Questions tagged [fasttext]

fastText is a library for efficient learning of word representations and sentence classification.

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29 views

Using Gensim Fasttext model with LSTM nn in keras

I have trained fasttext model with Gensim over the corpus of very short sentences (up to 10 words). I know that my test set includes words that are not in my train corpus, i.e some of the words in my ...
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11 views

How to get most significant tokens for each label in Fasttext supervised classification model?

I've trained a Fasttext model using .train_supervised() and can't get my head around how to get the most important words for each label according to the model. I have three labels so I would expect to ...
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1answer
26 views

word similarity query with fasttext

I have two lists of words, say, list 1 : future proof list 2 : house past foo bar I would like to calculate the semantic distance between each word of list 1 with each word of list 2. Fasttext has a ...
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1answer
52 views

Latest Pre-trained Multilingual Word Embedding

Are there any latest pre-trained multilingual word embeddings (multiple languages are jointly mapped to a same vector space)? I have looked at the following but they don't fit my needs: FastText / ...
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34 views

Training data for unsupervised learning api

I am trying to use the "crawl-300d-2M.vec" pre-trained model to cluster the documents for my projects. I am not sure what format the training data(train.txt) should be when i use ft_model = fasttext....
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2answers
33 views

Saving FastText custom model binary with Gensim

I am trying to save a custom FastText model trained with gensim. I want to save the binary files to have the possibility of training again the model, if it may. The code to save the binary file is ...
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1answer
60 views

Word embedding with gensim and FastText, training on pretrained vectors

I am trying to load the pretrained vec file of Facebook fasttext crawl-300d-2M.vec with the next code: from gensim.models.fasttext import load_facebook_model, load_facebook_vectors model_facebook = ...
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16 views

Full FastText model from KeyedVectors to infer new words in aligned space

I am working on a NLP problem with gensim that requires the use of multilingual embeddings. I have the already pretrained and aligned .txt embeddings that FastText provides in their web. Sadly, they ...
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38 views

Sentiment analysis of Italian sentences

If you have any experience on sentiment analysis, could you please tell me how I can analyse these sentences, which tool, library, module should I need? I nostri test di laboratorio ti permettono di ...
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1answer
34 views

Text preprocessing for text classification using fastText

What text preprocessing produces the best results for supervised text classification using fastText? The official documentation shows a only a simple prepocessing consisting of lower-casing and ...
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1answer
51 views

Spell checking using fastText model?

So I'm using fastText from its GitHub repo and wondering if it has build-in spell checking command. If yes, how do I use them? and can I get full documentation of fastText because as in here answer ...
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39 views

Resize the pre trained fasttext model ( using the .vec file and not the binary )

In order to create my embedding layer for a classification problem, i needed to use the fasttext english pre trained model, i download the binary file at first, resize it from 300 to 100 and couldn't ...
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1answer
64 views

gensim - fasttext - Why `load_facebook_vectors` doesn't work?

I've tried to load pre-trained FastText vectors from fastext - wiki word vectors. My code is below, and it works well. from gensim.models import FastText model = FastText.load_fasttext_format('./...
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1answer
32 views

Exception: Cannot load model.bin

I have got the following error message trying to run a model: Exception: fastText: Cannot load model.bin due to C++ extension failed to allocate the memory The code I have used is the following: ...
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1answer
46 views

Sentiment analysis and fasttext: import error

I want to run some sentiment analysis using FastText. However, I have always got errors during the declaration of libraries and no example and tutorial within the web seems to be able to fix this. I ...
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146 views

What framework should I use to multi-label classification with thousands of labels

I'm working now on multi-label classification service and currently I have prepared training dataset. The problem is that current training dataset has a lot of different labels (around 80 000). At ...
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1answer
133 views

Using fasttext pre-trained models as an Embedding layer in Keras

My goal is to create text generator which is going to generate non-english text based on learning set I provide to it. I'm currently at the stage of figuring out how the model actually should looks ...
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24 views

