Questions tagged [text2vec]

text2vec - R package which provides a fast and memory efficient framework for text mining applications within R. Vectorization, word embeddings, topic modelling and more.

0
votes
0answers
26 views

Extending Word2vec for Supervised

I have some medical services and also have similar services in the next column. In the code below, name1 column has services and name2 column has similar services. You can consider name2 as a target ...
0
votes
0answers
16 views

using text2vec for multilabel classification

I want to know if text2vec package can be used for multilabel classification like python's BinaryRelevance in skmultilearn.problem_transform I'm currently referring to the pipeline documented at: http:...
1
vote
1answer
57 views

LDA topic model using R text2vec package and LDAvis in shinyApp

Here is the code for LDA topic modelling with R text2vec package: library(text2vec) tokens = docs$text %>% # docs$text: a colection of text documents word_tokenizer it = itoken(tokens, ids =...
0
votes
1answer
43 views

Glove Word Mover Similarity

I want to calculate text similarity using relaxed word movers distance. I have two different datasets (corpus). See below. A <- data.frame(name = c( "X-ray right leg arteries", "consultation ...
0
votes
0answers
50 views

Word Mover Distance Similarity in R

I want to calculate text similarity using relaxed word movers distance. I have two different datasets (corpus). See below. A <- data.frame(name = c( "X-ray right leg arteries", "consultation ...
0
votes
1answer
85 views

Glove word embedding model parameters using tex2vec in R, and display training output (epochs) after every n iterations

I am using text2vec package in R for training word embedding (Glove Model) as: library(text2vec) library(tm) prep_fun = tolower tok_fun = word_tokenizer tokens = docs %>% # docs: a collection of ...
0
votes
0answers
34 views

Use pre trained word embedding for ranking documents

I have used text2vec to create word embedding from a set of documents. I am looking for a mechanism, where based on any input string given by a user, I can rank a set of documents based on their ...
2
votes
0answers
66 views

Beginner advice about adding start/end sentence markers: using Quanteda functionalities versus doing it manually (custom code)

I need to add begin and end sentence markers to some texts that I analyze using Quanteda. I would like to add these markers using Quanteda but I do not see an explicit way to do that "out of the box". ...
0
votes
1answer
61 views

Create Co-occurrence matrix with bigrams

I am looking to create a co-occurrence matrix with bigrams in stead of unigrams from a single string. I am referring the following links http://text2vec.org/glove.html https://tm4ss.github.io/docs/...
0
votes
0answers
62 views

Error: attempt to apply non-function in text2vec

I am trying to replicate the example given in the following link https://cran.r-project.org/web/packages/text2vec/vignettes/glove.html. I have unzipped the file manually. I am getting the following ...
0
votes
2answers
41 views

R function with reference to argument without evaluating it

islands1<-islands #a named num (vector) data.frame(island_col=names(islands1), number_col=islands1,row.names=NULL) This creates a dataframe consisting of two columns, the first contains the names ...
0
votes
2answers
66 views

looping to tokenize using text2vec

Edited to shorten and provide sample data. I have text data consisting of 8 questions asked of a number of participants twice. I want to use text2vec to compare the similarity of their responses to ...
1
vote
2answers
186 views

Is there any reason to (not) L2-normalize vectors before using cosine similarity?

I was reading the paper "Improving Distributional Similarity with Lessons Learned from Word Embeddings" by Levy et al., and while discussing their hyperparameters, they say: Vector Normalization (...
0
votes
1answer
44 views

Get LDAvis json from text2vec

Given a document term matrix dtm, text2vec provides a nice integration with the LDAvis package. However, I want to embed this visualisation into a markdown document. The LDAvis package has methods ...
1
vote
1answer
51 views

how to train a lasso with both text and numeric variables?

Consider this modified classic example: library(dplyr) library(tibble) dtrain <- data_frame(text = c("Chinese Beijing Chinese", "Chinese Chinese Shanghai", ...
1
vote
1answer
177 views

Use a pre trained model with text2vec?

I would like to use a pre trained model with text2vec. My understanding was that the benefit here is that these models have been trained on a huge volume of data already, e.g. Google News Model. ...
0
votes
0answers
70 views

In R text2vec package -How can the topics generated by LDA model can be assigned to the related documents

Using text2vec package in R -implemented LDA model,but iam wondering how to assign each documents to the topics BELOW HERE is my code: library(stringr) library(rword2vec) library(wordVectors) #...
0
votes
0answers
137 views

R: using text2vec to create document vectors for the test data: check up included

I am using text2vec in R to create word vectors for the documents in test dataset. However, I am not sure whether I created DTM right. For instance, I can extract vectors for the document (i.e. "...
0
votes
0answers
40 views

How to use build classifier (based on word embeddings) on new data for sentiment analysis?

