How do I calculate the importance/weight of input based on users reputation?

I have a couple systems which contain a users' table along with some form of karma/weight/reputation. Sometimes it's the number of posts a user has made, sometimes it's the number of up/down votes a user has received across all their activity on the site.

``````USER {
id int
name string
karma int
}
``````

How do I use these numbers to calculate that user's "weight" or "authority"? For example, the vote of one long-time member is often worth much more than 4 votes from brand new users.

I was thinking about adding up the total points/karma/reputation of all members and then trying to come up with a 1-100 scale.

``````SUM(user.points) / COUNT(user.*) = average user points
``````

Then something like

``````CEIL(userA.points / average user points) = their weight on an issue
``````

However, there also needs to be a curve on the points this way as I don't want someone with 5,000 posts/karma to out weigh 20 new users votes.

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Well... it's up to you to define it. How many new users should a 5k user outweigh? An approach would be to use a `log()`, the base is up to you. –  Wrikken Dec 14 '12 at 17:39
FYI: so, `weight= log(karma)/log(n);`, where `n` is the number you want to fiddle with, probably `1 < n < 10`, more probably you want it somewhere betwwen `1 < n < 3` though. –  Wrikken Dec 14 '12 at 17:51

Mathematically, your best bet is to weight by the log of the percentile ranking of user in question. However, that is painful in SQL.

Simpler would be to cheat and assume the mean is the same as the median (a very bad assumption statistically, but much simpler programmatically):

`````` SELECT 1 - log10(SELECT COUNT (*) FROM user
WHERE (SUM(user.points) / COUNT(user.*)) < user.points)
/ SELECT (COUNT (*) from user))
``````

In this way, your top 10% of karma would have one and a half the impact of your average user, almost twice the impact of a noob. Changing the log base would scale this, obviously, where natural log (log() in mysql) would give the upper 10% 3 times as much impact as a noob, and twice the impact as average. Log2() is even more extreme. (Note: subtraction is required because the log will be negative.)

If you want a more severe effect you might try squaring the log. (Note: squaring makes the log squared positive, so addition is appropriate here.)

If you want a hyperprecise rule, you can go into standard deviations, but the sql gets cumbersome and slow. It all depends on how far down the rabbit hole you want to go....

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I need a query that completes in a reasonable amount of time since I may not be able to cache the results in some cases. So faster is better than actuate, but it will take more testing and research to find the sweet spot. –  Xeoncross Dec 19 '12 at 0:18
I expect what I am offering will be fastest, while preventing the absolute values from smashing the overall results. However, I might add you could, on cron job, setup another table to calculate 'weight' based on karma, and update it weekly perhaps, which would then convert your overall calculation to a simple query and allow as complicated of a formula as you want as long as weekly updates to influence are acceptable and you have space for a spare table –  Lighthart Dec 19 '12 at 17:34

There are probably some resources that can provide you with parameters for this, but you should probably decide exactly what you want rather than using some predefined model. I suggest you define some rules for which sets of users should be equivalent or which should outweigh each other (e.g. 10 0 karma users = 1 5k karma user) (equivalence is much easier to work with), which will very quickly produce parameters for some chosen equation.

Using log (as already suggested), some (fractional) power (like square root) or even just linear can work.

I suggest something like `newKarma = a.karma^b + c`, and it shouldn't be to difficult to solve `a`, `b` and `c`. I suggest you pick `b` rather than trying to calculate it. Using new users (with karma = 0) should make this quite easy to solve. Guessing values to get close to what you want can be easier than determining them mathematically (since some rules together won't fit any simple equation).

Note that `c` above is an offset to karma, which will give many new users more total karma than high-karma users. You may also want to think about `a.(karma + c)^b`, or `a.(karma + c)^b + d`. Analysing the rules you defined should tell you which one to use.

UPDATE: Added alternatives for `c`

EDIT: You have some options for SQL. A temp table (with sums) might actually be the fastest. You can also just use a view. A join on the same table might also be possible, though I'm not sure. Using a view would look something like: (for some chosen a,b,c and d) (you may also want to add indices to the view)

``````Votes(issueID, userID) // table structure
User(userID, karma, ...) // table structure

CREATE VIEW Sums AS
SELECT issueID, SUM(1*POWER(karma + 2, 3) + 4) AS sumVal
GROUP BY issueID
``````

Query:

``````SELECT (1*POWER(karma + 2, 3) + 4)/sumVal AS influenceOnIssue
A simplification may be to have a computed column that = `1*POWER(karma + 2, 3) + 4`