Initial weights for GloVe and fastText embeddings in Python

I want to train GloVe embeddings based on my own corpus. However, I want the initial weights for the words in my vocabulary to be equal to the vectors from the pre-trained GloVe model. 1) Is there ...
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1answer
154 views

FastText recall is 'nan' but precision is a number

I trained a supervised model in FastText using the Python interface and I'm getting weird results for precision and recall. First, I trained a model: model = fasttext.train_supervised("train.txt", ...
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1answer
32 views

fastText WASM won't make

I'm following the instructions to generate the WebAssembly module for fastText, and have run into an error in the make wasm step, as described here: https://fasttext.cc/docs/en/webassembly-module....
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1answer
34 views

Using fastText Sentence Vector as an Input Feature

I want to use the fastText Sentence Vector as an input Feature. vector = model.get_sentence_vector('Original Sentence') I am attempting to perform Binary Classification of sentences using MLPs and ...
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1answer
45 views

Python Gensim FastText Saving and Loading Model

I am working with Gensim FASTText modeling and have the following questions. The output of "ft_model.save(BASE_PATH + MODEL_PATH + fname)" saves the following 3 files. Is this correct? is there a way ...
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1answer
33 views

Is it possible to compare similarity scores across two word embeddings repository?

In my study, I am exploring if there is a statistically significant ideological bias in one set of media as compared to another. I was hoping to explore this using the word embeddings approach. Let ...
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72 views

Text classification: Fasttext?

I would like to classify some text. I have never done before but I read about using Fasttext (https://github.com/facebookresearch/fastText/tree/master/python#installation). I have tried to follow the ...
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28 views

R: Machine learning for name matching don't work

I have a data table much like "data" (but longer!) bellow containing raw ingredients, I want to match these with another datatable that I have, that contains a list of ingredients. That second one ...
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17 views

How to get pure google news articles for training own word vectors?

Is it possible to get a latest dump of google news for specific NLP purposes? I want to get ideally the latest google news (from this year) to train word embeddings with fasttext. The reason why is to ...
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1answer
38 views

fasttext get Wrong Number of Labels 0

when i run fasttext.train_supervised, i find the result like this: Read 1M words Number of words: 644123 Number of labels: 0 my data process function is: def to_txt(dataframePath, savePath, ...
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1answer
40 views

Parallelizing fastText.get_sentence_vector with dask gives pickling error

I was trying to get fastText sentence embeddings for 80 Million English tweets using the parallelizing mechanism using dask as described in this answer: How do you parallelize apply() on Pandas ...
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1answer
29 views

Supervised training and testing in GenSims FastText implementation

I am currently training a Gensim FastText model with a document from a certain domain with the unsupervised training method from Gensim. After this training of the word representations i would like ...
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3answers
56 views

An algorithm for computing the edit-distance between two words

I am trying to write Python code that takes a word as an input (e.g. book), and outputs the most similar word with similarity score. I have tried different off-the-shelf edit-distance algorithms ...
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60 views

Increase speed of machine learning model applying to a collection of texts

I have a JSON file with around 3.000.000 texts. I also have 4 pretrained Machine Learning model that get a text as input and return an 1d numpy array of 300 size. I tried with both Pandas and Dask but ...
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1answer
144 views

fasttext building error as Python module in Docker container

I have been trying to install fasttext in a docker container. I am getting the same error after trying many pre-installations. Essentially, I have the same code in windows and I installed via pip in ...
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34 views

Text classification using fasttext

I have a set of texts (one text is a few sentences) and labels [1,0] assigned to them. I have to build CNN classifier with fasttexts (I use cc.300.bin model) to convert sentences into vectors. The ...
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11 views

fastText Language identification of languages without clear word boundaries

I am using fastText for language identification. The predict() function of FT expects to be given a single line of text and splits words on whitespace. For Chinese or other languages without clear ...
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2answers
83 views

use fasttext by windows and build the binary file

I would be very thankful if I can have your help, I want to use fasttext by windows 10 (fastext work officially with mac and linux) which I have installed base on this hints https://subscription....
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1answer
46 views

