I have a quick project to build a recommendation system (like Amazon, not the same scale though). The idea is pretty simple. We have zillions of products with attributes. We already know if 1 customer likes or not this product. I was reading some article like the following one:
The idea and the maths behind are fine, but I am more stuck on the design part.
I have to stick with mySQL, but performance is not an issue given the scale of the project (more an internal one).
Loosely speaking, I just need to store somewhere that client a like the product with all its attributes (for example colour, size,...).
I was thinking creating a table with a key being client/attribute, and a column that increment a counter every time a product is shown to this client, and a column with a counter that increments every time the client likes the product.
Like this I can simply get a "rating" for each client/attribute by dividing the 2 columns.
Is this the good path to follow? Any industry standard?
Subsidiary question: how to get the short term trends? Doing as i described above, you will have a long term average, but will fail to detect the change in trends...