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Questions tagged [doc2vec]

Doc2Vec is an unsupervised algorithm used to convert documents in vectors ("dense embeddings"). It is based on the "Paragraph Vector" paper and implemented in the Gensim Python library and elsewhere. The algorithm can work in either a "Distributed Bag Of Words" mode (PV-DBOW, which works somewhat analogously to skip-gram mode in Word2Vec) or a "Distributed Memory" mode (PV-DM, which is more analogous to CBOW mode in Word2Vec.)

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13 views

Fit and transform methods for Graph2vec - CustomTransformer

I am working on a usecase of representational learning and after deep analysis started working with graph2vec/doc2vec. I have created train feature matrix with --dimensions 64 and fed it to keras ...
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In correct answer from doc2vec

I execte doc2vec model for text similarity my code and not obtain reslt it = LabeledLineSentence(datafiles, labels1) model = gensim.models.Doc2Vec(vector_size=300, min_count=0, alpha=0.025, ...
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How to load a trained model in django

I'm working on a django project where I have to use Doc2Vec model to predict most similar articles based on the user input. I have trained a model with the help of articles in our database and when I ...
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How to get similarity score for unseen documents using Gensim Doc2Vec model?

I have trained a gensim doc2vec model for an English news recommender system. the model was trained with 40K news data. I am using the code below to recommend the top 5 most similar news for e.g. ...
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43 views

How to interpret doc2vec classifier in terms of words?

I have trained a doc2vec (PV-DM) model in gensim on documents which fall into a few classes. I am working in a non-linguistic setting where both the number of documents and the number of unique words ...
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Insights into Word/Document Embeddings

How to get insights into my created word or document embeddings? For example if I extract features with the TF-IDF Vectorizer, I can output the top n best features. Is there a similar approach where I ...
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Why is my Doc2Vec model in gensim not reproducible?

I have noticed that my gensim Doc2Vec (DBOW) model is sensitive to document tags. My understanding was that these tags are cosmetic and so they should not influence the learned embeddings. Am I ...
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How to change parameters of saved model without training docs in Gensim Doc2Vec?

I preprocess my docs, trained my model, and saved it by following the guidelines given here: https://radimrehurek.com/gensim/auto_examples/tutorials/run_doc2vec_lee.html After a period of time, I want ...
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Understanding Gensim Doc2vec ranking

I use gensim 4.0.1 and follow tutorial 1 and 2: from gensim.test.utils import common_texts from gensim.models.doc2vec import Doc2Vec, TaggedDocument texts = [ "Human machine interface for ...
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How to interpret doc2vec results on previously seen data?

I use gensim 4.0.1 and train doc2vec: from gensim.test.utils import common_texts from gensim.models.doc2vec import Doc2Vec, TaggedDocument sentences = [['hello', 'world'], ['james', 'bond'], ['...
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368 views

Top2Vec error - 'KeyedVectors' object has no attribute 'vectors_docs'

When training the Top2Vec model in Python 3.9.2 I get the following error: AttributeError Traceback (most recent call last) <ipython-input-17-edc5d3cec713> in <...
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Which service to run doc2vec on AWS?

I would like to find the best hyperparameters for my model, but tuning 6 metaparameters over a total of 486 permutations and 200k documents takes a while. That's why I'm thinking about using the free ...
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Failing to Understand Doc2Vec Output

So I started down the path of attempting to learn Doc2Vec, specifically the cosine similarity output. Basically, I am getting an unexpected output when attempting to match a new sentence to the list ...
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Should I split sentences in a document for Doc2Vec?

I am building a Doc2Vec model with 1000 documents using Gensim. Each document has consisted of several sentences which include multiple words. Example) Doc1: [[word1, word2, word3], [word4, word5, ...
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Is there an embeddings technique to represent multilingual paragraphs?

I have a dataset that includes English, Spanish and German documents. I want to represent them using document embeddings techniques to compute their similarities. However, as the documents are in ...
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51 views

What should be used between Doc2Vec and Word2Vec when analyzing product reviews?