So I used the text2vec R package to build word vectorizations for feature selection. I did that according to Dmitriy Selivanov's page http://text2vec.org/vectorization.html, which explains how to ...
0
votes
2answers
40 views

R - Installation of text2vec Ubuntu VM

I'm trying to install text2vec on an AWS EC2 Free-tier Ubuntu VM. I get this error message: > install.packages(c("text2vec"), type = "source") Installing package into ‘/usr/local/lib/R/site-...
0
votes
0answers
29 views

How to create svm plot with document term matrix from text2vec package in R?

I'm using the text2vec package to create a vocabulary document term matrix as described here: http://text2vec.org/vectorization.html#vectorization In particular, I am using SVM from the e1071 package....
2
votes
1answer
99 views

Convert DocumentTermMatrix to dgTMatrix

I'm trying to run the AssociatedPress dataset from the tm-package through text2vec's LDA implementation. The problem I'm facing is the incompatibility of data types: AssociatedPress is a tm::...
0
votes
0answers
97 views

Interpreting word mover's distance estimates in R

I’m analyzing State of Union Address of US presidents Corpus in Quanteda. I create various similarity measures using quanteda and compare them with wmd estimates by R text2vec package. I use Jaccard ...
0
votes
1answer
55 views

How to get IDF Vector with text2vec

is it possible to extract not just the transformed TF-IDF Term-Document Matrix, but also the IDF vector that was used for this transformation with the latest version of text2vec (0.5.1)? Thank you!
0
votes
1answer
153 views

How can I create a tf-idf matrix with character n-gram features?

How can I use the text2vec package to create a tdf-idf matrix with character n-gram features?
4
votes
2answers
626 views

How do i build a model using Glove word embeddings and predict on Test data using text2vec in R

I am building a classification model on text data into two categories(i.e. classifying each comment into 2 categories) using GloVe word embeddings. I have two columns, one with textual data(comments) ...
1
vote
0answers
96 views

get word vectors for each document

I stumbled upon text2vec package, it implements word embeddings in R. I have been experimenting with it successfully. However, I have been trying implement word vectors onto each document exactly like ...
0
votes
1answer
21 views

Error creating vocabulary from big text file on disk

I try to perform example from https://cran.r-project.org/web/packages/text2vec/vignettes/files-multicore.html but with my file "text" - 3.7Gb plain text, build from Wikipedia XML dump with Perl script ...
0
votes
2answers
81 views

How do I include stopwords(terms) in text2vec

In text2vec package, I am using create_vocabulary function. For eg: My text is "This book is very good" and suppose I am not using stopwords and an ngram of 1L to 3L. so the vocab terms will be This,...
0
votes
1answer
73 views

Normalized topic document probabilities text2vec R

I am trying to find out the topic document probabilities after running the lda model using text2vec package in R. Following commands generate the model: lda_model <- LDA$new(n_topics = n_topics, ...
0
votes
1answer
118 views

Matching documens with text2vec — scaling problems

I am having a few issues with scaling a text matching program. I am using text2vec which provides very good and fast results. The main problem I am having is manipulating a large matrix which is ...
0
votes
0answers
205 views

R - Use Glove word embeddings in text classifier

I'm looking to use the text2vec package to create a text classification model to be used on short text. In order to improve the accuracy of my model, I need to incorporate context. I've generated word ...
0
votes
1answer
53 views

R : text2vec DTM's document number is not correct with origin document number

I am a student who uses text2vec very often. Until last year, I used this program without any problems. But today when I build the DTM with using Parallel fuction, the number of DTM's document is ...
0
votes
1answer
70 views

Implement Arora 2017 in Text2vec

I am trying to replicate Arora 2017 (https://github.com/PrincetonML/SIF / https://openreview.net/forum?id=SyK00v5xx) using text2vec. The authors compute sentence embeddings by averaging word ...
0
votes
0answers
28 views

