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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Words-document embedding similarity [closed]

Can I use word and document embeddings (e.g., from Doc2Vec as implemented by the Gensim library) to find which words in a document are most representative of that document? This is a question about ...
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Load word2vec model that is in .tar format

I want to load a previously trained word2vec model into gensim. The trouble is the file format. It is not a .bin file format but a .tar file. It is the model / file deu-ch_web-public_2019_1M.tar.gz ...
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How do I split words effectively through TextVectorization function?

Here is the custom_standardize function I'm using for my task. def custom_standardization(input_data): # Lowercase the text and remove punctuation stop_words = set(stopwords.words('...
Sreeharsha Kotta's user avatar
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How to Export Gensim Word2Vec Model with Ngram Weights for DL4J?

I'm quite new to nlp. I'm trying to use a model trained with gensim in dl4j. I'm saving the model with w2v_model.wv.save_word2vec_format("path/to/w2v_model.bin", binary=True) and afterwards ...
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Word2Vec to calculate similarity of movies to high preforming movies

I have a dataset with user ratings for movies and movie descriptions like this import pandas as pd df =pd.DataFrame ({ 'description': [ 'Two imprisoned men bond over a number of years', ...
Rebecca James's user avatar
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How to query questions with high similarity based on the input question content?

I have a student exam system in Java. There are more than one million questions in the mysql database. The question content consists of Chinese, English, and latex mathematical formulas. Now, I want ...
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Generating Vector Embeddings for Organization Names

I have seen couple of Word2Vec Models that can generate embeddings for Company Names, and performs well when the different formats of the same company names are given. But what I want to do is a bit ...
Sabbir Talukdar's user avatar
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How to know the semantic similarity of words in a text using word2vec or WordNet in R?

I have a text and I want to know the semantic similarity score of all the words in a text with each other by using word2vec or WordNet in R. Is there any way to perform the analysis in R for this? ...
user21390049's user avatar
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2 answers
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Python word2vec updates

I am trying to convert this old snippet of code to be in line with the updated version of gensim. I was able to convert the model.wv.vocab to model.wv.key_to_index but am having issues with the model[...
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How does the model.resize_token_embeddings() function refactor the embeddings for newly added tokens in the tokenizer?

I am new to Natural Language Processing and currently working on machine translation using ALMA-7B model from Hugging Face. I wanted to create custom tokenizer based on the tokens that I have in my ...
Kunj Joshi's user avatar
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topic coherence (w2v) and its trend?

I tried to use w2v topic coherence score to evaluate the topic model based on NMF. Below is the w2v coherences I have calculated. And I want to know, is w2v coherence higher better? Also, why the ...
squaaad yang's user avatar
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confusing with most similar word?

I'm working aboute anologies(famous "king - woman + man = queen") on vectors pretraind from nlp.stanford.edu/projects/glove (glove.6B.50d.txt), but I get confusing results: analogy (Thanks @...
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Is it normal for all similarities to be positive in a gensim word2vec model?

Implementing a standard gensim word2vec model (continuous bag of words) on a series of Chinese characters, and for (comparison between chinese homophones and words of similar frequency) our cosine ...
Sophie Wu's user avatar
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How to use Word2Vec to average the vectors of different model words from the segmented files

1.I want to write a Python program that needs to preprocess the segmented texts (there are a total of 129 txt files in jieba2) before processing. 2.Create individual word embeddings for each word in ...
Emily's user avatar
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Negative values in data passed to MultinomialNB when vectorize using Word2Vec

I am currently working on a project where I'm attempting to use Word2Vec in combination with Multinomial Naive Bayes (MultinomialNB) for accuracy calculations. import pandas as pd import numpy as np, ...
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Word2Vec - to be trained on train data or whole data

I wish to create a word2vec model and want to train it on my local data. so, the question is, should I train word2vec model on my whole data or should I split the data into train and test and then ...
Mayur Pol's user avatar
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how to solve ValueError: `logits` and `labels` must have the same shape, received ((None, 1000, 1) vs (None,)).?

model = Sequential() model.add(Embedding(vocab_size, output_dim = 100)) output_dim = DIM model = Sequential() model.add(Embedding(vocab_size, output_dim, weights = [embedding_vectors], input_length= ...
Rifa Shazmeen's user avatar
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3 answers
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Text to Tag similarity word2vec

Our users will give a 2 to 3 sentence description about their profession. Example user A (profile description): I am a data scientist living in Berlin, I like Japanese food and I am also interested in ...
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Using Word2Vec embeddings with other continuous data for clustering

I am preparing data for clustering in R using a variational autoencoder to compress the data before perfoming clustering analysis on it. My data set has a large amount of continuous data and one ...
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Is there a way to load Word2Vec embeddings to ChromaDB?

