This project is about the prediction of red wine quality using different machine learning algorithms
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Updated
Sep 17, 2020 - Jupyter Notebook
This project is about the prediction of red wine quality using different machine learning algorithms
Linear discriminant Analysis(LDA) for Wine Dataset of Machine Learning
Performed different tasks such as data preprocessing, cleaning, classification, and feature extraction/reduction on wine dataset.
Building classification models to predict quality of wines. (Accuracy = 71.33%)
Wine Dataset with Gaussian Classifier
PCA(Principle Component Analysis) For Wine dataset in ML
NTHU EE6550: Machine Learning
This repository contains my machine learning models implementation code using streamlit in the Python programming language.
Webscraping of Signorvino.com, an Italian wine e-commerce website. The task is performed with Selenium library in Python
LDA(Linear discriminant Analysis) for Wine Dataset in machine learning
This repository contains machine learning programs in the Python programming language.
A New Support Vector Finder Method, Based on Triangular Calculations and K-means Clustering
MSDS 410 Data Modeling for Supervised Learning (R)
Store the exercises carried out in the discipline "Computing Inspired by Nature" of the PPGCC of UNESP.
Introducing Flask Program for wine Dataset
Applying Clustering algorithm on famous WIne Dataset from Kaggle.
Implementation of Hybrid fuzzy-rough Rule induction and feature selection paper 2009 by Richard Jensen
GPT-3 wine recommendation website
Matlab implementation of the nearest neighbour model/algorithm applied on the wine uci-ml database
A web app to show how easy it is to analyze datasets with a large number of attributes using Chernoff faces concept.
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