I collected some product reviews of a website from different users, and I'm trying to find similarities between products through the use of the embeddings of the words used by the users. I grouped ...
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Can you provide additional tags for documents using TaggedLineDocument?

When training a doc2vec model using a corpus in the TaggedDocument class, you can provide a list of tags. When the doc2vec model is trained it learns a vector representation for the tags. For example ...
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Can I use BERT or Doc2Vec for comparing lists of potentially unrelated words?

Context I'm building a sample project to match users with similar interests. Given any two users with a given list of interests, I'd like to create a similarity score between those users. It seems ...
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evaluating Doc2Vec - cosine similarity matrix

I'm training my Doc2Vec model on 106k documents (100-600 words per document). The goal is to retrieve similar documents for a target document. Since Doc2Vec is an unsupervised model there is no real ...
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Doc2Vec build_vocab method fails

I am following this guide on building a Doc2Vec gensim model. I have created an MRE that should highlight this problem: import pandas as pd, numpy as np, warnings, nltk, string, re, gensim from tqdm ...
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Does doc2vec model give accuracy on non-dictionary words?

I have sentences in corpus with mixed words (dictionary and non-dictionary words). Non-dictionary words are as important as they are domain specific. I'm not performing any nlp on non-dictionary words....
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Tokenization of unbalanced dataset

I'm working with a dataset of emails' content which I want to transform with doc2vec. This is a labeled dataset (spam/not-spam) and it is unbalanced (90-10 ratio). My question is: when tokenizing the ...
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91 views

How to train a doc2vec model in tensorflow.js?

I want to create an app for serving nlp problems. I need to deploy doc2vec model on frontend for which i am looking for tensorflow.js framework. My need is to train a doc2vec model in tensorflow.js ...
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114 views

What does build_vocab() do exactly?

I am trying to build a Doc2Vec model. I have a list of sentences with their labels, labeled using Gensim’s LabeledSentence() function. After building the model, I see that they used build_vocab() on ...
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157 views

Which document embedding model for document similarity

First, I want to explain my task. I have a dataset of 300k documents with an average of 560 words (no stop word removal yet) 75% in German, 15% in English and the rest in different languages. The goal ...
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Importing a gensim doc2vec model in deeplearning4j

I have trained a doc2vec model with gensim and like to import it into Deeplearning4j in order to deploy that model. For word2vec models, I know that this is possible by saving the model with model.wv....
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Concatenated Doc2Vec - calculate similarities

I have two Doc2Vec models trained on the same corpus but with different parameters. I would like to concatenate the two of them and calculate the similarity of a given input word, choosing the ...
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Can the gensim pretrained models be used for doc2vec models?

I am trying to load a pretrained model listed here to test the similarity of a handful of paragraphs. Can gensim's pretrained models only be used with word-level vectors, or can the models also be ...
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Low accuracy rate after training Doc2Vec model

I'm trying to train a Doc2Vec model in order to create a multi-label text classifier. In order to do that, i have chosen a data set that contains approximately 70000 article, and every article ...
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Understanding the role of the function build_vocab in Doc2Vec

I have recently started studying Doc2Vec model. I have understood its mechanism and how it works. I'm trying to implement it using gensim framework. I have transormed my training data into ...
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How to continue training Doc2Vec with a specific domain corpus after training with a generic corpus

I want to train a Doc2Vec model with a generic corpus and, then, continue training with a domain-specific corpus (I have read that is a common strategy and I want to test results). I have all the ...
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What is the reliable way to convert text data (document) to numerical data (vector) and save it for further use?

