            7        2        2011-03-12  2       2      0
2011-03-11                  8        2        2011-03-12  1       3      5
2011-03-12                  9        2        2011-03-13  2       2      0
2011-03-13

sp100
----------------
sp100_id  _name
----------------
1         Alcoa
2         Apple

The desired output is a list per sp100_id per _date the amount of positive (class=2) and negative (class=3) tweets weighted per rt, 'quality' and follow:

sp100_id  nyse_date  pos-rt pos-quality pos-follow neg-rt neg-quality neg-follow
--------------------------------------------------------------------------------
1         2011-03-11 0      0           0          0      0           0
1         2011-03-12 0      0           0          0      0           0
1         2011-03-13 5 (1)  5.75 (2)    11.00 (3)  3 (4)  0.75 (5)    1.00 (6)
2         2011-03-11 0      0           0          0      0           0
2         2011-03-12 3 (7)  5.00 (8)    10.00 (9)  5.00   2.50        2.50
2         2011-03-13 0      0.75        1.00       0      0           0
--------------------------------------------------------------------------------

(1) On 2011-03-13, 3 positive tweets for sp100_id 1. 1 tweet retweeted 2 times,
    1 tweets retweeted 1 time and 1 tweet retweeted 0 times = 2x2+1x1+1x0 = 5
(2) On 2011-03-13, 2 positive tweets made by user 1, who has quality 2.50 and
    1 positive tweet made by user 2, who has quality 0.75 = 2x2.50+1x0.75 = 5.75
(3) On 2011-03-13, 2 positive tweets made by user 1, who has follow 5.00 and
    1 positive tweet made by user 2, who has follow 1 = 2x5.00+1x1.00 = 11.00
(4) On 2011-03-13, 1 negative tweet made by user 2, retweeted 3 times = 1x3 = 3
(5) On 2011-03-13, 1 negative tweet made by user 2, who has quality 0.75, thus
    1x0.75 = 0.75
(6) On 2011-03-13, 1 negative tweets made by user 2, who has follow 1.00 so
    1x1.00 = 1.00
(7) 1 positive tweet which has been retweeted 3 times, 1 positive tweet without
    any retweets = 1x3+1x0 = 3
(8) 2 positive tweets from user 2 x quality 2.50 = 5.00
(9) 2 positive tweets x follow 5 = 10.00

I've tried to explain myself as good as possible. Who can help me build the correct query? As you can see, also dates for which there are no tweets (all values zero), need to be included in the resultset. I now have this, but am having trouble finishing the rest:

SELECT
    s.sp100_id,
    d._date,
    COALESCE(c.pos-rt,0)      AS pos-rt,
    COALESCE(c.pos-quality,0) AS pos-quality,
    COALESCE(c.pos-follow,0)  AS pos-follow,
    COALESCE(c.neg-rt,0)      AS neg-rt,
    COALESCE(c.neg-quality,0) AS neg-quality,
    COALESCE(c.neg-follow,0)  AS neg-follow
FROM sp100 s
CROSS JOIN daterange d
LEFT JOIN (
    SELECT 
        sp100_id,
        nyse_date, 
        COUNT(CASE class WHEN 2 THEN 1 END) * [rt]      AS pos-rt,
        COUNT(CASE class WHEN 2 THEN 1 END) * [quality] AS pos-quality,
        COUNT(CASE class WHEN 2 THEN 1 END) * [follow]  AS pos-follow,
        COUNT(CASE class WHEN 3 THEN 1 END) * [rt]      AS neg-rt,
        COUNT(CASE class WHEN 3 THEN 1 END) * [quality] AS neg-quality,
        COUNT(CASE class WHEN 3 THEN 1 END) * [follow]  AS neg-follow
    FROM tweets 
    GROUP BY sp100_id, nyse_date
) c ON s.sp100_id = c.sp100_id AND d._date = c.nyse_date
ORDER BY s.sp100_id, d._date ASC

Obviously, [rt], [quality] and [follow] need to be replaced by correct syntax and I'm not sure about the COUNT(...) either, because it now first counts the number of tweets, but it should take every tweet apart and multiply it by its own number of retweets ('rt').

