{ "corpora": { "semeval-2016-2017-task3-subtaskBC": { "num_records": -1, "record_format": "dict", "file_size": 6344358, "reader_code": "https://github.com/RaRe-Technologies/gensim-data/releases/download/semeval-2016-2017-task3-subtaskB-eng/__init__.py", "license": "All files released for the task are free for general research use", "fields": { "2016-train": ["..."], "2016-dev": ["..."], "2017-test": ["..."], "2016-test": ["..."] }, "description": "SemEval 2016 / 2017 Task 3 Subtask B and C datasets contain train+development (317 original questions, 3,169 related questions, and 31,690 comments), and test datasets in English. 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Used for testing purposes; see wiki-english-* for proper full Wikipedia datasets.", "checksum": "68799af40b6bda07dfa47a32612e5364", "file_name": "text8.gz", "read_more": ["http://mattmahoney.net/dc/textdata.html"], "parts": 1 }, "fake-news": { "num_records": 12999, "record_format": "dict", "file_size": 20102776, "reader_code": "https://github.com/RaRe-Technologies/gensim-data/releases/download/fake-news/__init__.py", "license": "https://creativecommons.org/publicdomain/zero/1.0/", "fields": { "crawled": "date the story was archived", "ord_in_thread": "", "published": "date published", "participants_count": "number of participants", "shares": "number of Facebook shares", "replies_count": "number of replies", "main_img_url": "image from story", "spam_score": "data from webhose.io", "uuid": "unique identifier", "language": "data from webhose.io", "title": "title of story", "country": "data from webhose.io", "domain_rank": "data from webhose.io", "author": "author of story", "comments": "number of Facebook comments", "site_url": "site URL from BS detector", "text": "text of story", "thread_title": "", "type": "type of website (label from BS detector)", "likes": "number of Facebook likes" }, "description": "News dataset, contains text and metadata from 244 websites and represents 12,999 posts in total from a specific window of 30 days. 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There are (ostensibly) no genuine, reliable, or trustworthy news sources represented in this dataset (so far), so don't trust anything you read.", "checksum": "5e64e942df13219465927f92dcefd5fe", "file_name": "fake-news.gz", "read_more": ["https://www.kaggle.com/mrisdal/fake-news"], "parts": 1 }, "20-newsgroups": { "num_records": 18846, "record_format": "dict", "file_size": 14483581, "reader_code": "https://github.com/RaRe-Technologies/gensim-data/releases/download/20-newsgroups/__init__.py", "license": "not found", "fields": { "topic": "name of topic (20 variant of possible values)", "set": "marker of original split (possible values 'train' and 'test')", "data": "", "id": "original id inferred from folder name" }, "description": "The notorious collection of approximately 20,000 newsgroup posts, partitioned (nearly) evenly across 20 different newsgroups.", "checksum": "c92fd4f6640a86d5ba89eaad818a9891", "file_name": "20-newsgroups.gz", "read_more": ["http://qwone.com/~jason/20Newsgroups/"], "parts": 1 }, "__testing_matrix-synopsis": { "description": "[THIS IS ONLY FOR TESTING] Synopsis of the movie matrix.", "checksum": "1767ac93a089b43899d54944b07d9dc5", "file_name": "__testing_matrix-synopsis.gz", "read_more": ["http://www.imdb.com/title/tt0133093/plotsummary?ref_=ttpl_pl_syn#synopsis"], "parts": 1 }, "__testing_multipart-matrix-synopsis": { "description": "[THIS IS ONLY FOR TESTING] Synopsis of the movie matrix.", "checksum-0": "c8b0c7d8cf562b1b632c262a173ac338", "checksum-1": "5ff7fc6818e9a5d9bc1cf12c35ed8b96", "checksum-2": "966db9d274d125beaac7987202076cba", "file_name": "__testing_multipart-matrix-synopsis.gz", "read_more": ["http://www.imdb.com/title/tt0133093/plotsummary?ref_=ttpl_pl_syn#synopsis"], "parts": 3 } }, "models": { "fasttext-wiki-news-subwords-300": { "num_records": 999999, "file_size": 1005007116, "base_dataset": "Wikipedia 2017, UMBC webbase corpus and statmt.org news dataset (16B tokens)", "reader_code": "https://github.com/RaRe-Technologies/gensim-data/releases/download/fasttext-wiki-news-subwords-300/__init__.py", "license": "https://creativecommons.org/licenses/by-sa/3.0/", "parameters": { "dimension": 300 }, "description": "1 million word vectors trained on Wikipedia 2017, UMBC webbase corpus and statmt.org news dataset (16B tokens).", "read_more": ["https://fasttext.cc/docs/en/english-vectors.html", "https://arxiv.org/abs/1712.09405", "https://arxiv.org/abs/1607.01759"], "checksum": "de2bb3a20c46ce65c9c131e1ad9a77af", "file_name": "fasttext-wiki-news-subwords-300.gz", "parts": 1 }, "conceptnet-numberbatch-17-06-300": { "num_records": 1917247, "file_size": 1225497562, "base_dataset": "ConceptNet, word2vec, GloVe, and OpenSubtitles 2016", "reader_code": "https://github.com/RaRe-Technologies/gensim-data/releases/download/conceptnet-numberbatch-17-06-300/__init__.py", "license": "https://github.com/commonsense/conceptnet-numberbatch/blob/master/LICENSE.txt", "parameters": { "dimension": 300 }, "description": "ConceptNet Numberbatch consists of state-of-the-art semantic vectors (also known as word embeddings) that can be used directly as a representation of word meanings or as a starting point for further machine learning. 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