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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.

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You mention "recommended items" so I'll assume you're talking about calculating precision for a recommender engine, i.e. the number of predictions in the top k that are accurate predictions of the user's future interactions.

The objective of a recommender engine is to model future interactions from past interactions. Such a model is trained on a dataset of interactions such that the last interaction is the target and n past interactions are the features.

The precision would therefore be calculated by running the model on a test set where the ground truth (last interaction) was known, and dividing the number of predictions where the ground truth was within the top k predictions by the total number of test items.

Items that the user has not interacted with do not come up because we are training the model on behaviour of other users.

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  • Hi @scign, thanks for your reply. If I understand correctly, you mean that we should ignore all the predictions which do not have ground truth. The top k recommendation which is used to calculate the precision@K should include the one with ground truth only. If it is the case then my model is performing really well. – Quan Nguyen Feb 3 '20 at 4:54
  • My point is that you shouldn't be even trying to calculate precision for predictions where you don't have ground truth. Precision (the proportion of accurate predictions) only makes sense where you have ground truth. If the user in the test set hasn't interacted with the item, then any list of predicted top-k will be incorrect. – scign Feb 3 '20 at 11:35
  • @scign please I used logistic regression model in recommendation system and i want to calculate recall@25 .val model = pipeline.fit(train) val predicted = model.transform(test) val predictionAndLabels = predicted .select("prediction", "label") .rdd.map(x => (x(0).asInstanceOf[Array[Double]], x(1) .asInstanceOf[Array[Double]])) val matrix = new RankingMetrics(predictionAndLabels) matrix.recallAt(25) but exception java.lang.Double cannot be cast to [D .How to correct it. – Salm Mar 6 '20 at 14:01
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    Don't use comments on someone else's question to ask your own question. – scign Mar 6 '20 at 18:27

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