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Journal ArticleDOI

A Measure of Asymptotic Efficiency for Tests of a Hypothesis Based on the sum of Observations

01 Dec 1952-Annals of Mathematical Statistics (Institute of Mathematical Statistics)-Vol. 23, Iss: 4, pp 493-507
TL;DR: In this paper, it was shown that the likelihood ratio test for fixed sample size can be reduced to this form, and that for large samples, a sample of size $n$ with the first test will give about the same probabilities of error as a sample with the second test.
Abstract: In many cases an optimum or computationally convenient test of a simple hypothesis $H_0$ against a simple alternative $H_1$ may be given in the following form. Reject $H_0$ if $S_n = \sum^n_{j=1} X_j \leqq k,$ where $X_1, X_2, \cdots, X_n$ are $n$ independent observations of a chance variable $X$ whose distribution depends on the true hypothesis and where $k$ is some appropriate number. In particular the likelihood ratio test for fixed sample size can be reduced to this form. It is shown that with each test of the above form there is associated an index $\rho$. If $\rho_1$ and $\rho_2$ are the indices corresponding to two alternative tests $e = \log \rho_1/\log \rho_2$ measures the relative efficiency of these tests in the following sense. For large samples, a sample of size $n$ with the first test will give about the same probabilities of error as a sample of size $en$ with the second test. To obtain the above result, use is made of the fact that $P(S_n \leqq na)$ behaves roughly like $m^n$ where $m$ is the minimum value assumed by the moment generating function of $X - a$. It is shown that if $H_0$ and $H_1$ specify probability distributions of $X$ which are very close to each other, one may approximate $\rho$ by assuming that $X$ is normally distributed.
Citations
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Journal ArticleDOI
24 Jun 1991
TL;DR: Some extensions that allow new estimating and bounding techniques for certain sequences of random variables controlled by a large deviation principle are given.
Abstract: Some extensions that allow new estimating and bounding techniques for certain sequences of random variables controlled by a large deviation principle are given. These results can be thought of as generalizations and extensions of the Chernoff bound used in communications theory. >

28 citations


Cites background from "A Measure of Asymptotic Efficiency ..."

  • ...Chemoff's original paper [3] was concemed with the asymptotic discemibility of two i.i.d. sequences of random variables....

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Journal ArticleDOI
TL;DR: In this article, the asymptotic probability of error for quantization in maximum-likelihood tests is analyzed, where quantizers with large numbers of levels generated from a companding function are assumed.
Abstract: The asymptotic probability of error for quantization in maximum-likelihood tests is analyzed. The authors assume quantizers with large numbers of levels generated from a companding function. A theorem that relates the companding function to the asymptotic probability of error is proved. The companding function is then optimized. >

28 citations

Journal ArticleDOI
TL;DR: This paper investigates the usefulness of this starlike cluster state and proposes a theoretically extensible quantum digital signature scheme that can be theoretically generalized to more than three participants and gives a security proof for the proposed scheme against repudiation and forgery.
Abstract: Chen et al. (Phys Rev A 73:012303, 2006) constructed this "starlike cluster" state, which involves one qubit located at the center and n neighboring two-qubit arms. This genuine entangled state has been used for the construction of 2D and 3D cluster states, topological one-way computation, and dynamical quantum secret sharing. In this paper, we investigate the usefulness of this starlike cluster state and propose a theoretically extensible quantum digital signature scheme. The proposed scheme can be theoretically generalized to more than three participants. Moreover, it retains the merits of no requirements such as authenticated quantum channels and long-term quantum memory. We also give a security proof for the proposed scheme against repudiation and forgery.

28 citations


Cites background from "A Measure of Asymptotic Efficiency ..."

  • ...By exploiting the Chernoff bound [28], the probability of Bob2 rejecting a valid message can be given by...

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  • ...By exploiting the Chernoff bound [28], the probability of Bob1 accepting a valid message can be given by...

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  • ...By exploiting the Chernoff bound [28], the probability of Bob2 accepting a forged message can be given by...

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Posted Content
TL;DR: The problem of estimating the probability of error in multi-hypothesis testing when MAP criterion is used and a lower bound on equivocation valid for most random codes over memoryless channels is proved.
Abstract: We consider the problem of estimating the probability of error in multi-hypothesis testing when MAP criterion is used. This probability, which is also known as the Bayes risk is an important measure in many communication and information theory problems. In general, the exact Bayes risk can be difficult to obtain. Many upper and lower bounds are known in literature. One such upper bound is the equivocation bound due to R\'enyi which is of great philosophical interest because it connects the Bayes risk to conditional entropy. Here we give a simple derivation for an improved equivocation bound. We then give some typical examples of problems where these bounds can be of use. We first consider a binary hypothesis testing problem for which the exact Bayes risk is difficult to derive. In such problems bounds are of interest. Furthermore using the bounds on Bayes risk derived in the paper and a random coding argument, we prove a lower bound on equivocation valid for most random codes over memoryless channels.

28 citations

Proceedings Article
18 Aug 2001
TL;DR: This paper will present a simple but powerful new technique that uses the existence of small sized equitable graph colorings to prove sharp Chernoff-Hoeffding type concentration results for sums of random variables with dependence.
Abstract: Chernoff-Hoeffding bounds are sharp tail probability bounds for sums of bounded independent random variables. Often we cannot avoid dependence among random variables involved in the sum. In some cases the theory of martingales has been used to obtain sharp bounds when there is a limited amount of dependence. This paper will present a simple but powerful new technique that uses the existence of small sized equitable graph colorings to prove sharp Chernoff-Hoeffding type concentration results for sums of random variables with dependence. This technique also allows us to focus on the dependency structure of the random variables and in cases where the dependency structure is a tree or an outerplanar graph, it allows us to derive bounds almost as sharp as those obtainable had the random variables been mutually independent. This technique connects seemingly unrelated topics: extremal graph theory and concentration inequalities. The technique also motivates several open questions in equitable graph colorings, positive answers for which will lead to surprisingly strong Chernoff-Hoeffding type bounds.

28 citations


Cites methods from "A Measure of Asymptotic Efficiency ..."

  • ...In a seminal 1952 paper, Chernoff [ 3 ] introduced a technique that gave sharp upper bounds on the tails of the distribution of the sum of binary independent random variables....

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References
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