Your Advanced Twitter stalking tool
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Updated
Aug 20, 2024 - Jupyter Notebook
Your Advanced Twitter stalking tool
pytextclassifier is a toolkit for text classification. 文本分类,LR,Xgboost,TextCNN,FastText,TextRNN,BERT等分类模型实现,开箱即用。
Python package for detecting informal Persian text using regular expressions and rule-based methods
Machine learning based text classification in JavaScript using n-grams and cosine similarity
Natural language detection library for Rust. Try demo online: https://whatlang.org/
多标签文本分类,多标签分类,文本分类, multi-label, classifier, text classification, BERT, seq2seq,attention, multi-label-classification
Custom classifier and named entity recognition models using Python for use with scheduling and events
This repository contains Pattern Recognition and Machine Learning programs in the Python programming language.
Text classifier to classify app reviews on a scale of 1 to 5 using LSTM.
Classifier for app reviews on a scale of 1 to 5 using Gated Recurrent Unit (GRU).
A small, no dependencies, Naive Bayes Text Classifier for JavaScript
Understand how supervised and unsupervised machine learning methods can be used to construct and implement a text classifier in Python.
Solution for the Quora Insincere Questions Classification Kaggle competition.
PyTorch repository for text categorization and NER experiments in Turkish and English.
Implementation of Adversarial attack to generate adversarial samples of text that are misclassified by the LSTM based Classifier.
OCR using tesseract, ImageMagick, EmguCV, an advanced query language and a fluent query interface for C#
A Facebook chatbot that classifies texts using chat history
Easy-to-use Go implementation of the multinomial Naive Bayes classifier for multilabel text classification.
Text classification with Machine Learning and Mealpy
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