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Table A.1
Terms used when describing the performance of neural networks from Pearson et al. (2019b)
Term | Definition | |
---|---|---|
True Positive (TP) | An object known to be a merger that is identified by a network as a merger. | |
False Positive (FP) | An object known to be a non-merger that is identified by a network as a merger. | |
True Negative (TN) | An object known to be a non-merger that is identified by a network as a non-merger. | |
False Negative (FN) | An object known to be a merger that is identified by a network as a non-merger. | |
Recall | Fraction of objects correctly identified by a network as a merger with respect to the total number of objects classified in the catalogues as mergers. | TP / (TP+FN) |
Specificity | Fraction of objects correctly identified by a network as a non-merger with respect to the total number of objects classified in the catalogues as non-mergers. | TN / (TN+FP) |
Precision | Fraction of objects correctly identified by a network as a merger with respect to the total number of objects identified by a network as a merger. | TP / (TP+FP) |
Negative Predictive Value (NPV) | Fraction of objects correctly identified by a network as a non-merger with respect to the total number of objects identified by a network as a non-merger. | TN / (TN+FN) |
Accuracy | Fraction of objects, both merger and non-merger, correctly identified by a network. | (TP+TN) / (TP+FP+TN+FN) |
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