代码搜索:linear

找到约 10,000 项符合「linear」的源代码

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www.eeworm.com/read/262216/11601075

m linear_array.m

%This program print pattern for linear Array (uniform) Antenna by giing %N,alfa,d %and the wavelength you work with %if you want full pattern maultiply this pattern by any Antenna pattern %Have a
www.eeworm.com/read/158037/11648210

m linear_regression.m

function [muY, SigmaY, weightsY] = linear_regression(X, Y, varargin) % LINEAR_REGRESSION Fit params for P(Y|X) = N(Y; W X + mu, Sigma) % % X(:, t) is the t'th input example % Y(:, t) is the t't
www.eeworm.com/read/157554/11690552

h icc_linear.h

/* * Copyright 2003 by Texas Instruments Incorporated. * All rights reserved. Property of Texas Instruments Incorporated. * Restricted rights to use, duplicate or disclose this code are *
www.eeworm.com/read/157549/11691067

h icc_linear.h

/* * Copyright 2003 by Texas Instruments Incorporated. * All rights reserved. Property of Texas Instruments Incorporated. * Restricted rights to use, duplicate or disclose this code are *
www.eeworm.com/read/346989/11707273

h icc_linear.h

/* * Copyright 2003 by Texas Instruments Incorporated. * All rights reserved. Property of Texas Instruments Incorporated. * Restricted rights to use, duplicate or disclose this code are *
www.eeworm.com/read/346988/11707880

h icc_linear.h

/* * Copyright 2003 by Texas Instruments Incorporated. * All rights reserved. Property of Texas Instruments Incorporated. * Restricted rights to use, duplicate or disclose this code are *
www.eeworm.com/read/157172/11735103

h icc_linear.h

/* * Copyright 2002 by Texas Instruments Incorporated. * All rights reserved. Property of Texas Instruments Incorporated. * Restricted rights to use, duplicate or disclose this code are *
www.eeworm.com/read/156528/11795100

wav x_linear.wav

www.eeworm.com/read/156528/11795142

wav x_linear.wav

www.eeworm.com/read/259241/11812430

m# #linear_regression.m#

function [muY, SigmaY, weightsY] = linear_regression(X, Y, varargin) % LINEAR_REGRESSION Fit params for P(Y|X) = N(Y; W X + mu, Sigma) % % X(:, t) is the t'th input example % Y(:, t) is the t'th ou