When we have a random forest, we have n-inputs and m-features e.g for 3 observations and 2 features we have
X = [[1,23],[0,-12],[-0.5,29]]
y = [1,0,1]
and we can train a RandomForest with
from sklearn.ensemble import RandomForestClassifier
model = RandomForest()
model.fit(X,y)
If I have made a word-embedding using, say, a 100-dimensional vector, how do we create the X
matrice, where each input is a sentence?
Say we have the following 3-dimensional embedding of the words ["I","like","dogs","cats"]
:
I = [-0.5,0,1]
like = [5,2,3]
dogs = [1,2,3]
cats = [3,2,1]
then the dataset ["I like dogs","I like cats"] would be
X = [
[[-0.5,0,1], [5,2,3], [1,2,3]],
[[-0.5,0,1], [5,2,3], [3,2,1]]
]
y = ["dog-lover","cat-lover"]
which a RF naturally cannot train thus giving the erropr ValueError: Found array with dim 3. Estimator expected <= 2.
Apart from RF might not be suitable for NLP - is there a way to do so?