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Nlpaug Alternatives
Similar projects and alternatives to nlpaug
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InfluxDB
Power Real-Time Data Analytics at Scale. Get real-time insights from all types of time series data with InfluxDB. Ingest, query, and analyze billions of data points in real-time with unbounded cardinality.
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Tic-Tac-Toe-Gym
This is the Tic-Tac-Toe game made with Python using the PyGame library and the Gym library to implement the AI with Reinforcement Learning
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azureml-examples
Official community-driven Azure Machine Learning examples, tested with GitHub Actions.
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SuiSense
Using Artificial Intelligence to distinguish between suicidal and depressive messages (4th Place Congressional App Challenge)
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SaaSHub
SaaSHub - Software Alternatives and Reviews. SaaSHub helps you find the best software and product alternatives
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dopamine
Dopamine is a research framework for fast prototyping of reinforcement learning algorithms.
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nlpaug discussion
nlpaug reviews and mentions
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Use WordNet to collect homonyms
You'd want to use an NLP method for this as in order to determine optimal homonyms there would have to be some method of deriving context from the words ahead of and behind the substitution. Take a look at nlpaug.
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Contextual Similarity between a list of n-grams and a website
3) Use deep contextual models with wordpiecing/BPE tokenizers- like all the models: BERT, RoBERTA, etc. On the simpler side, could also swap words with synonyms, which is easy to do with this library: https://github.com/makcedward/nlpaug. Instead of a single n-gram per topic, it might be nice to have a bundle of related words- you could play around with wordnet and see if that's helpful- also easy to do w/ nlpaug.
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Word embeddings / language models for synonym generation?
In practice, even swapping words with dictionary synonyms is a problem because context isn't considered. Lexically sensitive contextual augmentation has become more popular in the last year or two - basically you mask a token using a large language model and then use the model to predict it so it has the full context. It's imperfect, but it's surprisingly useful when you want to upsample data. Nlpaug has an easy-to-use implementation https://github.com/makcedward/nlpaug
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Text Data Augmentation using GPT-2 Language Model
A cool library I recently came across for text augmentation is nlpaug, it does a different thing to your approach, but I think both are useful :)
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[D] Data Augmentation in NLP
This is a nice starting point: https://github.com/makcedward/nlpaug
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NLPAug: what proportion of augmented sentences do you usually add to the dataset?
Since the dataset is relatively tiny, we are working on augmenting it with NLPAug. We use 2 strategies. Synonymisation and back translation.
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Show HN: 40k Book Recommendations on HN Extracted Using Deep Learning
Thank you!
The medium post is amazingly written! I basically did the same thing - and you beat me with the data augmentation piece. I tried using nlpaug [0] but it didn't improve the model performance. I'll definitely try swapping book titles around.
[0] https://github.com/makcedward/nlpaug
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[R] Call for Participation to NL-Augmenter 🦎 → 🐍
Are there any shortfalls in nlpaug which justified another project?
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A Visual Survey of Data Augmentation in NLP
Spelling error injection In this method, we add spelling errors to some random word in the sentence. These spelling errors can be added programmatically or using a mapping of common spelling errors such as this list for English.
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A note from our sponsor - InfluxDB
www.influxdata.com | 15 Jun 2024
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makcedward/nlpaug is an open source project licensed under MIT License which is an OSI approved license.
The primary programming language of nlpaug is Jupyter Notebook.