F-measure
From UNLwiki
				In the UNL System, the F-measure (or F1-score) is the measure of a grammar's accuracy. It considers both the precision and the recall of the grammar to compute the score, according to the formula
F-measure = 2 x ( (precision x recall) / (precision + recall) )
In the above:
- precision is the number of correct results divided by the number of all returned results
 - recall is the number of correct results divided by the number of results that should have been returned
 
A result is considered "RETURNED" in the following cases:
- In UNLization, when the output is a graph (i.e., all the nodes are interlinked) made only of UW's (i.e., without natural language words)
 - In NLization, when the output is a list of natural language words (i.e., without any UW).
 
A result is considered "CORRECT" in the following cases:
- In UNLization, when
- The discrepancy of relations between the actual and the expected output is less than 0.3; AND
 - The discrepancy of UW's between the actual and the expected output is less than 0.3; AND
 - The overall discrepancy is less than 0.5, WHERE
- Discrepancy of relations is calculated by the formula:
- (exceding_relations + missing_relations)/total_relations
 
 - Discrepancy of UW's is calculated by the formula:
- (exceding_UW + missing_UW)/total_UW
 
 - Overall discrepancy is calculated by the formula:
- ((3*(exceding_relations+missing_relations))+(2*(exceding_UW+missing_UW)+(exceding_attribute+missing_attribute))/((3*total_relations)+(2*total_UW)+(total_attribute))
 
 
 - Discrepancy of relations is calculated by the formula:
 - WHERE
- exceding_relations is the number of relations present in the actual output but absent from the expected output
 - missing_relations is the number of relations absent from the actual output but present in the expected output
 - total_relations is the sum of the total number of relations in the actual output and in the expected output
 - exceding_UW is the number of UW's[1] present in the actual output but absent from the expected output
 - missing_UW is the number of UW'sCite error: Invalid 
<ref>tag; name cannot be a simple integer. Use a descriptive title absent from the actual output but present in the expected output - total_UW is the sum of the total number of UW'sCite error: Invalid 
<ref>tag; name cannot be a simple integer. Use a descriptive title in the actual output and in the expected output - exceding_attribute is the number of attributesCite error: Invalid 
<ref>tag; name cannot be a simple integer. Use a descriptive title present in the actual output but absent from the expected output - missing_attribute is the number of attributesCite error: Invalid 
<ref>tag; name cannot be a simple integer. Use a descriptive title absent from the actual output but present in the expected output - total_attribute is the sum of the total number of attributesCite error: Invalid 
<ref>tag; name cannot be a simple integer. Use a descriptive title in the actual output and in the expected output 
 
 
A result is considered "correct" when the Levensthein distance between the actual result and the expected result was less than 30% of the length of the expected result. The Levenshtein distance is defined as the minimal number of characters you have to replace, insert or delete to transform a string (the actual output) into another one (the expected output).
References
- ↑ For the sake of comparison, a source UW is considered to be different from the target UW. Scopes are ignored.