# MySQL SELECT Probability like-dislike system

I'm creating a YouTube comment style (like-dislike) PHP app for my blogging website.

I want the comments to be arranged randomly; however, I want chances to increase based on the ratio of likes to dislikes. For example:

A comment with 5 likes and 1 dislike will have a higher chance of being selected than a comment with 4 likes and 2 dislikes since 5/1 is higher than 4/2. Therefore, the like-dislike ratio is directly proportional to the chance of being displayed in the comments section.

I'm using PHP and MySQL. I need help with creating some sort of algorithm for this. I know It's quite challenging, but if you can think of some sort of MySQL query for this, that would be great. :D

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Thanks Blender! That was really useful! –  Mico Abrina May 31 '13 at 3:00

Let me assume that you have a table of comments with columns like `NumLikes` and `NumDislikes`.

One simple approach that you can take is to order the rows by the ratio (or by the probability of like descending) and be biased in choosing a lower row than a higher row.

The following randomly chooses a row and then randomly chooses a row with a better ratio than that row. This biases the selection process toward the better rows:

``````select *
(select c.*
order by rand() desc
limit 1
) threshhold
where c.likes / (c.likes + c.dislikes) >= threshold.likes / (threshold.likes + threshold.dislikes)
order by rand()
limit 1
``````

There are more complicated techniques. Because MySQL does not support window/analytic functions, they are most easily implemented with temporary tables and multiple queries. This approach, however, only requires a single query and no temporary tables.

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How can I do this with: evanmiller.org/how-not-to-sort-by-average-rating.html I want to use the Wilson formula so it's more accurate. Thank you :D –  Mico Abrina May 31 '13 at 3:03
@MicoAbrina: Scroll to the bottom of the article. There's an example SQL query. –  Blender May 31 '13 at 3:05
@MicoAbrina . . . My usual method is to calculate the ratio and then subtract one standard error using the "square root of pq/n" formula. That is, take a pessimistic statistical estimate of the ratio. In your case, I'm guessing the tail is very long due to posts that have only one like or dislike. When you have a long tail, start with the simplest approach and only refine it if necessary. –  Gordon Linoff May 31 '13 at 3:07
Yup! I noticed the SQL query in evanmiller.org. :D However, how do I mix that up with the bias system of your code? –  Mico Abrina May 31 '13 at 3:08
@MicoAbrina . . . Instead of the ratio, you would use the lower bound estimate in both cases (which affects both sides of the `where` clause). I tend to go for a one-standard error difference. The article is proposing a 95% confidence lower bound. I can't strongly defend one against the other, because they are both heuristic. –  Gordon Linoff May 31 '13 at 3:10