I have an array, representing this kind of tables:
And I am trying to get a result through PCA, which Elements(e1,e2,e3) are similar to each other, which Concerns(c1,c2,c3) are similar to each other. To achieve this I'm using matplotlib and numpy:
var_grid = np.array(matrixAlternatives) #Create the PCA node and train it pcan = mdp.nodes.PCANode(output_dim=2, svd=True) pcar = pcan.execute(var_grid) fig = plt.figure() ax = fig.add_subplot(111) ax.plot(pcar[:, 0], pcar[:, 1], 'bo') ax.plot(pcan.v[:,0], pcan.v[:,1], 'ro') #eigenvectors: pcan.v
However I got a result like this:
As you can see, concerns are too near to each other, which makes it impossible to analyse.
pcar [[-54.84 -14.21], [-10.35 22.58], [ 65.19 -8.37]] eigenvectors: [[-0.05 0.96], [-0.54 -0.25], [ 0.84 -0.11]]
When I do the same analysis with Idiogrid tool, result is much better:
Elemnts are in the same position with my PCA(just mirrored), but the concerns are too much different. Their values:
con_1 0.19 0.98, con_2 0.98 -0.19, con_3 -1.00 0.00
ele_1 0.87 -0.53, ele_2 0.22 0.80, ele_3 -1.09 -0.27
What do you think I'm doing wrong?