Questions tagged [gensim]

Gensim is a free Python framework designed to automatically extract semantic topics from documents, as efficiently (computer-wise) and painlessly (human-wise) as possible.

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What is stored in similarities.SparseMatrixSimilarity().index

I am using cosine similarity function in gensim module, which is similarities.SparseMatrixSimilarity(). And I want to get similarities between all index documents. The method have an attribute:index, ...
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2answers
18 views

Gensim pretrained model similarity

Problem : Im using glove pre-trained model with vectors to retrain my model with a specific domain say #cars, after training I want to find similar words within my domain but I got words not in my ...
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1answer
18 views

Streaming corpus to a vectorizer in a pipeline

I have a large language corpus and I use sklearn tfidf vectorizer and gensim Doc2Vec to compute language models. My total corpus has about 100,000 documents and I realized that my Jupyter notebook ...
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2answers
23 views

Install Gensim in python3

I have two versions of python: python2, python3. When I install gensim it goes to python2 I install it with the following comand sudo pip3 install --upgrade gensim how can I install it in python3?...
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1answer
131 views

Error with calling Numpy, Scipy, Gensim in python3

Why when I call Numpy, Scipy, Gensim with python3 in linux I have the following error? >import gensim _concrete_types = {v.type for k, v in _concrete_typeinfo.items()} AttributeError: 'tuple' ...
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Solving environment: failed error while trying to install gensim with conda install gensim on command line [on hold]

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49 views

Gensim installation with python3

I installed Gensim in python3 when I call gensim I got this error. Can someone help? >>> import gensim AttributeError: 'tuple' object has no attribute 'type'
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1answer
38 views

Doc2Vec: infer most similar vector from ConcatenatedDocvecs

I am generating a Doc2Vec embedding of a Pandas DataFrame by following the guidance provided here from gensim.models import Doc2Vec from gensim.models.doc2vec import TaggedDocument from gensim.test....
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2answers
122 views

What is the stochastic aspect of Word2Vec?

I'm vectorizing words on a few different corpora with Gensim and am getting results that are making me rethink how Word2Vec functions. My understanding was that Word2Vec was deterministic, and that ...
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1answer
24 views

FastText: Can't get cross_validation

I am struggling to implement FastText (FTTransformer) into a Pipeline that iterates over different vectorizers. More particular, I can't get cross-validation scores. Following code is used: %%time ...
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0answers
20 views

IndexError: string index out of range GENSIM

Hi if anyone can help me with this python library gensim, it is getting error out by the following error after the code. I try to debug it but could not figure out the problem. from gensim.models....
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23 views

Warnings in gensim PhrasesTransformer

I like to solve a problem related to PhrasesTransformer in the gensim package. Following script is used to add Phrases to a scikit-learn Pipeline: #print(gensim.__version__) #3.6.0 import pandas as ...
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1answer
25 views

Improving the speed of preprocessing

Following code is used to preprocess text with a custom lemmatizer function: %%time import pandas as pd import numpy as np from sklearn.model_selection import train_test_split from gensim.utils ...
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0answers
21 views

want to identify the elements in a sentence which are positively commented and negatively commented

i am having reviews for vehicles. now i want to identify the parts which is been positively commented and negativel commented separately.for ex "car engine seems to perform excellently well but boot ...
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0answers
11 views

Converting KeyedVector to a tsv file

I am trying to convert a KeyedVector word2vec object to a tsv file. Here is my code: wv_embeddings = KeyedVectors.load_word2vec_format('GoogleNews-vectors-negative300.bin.gz', binary=True, limit=...
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1answer
20 views

Filtering Word Embeddings from word2vec

I have downloaded Google's pretrained word embeddings as a binary file here (GoogleNews-vectors-negative300.bin.gz). I want to be able to filter the embedding based on some vocabulary. I first tried ...
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21 views

Error in Data Processing in Gensim LDA using Pandas Dataframe

I am using Gensim LDA for the topic modelling. I am using pandas DataFrame for the processing. but I am getting an error TypeError: decoding to str: need a bytes-like object, Series found I need ...
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1answer
26 views

Show progress in lemmatization

following script is used to lemmatize a given input column with text: %%time import pandas as pd from gensim.utils import lemmatize from gensim.parsing.preprocessing import STOPWORDS STOPWORDS = list(...
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41 views

Is this the right way to preprocess and feed the inputs to Gensim?

I'm just trying to use Gensim. I have tens of thousands of big txt documents that I want to model their topics. I want to find out what are the topics in each document. On average, a file contains ...
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25 views

Implementing PhrasesTransformer() into CountVectorizer Pipeline?

Following code is used to preprocess the input (lowercase, stopword-removal, tokenization, lemmatization,minimum-length), and output the vocabulary: D2V import pandas as pd from sklearn.pipeline ...
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0answers
13 views

Assigning Topic's Keywords to Document

I am using nltk corpus (Brown) which have several documents. Using LDA i have got topics and words related to these topics Current output (Extracted Topics and their words) I did the following code ...
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1answer
24 views

Cross-validation for paragraph-vector model

I just came across an error when trying to apply a cross-validation for a paragraph vector model: import numpy as np import pandas as pd from sklearn.linear_model import LogisticRegression from ...
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1answer
22 views

Accessing model in gensim wrapper

I use following gensim wrapper to train a word-vector model: import numpy as np import pandas as pd from gensim.sklearn_api import W2VTransformer from gensim.utils import simple_preprocess # Load ...
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1answer
46 views

W2VTransformer: Only works with one word as input?

Following reproducible script is used to compute the accuracy of a Word2Vec classifier with the W2VTransformer wrapper in gensim: import numpy as np import pandas as pd from sklearn.linear_model ...
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20 views

How to fix “Relative import error” in python (gensim.summarization)

I'm running this code from gensim.summarization import summarize text = "In late summer 1945, guests are gathered for the wedding reception of Don Vito Corleones " + \ "daughter Connie (Talia ...
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1answer
35 views

Normalize vectors in gensim model

I have a pre-trained word embedding with vectors of different norms, and I want to normalize all vectors in the model. I am doing it with a for loop that iterates each word and normalizes its vector, ...
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1answer
23 views

Convert PySpark ML Word2Vec model to Gensim Word2Vec model

I've generated a PySpark Word2Vec model like so: from pyspark.ml.feature import Word2Vec w2v = Word2Vec(vectorSize=100, minCount=1, inputCol='words', outputCol = 'vector') model = w2v.fit(df) (The ...
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1answer
43 views

How to get list of context words in Gensim

How to get most frequent context words from pretrained fasttext model? For example: For word 'football' and corpus ["I like playing football with my friends"] Get list of context words: ['playing', '...
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14 views

How should the input corpus of gensim LDA look like?

I try two different kind of input corpus to put into gensim LDA model My document is: documents = ["Apple is releasing a new product", "Amazon sells many things", "Microsoft ...
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19 views

Best way to measure distance between sentences is python?

What is the best current way to measure distance of two sentences? Sentence2vec or is it a better method? What is a good , reliable implementation for sentence2vec?
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1answer
23 views

Wikipedia model training parameters

Pretrained models of English and other language wikipedia are available here... https://wikipedia2vec.github.io/wikipedia2vec/pretrained/ What is the difference between 100d and 500d in case of ...
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35 views

Customizg loss function in Word2vec

I have list of co-occurences and I want to train word2vec model with my own customized loss_function. What is the best way to approach this? Is it possible to set gensim Word2Vec model with my own ...
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18 views

N-grams using gensim

I am trying to generate bi-grams using gensim, but gensim uses a concept of collocation theorem, which is primarily based on co-occurrences of some phrases. I am simply looking for bi-gram in ...
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44 views

Updating TF-IDF using Gensim

Hi I’m using Gensim to find similarity between documents to do so I make TF-IDF of documents and calculate cosine similarity. when I have new document I can calculate similarity of this document with ...
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1answer
26 views

get_document_topics return an empty list.

