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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Error: data should be an RDD of list of string, but my input data seems correct (for training word2vec pyspark)

I'm trying to train a word2vec model using spark's implementation. I'm following the tutorial on spark's documentation but I keep getting the error "data should be an RDD of list of string" My data ...
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17 views

How to add magnitude or value to a vector in Python?

I am using this function to calculate distance between 2 vectors a,b, of size 300, word2vec, I get the distance between 'hot' and 'cold' to be equal 1. How to add this value (1) to a vector, becz i ...
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How to evaluate performance of Word2Vec?

I want to know an effective way to evaluate my word2Vec model performance so that I can properly tune my hyper-parameters. For example, if I were to do document classification with supervised ...
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15 views

Word2vec CBOW model implementations, deviations from the original algorithm

I am trying to implement CBOW model by pytorch. What I understood from the explanation of word2vec is that word2vec has 2 layers (and therefore 2 matrices), the first matrix contains low dimensional ...
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How to reduce a 1D word2vec vector's dimensionality with PCA?

Suppose I have the following word embedding vector: vec = np.array([1,2,3,4,5,6,7]) What is the correct way of reducing the dimensionality of this vector from a 7 dimensional vector to a 2 ...
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How to solve the “Error when checking target”?

I am trying to implement a word2vec embedding n to 1 sequence to sequence model using Keras. My Code Creating input data : vec_x=[] for sent in tok_x: sentvec = [ft_sg_model[w] for w in sent ...
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13 views

BERT performing worse than word2vec

I am trying to use BERT for a document ranking problem. My task is pretty straightforward. I have to do a similarity ranking for an input document. The only issue here is that I don’t have labels - so ...
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20 views

can't save word2vec model

I am using word2vec in python 3.7 with a text from the gutenberg corpus to later train on LSTM. The code I have for creating the embeddings with word2vec is giving me an error. ...
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23 views

Interpret the Doc2Vec Vectors Clusters Representation

I am new to Doc2Vec, please bear with the naive questions. I have generated Doc2vector score i.e. using the 'Paragraph Vector' algorithm. I have an array output for each document. I use the model....
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Is there a simple way to cluster search keywords in an Excel file?

# sample dataset in Excel ID key word search 1 file organizzer 23 2 document bag 20 3 paper folder 45 4 phone 100 5 iphone 89 ...
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25 views

Where to find a pretrained doc2vec model on Wikipedia or large article dataset like Google news?

Am struggling with training wikipedia dump on doc2vec model, not experienced in setting up a server as a local machine is out of question due to the ram it requires to do the training. I couldnt find ...
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Keras - The added layer must be an instance of class Layer. Found: Tensor

I'm trying to implement skip-gram using keras. Getting error while adding the Dot() layer. The below implementation is inspired by Dipanjan code. I have done some modification related to different ...
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Can I input one-hot coding vectors not the raw sentences directly into PYTHON module word2vec.Word2Vec?

For example, I've already transformed all the words and numbers into one-hot coding. Then from gensim.models import word2vec and I want to use word2vec.Word2Vec(sentences=one_hot_vectors) ...
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How to make sure that the semantic fragment in the text is missing?

This question is similar to the question How to find that one text is similar to the part of another? There is a text about the youth of Barack Obama. There is a list of semantic pieces (samples), ...
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how to speed up gensim word2vec initialization with pre proccessed corpus?

i am training multiple word2vec models on the same corpus. (i am doing this to study the variation in learned word vectors) i am using this tutorial as reference: https://rare-technologies.com/...
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How to evaluate performance of Co-occurrence matrix

I am learning the application of co-occurrence matrix as an alternative to Word2Vec. This paper talks about how to improve the performance of co-occurrence matrix word embedding, and shows us the ...
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21 views

Is it normal that there is no data access synchronization when training the neural network by several threads?

I looked at the classic word2vec sources, and, if I understood correctly, there is no data access synchronization when training the neural network by several threads (synchronization for matrixes syn0,...
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how many words do I need minimally to finish a concrete demo code to compute likelihood of word2vec?

I am learning Stanford CS224N: natural language processing with Deep Learning. I want to write some code to reproduce the procedure. Assume a center word is specified at position t as in Chris's ...
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24 views

Using word2vec in a sentence

I'm trying to generate the probability of a given sentence to be be correct. I have word2vec for each token in the language and I want to predict the probability of the sentence to be correct. I'm ...
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24 views

How can I count word frequencies in Word2Vec's training model?

I need to count the frequency of each word in word2vec's training model. I want to have output that looks like this: term count apple 123004 country 4432180 runs 620102 ... Is it possible ...
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How to use TSNE for word2vec model.most_similar only?

I'm not good at English. Sorry about that. I want to visualize my most_similar results of word2vec model. I trained the word2vec model with my text, and I brought topn = 100 most_similar results ...
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how to create word2vec for phrases and then calculate cosine similarity

I have just started using word2vec and I have no idea how to create vectors (using word2vec) of two different set of documents, document1 contain set of words plus phrases(list of lists)and document2 ...
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permission denied error while reading the GoogleNews-vectors-negative300.bin file

I am trying to read different language encoding models like golve, fasttext and word3vec and detecting the sarcasm but I am unable to read google's language encoding file. It's giving permission ...
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40 views

How to tell if two natural language queries have the same meaning

I am building a system to change natural language questions into SQL queries. Right now what I am implementing is a refactoring of a natural language question to be more structured so that I will have ...
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How to find that one text is similar to the part of another?

We know how to make an assessment of the similarity of two whole texts for example by Word Mover’s Distance. How to find piece inside one text that is similar to another text?
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37 views

How to predict whether the given sentence is grammatically correct or not?

