BOOKMARK
All list
BOOKMARK
All list
Print Full Report
Utility
Passed
0
/
3
Diversity
Quality
Indistinguishability
OCC Accuracy
ALL
The closer to zero or the lower the value, the better
Indistinguishability measures the ability of a machine learning model to distinguish between real and synthetic data.
After the model learns the distribution of real data, it is tested on a combination of real and synthetic data to evaluate its classification accuracy.
A low accuracy close to 0.5 indicates that the model frequently confuses synthetic data with real data, suggesting that the synthetic data closely resembles the real data.
higher accuracy indicates that the model effectively distinguishes synthetic data from real data. To better interpret these results, consider comparing the rate of real data misclassified as synthetic with the rate of synthetic data misclassified as real to gain deeper insights.