Questions tagged [word-embedding]

For questions about word embedding, a language modelling technique in natural language processing. Questions can concern particular methods, such as Word2Vec, GloVe, FastText, etc, or word embeddings and their use in machine learning libraries in general.

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10 views

RuntimeError: Expected object of backend CUDA but got backend CPU for argument #3 'index'

I'm working with the project 'lda2vec-pytorch' on Google CoLab, runnin pytorch 1.1.0 https://github.com/TropComplique/lda2vec-pytorch device = torch.device("cuda:0" if torch.cuda.is_available() else ...
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19 views

how to convert a text column into tokens? [duplicate]

I am a Python beginner and currently trying to preprocess textual data. The goal is to use a text column of a df for doc2vec. But I have problems to convert the text column into tokens. I tried the ...
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Apply Word-Embedding on Security books. What will be the process or what output should i expect?

I was asked to to word-embedding on some books related to security. 1) What process i should follow as i am a beginner in this topic? 2) What output will i get? Thank you.
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20 views

Tensoflow error while using BERT-as-Service

I'm trying to use BERT-as-service as provided in this tutorial. I'm trying to use the server through the python env LINK. from bert_serving.server.helper import get_args_parser from bert_serving....
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35 views

Universal sentence encoding embedding digits very similar

I have task of sentence similarity where i calculate the cosine of two sentence to decide how similar they are . It seems that for sentence with digits the similarity is not affected no matter how "...
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18 views

How to train fastText for a completely new language dataset?

I am working with a regional language for which I need its word embeddings. I want to generate the word embeddings by training the FastText model for my dataset. But could not find the code to train ...
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12 views

How to improve the accuracy on google analogy task while training word2vec models?

I have implemented a word2vec model(skipgram+negative sampling) only using Numpy, and I trained it on 300M English copera, and the model achieved an mediocre wordsim353 score about 0.5, but the ...
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14 views

How to build a seq2seq model for ASR, using mfcc vectors and corresponding word embedding vectors of the transcripts as the input and output data?

I am trying to build a voice to text model without using existing speech recognition libraries. I am using common-voice dataset from mozilla. I have done the data preprocessing where I extracted mfcc ...
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20 views

Failed to load tensorflow BERT pre-trained model

I tried to load a BERT pre-trained model to do NER task. But the system cannot find the pretrained model file. I used the following code in terminal, the folder contains model.ckpt-1000000, model....
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Word shows up more than once in TSNE plot

When plotting word embedding TSNE results, words show up more than once. I am reducing dimensionality of a Word2Vec word embedding, but when I plot the results for a subset of the most similar words (...
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9 views

3D input for Embedding - LSTM Network

I'm building a generative music model using LSTM neural networks and I have stumbled into an issue regarding embedding layers, which expect a 2D input. The idea is to predict, at a given timestep, ...
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17 views

Word embeddings in Tensorflow2

I am trying to understand how to use Tensorflow2 to train word embeddings without the preset labels. In the Tensorflow2 tutorial (https://www.tensorflow.org/beta/tutorials/text/word_embeddings) it ...
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35 views

How to create a dataset with csv file?

I'm working on a Neural Network that does text classification, and i need to use tensorflow with python. I have a mysql base, and want to use it for the learning. I tried to convert the base into csv ...
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16 views

Set Trainable=True in Keras embedding layer while using a pretrained word embedding model

I am trying to build a LSTM model to do a text classification task. One of the model layers is the embedding layer which I used a pre-trained word2vec to create the embedding matrix for it as shown in ...
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31 views

How to combine 3D token embeddings into 2D vectors?

