Python & Command-line tool to gather text and metadata on the Web: Crawling, scraping, extraction, output as CSV, JSON, HTML, MD, TXT, XML
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Updated
Feb 17, 2025 - Python
Python & Command-line tool to gather text and metadata on the Web: Crawling, scraping, extraction, output as CSV, JSON, HTML, MD, TXT, XML
Text preprocessing, representation and visualization from zero to hero.
Beautiful visualizations of how language differs among document types.
Library to scrape and clean web pages to create massive datasets.
Python package for Korean natural language processing.
Python implementation of the Rapid Automatic Keyword Extraction algorithm using NLTK.
从新浪财经、每经网、金融界、中国证券网、证券时报网上,爬取上市公司(个股)的历史新闻文本数据进行文本分析、提取特征集,然后利用SVM、随机森林等分类器进行训练,最后对实施抓取的新闻数据进行分类预测
Language, Knowledge, Cognition
Various Algorithms for Short Text Mining
RMDL: Random Multimodel Deep Learning for Classification
🗣️ Tool to generate adversarial text examples and test machine learning models against them
A Python package implementing a new interpretable machine learning model for text classification (with visualization tools for Explainable AI )
Automatically extract chemical information from scientific documents
短文本聚类预处理模块 Short text cluster
Multilingual Rapid Automatic Keyword Extraction (RAKE) for Python
HDLTex: Hierarchical Deep Learning for Text Classification
A simple NLP library allows profiling datasets with one or more text columns. When given a dataset and a column name containing text data, NLP Profiler will return either high-level insights or low-level/granular statistical information about the text in that column.
Text Classification by Convolutional Neural Network in Keras
An experiment about re-implementing supervised learning models based on shallow neural network approaches (e.g. fastText) with some additional exclusive features and nice API. Written in Python and fully compatible with Scikit-learn.
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