Questions tagged [word2vec]

This tool provides an efficient implementation of the continuous bag-of-words and skip-gram architectures for computing vector representations of words. These representations can be subsequently used in many natural language processing applications and for further research.

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how to get best results in Doc2vec

As I came to know we need a large dataset to get results so I found a 50k plus abstracts dataset to check. My Usecase is to find the most similar documents against the target document semantically. ...
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Build vocab in doc2vec

I have a list of abstracts and articles approx 500 in csv each paragraph contains approx 800 to 1000 words whenever I build vocab and print with words giving none and how I can improve results? ...
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Extract CBOW embeddings - pytorch

I am trying to train word embeddings from scratch. I decided to start out with basics and chose CBOW arch. from the word2vec paper. Here are the steps I used based on my understanding of the same (...
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How to convert several-hot encoding to dence vector?

Now I am doing an NLP experiment. What I am thinking of is very similar to Word2Vec. I think my way must already exist. Maybe there is out-of-the-box code. But I don't know where to find. Word2Vec's ...
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Using Word2Vec for word embedding of sentences

I am trying to create an emotion recognition model and for that I am using Word2Vec. I have a tokenized pandas data frame x_train['Utterance'] and I have used model = gensim.models.Word2Vec(x_train['...
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Gensim 4.2.0 downloader function is missing

I'm using the Gensim package. However, when I want to load the word2vec model, the gensim.downloader function seems not to exist. w2v = gensim.downloader.load('word2vec-google-news-300') Got error ...
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Transformers (Attention is all you need) with Word2Vec or GloVe?

I am new to NLP and i am confused about the embedding. Is it possible, if i already have trained GloVe embeddings / or Word2Vec embeddings and send these into Transformer? Or does the Transformer ...
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Pre-processing of sentences using word2vec for an emotion recognition model

I have a data set of sentences belonging to the tv series Friends. I created a pandas dataframe with a column for the sentences and other for the labeled emotions. After the usual pre-processing steps ...
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ValueError: string size must be a multiple of element size while implementing Word2Vec

I am trying to implement Word2Vec but I'm getting this error: ValueError: string size must be a multiple of element size This is the code: from gensim.models.keyedvectors import KeyedVectors ...
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Word2Vec.load giving UnpicklingError: could not find MARK and can't resave?

I am trying to load my pretrained Word2Vec model. Up until yesterday, it was working fine. Now, I am getting the error UnpicklingError: could not find MARK. I saw a similar post and the person just ...
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Gensim word2vec model with unordered sentences

Hello I'm trying to tune word2vec for finding related categories on a large set of categories list. My main problem compare to natural language is that my categories list are not ordered in a logic ...
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Create a list of lists on python

I am doing an emotion recognition model resorting to svm and word2vec. My train data x_train and test data x_test sets are in pandas data frame and both of them are tokenized. I created a word2vec ...
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Sentiment analysis on tweets not working due to KeyError

I've collected tweets from the Twitter API and I'm trying to get my sentiment analyzer to give each tweet a sentiment score. The problem is when I run a string through the sentiment analyzer function, ...
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How to display similarity values among certain nodes in a cartesian plane

I performed similarity between some words through word2Vec in python. Now, I would like to display these specific nodes in a cartesian plane. Could you help me? Have you some suggestion about python ...
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What do weights in the neural network Word2vec actually measure?

I've been hearing a lot about the neural network Word2vec, which is able to solve literary analogies with respect to literary context. People often describe the weights as trained bias put in place by ...
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Get most similar words for matrix of word vectors

So I computed a matrix of word vectors manually using keras which looks like this: >>> word_embeddings 0 1 2 3 movie 0.007964 0.004251 -0....
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Word embedding - the meaning of rows and columns in embedded matrix

I am learning word embedding. The resource that I went through was link -Word embeddings I am not able to understand the above image. I know, the values in each column represent the features of a ...
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What is the meaning of size(embedding_model)?

I want to be sure I understand correctly: Using the length of embedding model means number of different tokens it contains? i.e: from gensim import downloader embedding_model = downloader.load('glove-...
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Using a Word2Vec Model to Extract Data

I've used gensim Word2Vec to learn the embedding of monetary amounts and other numeric data in bank transaction memos. The goal is to use this to be able to extract these amounts and currencies from ...
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Low performance of Word2vec for small phrases

I am working on a course project where I have to use word2vec and glove to predict book author given a book title. My corpus consists of 1.1M book names from different websites..many of these names ...
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paragraph2vec with more then 1000 words

In the documentation of paragraph2vec only documents with less than 1000 words should be used. However, if I train a model with a corpus that contained documents with more than 1000 words, I do not ...
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How do I use the word2vec model that I trained?

I am trying to make a basic sentiment analysis program. Right now, I have a trained and saved word2vec model from a database of tweets, similarly to the example provided in https://www.kaggle.com/code/...
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Word2Vec with negative sampling python implementation

I'm trying to implement word2vec with negative sampling in python almost from scratch and quite new in neural networks and faced some issues. Would be very appreciate for any help. So, I wrote simple ...
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subsampling formula skipgram NLP

I'm studying how to implement a Skip-Gram model using Pytorch, I follow this tutorial, in the subsampling part the author used this formula: import random import math def subsample_prob(word, t=1e-3):...
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How to identify the similar words using the word2vec

input: I have a set of words(N) & input sentence problem statement: the sentence is dynamic, the user can give any sentence related to one business domain. we have to map the input sentence tokens ...
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What is the ideal "size" of the vector for each word in Word2Vec?