I have a set of strings that I am tokenizing. I am sending each string into the word2vec model in gensim. Say, if there are 100 tokens (e.g. 'I', 'ate', 'pizza', etc.), it is generating a 100 * 100 3D ...
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32 views

How can i use XLNet to generate word embeddings

I want to know how i can use XLNet to generate word embeddings I am currently using a word embedding model, but I want to compare its performance with XLNet
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22 views

I want to know how can we give a categorical variable as an input to an embedding layer in keras and train that embedding layer?

let's say we have a data frame where we have a categorical column which has 7 categories - Monday, Tuesday, Wednesday, Thursday, Friday, Saturday and Sunday. Let's say we have 100 data points and we ...
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18 views

word2vec with different grammar

what is the effect of word2vec if implemented on different language and different grammar? I mean word2vec is implemented on english corpus for the first time, is there any affect if we used another ...
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50 views

Interepretation of word2vec evaluation result

I have created word embeddings (Word2vec) using my own dataset. I have used Gensim module to create word embeddings. I want to evaluate my word embeddings. I have used Wordsim353 dataset to evaluate ...
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37 views

Cosine similarities and totally different results using same source

I am learning word embeddings and cosine similarity. My data is composed of two sets of same words but in 2 different languages. I did two tests: I measured the cosine similarity using the average ...
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23 views

Failed precondition: Table not initialized. on deployed universal sentence encoder from aws sagemaker

I have deployed a the universal_sentence_encoder_large_3 to an aws sagemaker. When I am attempting to predict with the deployed model I get Failed precondition: Table not initialized. as an error. I ...
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28 views

understanding FastText multilingual

I am working with this modified version of FastText (fastText_multilingual) that will let me align words in two languages. I am trying to understand their fasttext.py and especially the Fast Vector ...
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43 views

ValueError: cannot reshape array of size 3800 into shape (1,200)

I am trying to apply word embedding on tweets. I was trying to create a vector for each tweet by taking the average of the vectors of the words present in the tweet as follow: def word_vector(tokens, ...
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25 views

Is Google word2vec pertrained model CBOW or skipgram

Is Google's pretrained word2vec model CBO or skipgram. We load pretrained model by: from gensim.models.keyedvectors as word2vec model= word2vec.KeyedVectors.load_word2vec_format('GoogleNews-vectors-...
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49 views

Where should I pass pre trained word embedding in a encoder-decoder architecture?

I have pre-trained word embeddings from two different languages using MUSE. Now suppose I have a encoder-decoder architecture. And I created a embedding layer from one of this embedding. But where do ...
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40 views

Entity Embedding of Categorical within Time Series Data and LSTM

I'm trying to solve a time series problem. In short, for each customer and material (SKU code), I have different orders placed in the past. I need to build a model that predict the number of days ...
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19 views

How to input a competed word instead of single word to fasttext model

I am using fasttext for word similarity purpose. I input a txt file which has a word in each line. The text format is string. ex: iphone 8 \n apple hkd \n billie jean jh audio \n anafi fcc mode \n ...
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20 views

Can we pass fixed set of negative samples to tensorflow nce loss or sampled softmax loss?

I am trying to train a word embedding model using the tensorflow tf.nn.nce_loss() loss function. The function signature as documented is tf.nn.nce_loss( weights, biases, labels, ...
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40 views

How to train a word embedding representation with gensim fasttext wrapper?

I would like to train my own word embeddings with fastext. However, after following the tutorial I can not manage to do it properly. So far I tried: In: from gensim.models.fasttext import FastText ...
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101 views

After creating an embedding layer using a tensorflow placeholder, how is the tf.nn.embedding_lookup() function used with it?

I'm trying to add a pre-trained word2vec word embedding to my tensorflow code. Now after creating the embedding matrix, one way to add this layer is by creating a tensorflow variable, but this leads ...
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41 views

Why does the TensorBoard display the wrong cosine distance?

i want to visualize word embeddings in the Projector from TensorBoard, but the cosine distances doesnt seem right. If i compute the cosine distances via sklearn i get different results. Am i using ...
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Get loss function's gradient wrt embedding

I am trying to re-implement an algorithm from a paper. It's about universal adversarial examples for text classifiers. There's a part in which I should take the gradient of classifier's loss function ...
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55 views

How do I convert BERT embeddings into a tensor for feeding into an LSTM?