As we know machines can't understand the text but it understands numbers so in NLP we convert text to some numeric representation and one of them is BOW representation. Here, my objective is to ...
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R package 'word2vec' doc2vec function

I am a student (computer science). This is my first question in stackoverflow. I really would appreciate your help! (The package I am referring to is called 'word2vec', thats why the tags/title are a ...
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Attribute Error for gensim.models.docvecs.doctag_syn0norm

I am writing code for Gensim Doc2Vec model in Python 3 This is the snippet I am running: model1.docvecs.doctag_syn0norm = (model1.docvecs.doctag_syn0 / sqrt((model1.docvecs.doctag_syn0 ** 2).sum(-1))...
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Checking model overfit of doc2vec with infer_vector()

my aim is to create document embeddings from the column df["text"] as a first step and then as a second step plug them along with other variables into a XGBoost Regressor model in order to ...
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Maximum Doc2vec similarity between observation and subset at given point in time

I have a large dataframe (about 30000 obs) named database_finale. The columns relevant for this post are: index1: identifies each observation and is the tag in the doc2vec app_date2: is the date of ...
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Different cosine similarity coefficients from Doc2Vec and Word2Vec

BACKGROUND At the beginning of my project, the focus was to compare requests/questions received in terms of how they differ in terms of content. I trained a Doc2Vec model and the results were pretty ...
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Doc2Vec most similar vectors don't match an input vector

I've got a dataset of job postings with about 40 000 records. I extracted skills from descriptions using NER with about 30 000 skills in the dictionary. Every skill is represented as an unique ...
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Can doc2vec work on an artificial “text”?

I've created an artificial corpus (with 52624 documents). Each document is a list of objects (there are 461 of them). So one possibility could be: ['chair', 'chair', 'chair', 'chair', 'chair', 'table',...
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155 views

Gensim Model : class 'FileNotFoundError'

Well the issue is I have 1000s of the document and I passed all the documents for the training of Gensim model and I successfully trained and saved the model in .model format. But with the current ...
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Can we use sentence transformers to embed non english sentences without labels?

I was trying to use this project : https://github.com/UKPLab/sentence-transformers for embedding non english sentences, the language is not a human speaking language, its machine language (x86) but ...
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Python- how to get top terms per cluster after using EM clustering with doc2vec input file?

I have collection of 300 docs. I used doc2vec as input file for EM clustering. vector size = 30 I used WEKA to do the clustering. The result is in arff file. sample: id,v1,v2,v3,v4,v5,v6,v7,v8.....,...
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how to choose the best vector_size for doc2vec?

I am comparing techniques and want to find out what is the best method to vector and reduce dimensions of a large number of text documents. I have already tested Bag of Words and TF-IDF and reduced ...
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Gensim Doc2Vec visualization issue when using t-SNE and/or PCA

I am trying to familiarize with Doc2Vec results by using a public dataset of movie reviews. I have cleaned the data and run the model. There are, as you can see below, 6 tags/genres. Each is a ...
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Similarity with Doc2Vec

I'm following a Gensim tutorial for Doc2Vec: https://medium.com/@mishra.thedeepak/doc2vec-simple-implementation-example-df2afbbfbad5 Now, after reaching the end, I'd like to compute similarity scores ...
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190 views

Query-document similarity with doc2vec

Given a query and a document, I would like to compute a similarity score using Gensim doc2vec. Each document consists of multiple fields (e.g., main title, author, publisher, etc) For training, is it ...
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406 views

Assessing doc2vec accuracy

I am trying to assess a doc2vec model based on the code from here. Basically, I want to know the percentual of inferred documents are found to be most similar to itself. This is my current code an: ...
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Doc2Vec not providing adequate results in most_similar

I'm trying to use Doc2Vec to go through the classic exercise of training on Wikipedia articles, using the article title as the tag. Here's my code and the results, is there something that I'm missing ...
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Will the document vectors generated by Doc2Vec be similar to document vectors obtained through Word2Vec?

I came across few blog posts stating that, Document vectors can be generated not only by Doc2Vec, but also by averaging the word vectors obtained by running Word2vec algorithm. In that case, would the ...
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Use externally generated embedding from doc2vec

I have a question similar to the one posted here Export gensim doc2vec embeddings into separate file to use with keras Embedding layer later. The answer is almost suitable but I could not understand ...

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