Vectorize list of string with Word2Vec to feed to keras sequential layer

I am trying to built a custom made word embedding model with fastText, that represents my data (list of sentences) as vectors so I can "feed" it to a Keras CNN for abusive language detection. My ...
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1answer
36 views

How to build lemmatizer using Fasttext

I have a huge amount of words (4M) in Arabic dialect with their correspending lemmas and i want to build a lemmatizer for new words not in that data by leveraging it. The question is how to use ...
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31 views

Does fasttext use deep learning model?

I nearly study library fasttext to classification text. I would like is know if fasttext is using deep learning model, specifically CNN to. A senior python who used fasttext to classify text told me ...
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1answer
34 views

training fasttext models with social generated content

I am currently learning about text classification using Facebook FastText. I have found some data from Kaggle that contains characters such as �� or twitter username and hashtags. I tried searching ...
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1answer
486 views

TypeError: (): incompatible function arguments. The following argument types are supported: 1. (self: fasttext_pybind.args, arg0: float) -> None

I would like Model training with train.py file, but I keep getting the following error: setattr(a, k, v) TypeError: (): incompatible function arguments. The following argument types are supported: 1. ...
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1answer
50 views

Use fasttext model (gensim) with threading

Is it possible to access a fasttext model (gensim) using multithreading? Currently, I'm trying to load a model once (due to size and loading time), so it stays in memory and access its similarity ...
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1answer
31 views

python: print fasttext query to file

I'm rather new to this I'm trying to perform a nearest neighbors fasttext query and get the readout printed to a file. My code: model=fasttext.load_model("dir/cc.en.300.bin") list = ("past", "...
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1answer
70 views

Why is my cosine similarity always positive? (fasttext)

I'm trying to evaluate the cosine similarity of two vectors representing words. I'm using the pre-trained word vectors from fasttext. Now, I'm wondering why my cosine similarity is always a positive ...
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1answer
90 views

Fasttext aligned word vectors for translating homographs

Homograph is a word that shares the same written form as another word but has a different meaning, like right in the sentences below: success is about making the right decisions. Turn right after the ...
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14 views

Integrating tensorflow's official implementation of nmt with fasttext

I am trying to tackle out of vocab words in my machine translation model build using Tensorflow's official implementation of NMT . I am very much confused how to do it since I am new to NLP. I tried ...
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1answer
206 views

AttributeError: module 'fasttext.util' has no attribute 'download_model'

When I try to run import fasttext.util fasttext.util.download_model('en', if_exists='ignore') I get the following error AttributeError: module 'fasttext.util' has no attribute 'download_model'
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1answer
37 views

How can I load chinese fasttext model with gensim?

While trying to load chines fasttext model(cc.zh.300.bin) with gensim, I stucked with following error UnicodeDecodeError:'utf-8' codec can't decode byte 0xba in position 0: invalid start byte ...
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1answer
103 views

Issues while loading a trained fasttext model using gensim

I am trying to load a trained fasttext model using gensim. The model has been trained on some data. Earlier, I have used model.save() with a extension of .bin to use it later. After the training ...
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1answer
64 views

Cannot reproduce pre-trained word vectors from its vector_ngrams

Just curiosity, but I was debugging gensim's FastText code for replicating the implementation of Out-of-Vocabulary (OOV) words, and I'm not being able to accomplish it. So, the process i'm following ...
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13 views

how to find uncategorize data using fasttext supervised learning

how to find UN-categorize data in FAST-TEXT supervised model, even if we pass the black text under model.predict('') it's categorizing with high accuracy. example print(model.predict(" ")) output - (...

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