I am trying to replace Word2Vec word embeddings by sentence embeddings by BERT in a siamese LSTM network (https://github.com/eliorc/Medium/blob/master/MaLSTM.ipynb). However my BERT embeddings are (1,...
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31 views

How to check the performance of word embedding

I have used the gensim Word2Vec model and applied it in my list of documents. Well , the word embedding is getting created. I want to know if Word2Vec is performing well on my list of documents. Is ...
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55 views

How to encode categorical data that have variable length so could be fetched to nn.Embedding in PyTorch

Let's say i have a data field named movie_genre for each sample movie, it is selected from the following genres: Action Adventure Animation Comedy ... And for each movie, it might contain multiple ...
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Can Keras embedding layer give random vector for a certain index (e.g: -1) instead of a fixed vector

I have a problem where I have texts ( that can be very long max ~9000 words) that I need to embed with Keras Layer. I choose the fixed size 5000 for every text and I need to pad each sequence to get ...
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44 views

how to save BERT word embedding as .vec similar to word2vec

I want to use the generated BERT word embedding as a vector for building the vocab in Torchtext I can load vectors such as GloVe or word2vec but I didn't know how to save the word embedding from BERT ...
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13 views

Can ELMo (or more recently BERT) be used for sentence generation?

I am interested in sentence generation and am wondering I one can use ELMo to help in this task. Since ELMo uses bidirectional LSTM, I suppose one would first have to make these LSTM unidirectional ...
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38 views

FastText model finds similar words that are only syntactically similar

I am exploring FastText word embedding as implemented in gensim. I am using the 20 News Group corpus (from sklearn.datasets import fetch_20newsgroups) to train FastText models. After basic cleaning (...
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27 views

Variable length input to embedding layer Keras

I have a variable size text corpus. I am trying to feed my texts to a LSTM model using the Embedding layer in keras. My code looks something like this: import numpy as np from keras.layers import ...
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Formal meaning of 'weight-tying' expression in literature

I recently came across the term Weight-tying regarding auto-encoders and words-embeddings as well - yet couldn't find a clear definition. My guess is that it means concatenating multiple outputs of ,...
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Can't map a certain word to vector

I'm having trouble with implementing word-to-vector mapping with GloVe. My code seems to be working fine, but there is a weird problem: I'm getting error when trying to map one particular word - 'the',...
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Create a matrix from a dict of dicts for calculating similarities between docs

Here is my problem: I have a dataframe like this: id tfidf_weights 1 {word1: 0.01, word2: 0.01, word3: 0.01, ...} 2 {word4: 0.01, word5: 0.01, word6: 0.01, ...} 3 {word7: 0.01, word8: ...
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How and why we use CNN layer wrapped with time distributed layer?

I need to know how this code works. It's taking Embedding then it sends it into this model. model1 is CNN and moel2 is Time distributed layer. Why wrapping is done in this code, i didn't find article ...
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54 views

BERT - Extract values from all layers

i'm trying to get the "Word Embedding" from BERT. I have already fine tuned the model for "Sentiment classification" and the model predict if a sentence is positive or negative. But i need to extract ...
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54 views

Keras Embedding Layer: keep zero-padded values as zeros

I've been thinking about 0-padding of word sequence and how that 0-padding is then converted to the Embedding layer. At first glance, one would think that you want to keep the embeddings = 0.0 as well....
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41 views

Accuracy of fine-tuning BERT varied significantly based on epochs for intent classification task

I used Bert base uncased as embedding and doing simple cosine similarity for intent classification in my dataset (around 400 classes and 2200 utterances, train:test=80:20). The base BERT model ...
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28 views

Understanding Dense layer after Embedding Layer in Keras

I am having some problems to understand the functioning of a Dense layer handling text sequences. Let's imagine this simple case: I have two sentences and I assign integers to the words: Sentence 1 ...
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29 views

Building a neural network that takes a created feature vector

To be more precise. Lets say I already have a vector that represents something (word, object, image...) and that I can not change the way I get it. What I would like to do is create a NN without the ...
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20 views

training a rasa model using your own corpus

I need to train a domain word-embedding model to use with rasa's nlu. I'm confused about the possible options. I don't want to use the pre-trained spacy embeddings because I want to train using my own ...