NLP 领域常见任务的实现,包括新词发现、以及基于pytorch的词向量、中文文本分类、实体识别、摘要文本生成、句子相似度判断、三元组抽取、预训练模型等。
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Updated
May 20, 2023 - Python
NLP 领域常见任务的实现,包括新词发现、以及基于pytorch的词向量、中文文本分类、实体识别、摘要文本生成、句子相似度判断、三元组抽取、预训练模型等。
Spanish word embeddings computed with different methods and from different corpora
Text to abstract art generation for the holidays!
An evaluation of word-embeddings for classification
Tools for shrinking fastText models (in gensim format)
Machine Translation from Sanskrit to Hindi using Unsupervised and Supervised Learning
Persian sentiment analysis ( آناکاوی سهش های فارسی | تحلیل احساسات فارسی )
🌸 fastText + Bloom embeddings for compact, full-coverage vectors with spaCy
Repository for the experiments described in the paper named "DeepSentiPers: Novel Deep Learning Models Trained Over Proposed Augmented Persian Sentiment Corpus"
Improving Word Translation via Two-Stage Contrastive Learning (ACL 2022). Keywords: Bilingual Lexicon Induction, Word Translation, Cross-Lingual Word Embeddings.
PyTorch repository for text categorization and NER experiments in Turkish and English.
Let's hunt Fake News using Word2Vec, GloVe, FastText or learnt from corpus German embeddings.
Biomedical Word embeddings generated from Spanish Biomedical corpora.
A monolingual and cross-lingual meta-embedding generation and evaluation framework
Repository for the free online book Oddly Satisfying Deep Learning from Scratch (link below!)
Improving Bilingual Lexicon Induction with Cross-Encoder Reranking (Findings of EMNLP 2022). Keywords: Bilingual Lexicon Induction, Word Translation, Cross-Lingual Word Embeddings.
Ensemble PhoBERT with FastText Embedding to improve performance on Vietnamese Sentiment Analysis tasks.
This project contains the code to use custom fasttext embeddings with flair framework.
Language Models for the legal domain in Spanish done @ BSC-TEMU within the "Plan de las Tecnologías del Lenguaje" (Plan-TL).
This is one of my fun projects. It's a review classifier based on Amazon's reviews dataset hosted on Kaggle. I used FastText and Deep Learning model LSTM to build it.
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