I have a dataset of over 1 million rows. Each row has 40 token words. Based on these tokens, a classification is made with a neural network. The vocabulary is 20,000 unique words. It is a binary ...
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'MeanEmbeddingVectorizer' object has no attribute 'transform'

Hello i'm working with text classification. I've a dataset with 2 columns one made of text and the other one is the label. Since i'm a beginner i'm following step by step a tutorial on W2vec trying to ...
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Is it possible to extract the matrices WI and WO from blazingtext word2vec?

Similar to the question linked below, I would like to access the input and output matricies WI and WO. However, I am using the Blazingtext implementation of Word2Vec. After fitting the model.tar.gz ...
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Word2vec is not getting better with the number of epoch increasing

Running this code give me back loss values that cycle not really decreasing. Could you explain me why ? from gensim.test.utils import common_texts, get_tmpfile from gensim.models import Word2Vec from ...
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Does it exist a word2vec model in french?

Is there a pre-trained word2vec model in french language ? The must would be to get it with an api that let me finetune it easily. I was thinking of gensim but can't find such a model in french ...
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Genism Pretraind Word2vec makes my deep learning model diverge

I am trying to get genism's pretrained word2vec vectors so that I can use them as weights in my embedding layer to train a network for sentiment analysis . The problem is that when I get this vectors ...
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EOFError: unexpected end of input; is count incorrect or file otherwise damaged? Don't know how to fix

I am having this issue with my code when trying to run this code segment in Jupyter Notebook, can anyone give me an idea as to how to fix it? I am trying to use the word2vec continuous bag model, and ...
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adding max_len to a 2D array to become 3D array

I have text features with dimension 2D (1096,100) I need to combine my text feature with my audio feature where the text feature needs to be in 3D. Shape should be (1096, 50, 100), where 50 is ...
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Out of memory exception with FastText model

This is API I am using: https://radimrehurek.com/gensim/models/fasttext.html How I create model: model = FastText(vector_size=300, max_vocab_size=100_000, window=5, min_count=20) How I load ...
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How to convert small dataset into word embeddings instead of one-hot encoding?

I have a dataset of 33 words that are a mix of verbs and nouns, for eg. father, sing, etc. I have tried converting them to 1-hot encoding but for my use case, it has been suggested to look into ...
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How to use TF-IDF+SVM, Word2Vec and BERT for text classification?

At present, I am using TF-IDF+SVM/logistic regression for text classification. I want to replace TF-IDF with Word2Vec, use Word2Vec to train word vectors, and then use SVM for classification. In ...
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Word2Vec - recreating Keras Embedding layer using only Dense

For educational purposes I'm trying to build Keras embedding layer using only Dense layers to proof myself that I can understand it. I'm building it base on word2vec with improvements meaning negative ...
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Gensim- KeyError: 'word not in vocabulary'

I am trying to achieve something similar in calculating product similarity used in this example. how-to-build-recommendation-system-word2vec-python/ I have a dictionary where the key is the item_id ...
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Using BERT to extract most similar words instead of word2vec for labeling functions

I am fairly new to BERT, and I wanted to test both approaches of using word2vec and BERT to extract most_similar words to a given word to pattern match in my labeling functions I am currently using ...
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How to handle KeyError(f"Key '{key}' not present") wor2vec with gensim

I have build a model with gensim library and am trying to get the vector of word that not present in the vocabulary but i have an error, and i want to handle this error with the best i way. If i can ...
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knn search query using python and elasticsearch

I try to do this query with elasticsearch python client : curl -X GET "localhost:9200/articles/_knn_search" -H 'Content-Type: application/json' -d ' { "knn": { "field&...
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Skipgram probabilities with H2o.ai using R

I am trying to create skipgram probabilities using H2o.ai with the goal of predicting next word / surrounding word probabilities in a large corpus of medical ICD10 diagnoses e.g., " D126 K5730 ...
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How to calculate cosine similarity of Wordembeddings

I have a list of word vectors. How can I calculate the cosine similarity based on skill_id? I am new to word2vec and confused about how to apply sklearn similarity. I would like to give a description ...
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EOFError when converting gensim word2vec to binary format

I have a pretrained embeddings with word2vec format in txt. I loaded it and then saved it to .bin. But I cannot load this embeddings as an EOFError: unexpected end of input; is count incorrect or file ...
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Sentence Transformers Using BOW?

I have a collection of terms that appear or are somehow related to web pages (e.g. keywords from the HTML tags). These are not sentences, they are just a collection of keywords, words in a title etc. ...
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Compute sentence similarity between predicted sentence and a list of sentences(Using TDIDF)

i am trying to find the a method that uses TDIDF to see how 'new' a predicted sentence is compared to the list it was generated from. So for example: New sent. = "Hello world" Then i have a ...
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How to create word embedding using Word2Vec on Python?

I have seen many tutorials online on how to use Word2Vec (gensim). Most tutorials are showing on how to find the .most_similar word or similarity between two words. But, how if I have text data X and ...
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Word2vec build vocab adds TM to words

I'm trying to make convert my textdata to vectors. I would like to transform the word ultraram to a vector. I added the word to the model using model.build_vocab, but only ultraramTM is added. What ...
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How to speed up Word2Vec's initial vocabulary scan for massive data?

I now have a massive data corpus dataset, it has about 11 billion sentences, each sentence has about 10 words, divided into more than 12,000 files ending with .txt.gz. I wish to Skip--Gram it with ...
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Managing data drift when using w2vec embeddings on VertexAI

So I am looking into moving my models from GCP's AI Platform to Vertex AI, my main motivation for it being the fact that Vertex AI has automatic email notifications when your data skews or drifts (...
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