How to plot decision boundary using ELM classifier for two class problem.

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uma
uma am 5 Dez. 2022
Beantwortet: Amith am 19 Aug. 2024
How to find decision boundary to classify two classes in Extreme learning machine classifier.please help

Antworten (1)

Amith
Amith am 19 Aug. 2024
Hi Uma,
To find and visualize the decision boundary for a two-class classficiation problem using Extreme Learning in MATLAB you can follow these steps:
Steps to Implement ELM and Plot Decision Boundary in MATLAB
  1. Prepare the Dataset: Use a dataset with two features for simplicity. You can use synthetic data or any suitable dataset.
  2. Implement the ELM: Implement the ELM by initializing the input weights and biases, computing the hidden layer output matrix, and calculating the output weights.
  3. Generate a Grid of Points: Create a grid of points covering the feature space to evaluate the classifier.
  4. Predict Class Labels: Use the trained ELM to predict class labels for each point in the grid.
  5. Plot the Decision Boundary: Visualize the decision boundary using contour plotting.
Below is an example MATLAB script to demonstrate these steps:
% Generate synthetic data
rng(1); % For reproducibility
n = 100;
X = [randn(n, 2) + 1; randn(n, 2) - 1];
y = [ones(n, 1); -ones(n, 1)];
% Standardize features
X = (X - mean(X)) ./ std(X);
% ELM Parameters
nHiddenUnits = 10;
% Initialize weights and biases
inputWeights = rand(size(X, 2), nHiddenUnits) * 2 - 1;
biases = rand(1, nHiddenUnits);
% Compute hidden layer output
H = 1 ./ (1 + exp(-(X * inputWeights + biases)));
% Compute output weights
outputWeights = pinv(H) * y;
% Create a grid of points for visualization
[xGrid, yGrid] = meshgrid(linspace(min(X(:,1))-1, max(X(:,1))+1, 100), ...
linspace(min(X(:,2))-1, max(X(:,2))+1, 100));
% Predict class labels for each point in the grid
gridPoints = [xGrid(:), yGrid(:)];
HGrid = 1 ./ (1 + exp(-(gridPoints * inputWeights + biases)));
predictions = HGrid * outputWeights;
% Reshape predictions to match the grid
Z = reshape(predictions, size(xGrid));
% Plot decision boundary and data points
figure;
contourf(xGrid, yGrid, Z, [0, 0], 'LineColor', 'k', 'LineWidth', 1.5);
hold on;
scatter(X(y == 1, 1), X(y == 1, 2), 'ro', 'filled');
scatter(X(y == -1, 1), X(y == -1, 2), 'bo', 'filled');
title('Decision Boundary of ELM');
xlabel('Feature 1');
ylabel('Feature 2');
legend('Decision Boundary', 'Class 1', 'Class -1');
axis tight;
hold off;
Hope this helps!

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