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# curve_fitting | |
##Problem 1 | |
###Function least_squares.m | |
```matlab | |
function [ a, fx, r2 ] = least_squares( Z, y ) | |
%Function calculates the coefficients for a best fit function with least | |
%squares techniques | |
% a = coeficients | |
% fx = line of best fit | |
% r2 = coefficient of determination | |
% evaluate coefficients for a polynomial of 3 degrees | |
a = Z\y; % evaluates constants for function | |
fx = Z*a; % evaluates function | |
Sr = sum((y-Z*a).^2); | |
r2 = 1-Sr/sum((y-mean(y)).^2); % gives r^2 value | |
end | |
``` | |
###Evaluated for case one yields | |
```matlab | |
Z = [x.^0, x, 1./x]; | |
>> [ a, fx, r2 ] = least_squares( Z, y ) | |
a = | |
0.3745 | |
0.9864 | |
0.8456 | |
fx = | |
2.2066 | |
2.7702 | |
3.6157 | |
4.5317 | |
5.4758 | |
r2 = | |
0.9996 | |
``` | |
###Evaluated for case two yields | |
```matlab | |
>> Z = [x.^0, x, x.^2, x.^3] | |
>> [ a, fx, r2 ] = least_squares( Z, y ) | |
a = | |
-11.4887 | |
7.1438 | |
-1.0412 | |
0.0467 | |
fx = | |
1.8321 | |
3.4145 | |
4.0347 | |
3.5087 | |
2.9227 | |
2.4947 | |
3.2330 | |
4.9595 | |
r2 = | |
0.8290 | |
``` | |
###Evaluated for case three yields | |
```matlab | |
>> Z = [exp(-1.5*x), exp(-.3*x),exp(-.05*x)]; | |
>> [ a, fx, r2 ] = least_squares( Z, y ) | |
a = | |
4.0046 | |
2.9213 | |
1.5647 | |
fx = | |
5.9321 | |
4.5461 | |
3.2184 | |
2.5789 | |
2.1709 | |
1.8726 | |
1.6425 | |
1.4605 | |
1.1940 | |
r2 = | |
0.9971 | |
``` | |
___ | |
##Problem 2 | |
###Function cost_logistic.m | |
``` matlab | |
function [J, grad] = cost_logistic(a, x, y) | |
% cost_logistic Compute cost and gradient for logistic regression | |
% J = cost_logistic(theta, X, y) computes the cost of using theta as the | |
% parameter for logistic regression and the gradient of the cost | |
% w.r.t. to the parameters. | |
% Initialize some useful values | |
N = length(y); % number of training examples | |
% You need to return the following variables correctly | |
J = 0; | |
grad = 0; | |
% ====================== YOUR CODE HERE ====================== | |
% Instructions: Compute the cost of a particular choice of a. | |
% Compute the partial derivatives and set grad to the partial | |
% derivatives of the cost w.r.t. each parameter in theta | |
t = a(1)+a(2).*x; | |
sigm = 1./(1+exp(-t)); | |
J = sum(-y.*log(sigm)- (1-y).*log(1-sigm)); | |
costFun = @ (a) sum(-y.*log((1./(1+exp(-(a(1)+a(2).*x)))))- (1-y).*log(1-(1./(1+exp(-(a(1)+a(2).*x)))))); | |
grad = (1/length(x))*sum((sigm - y).*t); | |
initial_a = [0 0]; | |
% Set options for fminunc | |
options = optimset('GradObj', 'on', 'MaxIter', 400); | |
% Run fminunc to obtain the optimal theta | |
% This function will return theta and the cost | |
[theta, cost] = fminunc(costFun, initial_a); | |
tt = theta(1)+theta(2).*x; | |
sigmm = 1./(1+exp(-tt)); | |
setdefaults | |
plot(x,y,'o', x, sigmm); | |
title('Best fit regression model') | |
xlabel('Temp (F)') | |
ylabel('Pass/Fail (0,1)') | |
% Note: grad should have the same dimensions as theta | |
