I'm trying really hard to do a Gaussian Mixture with sklearn but I think I'm missing something because it definitively doesn't work.
My original datas look like this:
Genotype LogRatio Strength AB 0.392805 10.625016 AA 1.922468 10.765716 AB 0.22074 10.405445 BB -0.059783 10.625016
I want to do a Gaussian Mixture with 3 components = 3 genotypes (AA|AB|BB). I know the weight of each genotype, the mean of Log Ratio for each genotype and the mean of Strength for each genotype.
wgts = [0.8,0.19,0.01] # weight of AA,AB,BB means = [[-0.5,9],[0.5,9],[1.5,9]] # mean(LogRatio), mean(Strenght) for AA,AB,BB
I keep columns LogRatio and Strength and create a NumPy array.
datas = [[ 0.392805 10.625016] [ 1.922468 10.765716] [ 0.22074 10.405445] [ -0.059783 9.798655]]
Then I tested the function GaussianMixture from mixture from sklearn v0.18 and tried also the function GaussianMixtureModel from sklearn v0.17 (I still don't see the difference and don't know which one to use).
gmm = mixture.GMM(n_components=3) OR gmm = mixture.GaussianMixture(n_components=3) gmm.fit(datas) colors = ['r' if i==0 else 'b' if i==1 else 'g' for i in gmm.predict(datas)] ax = plt.gca() ax.scatter(datas[:,0], datas[:,1], c=colors, alpha=0.8) plt.show()
This is what I obtain and this is a good result but it changes every time because initial parameters are calculated differently each run
I would like to initialize my parameters in the gaussianMixture or GMM function but I don't understand how I have to formate my datas: (