Since you are new, i am writing briefly how to compute precision, recall, fscore, AP and MAP in an information retrieval system.
Precision and Recall
Precision measures "of all the documents we retrieved as relevant how many are actually relevant?".
Precision = No. of relevant documents retrieved / No. of total documents retrieved
Recall measures "Of all the actual relevant documents how many did we retrieve as relevant?".
Recall = No. of relevant documents retrieved / No. of total relevant documents
Suppose, when a query "q" is submitted to an information retrieval system (ex., search engine) having 100 relevant documents w.r.t. the query "q", the system retrieves 68 documents out of total collection of 600 documents. Out of 68 retrieved documents, 40 documents were relevant. So, in this case:
Precision = 40 / 68 = 58.8% and
Recall = 40 / 100 = 40%
F-Score / F-measure is the weighted harmonic mean of precision and recall. The traditional F-measure or balanced F-score is:
F-Score = 2 * Precision * Recall / Precision + Recall
You can think of it this way: you type something in
Google and it shows you 10 results. It’s probably best if all of them were relevant. If only some are relevant, say five of them, then it’s much better if the relevant ones are shown first. It would be bad if first five were irrelevant and good ones only started from sixth, wouldn’t it? AP score reflects this.
Giving an example below:
AvgPrec of the two rankings:
(1.0 + 0.67 + 0.75 + 0.8 + 0.83 + 0.6) / 6 = 0.78
(0.5 + 0.4 + 0.5 + 0.57 + 0.56 + 0.6) / 6 = 0.52
Mean Average Precision (MAP)
MAP is mean of average precision across multiple queries/rankings. Giving an example for illustration.
Mean average precision for the two queries:
For query 1,
AvgPrec: (1.0+0.67+0.5+0.44+0.5) / 5 = 0.62
For query 2,
AvgPrec: (0.5+0.4+0.43) / 3 = 0.44
So, MAP =
(0.62 + 0.44) / 2 = 0.53
Sometimes, people use
recall@k as performance measure of a retrieval system. To do experiment, you can use the well-known dataset of AOL Search Query Logs to build a retrieval-based system (you just need a retrieval function in addition) and then do experiment with that. I am giving one example of document ranking function.
Document Ranking / Retrieval Function
Okapi BM25 (BM stands for Best Matching) is a ranking function used by search engines to rank matching documents according to their relevance to a given search query. It is based on the probabilistic retrieval framework. BM25 is a bag-of-words retrieval function that ranks a set of documents based on the query terms appearing in each document, regardless of the inter-relationship between the query terms within a document (e.g., their relative proximity). See the Wikipedia page for more details.