In statistical inference problems, we wish to obtain lower bounds on the minimax risk, that is to bound the performance of any possible estimator. A standard technique to obtain risk lower bounds involves the use of Fano's inequality. In an information-theoretic setting, it is known that Fano's inequality typically does not give a sharp converse result (error lower bound) for channel coding problems. Moreover, recent work has shown that an argument based on binary hypothesis testing gives tighter results. We adapt this technique to the statistical setting, and argue that Fano's inequality can always be replaced by this approach to obtain tighter lower bounds that can be easily computed and are asymptotically sharp. We illustrate our techniq...
Lower bounds for the average probability of error of estimating a hidden variable X given an observ...
Lower bounds for the average probability of error of estimating a hidden variable X given an observ...
Two alternative exact characterizations of the minimum error probability of Bayesian M-ary hypothesi...
In statistical inference problems, we wish to obtain lower bounds on the minimax risk, that is to bo...
In statistical inference problems, we wish to obtain lower bounds on the minimax risk, that is to b...
Abstract—Lower bounds involving -divergences between the underlying probability measures are proved ...
Abstract—The inverse relation between mutual information (MI) and Bayesian error is sharpened by der...
Classically, the performance of estimators in statistical learning problems is measured in terms of ...
In recent years, tools from information theory have played an increasingly prevalent role in statist...
This paper compares three methods for producing lower bounds on the minimax risk under quadratic los...
This paper compares three methods for producing lower bounds on the minimax risk under quadratic los...
Two alternative exact characterizations of the minimum error probability of Bayesian M-ary hypothesi...
Two alternative exact characterizations of the minimum error probability of Bayesian M-ary hypothesi...
This paper compares three methods for producing lower bounds on the minimax risk under quadratic los...
Lower bounds for the average probability of error of estimating a hidden variable X given an observ...
Lower bounds for the average probability of error of estimating a hidden variable X given an observ...
Lower bounds for the average probability of error of estimating a hidden variable X given an observ...
Two alternative exact characterizations of the minimum error probability of Bayesian M-ary hypothesi...
In statistical inference problems, we wish to obtain lower bounds on the minimax risk, that is to bo...
In statistical inference problems, we wish to obtain lower bounds on the minimax risk, that is to b...
Abstract—Lower bounds involving -divergences between the underlying probability measures are proved ...
Abstract—The inverse relation between mutual information (MI) and Bayesian error is sharpened by der...
Classically, the performance of estimators in statistical learning problems is measured in terms of ...
In recent years, tools from information theory have played an increasingly prevalent role in statist...
This paper compares three methods for producing lower bounds on the minimax risk under quadratic los...
This paper compares three methods for producing lower bounds on the minimax risk under quadratic los...
Two alternative exact characterizations of the minimum error probability of Bayesian M-ary hypothesi...
Two alternative exact characterizations of the minimum error probability of Bayesian M-ary hypothesi...
This paper compares three methods for producing lower bounds on the minimax risk under quadratic los...
Lower bounds for the average probability of error of estimating a hidden variable X given an observ...
Lower bounds for the average probability of error of estimating a hidden variable X given an observ...
Lower bounds for the average probability of error of estimating a hidden variable X given an observ...
Two alternative exact characterizations of the minimum error probability of Bayesian M-ary hypothesi...