cat🐈: the repo for the paper "Embarrassingly Simple Unsupervised Aspect extraction"
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Updated
Sep 15, 2020 - Python
cat🐈: the repo for the paper "Embarrassingly Simple Unsupervised Aspect extraction"
C++ Implementation of the RBF (Radial Basis Function) Network and choosing centroids using K-Means++
ProtVec can be used in protein interaction predictions, structure prediction, and protein data visualization.
I apply machine learning (ML) techniques to Snowplow web event data to understand how variation in marketing site experiences might correlate to customer conversion.
Empowering Scientific Research with AI Assistance! Open Source Code for Data-Driven Dimensional Analysis.
Image Processing and classification using Machine Learning : Image Classification using Open CV and SVM machine learning model
To deal with non-linearly separable we use SVM's Kernel Trick which maps data to higher dimension!
Machine Learning Code Implementations in Python
Access the Linear or RBF kernel SVM from OCaml using the R e1071 or svmpath packages
Numpy based implementation of kernel based SVM
MATLAB implementations of different learning methods for Radial Basis Functions (RBF)
SPPU - BE ENTC (2015 Pattern) - Elective III
Project ini dibuat untuk memenuhi syarat meraih gelar Sarjana Komputer, Dengan melakukan Klasifikasi Ekspresi Wajah Manusia menggunakan algoritme Local Binary Pattern (LBP) untuk ekstraksi fitur dan Support Vector Machine untuk klasifikasi.
PCA applied on images and Naive Bayes Classifier to classify them. Validation, cross validation and grid search with multi class SVM
💚 A heart disease classifier using 4 SVM kernels and decision trees, with PCA, ROC, pruning, grid search cv, confusion matrix, and more
Mobile Price Range Prediction: Use sales data to build a classification model for mobile phone price ranges. Features include battery power, camera, memory, and connectivity. Split data, apply logistic regression, KNN, SVM (linear and rbf), and evaluate using confusion matrices. Select the most accurate model.
In This Notebook I've build a Machine-Learning model that normalize region names in Damascus city, then I use it in Locator class.
GISETTE is a handwritten digit recognition problem. The problem is to separate the highly confusible digits ‘4’ and ‘9’. This dataset is one of five datasets of the NIPS 2003 feature selection challenge.
Generalized Improved Second Order RBF Neural Network with Center Selection using OLS
Application shows advantage of Classical MRAC using RBFs over PD control when unmodeled dynamics are present in the system (wing rock model).
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