Entropy testing and its application to testing Bayesian networks
–Neural Information Processing Systems
This paper studies the problem of \emph{entropy identity testing}: given sample access to a distribution $p$ and a fully described distribution $q$ (both are discrete distributions over the support of size $k$), and the promise that either $p = q$ or $ | H(p) - H(q) | \geqslant \varepsilon$, where $H(\cdot)$ denotes the Shannon entropy, a tester needs to distinguish between the two cases with high probability.
Neural Information Processing Systems
Dec-27-2025, 12:46:53 GMT
- Technology: