contextualized-topic-models
mlconjug3
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contextualized-topic-models | mlconjug3 | |
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7 | 1 | |
1,163 | 2 | |
1.7% | - | |
5.0 | 7.7 | |
3 months ago | 8 months ago | |
Python | Python | |
MIT License | MIT License |
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contextualized-topic-models
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[Project]Topic modelling of tweets from the same user
In our experiments, CTM works well with tweets: https://github.com/MilaNLProc/contextualized-topic-models (I'm one of the authors)
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Extract words from large data set of reviews by sentiment
Use CTM https://github.com/MilaNLProc/contextualized-topic-models with sentiment labels to built distribution of words over labels
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Using Transformer for Topic Modeling - what are the options?
This library from MILA seems quite neat! I haven’t had the change to play with it though : https://github.com/MilaNLProc/contextualized-topic-models
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Catogorize the Data- Topic Modelling algorithm
a bit of shameless self-promotion, but we developed a topic model (https://github.com/MilaNLProc/contextualized-topic-models) that actually supports that use case!
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(NLP) Best practices for topic modeling and generating interesting topics?
If you use CTM, you can provide the topic model two inputs: the preprocessed texts (that will be used by the topic model to generate the topical words) and the unpreprocessed texts (to generate the contextualized representations that will be later concatenated to the document bag-of-word representation). We saw that this slightly improves the performance instead of providing BERT the already-preprocessed text. This feature is supported in the original implementation of CTM, not in OCTIS. See here: https://github.com/MilaNLProc/contextualized-topic-models#combined-topic-model
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Latest trends in topic modelling?
Cross-lingual Contextualized Topic Models with Zero-shot Learning from a team at MilaNLP which uses bag of words representations in combination with multi lingual embeddings from SBERT and works like a VAE (encode the input, use the encoded representation to decode back to a bag of words as close to the input as possible). Using SBERT embeddings makes their model generalise for other languages which may be useful. One major shortfall of this model as I understand is that it can't deal with long documents very elegantly - only up to BERT'S word limit (the workaround is to truncate and use the first words)
mlconjug3
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Introducing mlconjug3. A Python library to conjugate verbs in French, English, Spanish, Italian, Portuguese and Romanian (with more in beta version) using Machine Learning techniques.
I released a new and improved version of the software, called mlconjug3 as it is only compatible with Python 3.x, and had many enhancements and bug fixes. The accuracy of the conjugations models has improved a lot and I am in the process of implementing regional European languages (in beta version for now), like Castillan, Sevillan, Basque language, etc... as well as slavic languages (Czech and Polish for now).
What are some alternatives?
BERTopic - Leveraging BERT and c-TF-IDF to create easily interpretable topics.
wikipron - Massively multilingual pronunciation mining
OCTIS - OCTIS: Comparing Topic Models is Simple! A python package to optimize and evaluate topic models (accepted at EACL2021 demo track)
MetalTranslate - Customizable machine translation in C++
PolyFuzz - Fuzzy string matching, grouping, and evaluation.
draviz - A method for assessing the data readiness of NLP projects, as well as the code necessary for visualizing the outcome of the method.
tika-python - Tika-Python is a Python binding to the Apache Tika™ REST services allowing Tika to be called natively in the Python community.
transformers - 🤗 Transformers: State-of-the-art Machine Learning for Pytorch, TensorFlow, and JAX.
thousand-language-morphology - Tools for building very wide (but shallow) language models. This scrapes bible.com for all languages and matches up verses with those from a parsed Greek New Testament -- to produce vocabulary and grammar forms for a large number of languages.
Top2Vec - Top2Vec learns jointly embedded topic, document and word vectors.
Sentimentanalysis - Language independent sentiment analysis