Convert dgeMatrix for downstream tasks

I am trying to cluster sentence embeddings based on Glove model from text2vec. I generated the embeddings using the glove model like so (I create the iterator, vocab etc in the standard way). # ...
0
votes
1answer
28 views

error running glmnet on 2 combined DTMs (via cBind) in text2vec

I created a tf-idf DTM and a n-gram based DTM in text2vec, using the same dataset. now, i am able to run glmnet on each of them separately, but when i combine these 2 DTMs to via cBind, glmnet gives ...
1
vote
1answer
176 views

ngrams using hash_vectorizer in text2vec

I was trying to create ngrams using hash_vectorizer function in text2vec, when I noticed that it doesn't change the dimensions of my dtm wit changing values. h_vectorizer = hash_vectorizer(hash_size =...
3
votes
1answer
456 views

From word vector to document vector [text2vec]

I'd like to use the GloVe word embedding implemented in text2vec to perform supervised regression/classification. I read the helpful tutorial on the text2vec homepage on how to generate the word ...
0
votes
1answer
68 views

Sparse matrix in CSC format dgCMatrix in LiblineaR occurs error [R]

dtm_train_tfidf is a sparse matrix in CSC format dgCMatrix I am using the function LiblineaR which is supposed to accept sparse matrices. However when I use the sparse matrix dtm_train_tfidf, the ...
1
vote
1answer
48 views

text2vec - Do topics' words update with new data?

I'm currently performing a topic modelling using LDA from text2vec package. I managed to create a dtm matrix and then apply LDA and its fit_transform method with n_topics=50. While looking at the ...
0
votes
1answer
69 views

I have done TF-IDF and want to implement models in caret package [R]

I have implemented the TF-IDF algorithm that is explained in this link: https://cran.r-project.org/web/packages/text2vec/vignettes/text-vectorization.html#tf-idf So, the classifier is implemented ...
0
votes
1answer
68 views

How to use prepare_analogy_questions and check_analogy_accuracy functions in text2vec package?

Following code: library(text2vec) text8_file = "text8" if (!file.exists(text8_file)) { download.file("http://mattmahoney.net/dc/text8.zip", "text8.zip") unzip ("text8.zip", files = "text8") } wiki = ...
0
votes
1answer
611 views

Text preprocessing and topic modelling using text2vec package

I have a large number of documents and I want to do topic modelling using text2vec and LDA (Gibbs Sampling). Steps I need are as (in order): Removing numbers and symbols from the text ...
2
votes
1answer
211 views

Can text2vec and topicmodels generate similar topics with suitable parameter settings for LDA?

I was wondering how results of different packages, hence, algorithms, differ and if parameters could be set in a way to produce similar topics. I had a look at the packages text2vec and topicmodels in ...
1
vote
1answer
47 views

tokenizing a list doesn't work with UTF8

I extract some data from Oracle DB to do some text mining. My data is UTF8 and vocab can't handle it. library(text2vec); library(DBI); Sys.setenv(TZ="+03:00"); drv=dbDriver("Oracle"); con=dbConnect(...
0
votes
1answer
167 views

In R text2vec package - LDA model can show the topic distribution for each tokens in document?

library (text2vec) library (parallel) library (doParallel) N <- parallel::detectCores() cl <- makeCluster (N) registerDoParallel (cl) Ky_young <- read.csv("./Ky_young.csv") IT <- ...
1
vote
4answers
469 views

A lemmatizing function using a hash dictionary does not work with tm package in R

I would like to lemmatize Polish text using a large external dictionary (format like in txt variable below). I am not lucky, to have an option Polish with popular text mining packages. The answer ...
0
votes
1answer
120 views

LDA$new model constructor text2vec R package error: Error in .subset2(public_bind_env, “initialize”)(…) : unused argument (…)

The error is: > lda_model = LDA$new(n_topics = 3, vocabulary = vocab, doc_topic_prior = 0.1, topic_word_prior = 0.01) Error in .subset2(public_bind_env, "initialize")(...) : unused argument (...
1
vote
1answer
361 views

Lemmatization using txt file with lemmes in R

I would like to use external txt file with Polish lemmas structured as follows: (source for lemmas for many other languages http://www.lexiconista.com/datasets/lemmatization/) Abadan Abadanem Abadan ...
0
votes
1answer
91 views

The compatibility between text2vec and RHadoop

At present, we are using text2vec processing large dataset in AWS EC2(single instance), the text data will bigger and bigger in the future, we may try to RHadoop(MapReduce) architecture and don't know ...