# How to implement the Bayesian average algorithm for a binary rating system

I have a system where people can up vote or down vote an item and I want to display the results of that as a 5 star rating.

I have been trying use the Bayesian Rating algorithm explained here and here with no success.

For example: I have three items (A, B and C) in my database:

A = 500 UP and 500 down votes B = 0 UP and 1000 down votes C = 0 UP and 1000 down votes

How do i calculate the Bayesian average rating for each item so that it has a score on a scale of 1 to 5?

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Simple Algebra:

AvgRating = Sum of up votes for all items * 5 / Sum of all votes

CurRating = Sum of up votes on current item * 5/ Number of votes on current item

So plugging in your numbers evaluating the weight for A...

AvgRating = 0 (Remember do not include numbers for the item you are evaluating in this calculation)

CurRating = 500 * 5 / 1000 = 2.5

Total Votes = 2000 + 1000 = 3000

((1000 * 0) + (1000 * 2.5)) * 5 / 3000 = 4.166

I forgot to add, do NOT include any items in any calculation or sum above that have no votes or it will throw the weights off.

EDIT - Simplified Solution:

I should note that there is a simplified solution to the problem that can be performed. I only demonstrated longhand form for comprehension. The compressed algorithm looks like:

Definitions:

SET = Anything not related to the current evaluation target where votes is greater than zero.

TARGET = The element you are currently trying to evaluate