I want to query for similar words using ChromaDB. For example, 'great' should return all the words that are similar to 'great', in most cases, it would be synonyms. For this, I would like to upload ...
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Pass a word2vec model from gensim package to langchain FAISS vectorstore

I want to pass my trained gensim word2vec model as an embedding model to FAISS.from_documents(). Thereby I get an error AttributeError: 'Word2Vec' object has no attribute 'embed_documents' My code: ...
Christian01's user avatar
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How to train gensim word2vec and check if the training was succesful?

I want to train a word2vec model with gensim package. There are several approaches online how to train the model. In my case I have 500 finance reports as pdf-file with about 300 pages per file in ...
Christian01's user avatar
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shape of my dataframe(#rows) and that of final embeddings array doesn't match

I generated the word embeddings for my corpus(2-D List) then tried to generate the Average Word2Vec embeddings for each of the individual word list(that is for each comment which have been converted ...
YuvrajSingh's user avatar
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133 views

Output of cosine_similarity() not as expected (all values equal to 1.)

I have been trying to find cosine similarity between the vector representation of the tag of a movie (computed using average word2vec) and all the other movies's vector representation (also using avg ...
YuvrajSingh's user avatar
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323 views

Word2Vec from scratch with Python

I'm studying about Word2Vec and trying to build from scratch with Python. I found some good explanation about word2vec model and its implementation. word2vec-from-scratch-with-python-and-numpy github ...
James Jang's user avatar
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1 answer
235 views

Word2Vec' object has no attribute 'iter'

# train word vectors w2v_model.train(sentences, total_examples=w2v_model.corpus_count, epochs=w2v_model.iter) i got this error AttributeError: 'Word2Vec' object has no attribute 'iter' Could you ...
lucis's user avatar
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Training a gensim Word2Vec model after saving on a Hindi dataset

I am trying to re-train my word2vec model on a bigger dataset, I've saved the model using model.save('ikshan_word2vec.bin'), and now I am loading this .bin file in my colab, where I have the dataset ...
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Infer document vectors for pretrained word vectors

the following questions refers to the implementation of Word2Vec and Doc2Vec algorithms provided by the great gensim package. I know similar questions have been asked, however, I feel the given ...
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One time load Word2Vec from Memory

I`m loading the Word2Vec models with the code below: model = gensim.models.KeyedVectors.load_word2vec_format('cc.en.300.vec',binary=False,encoding='utf8') return model.wv It takes over 10 minutes ...
Milad Xandi's user avatar
-1 votes
1 answer
60 views

Trouble getting my gradient descent algorithm to converge (word2vec)

Just for the sake of practising, learning and experimenting, I made a word2vec model from scratch, using the formulas and algorithm of Jurafsky & Martin. Here is the code: class Word2Vec: def ...
invalid syntax's user avatar
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2 answers
45 views

Word 2Vec pretrained embedding KeyError with Gensim==4

I'm traying to use a pretrained word2vec model for Arabic language the code suppose to be written as following unknownArray=[] # load the whole embedding into memory w2v_embeddings_index={} ...
Arwa Ahmed's user avatar
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1 answer
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Word Vector Features preprocessing for ML

I'm training a classifier, where the input is a 300-dimensional word vector. Usually in machine learning problems, I would scale my inputs to 0-mean and unit variance. However, scaling the vector ...
Vid Stropnik's user avatar
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1 answer
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ValueError when setting array element with a sequence in Python

I'm working on a nlp project and trying to train an LSTM model for sentiment analysis using pre-trained word embeddings. However, I'm facing a ValueError when trying to assign word embeddings to a ...
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1 answer
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How to distinguish between "less" and "more" in a terms of text mining

I'm trying to extract "more" or "less" information from the text. But the word similarity using W2V between words like "more"("huge", "increase", &...
SanjeethBoddi's user avatar
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How can I load the pretrained GoogleNews model using word2vec in R?

