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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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TL;DR: This work proves that the continuous relaxation of the mixed integer second order conic (MISOC) reformulation using perspective formulation is equivalent to that of the convex integer formulation proposed in recent work, and proposes to integrate the greedy algorithm with the randomized algorithm, which can greedily search the features from the nonzero subset identified by the continuous Relaxation of MISOC formulation.
Abstract: Sparse regression and variable selection for large-scale data have been rapidly developed in the past decades. This work focuses on sparse ridge regression, which enforces the sparsity by use of th...

44 citations


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

  • ...The result in (16) holds due to the Chernoff bound [13], i....

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Journal ArticleDOI
TL;DR: Efficient algorithms for the nearest neighbor problem defined in an n × n binary image are presented and it is shown that using a linear array with a reconfigurable pipelined bus system (LARPBS) of n2 processors, the nearest neighbour problem can be solved in O(loglogn) time.
Abstract: We present efficient algorithms for the nearest neighbor problem defined in an n × n binary image. We show that using a linear array with a reconfigurable pipelined bus system (LARPBS) of n2 processors, the nearest neighbor problem can be solved in O(loglogn) time, and using an LARPBS of n2+∊ processors, for any fixed constant ∊>0. the nearest neighbor problem can be solved in O(l) time. We also show that the nearest neighbor problem can be solved on an LARPBS of n2 processors in O(1) time with high probability.

43 citations

Journal ArticleDOI
Ketan Dalal1
TL;DR: It is shown that the expected number of layers of a convex hull onion for n uniformly and independently distributed points in a disk is Θ(n2/3), and that in general the bound is n2/(d+1) for points distributed in a d-dimensional ball.
Abstract: Iteratively computing and discarding a set of convex hulls creates a structure known as an "onion." In this paper, we show that the expected number of layers of a convex hull onion for n uniformly and independently distributed points in a disk is Θ(n2/3). Additionally, we show that in general the bound is Θ(n2/(d+1)) for points distributed in a d-dimensional ball. Further, we show that this bound holds more generally for any fixed, bounded, full-dimensional shape with a nonempty interior.

43 citations

Journal ArticleDOI
Satish Rao, Shuheng Zhou1
TL;DR: This work shows a polylogarithmic approximation algorithm for the undirected EDP problem in general graphs with a moderate restriction on graph connectivity, and extends previous techniques in that it applies to graphs with high diameters and asymptotically large minors.
Abstract: We study the edge disjoint paths (EDP) problem in undirected graphs: Given a graph $G$ with $n$ nodes and a set $\mathcal{T}$ of pairs of terminals, connect as many terminal pairs as possible using paths that are mutually edge disjoint. This leads to a variety of classic NP-complete problems, for which approximability is not well understood. We show a polylogarithmic approximation algorithm for the undirected EDP problem in general graphs with a moderate restriction on graph connectivity; we require the global minimum cut of $G$ to be $\Omega(\log^5n)$. Previously, constant or polylogarithmic approximation algorithms were known for trees with parallel edges, expanders, grids, grid-like graphs, and, most recently, even-degree planar graphs. These graphs either have special structure (e.g., they exclude minors) or have large numbers of short disjoint paths. Our algorithm extends previous techniques in that it applies to graphs with high diameters and asymptotically large minors.

43 citations


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

  • ...[14]) Let X be a sum of independent Bernoulli random variables with success probability p1, ....

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Journal ArticleDOI
TL;DR: In this article, the authors provide a bridge between the boxes and the grid-free approaches to the multifractal analysis of measures and obtain results for quasi-Bernoulli measures and statistically self-similar measures.
Abstract: Physicists usually compute dimensions by using boxes and they also do so when dealing with multifractals. Also in the study of some dynamical systems and multiplicative processes, boxes naturally appear. On the other hand, in geometric measure theory, it is preferred to perform computations which do not depend on a grid. This article provides a bridge between the boxes and the grid-free approaches to the multifractal analysis of measures. Results for quasi-Bernoulli measures and statistically self-similar measures are obtained. log diam(Qn(x)) when n goes to +1 (where B(x; r) stands for the ball of radius r centered at x and Qn(x) stands for the c-adic box of size c n which con- tains x). Of course the partition function is dened in terms of covers or packings by balls in the former case, by boxes in the latter case. It is usual to observe connections between these two approaches when possesses self-similarity properties and is supported by a regular enough Cantor set ((4, 9, 13, 34, 15, 16, 31, 1)). But there is no a priori reason why these two approaches should be connected in full generality. In this work, we give a condition ensuring that if a measure obeys the \box formal- ism", then it also obeys the other one. Our results apply on two families of measures supported by the full c-adic grid of (0; 1), namely the quasi-Bernoulli measures and the Mandelbrot measures. The so called \box formalism" is better explained in the abstract setting of trees. This is the matter of the next section. In Section 3, the Olsen multifractal formalism is recalled for the reader's con- venience. The main comparison theorem is stated and proven in Section 4. This is explained in the one dimensional case, for the sake of simplicity, but at the end of this section it is said how to deal with higher dimensions. Section 5 deals with quasi- Bernoulli measures, and Section 6 with the Mandelbrot multiplicative measures.

43 citations


Additional excerpts

  • ...Indeed, the stronger inequality [11] Dimξ E−τ ′ μ(q) ≤ τ ∗ μ(−τ ′ μ(q)), where Dimξ stands for the packing dimension (defined in [36]), is almost an instance of the Chernoff formula [12]....

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