How to compare sentence similarities using embeddings from BERT

You can use the [CLS] token as a representation for the entire sequence. This token is typically prepended to your sentence during the preprocessing step. This token that is typically used for classification tasks (see figure 2 and paragraph 3.2 in the BERT paper).

It is the very first token of the embedding.

Alternatively you can take the average vector of the sequence (like you say over the first(?) axis), which can yield better results according to the huggingface documentation (3rd tip).

Note that BERT was not designed for sentence similarity using the cosine distance, though in my experience it does yield decent results.


In addition to an already great accepted answer, I want to point you to sentence-BERT, which discusses the similarity aspect and implications of specific metrics (like cosine similarity) in greater detail. They also have a very convenient implementation online. The main advantage here is that they seemingly gain a lot of processing speed compared to a "naive" sentence embedding comparison, but I am not familiar enough with the implementation itself.

Importantly, there is also generally a more fine-grained distinction in what kind of similarity you want to look at. Specifically for that, there is also a great discussion in one of the task papers from SemEval 2014 (SICK dataset), which goes into more detail about this. From your task description, I am assuming that you are already using data from one of the later SemEval tasks, which also extended this to multilingual similarity.


You should NOT use BERT's output as sentence embeddings for semantic similarity. BERT is not pretrained for semantic similarity, which will result in poor results, even worse than simple Glove Embeddings. See below a comment from Jacob Devlin (first author in BERT's paper) and a piece from the Sentence-BERT paper, which discusses in detail sentence embeddings.

Jacob Devlin's comment: I'm not sure what these vectors are, since BERT does not generate meaningful sentence vectors. It seems that this is is doing average pooling over the word tokens to get a sentence vector, but we never suggested that this will generate meaningful sentence representations. And even if they are decent representations when fed into a DNN trained for a downstream task, it doesn't mean that they will be meaningful in terms of cosine distance. (Since cosine distance is a linear space where all dimensions are weighted equally). (https://github.com/google-research/bert/issues/164#issuecomment-441324222)

From Sentence-BERT paper: The results show that directly using the output of BERT leads to rather poor performances. Averaging the BERT embeddings achieves an average correlation of only 54.81, and using the CLS token output only achieves an average correlation of 29.19. Both are worse than computing average GloVe embeddings. (https://arxiv.org/pdf/1908.10084.pdf)

You should use instead a model pre-trained specifically for sentence similarity, such as Sentence-BERT. Sentence-BERT and several other pretrained models for sentence similarity are available in the sentence-transformers library (https://www.sbert.net/docs/pretrained_models.html), which is fully compatible with the amazing HuggingFace transformers library. With these libraries, you can obtain sentence embeddings in just a line of code.


As a complement to dennlinger's answer, I'll add a code example from https://www.sbert.net/docs/usage/semantic_textual_similarity.html to compare sentence similarities using embeddings from BERT:

from sentence_transformers import SentenceTransformer, util
model = SentenceTransformer('paraphrase-MiniLM-L12-v2')

# Two lists of sentences
sentences1 = ['The cat sits outside',
             'A man is playing guitar',
             'The new movie is awesome']

sentences2 = ['The dog plays in the garden',
              'A woman watches TV',
              'The new movie is so great']

#Compute embedding for both lists
embeddings1 = model.encode(sentences1, convert_to_tensor=True)
embeddings2 = model.encode(sentences2, convert_to_tensor=True)

#Compute cosine-similarits
cosine_scores = util.pytorch_cos_sim(embeddings1, embeddings2)

#Output the pairs with their score
for i in range(len(sentences1)):
    print("{} \t\t {} \t\t Score: {:.4f}".format(sentences1[i], sentences2[i], cosine_scores[i][i]))

The library contains the state-of-the-art sentence embedding models.

See https://stackoverflow.com/a/68728666/395857 to perform sentence clustering.