I am building a recommendation system for my company and have a question about the formula to calculate the precision@K and recall@K which I couldn't find on Google.

With precision@K, the general formula would be the proportion of recommended items in the top-k set that are relevant.

My question is how to define which items are relevant and which are not because a user doesn't necessarily have interactions with all available items but only a small subset of them. What if there is a lack in ground-truth for the top-k recommended items, meaning that the user hasn't interacted with some of them so we don't have the actual rating? Should we ignore them from the calculation or consider them irrelevant items?

The following article suggests to ignore these non-interactions items but I am not really sure about that.

https://medium.com/@m_n_malaeb/recall-and-precision-at-k-for-recommender-systems-618483226c54

Thanks a lot in advance.