I am using gensim for topic modeling. After training the lda model I call get_document_topics on a new document to get the topic distribution. However, for some documents, the return value is an empty ...
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1answer
47 views

How to convert pretrained fastText vectors to gensim model

How to convert pretrained fastText vectors to gensim model? I need predict_output_word method. import gensim from gensim.models import Word2Vec from gensim.models.wrappers import FastText ...
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19 views

Adding metadata to words in word2vec

I have a word2vec model and I want to change it by adding some additional data beside the occurrence of the word itself. For example: Category (out of predefined 50), POS etc. I thought of two ways ...
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2answers
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How to use a list in word2vec.similarity

I have a word2vec model using pre-trained GoogleNews-vectors-negative300.bin. The model works fine and I can get the similarities between the two words. For example: word2vec.similarity('culture','...
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21 views

Comparing topics models in Gensim: LDA vs. Author Topic Model

This question is about two different objects in the topic modeling library Gensim for Python. Gensim has a function "diff()" defined for objects of type "LdaModel". It can be used to compare the ...
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2answers
39 views

How to improve the reproducibility of Doc2vec cosine similarity

I am using Gensim's Doc2vec to train a model, and I use the infer_vector to infer the vector of a new document to compare the similarity document of the model. However, reusing the same document can ...
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0answers
19 views

Assign more weight to certain documents within the corpus - LDA - Gensim

I am using LDA for topic modelling but unfortunately my data is heavily skewed. I have documents from 10 different categories and would like each category to equally contribute to the LDA topics. ...
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11 views

Topic Model Ideas

Some background on the work i have done so far : I am building a topic model on the text data and I have done topic tuning (using coherence score ) to determine the optimal number of topics . ...
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0answers
37 views

Some diverging issues of Word2Vec in Gensim using high alpha values

I am implementing word2vec in gensim, on a corpus with nested lists (collection of tokenized words in sentences of sentences form) with 408226 sentences (lists) and a total of 3150546 words or tokens. ...
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2answers
32 views

Embedding vs inserting word vectors directly to input layer

I used gensim to build a word2vec embedding of my corpus. Currently I'm converting my (padded) input sentences to the word vectors using the gensim model. This vectors are used as input for the model. ...
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0answers
13 views

Augmented Frequency on 20newsgroup dataset.TypeError: 'int' object is not iterable

I am working on the 20newsgroup dataset using Python. After using CountVectorizer on it and then using the gensim api for augmented term frequency. I tried fitting it but am getting this error. Here ...
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1answer
43 views

Value of alpha in gensim word-embedding (Word2Vec and FastText) models?

I just want to know the effect of the value of alpha in gensim word2vec and fasttext word-embedding models? I know that alpha is the initial learning rate and its default value is 0.075 form Radim ...
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decoding to str: need a bytes-like object, list found using Gensim

I have a survey with 3 open-end questions. I have performed topic analysis, for each with no problem. When I merged the three questions together using: survey_all = (survey_cleaned, ...
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1answer
80 views

How to avoid decoding to str: need a bytes-like object error in pandas?

Here is my code : data = pd.read_csv('asscsv2.csv', encoding = "ISO-8859-1", error_bad_lines=False); data_text = data[['content']] data_text['index'] = data_text.index documents = data_text It looks ...
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1answer
28 views

Gensim Doc2vec – KeyError: “tag not seen in training corpus/invalid”

I am using gensim's Doc2vec to learn features from news articles. I can successfully train my documents. However, I struggle to retrieve the document vectors from the model for further processing. ...
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1answer
20 views

Similarity measure using vectors in gensim

I have a pair of word and semantic types of those words. I am trying to compute the relatedness measure between these two words using semantic types, for example: word1=king, type1=man, word2=queen, ...