% ============================================================= | |
end | |
``` | |
###Function evaluated | |
```matlab | |
>> [J, grad] = cost_logistic(a, x, y) | |
J = | |
115.5085 | |
grad = | |
5.0130 | |
``` | |
###Plot of best fit linear regression | |
![plot](https://github.uconn.edu/github-enterprise-assets/0000/1383/0000/0401/4264d71a-1eab-11e7-8fc4-445afe720517.jpg)! | |
#Problem 3 | |
The following function was created to evalaute problem 3 | |
```matlab | |
function sigma_z=boussinesq_lookup(q,a,b,z) | |
% function that determines stress under corner of an a by b rectangular platform | |
% z-meters below the platform. The calculated solutions are in the fmn data | |
% m=fmn(:,1) | |
% in column 2, fmn(:,2), n=1.2 | |
% in column 3, fmn(:,2), n=1.4 | |
% in column 4, fmn(:,2), n=1.6 | |
fmn= [0.1,0.02926,0.03007,0.03058 | |
0.2,0.05733,0.05894,0.05994 | |
0.3,0.08323,0.08561,0.08709 | |
0.4,0.10631,0.10941,0.11135 | |
0.5,0.12626,0.13003,0.13241 | |
0.6,0.14309,0.14749,0.15027 | |
0.7,0.15703,0.16199,0.16515 | |
0.8,0.16843,0.17389,0.17739]; | |
m=a/z; | |
n=b/z; | |
% find which n row to use | |
nn = [ 1.2 1.4 1.6 ]; | |
r_n = round(n,1); | |
n_loc = min(abs(nn - r_n)); | |
row_n = find( abs(nn - r_n) == n_loc)+1; % sets row for n | |
% find which m row to use | |
mm = fmn(:,1)'; | |
r_m = round(m,1); | |
m_loc = min(abs(mm - r_m)); | |
row_m = find( abs(mm - r_m) == m_loc); % sets row for m | |
m_values = fmn(row_m-2:row_m+1, 1); | |
n_values = fmn(row_m-2:row_m+1, row_n); | |
pcon = polyfit(m_values', n_values', 3); | |
x = m_values'; | |
func = @(x) pcon(4) + pcon(3)*x + pcon(2)*x.^2 + pcon(1)*x.^3; | |
y = func(x); | |
func(m); | |
sigma_z = q*func(m); | |
end | |
``` | |
##Spline Interpolation | |
```matlab | |
function sigma_z=boussinesq_spline(q,a,b,z) | |
% function that determines stress under corner of an a by b rectangular platform | |
% z-meters below the platform. The calculated solutions are in the fmn data | |
% m=fmn(:,1) | |
% in column 2, fmn(:,2), n=1.2 | |
% in column 3, fmn(:,2), n=1.4 | |
% in column 4, fmn(:,2), n=1.6 | |
fmn= [0.1,0.02926,0.03007,0.03058 | |
0.2,0.05733,0.05894,0.05994 | |
0.3,0.08323,0.08561,0.08709 | |
0.4,0.10631,0.10941,0.11135 | |
0.5,0.12626,0.13003,0.13241 | |
0.6,0.14309,0.14749,0.15027 | |
0.7,0.15703,0.16199,0.16515 | |
0.8,0.16843,0.17389,0.17739]; | |
m=a/z; | |
n=b/z; | |
% find which n row to use | |
nn = [ 1.2 1.4 1.6 ]; | |
r_n = round(n,1); | |
n_loc = min(abs(nn - r_n)); | |
row_n = find( abs(nn - r_n) == n_loc)+1; % sets row for n | |
% find which m row to use | |
mm = fmn(:,1)'; | |
r_m = round(m,1); | |
m_loc = min(abs(mm - r_m)); | |
row_m = find( abs(mm - r_m) == m_loc); % sets row for m | |
m_values = fmn(row_m-2:row_m+1, 1); | |
n_values = fmn(row_m-2:row_m+1, row_n); | |
pcon = interp3(m_values', n_values', 'cubic'); | |
x = m_values'; | |
func = @(x) pcon(4) + pcon(3)*x + pcon(2)*x.^2 + pcon(1)*x.^3; | |
y = func(x); | |
func(m); | |
plot(x,y) | |
sigma_z = q*func(m); | |
end | |
``` | |
#END | |