I am trying to use the pre-trained word2vec model from GoogleNews in R: https://code.google.com/archive/p/word2vec/ I have downloaded the GoogleNews-vectors-negative300.bin.gz file from the provided ...
Sheesh's user avatar
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How to fix an array element with a sequence?

Got this issue, and I do not know how to fix it? ValueError Traceback (most recent call last) Cell In[8], line 2 1 # Generate aggregated sentence vectors based on the word ...
Century Egg's user avatar
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1 answer
51 views

Why accuracy is 0%

https://github.com/Saranja-Navaneethakumar/WSD_Skipgram/blob/main/skipgram.py I'm doing word sense disambiguation with word2vec skipgaram model and train & test datasets - 2017 SemEval benchmark ...
Anonymous Coder's user avatar
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2 answers
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Trying to make my word2vec code more efficient

I have a word2vec program that works on smaller corpora of novels, but not on bigger ones (i.e. it has worked on corpus of 1k but not 2k.) The problem occurs in the pre-processing. Any idea on how to ...
Dez Miller's user avatar
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1 answer
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Queries regarding the working of "Word2Vec" vectorizer to convert text to numeric representation

I worked on a predictive (classification) model. I used Word2Vec to convert the data is textual columns to numeric, following which I ran the machine learning algorithms. I have the following doubts ...
Apoorva's user avatar
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How embedding lookup works in Word2Vec

I am trying to understand Word2Vec. For word input of 5x1 (one hot encoding) and hidden layer of 3 units.I have came across following information from famous sources. The first (monochrome) image says ...
jaykio77's user avatar
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How does Word2Vec (CBOW and Skip-gram) create the training data?

How does Word2Vec (CBOW and Skip-gram) create the training data? Here is my interpretation of how CBOW and Skip-gram create the training data (the crossed-out text indicates that the training example ...
Erik Zsolt Varga's user avatar
1 vote
1 answer
145 views

What is the correct definition of window size for Word2Vec (CBOW and Skip-gram)?

Which one is the correct definition of the window size in Word2Vec (CBOW and Skip-gram)? After examining multiple resources on how Word2Vec (CBOW and Skip-gram) works, I discovered that there are two ...
Erik Zsolt Varga's user avatar
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0 answers
96 views

Removing words from FastText Model / Converting a .vec file to a .bin file (vec2bin)

I am working with FastText on a language (Tamil) and a task where I don't expect to encounter and simply don't care about character/words from other languages. I have both the text (.vec) and binary (....
ubadub's user avatar
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Should I Pass Word2Vec and FastText Vectors Separately or Concatenate Them for Deep Learning Model in Smart Contract Vulnerability Detection?

i have been working with word embedding latly, i have a question. So, here consider taking vulnerability detection in smart contract. So the input is smart contract files labeled with 0 or 1 stating ...
Porkodi Ishwarya's user avatar
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1 answer
66 views

How to interpret word2vec train output?

Running the code snippet below report an output (3, 60). I wonder what exactly it is reporting? The code is reproducible..just copy into a notebook cell and run. from gensim.models import Word2Vec ...
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Associating word embeddings to corresponding word in vocab object

I have created a CBOW model: class CBOW(nn.Module): def __init__(self, vocab_size, emb_dim, hidden_dim, context_window=CONTEXT_WINDOW): super(CBOW, self).__init__() self....
Kliker's user avatar
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1 answer
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How does the word2vec produce embeddings for the unseen words?

I'm using an unlabeled news corpus to fine-tune the Word2Vec model. After that I'm using those embeddings to generate embeddings for words present in a new labeled dataset. These new embeddings were ...
Debbie's user avatar
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2 votes
1 answer
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Fine tune a custom word2vec model with gensim 4

I am new using gensim, especially with gensim 4. To be honest, I found quite hard to understand the docs how to fine-tune a pre-trained word2vec model. I have a binary pre-trained model saved local. I ...
Bernardo's user avatar
1 vote
0 answers
670 views

How to solve AttributeError: 'list' object has no attribute 'shape'

import numpy as np from IPython.display import display, HTML import matplotlib.pyplot as plt from sklearn.manifold import TSNE import pandas as pd import re import nltk def ...
Porkodi Ishwarya's user avatar
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1 answer
65 views

Using a custom trained word2vec model

I have a corpus is the form of a CSV file or text file. I want to use it to train a word2vec model. Then I want to use the trained model to vectorize a CSV file that contains class and class ...
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