3

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?

1 Answer 1

3

I don't think performing Random Forest classifier on the 3-dimensional input will be possible, but as an alternative way, you can use sentence embedding instead of word embedding. Therefore your input data will be 2-dimensional ((n_samples, n_features)) as this classifier expected.
There are many ways to get the sentence embedding vector, including Doc2Vec and SentenceBERT, but the most simple and commonly used method is to make an element-wise average over all the word embedding vectors.
In your provided example, the embedding length was considered as 3. Suppose that the sentence is "I like dogs". So the sentence embedding vector will be computed as follow:

I = [-0.5,0,1]
like = [5,2,3]
dogs = [1,2,3]
cats = [3,2,1]

# sentence: 'I like dogs'
sentence = [-0.5+5+1, 0+2+2, 1+3+3] / 3
         = [5.5, 4, 7] / 3
         = [1.8333, 1.3333, 2.3333]
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  • 1
    Do you have any references regarding that ? I struggle a bit with the same issue when training a neural network (e.g each feature is 100-dimensional)
    – CutePoison
    May 5, 2021 at 13:55
  • There is some good explanation about the vector averaging method in the third part of this tutorial. This code is also used the same method for the RandomForest classifier. But the neural networks shouldn't have any problem handling word embeddings. For example, you can handle these vectors using the Embedding Layer in Keras library. May 5, 2021 at 14:20

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