here is myLinReg needed to solve this problem  function [a,E] = myLinReg(x,y) % [a,E] = myLinReg(x,y) % calculate the linear least squares regression to data given in x,y % Input % x: column vector of measured x data to fit % y: column vector of measured y data to fit % Output % a: vector of coefficients for the linear fit y = a(1)+a(2)*x % E: error of the fit = sum of the residual square   % define a as a 2 entry vector a = zeros(2,1);   n = length(x); % determine number of data points if n ~= length(y)     fprintf ('Error: the length of data vectors x and y must be the same\n')     a(:) = realmax(); E = realmax(); % set a and E to real max     return end   % calculate and store sum terms Sx = sum(x); Sy = sum(y); Sxx = sum(x.*x); Sxy = sum(x.*y);   % Calculate linear equation coefficients a(1) = (Sxx*Sy-Sxy*Sx)/(n*Sxx-Sx*Sx); % a0 coefficient a(2) = (n*Sxy-Sx*Sy)/(n*Sxx-Sx*Sx); % a1 coefficient   % Calculate the error of the fit E = sum((y-(a(2)*x+a(1))).^2);   end

Database System Concepts
7th Edition
ISBN:9780078022159
Author:Abraham Silberschatz Professor, Henry F. Korth, S. Sudarshan
Publisher:Abraham Silberschatz Professor, Henry F. Korth, S. Sudarshan
Chapter1: Introduction
Section: Chapter Questions
Problem 1PE
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here is myLinReg needed to solve this problem 

function [a,E] = myLinReg(x,y)
% [a,E] = myLinReg(x,y)
% calculate the linear least squares regression to data given in x,y
% Input
% x: column vector of measured x data to fit
% y: column vector of measured y data to fit
% Output
% a: vector of coefficients for the linear fit y = a(1)+a(2)*x
% E: error of the fit = sum of the residual square
 
% define a as a 2 entry vector
a = zeros(2,1);
 
n = length(x); % determine number of data points
if n ~= length(y)
    fprintf ('Error: the length of data vectors x and y must be the same\n')
    a(:) = realmax(); E = realmax(); % set a and E to real max
    return
end
 
% calculate and store sum terms
Sx = sum(x); Sy = sum(y);
Sxx = sum(x.*x); Sxy = sum(x.*y);
 
% Calculate linear equation coefficients
a(1) = (Sxx*Sy-Sxy*Sx)/(n*Sxx-Sx*Sx); % a0 coefficient
a(2) = (n*Sxy-Sx*Sy)/(n*Sxx-Sx*Sx); % a1 coefficient
 
% Calculate the error of the fit
E = sum((y-(a(2)*x+a(1))).^2);
 
end
Develop a Matlab function myFit that finds the best fit of the function y(x) = 1/(ma³ + b) to given data points
(i, y₁) using least squares regression. The input arguments to the function must be the two column vectors x and
y that contain the values of the data points. The output of the function shall be the two scalars m and b. To solve
the required linear least squares regression, you must use the function call [a,~] my LinReg (...)
and make a a global variable inside myFit by including global a; as the first code line
=
in myFit.
Transcribed Image Text:Develop a Matlab function myFit that finds the best fit of the function y(x) = 1/(ma³ + b) to given data points (i, y₁) using least squares regression. The input arguments to the function must be the two column vectors x and y that contain the values of the data points. The output of the function shall be the two scalars m and b. To solve the required linear least squares regression, you must use the function call [a,~] my LinReg (...) and make a a global variable inside myFit by including global a; as the first code line = in myFit.
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