I am trying to create a predictive model where the model tells whether the give sentence is correct or not by checking the order of the words in the sentence. The model checks weather the particular ...
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How are word vectors co-trained with paragraph vectors in doc2vec DBOW?

I don't understand how word vectors are involved at all in the training process with gensim's doc2vec in DBOW mode (dm=0). I know that it's disabled by default with dbow_words=0. But what happens when ...
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Does node2vec support negative edge weights?

Does node2vec provide support for edges with negative weights? I have an edgelist with several edges which are negative valued, but I'm strangely getting ZeroDivisionError on running the code. There ...
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Decision that texts or sentences are equivalent in content

The classic example of determining similarity as distance Word Mover's Distance as for example here https://markroxor.github.io/gensim/static/notebooks/WMD_tutorial.html, word2vec model on GoogleNews-...
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What is the input file format for the function word2vec from package word2vec?

I am trying to do my own word embedding using the package word2vec (https://pypi.org/project/word2vec/). However, I can't find the file format of the input file for the function "word2vec". I tried ....
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Semantic similarity between words A and B : Dependency on frequency of A and B in corpus?

Background : Given a corpus I want to train it with an implementation of word2wec (Gensim). Want to understand if the final similarity between 2 tokens is dependent on the frequency of A and B in ...
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“word '****' not in vocabulary”

I want to build a word2vec model from a text file and use similar words for semantic searching. On working with the demo data from the API and through sentences the model is working correctly. ...
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Constructing the training dataset for skipgram algorithm (Udacity Deep Models for Texts course Assignment 5)

I am a beginner in machine learning and I am trying to understand Udacity Deep Models for Text course (Assignment 5). I don't get the part where the training dataset for skipgram algorithm is varied ...
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German dataset for training text classifier

I am looking for an annotated dataset in German similar to the well-known English IMDB movie review dataset (here). The background is that I would like to categorize German texts into multiple ...
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Keras input specification for word2vec vectors

I read all the other answers regarding this topic, but my use case is slightly different. I have a numpy array of shape (800,128,1). Each element in the 800 elements stores a word2vec embedding of ...
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How to specify an input with a list of arrays to Embedding layer in Keras?

I'm trying to do some word-level text generation and stuck with the foloowing problem: My input looks like this: tokenized_seq = [[w2v_model.wv.vocab[word].index for word in w2v_data[i]] for i in ...
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Creating embeddings using node2vec

I'm trying to create embeddings for an edge list I have using networkx and node2vec. My edge list looks as follows: 1 2 1 6 ... 450 230 ... 601 602 It's an unweighted undirected graph, basically, ...
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How does i unzip pretrained word2vec in google colab?

I am trying to use pretrained word vectors of google, GoogleNews-vectors-negative300.bin.gz, in colab but i don't know how to unzip the file. import gzip f=gzip.open('gdrive/My Drive/Colab Notebooks/...
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Is there any solution for “importError:DLL load fail The specified module could not be found” failure?

I was trying to import Word2Vec from genism.models but this error showed up code and output image is given in this link
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using word2vec to represent similarity of sentences

I know a lot of people must have asked this with some variation and I cant read all of them and match with the requirement of mine. Thats why I am asking this here and I apologize for the ...
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57 views

How to get word2vec training loss in Gensim from pretrained models?

I have some pre-trained word2vec model and I'd like to evaluate them using the same corpus. Is there a way I could get the raw training loss given a model dump file and the corpus in memory?
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What situations would I use `tf.nn.sampled_softmax_loss` over `tf.nn.nce_loss`?

Tensorflow offers tf.nn.sampled_softmax_loss and tf.nn.nce_loss as negative sampling techniques. (More info here.) The word2vec example on the tensorflow github uses tf.nn.sampled_softmax_loss, ...
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Can someone help me understand why an embedding layer with shape (700, 250) has nearly 20M more parameters than a similar one with shape (100, 50)?

I have two models that are quite similar for all intents and purposes -- one thing is leaving me quite confused and I'm really not sure how to approach the problem. The first one has an embedding ...
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skip gram program please give in depth explanationbatch[i * num_skips + j] = buffer[skip_window] labels[i * num_skips + j, 0] = buffer[context_word]

Heading Explain this code? def generate_batch(batch_size, num_skips, skip_window): global data_index assert batch_size % num_skips == 0 assert num_skips <= 2 * skip_window batch = ...
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using word2vec.score.sg pair() raises Python error - only integers…integer or boolean arrays are valid indices

I'm trying to implement word2vec in python to score the trained Skip-gram model on a pair of words. but I can't figure out the error: only integers, slices (:), ellipsis (...), numpy.newaxis (None) ...
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Using AutoML to evaluate tha hyperparameters of the algorithm Word2Vec

Is it possible with AutoML (from H2O) to use only the Word2Vec algorithm and try out different values for the parameters to find out which parameter settings give me the most accurate vectors for my ...
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How does back propagation in CNN works for pre-trained embedding in text classification

How do the loss function works in case of pretrained word2vec embeddings as the weights are not updated during training.Then how do the backward pass works and what does it update for prediction?
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How to fix error when installing annoy in python

I am installing annoy in python 3.5-3.2 Windows 10 to create similarities.index. This is C++ library with Python bindings. I do this: pip install annoy. On the step c++ translation I recieved error:...
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Convert list of words in Text file to Word Vectors

I have a text file with million of rows which I wanted to convert into word vectors and later on I can compare these vectors with a search keyword and see which all texts are closer to the search ...
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How to predict output word for KeyedVectors word2vec?

A gensim.models.Word2Vec class has method predict_output_word(). Now I use prelearned model but it was saved in class gensim.models.KeyedVectors. Have a the class analogue method? Or how can I get ...