Can anybody help me out?

share|improve this question
1  
Having some problem understanding your table footnote (1): the first tweet was retweeted twice; why is its contribution to pos-rt 2*2 and not 1*2, whereas the other two tweets (retweeted once and zero times) contribute 1*1 and 1*0 respectively? –  eggyal Jul 31 '12 at 17:30
1  
In footnote (8), I think the relevant user had user_id=2 with quality=0.75 and therefore pos-rt should be 1.5? Similarly, for footnote (9) follow=1.00 and therefore pos-follow should be 2.00? –  eggyal Jul 31 '12 at 17:45
    
You were right on both accounts :-) –  Pr0no Jul 31 '12 at 20:09

1 Answer 1

up vote 2 down vote accepted

Assuming that I've understood the problem correctly (see my comments above), then you merely need group the joined tables and SUM() the relevant fields where the tweets are of the desired class which can be determined using IF():

SELECT      sp100.sp100_id                            AS `sp100_id`,
            daterange._date                           AS `nyse_date`,
            SUM(IF(tweets.class=2, tweets.rt,     0)) AS `pos-rt`,
            SUM(IF(tweets.class=2, users.quality, 0)) AS `pos-quality`,
            SUM(IF(tweets.class=2, users.follow,  0)) AS `pos-follow`,
            SUM(IF(tweets.class=3, tweets.rt,     0)) AS `neg-rt`,
            SUM(IF(tweets.class=3, users.quality, 0)) AS `neg-quality`,
            SUM(IF(tweets.class=3, users.follow,  0)) AS `neg-follow`       
FROM        sp100
       JOIN daterange
  LEFT JOIN tweets ON tweets.nyse_date = daterange._date
                  AND tweets.sp100_id  = sp100.sp100_id
  LEFT JOIN users  ON tweets.user_id   = users.user_id
GROUP BY    sp100.sp100_id, daterange._date

See it on sqlfiddle.

[EDIT] Here's the EXPLAIN:

id select_type table     type   possible_keys             key        key_len  ref                        rows  extra
-----------------------------------------------------------------------------------------------------------------------------------------------------------
1  SIMPLE      sp100     index  NULL                      PRIMARY    4        NULL                        101  Using index; Using temporary; Using filesort
1  SIMPLE      daterange index  NULL                      _date      3        NULL                        147  Using index; Using join buffer
1  SIMPLE      tweets    ref    query,nyse_date,sp100_id  nyse_date  3        sentimeter.daterange._date 3815    
1  SIMPLE      users     eq_ref PRIMARY                   PRIMARY    4        sentimeter.tweets.user_id     1    
share|improve this answer
    
Thanks, this is brilliant :-) Although my laptop (on which the query runs) times out, even with index on all fields. Perhaps I'll have to first make extra columns in tweets and fill in quality, etc. Then I wouldn't have to calculate on the fly by joining users table.... –  Pr0no Jul 31 '12 at 20:43
1  
@Pr0no: Take a look at the EXPLAIN output to see MySQL's execution plan for the query. Chances are that your indexes need tweaking (simply building indexes on every column won't do much, as MySQL can only use one index for the query: you are better off building suitable composite indexes, but the order of constituent columns will be important). –  eggyal Jul 31 '12 at 20:47
    
Please refer to sqlfiddle.com/#!2/c13fc I have added the necessary columns to the tweets table, making the users table obsolete. Could you update the query so I might try and run it? I will post the EXPLAIN for the original query also. –  Pr0no Jul 31 '12 at 21:02
    
I have added the EXPLAIN to your post. Please see the update. –  Pr0no Jul 31 '12 at 21:10
    
@Pr0no: Could you also show somewhere (perhaps by editing the sqlfiddle schema) the indexes that you have defined? –  eggyal Jul 31 '12 at 21:38

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