I'm trying to analyse a sparse dataset using sklearn LDA (but not only that one, I've also tried a personal implementation). The dataset has 14 columns and some varying number of columns which I've selected to run different experiments, keeping those with most variance.

```
X = dfplants.values
print(X.shape)
(14,15)
u,s,v = np.linalg.svd(X)
print(len(s))
y = dfplants_sup['tecnique'].values
lda = LDA(n_components=2, solver='svd', store_covariance=True)
X_lda=lda.fit_transform(X,y)
print("X_lda")
print(X_lda)
X_lda
[[-6.03602598]
[-6.14807425]
[-4.02479902]
[-5.85982518]
[-6.96663709]
[-5.93062031]
[-6.24874635]
[ 5.42840829]
[ 6.5065448 ]
[ 6.47761884]
[ 6.50027698]
[ 6.31051439]
[ 3.57171076]
[ 6.41965411]]
```

It doesn't matter if I use 2 or more components, or if I keep all of them or only two with the most variance, I always get 1 column as a result. Why I'm a getting only one column? What are the requirements to apply LDA?