Results 31 to 40 of about 4,550,016 (283)

Linear Codes Constructed from Two Weakly Regular Plateaued Functions with Index (p − 1)/2

open access: yesEntropy
Linear codes are the most important family of codes in cryptography and coding theory. Some codes only have a few weights and are widely used in many areas, such as authentication codes, secret sharing schemes and strongly regular graphs.
Shudi Yang, Tonghui Zhang, Zheng-an Yao
doaj   +1 more source

EQUATING METHOD FOR LEARNING OUTCOMES OF ELEMENTARY SCHOOL/MADRASAH STUDENTS

open access: yesJISAE (Journal of Indonesian Student Assessment and Evaluation), 2022
This study aims to determine the method of equalizing a good score on a small number of items that are often found at the elementary/madrasah level. This research is a simulation study conducted by comparing capabilities in terms of three distributions ...
Deni Iriyadi
doaj   +1 more source

Observable Weight Distributions and Children's Individual Weight Assessment [PDF]

open access: yesObesity, 2010
Social networks theory suggests obesity is “contagious” within peer groups in that known friends highly influence weight. On the other hand, an alternative model suggests that observable weight distributions affect perception of one's own obesity level.
H Shelton, Brown   +4 more
openaire   +2 more sources

On the distribution of Low Hamming Weight products

open access: yesJournal of Inequalities and Applications, 2020
Jeffrey Hoffstein et al. (Discrete Appl. Math. 130:37–49, 2003) introduced the Low Hamming Weight products (LHWP) X = x 1 x 2 x 3 $X=x_{1}x_{2}x_{3}$ as random exponent of elements in a group or a ring to improve the operational efficiency, where each x ...
Jianghua Li, Qiao Li
doaj   +1 more source

Distribution of spectral weight in a system with disordered stripes

open access: yes, 2001
The ``band-structure'' of a disordered stripe array is computed and compared, at a qualitative level, to angle resolved photoemission experiments on the cuprate high temperature superconductors.
A. Ino   +25 more
core   +1 more source

EEG Functional Connection Analysis Based on the Weight Distribution of Convolutional Neural Network

open access: yesIEEE Access
Functional connections are commonly used when exploring the human brain, especially in brain data analysis. However, most of the studies concentrate on traditional statistical analysis.
Jinglong Wu   +5 more
doaj   +1 more source

Weighted distances in scale-free preferential attachment models

open access: yes, 2020
We study three preferential attachment models where the parameters are such that the asymptotic degree distribution has infinite variance. Every edge is equipped with a non-negative i.i.d. weight.
Alves C.   +9 more
core   +1 more source

Distributed Weighted Matching [PDF]

open access: yes, 2004
In this paper, we present fast and fully distributed algorithms for matching in weighted trees and general weighted graphs. The time complexity as well as the approximation ratio of the tree algorithm is constant. In particular, the approximation ratio is 4. For the general graph algorithm we prove a constant ratio bound of 5 and a polylogarithmic time
Mirjam Wattenhofer, Roger Wattenhofer
openaire   +1 more source

Rubio de Francia's extrapolation theory: estimates for the distribution function

open access: yes, 2010
Let $T$ be an arbitrary operator bounded from $L^{p_0}(w)$ into $L^{p_0, \infty}(w)$ for every weight $w$ in the Muckenhoupt class $A_{p_0}$. It is proved in this article that the distribution function of $Tf$ with respect to any weight $u$ can be ...
Carro, María J.   +2 more
core   +1 more source

A method of uniform weight distribution between the wheel driving gears

open access: yesTrudy Odesskogo Politehničeskogo Universiteta, 2014
The article deals with the problem of trailing weight distribution between wheel drivers and the tangent traction creating in the each gear’s contact zone to the supporting surface in full compliance with the wheel gear’s trailing weight.
Leonid M. Petrov, Oleksandr V. Lysyi
doaj   +1 more source

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