GaussianNBGaussian Naive Bayes (GaussianNB) classifier
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Nepali-News-ClassifierText Classification of Nepali Language Document. This Mini Project was done for the partial fulfillment of NLP Course : COMP 473.
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lapis-bayesNaive Bayes classifier for use in Lua
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Naivebayes📊 Naive Bayes classifier for JavaScript
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BayesNaive Bayes Classifier in Swift for Mac and iOS
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naive-bayes-classifierImplementing Naive Bayes Classification algorithm into PHP to classify given text as ham or spam. This application uses MySql as database.
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Intention-Mining-Intention Mining in Social Networking. It Mines Emotions and polarity for the given keyword . For the keyword it searchers the twitter for the comments and analyzes the results for various events such as Election results, Sports prediction Movie ratings, Breaking news events such as demonetisation and many more. Bayes , Maximum Entropy and Hidde…
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EdgemlThis repository provides code for machine learning algorithms for edge devices developed at Microsoft Research India.
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classySuper simple text classifier using Naive Bayes. Plug-and-play, no dependencies
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chattoChatto is a minimal chatbot framework in Go.
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Actionaicustom human activity recognition modules by pose estimation and cascaded inference using sklearn API
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Simple bayesA Naive Bayes machine learning implementation in Elixir.
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Java Naive Bayes ClassifierA java classifier based on the naive Bayes approach complete with Maven support and a runnable example.
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SytoraA sophisticated smart symptom search engine
Stars: ✭ 111 (+81.97%)
Audio-Classification-using-CNN-MLPMulti class audio classification using Deep Learning (MLP, CNN): The objective of this project is to build a multi class classifier to identify sound of a bee, cricket or noise.
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Url ClassificationMachine learning to classify Malicious (Spam)/Benign URL's
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smalltextClassify short texts with neural network.
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Awesome Decision Tree PapersA collection of research papers on decision, classification and regression trees with implementations.
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ErrantERRor ANnotation Toolkit: Automatically extract and classify grammatical errors in parallel original and corrected sentences.
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Nlp.jsAn NLP library for building bots, with entity extraction, sentiment analysis, automatic language identify, and so more
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Digit Recognizer A Machine Learning classifier for recognizing the digits for humans.
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Whatlang RsNatural language detection library for Rust. Try demo online: https://www.greyblake.com/whatlang/
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GorganizerOrganize your folders into a beautiful classified folder structure with this perfect tool
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Tensorflow Object Detection TutorialThe purpose of this tutorial is to learn how to install and prepare TensorFlow framework to train your own convolutional neural network object detection classifier for multiple objects, starting from scratch
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node-fasttextNodejs binding for fasttext representation and classification.
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Albert Tf2.0ALBERT model Pretraining and Fine Tuning using TF2.0
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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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Monkeylearn⛔️ ARCHIVED ⛔️ 🐒 R package for text analysis with Monkeylearn 🐒
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Computer-Vision-ProjectThe goal of this project was to develop a Face Recognition application using a Local Binary Pattern approach and, using the same approach, develop a real time Face Recognition application.
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aibolitStatic Analyzer for Java Code with Machine Learning in Mind
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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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Lclicensechecker (lc) a command line application which scans directories and identifies what software license things are under producing reports as either SPDX, CSV, JSON, XLSX or CLI Tabular output. Dual-licensed under MIT or the UNLICENSE.
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PancancerBuilding classifiers using cancer transcriptomes across 33 different cancer-types
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labelReaderProgrammatically find and read labels using Machine Learning
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dl-reluDeep Learning using Rectified Linear Units (ReLU)
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pghumorIs This a Joke? Humor Detection in Spanish Tweets
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Bag-of-Visual-Words🎒 Bag of Visual words (BoW) approach for object classification and detection in images together with SIFT feature extractor and SVM classifier.
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Dfl CnnThis is a pytorch re-implementation of Learning a Discriminative Filter Bank Within a CNN for Fine-Grained Recognition
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Speech signal processing and classificationFront-end speech processing aims at extracting proper features from short- term segments of a speech utterance, known as frames. It is a pre-requisite step toward any pattern recognition problem employing speech or audio (e.g., music). Here, we are interesting in voice disorder classification. That is, to develop two-class classifiers, which can discriminate between utterances of a subject suffering from say vocal fold paralysis and utterances of a healthy subject.The mathematical modeling of the speech production system in humans suggests that an all-pole system function is justified [1-3]. As a consequence, linear prediction coefficients (LPCs) constitute a first choice for modeling the magnitute of the short-term spectrum of speech. LPC-derived cepstral coefficients are guaranteed to discriminate between the system (e.g., vocal tract) contribution and that of the excitation. Taking into account the characteristics of the human ear, the mel-frequency cepstral coefficients (MFCCs) emerged as descriptive features of the speech spectral envelope. Similarly to MFCCs, the perceptual linear prediction coefficients (PLPs) could also be derived. The aforementioned sort of speaking tradi- tional features will be tested against agnostic-features extracted by convolu- tive neural networks (CNNs) (e.g., auto-encoders) [4]. The pattern recognition step will be based on Gaussian Mixture Model based classifiers,K-nearest neighbor classifiers, Bayes classifiers, as well as Deep Neural Networks. The Massachussets Eye and Ear Infirmary Dataset (MEEI-Dataset) [5] will be exploited. At the application level, a library for feature extraction and classification in Python will be developed. Credible publicly available resources will be 1used toward achieving our goal, such as KALDI. Comparisons will be made against [6-8].
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Nlc Icd10 ClassifierA simple web app that shows how Watson's Natural Language Classifier (NLC) can classify ICD-10 code. The app is written in Python using the Flask framework and leverages the Watson Developer Cloud Python SDK
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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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