You want to sort your eigenvalues by magnitude then pick the highest 1 or 2 values. Eigenvalues with a very small relative value can be considered for exclusion. You can then translate data values and using only the top 1 or 2 eigenvectors you'll get dimensions for plotting results. This will give a visual representation of the PCA split. Also check out scikit-learn for more on PCA. Precisions, recalls, F1-scores will tell you how well it works
Step 1: 3D Example
"For our simple example, where we are reducing a 3-dimensional feature space to a 2-dimensional feature subspace, we are combining the two eigenvectors with the highest eigenvalues to construct our d×kd×k-dimensional eigenvector matrix WW.
matrix_w = np.hstack((eig_pairs.reshape(3,1),
print('Matrix W:\n', matrix_w)
Step 2: 3D Example
In the last step, we use the 2×32×3-dimensional matrix WW that we just computed to transform our samples onto the new subspace via the equation
transformed = matrix_w.T.dot(all_samples)
assert transformed.shape == (2,40), "The matrix is not 2x40 dimensional."