NeurIPS2022
Estimation of Entropy in Constant Space with Improved Sample Complexity
Maryam Aliakbarpour, Andrew McGregor, Jelani Nelson, Erik Waingarten
被引用 7 次
摘要
Recent work of Acharya et al. (NeurIPS 2019) showed how to estimate the entropy of a distribution over an alphabet of size up to additive error by streaming over i.i.d. samples and using only words of memory. In this work, we give a new constant memory scheme that reduces the sample complexity to . We conjecture that this is optimal up to factors.