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monkeylearn-phpOfficial PHP client for the MonkeyLearn API. Build and consume machine learning models for language processing from your PHP apps.
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HiGitClassHiGitClass: Keyword-Driven Hierarchical Classification of GitHub Repositories (ICDM'19)
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NLP ToolkitLibrary of state-of-the-art models (PyTorch) for NLP tasks
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small-textActive Learning for Text Classification in Python
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monkeylearn-javaOfficial Java client for the MonkeyLearn API. Build and consume machine learning models for language processing from your Java apps.
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nsmc-zeppelin-notebookMovie review dataset Word2Vec & sentiment classification Zeppelin notebook
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yunyi2018“云移杯- 景区口碑评价分值预测
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nlp-ltNatural Language Processing for Lithuanian language
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textgoText preprocessing, representation, similarity calculation, text search and classification. Let's go and play with text!
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3HANAn original implementation of "3HAN: A Deep Neural Network for Fake News Detection" (ICONIP 2017)
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WSDM-Cup-2019[ACM-WSDM] 3rd place solution at WSDM Cup 2019, Fake News Classification on Kaggle.
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CS231nPyTorch/Tensorflow solutions for Stanford's CS231n: "CNNs for Visual Recognition"
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DaDengAndHisPython【微信公众号:大邓和他的python】, Python语法快速入门https://www.bilibili.com/video/av44384851 Python网络爬虫快速入门https://www.bilibili.com/video/av72010301, 我的联系邮箱
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fake-news-detectionThis repo is a collection of AWESOME things about fake news detection, including papers, code, etc.
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feedIOA Feed Aggregator that Knows What You Want to Read.
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NewsMTSCTarget-dependent sentiment classification in news articles reporting on political events. Includes a high-quality data set of over 11k sentences and a state-of-the-art classification model.
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FNet-pytorchUnofficial implementation of Google's FNet: Mixing Tokens with Fourier Transforms
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text2classMulti-class text categorization using state-of-the-art pre-trained contextualized language models, e.g. BERT
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svmSupport Vector Machine in Javascript
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Naive-Resume-MatchingText Similarity Applied to resume, to compare Resumes with Job Descriptions and create a score to rank them. Similar to an ATS.
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ml-with-text[Tutorial] Demystifying Natural Language Processing with Python
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Product-Categorization-NLPMulti-Class Text Classification for products based on their description with Machine Learning algorithms and Neural Networks (MLP, CNN, Distilbert).
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DeepClassifierDeepClassifier is aimed at building general text classification model library.It's easy and user-friendly to build any text classification task.
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MetaCatMinimally Supervised Categorization of Text with Metadata (SIGIR'20)
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augmentyAugmenty is an augmentation library based on spaCy for augmenting texts.
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HiGRUsImplementation of the paper "Hierarchical GRU for Utterance-level Emotion Recognition" in NAACL-2019.
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nlp classificationImplementing nlp papers relevant to classification with PyTorch, gluonnlp
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Filipino-Text-BenchmarksOpen-source benchmark datasets and pretrained transformer models in the Filipino language.
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10kGNADTen Thousand German News Articles Dataset for Topic Classification
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text-classification-svmThe missing SVM-based text classification module implementing HanLP's interface
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NSP-BERTThe code for our paper "NSP-BERT: A Prompt-based Zero-Shot Learner Through an Original Pre-training Task —— Next Sentence Prediction"
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policy-data-analyzerBuilding a model to recognize incentives for landscape restoration in environmental policies from Latin America, the US and India. Bringing NLP to the world of policy analysis through an extensible framework that includes scraping, preprocessing, active learning and text analysis pipelines.
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ganbert-pytorchEnhancing the BERT training with Semi-supervised Generative Adversarial Networks in Pytorch/HuggingFace
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Pytorch-NLUPytorch-NLU,一个中文文本分类、序列标注工具包,支持中文长文本、短文本的多类、多标签分类任务,支持中文命名实体识别、词性标注、分词等序列标注任务。 Ptorch NLU, a Chinese text classification and sequence annotation toolkit, supports multi class and multi label classification tasks of Chinese long text and short text, and supports sequence annotation tasks such as Chinese named entity recognition, part of speech ta…
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CaverCaver: a toolkit for multilabel text classification.
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nlpbuddyA text analysis application for performing common NLP tasks through a web dashboard interface and an API
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extremeTextLibrary for fast text representation and extreme classification.
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ML4K-AI-ExtensionUse machine learning in AppInventor, with easy training using text, images, or numbers through the Machine Learning for Kids website.
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MetaLifelongLanguageRepository containing code for the paper "Meta-Learning with Sparse Experience Replay for Lifelong Language Learning".
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kwxBERT, LDA, and TFIDF based keyword extraction in Python
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support-tickets-classificationThis case study shows how to create a model for text analysis and classification and deploy it as a web service in Azure cloud in order to automatically classify support tickets. This project is a proof of concept made by Microsoft (Commercial Software Engineering team) in collaboration with Endava http://endava.com/en
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ebe-datasetEvidence-based Explanation Dataset (AACL-IJCNLP 2020)
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synaptic-simple-trainerA ready to go text classification trainer based on synaptic (https://github.com/cazala/synaptic)
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