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GensimTopic Modelling for Humans
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MagnitudeA fast, efficient universal vector embedding utility package.
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WebvectorsWeb-ify your word2vec: framework to serve distributional semantic models online
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walkletsA lightweight implementation of Walklets from "Don't Walk Skip! Online Learning of Multi-scale Network Embeddings" (ASONAM 2017).
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Nlp In PracticeStarter code to solve real world text data problems. Includes: Gensim Word2Vec, phrase embeddings, Text Classification with Logistic Regression, word count with pyspark, simple text preprocessing, pre-trained embeddings and more.
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Word2vec訓練中文詞向量 Word2vec, Word2vec was created by a team of researchers led by Tomas Mikolov at Google.
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watchmanWatchman: An open-source social-media event-detection system
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AskNowNQSA question answering system for RDF knowledge graphs.
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sibeExperimental Haskell machine learning library
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go2vecRead and use word2vec vectors in Go
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word2vec.r📐Julia's implementation of word2vec in R
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fsauor2018基于LSTM网络与自注意力机制对中文评论进行细粒度情感分析
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VectorhubVector Hub - Library for easy discovery, and consumption of State-of-the-art models to turn data into vectors. (text2vec, image2vec, video2vec, graph2vec, bert, inception, etc)
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