Project Name | Stars | Downloads | Repos Using This | Packages Using This | Most Recent Commit | Total Releases | Latest Release | Open Issues | License | Language |
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Nlp Journey | 1,563 | 5 months ago | 3 | April 29, 2020 | apache-2.0 | Python | ||||
Documents, papers and codes related to Natural Language Processing, including Topic Model, Word Embedding, Named Entity Recognition, Text Classificatin, Text Generation, Text Similarity, Machine Translation),etc. All codes are implemented intensorflow 2.0. | ||||||||||
Ml Projects | 243 | 3 years ago | n,ull | |||||||
ML based projects such as Spam Classification, Time Series Analysis, Text Classification using Random Forest, Deep Learning, Bayesian, Xgboost in Python | ||||||||||
Germanwordembeddings | 224 | 9 months ago | 1 | mit | Jupyter Notebook | |||||
Toolkit to obtain and preprocess german corpora, train models using word2vec (gensim) and evaluate them with generated testsets | ||||||||||
Practical 1 | 220 | 3 years ago | Jupyter Notebook | |||||||
Oxford Deep NLP 2017 course - Practical 1: word2vec | ||||||||||
Splitter | 203 | 10 months ago | 1 | gpl-3.0 | Python | |||||
A Pytorch implementation of "Splitter: Learning Node Representations that Capture Multiple Social Contexts" (WWW 2019). | ||||||||||
Role2vec | 157 | a year ago | gpl-3.0 | Python | ||||||
A scalable Gensim implementation of "Learning Role-based Graph Embeddings" (IJCAI 2018). | ||||||||||
Musae | 122 | 2 years ago | gpl-3.0 | Python | ||||||
The reference implementation of "Multi-scale Attributed Node Embedding". (Journal of Complex Networks 2021) | ||||||||||
Diff2vec | 116 | a year ago | gpl-3.0 | Python | ||||||
Reference implementation of Diffusion2Vec (Complenet 2018) built on Gensim and NetworkX. | ||||||||||
Deep Siamese Text Similarity | 108 | 6 years ago | 3 | mit | Python | |||||
基于siamese-lstm的中文句子相似度计算 | ||||||||||
Walklets | 96 | a year ago | gpl-3.0 | Python | ||||||
A lightweight implementation of Walklets from "Don't Walk Skip! Online Learning of Multi-scale Network Embeddings" (ASONAM 2017). |