Predicting leaf using the K Nearest Neighbour algorithm using the Iris dataset.
-
Updated
Oct 2, 2024 - Java
Predicting leaf using the K Nearest Neighbour algorithm using the Iris dataset.
Conceptual Python code for 1D-CNN / LSTM / LightGBM for time series dataset (but actual codes)
Project to produce supervised ML algorithm to predict which customers are likely to leave and produce .Rmd report
This repository contains analysis code from my graduate school work.
Python, K-fold, RMSE, Pearson
This repository provides some recommender engine models.
Python cross-validation package with k-fold, leave-one-out and leave-one-subject-out
Prepare a model for glass classification using KNN and Implement a KNN model to classify the animals in to categorie.
Códigos em Phyton utilizados na disciplina de engenharia médica, do curso de Engenharia Biomédica do Instituto de Ciência e Tecnologia - Universidade Federal de São Paulo
Deteksi penyakit pada (daun) jagung berbasis citra dengan menggunakan metode GLRLM dan FCH.
Machine Learning project. Movies Ratings prediction & prediction of White Wine Quality using classification algorithms. The main aim of the project: dive into ML/AI.
Machine learning project made with MTG (Magic the Gathering) data
Trabalhos da disciplina Inteligência Artificial em 2021.2
Face Mask Detection
Implementação em java do algoritmo KNN para classificação, combinado ao k-fold para validação cruzada.
This is the 2nd project of T5 bootcamp. ML is used to predict box office gross with IMDb data. The data was scraped from the IMDb website. Regression. model was performed to predict gross.
A JavaScript module for generating random seeded distributions and its statistical analysis.
This project is about how you can deal with imbalanced data and which performance metrics' particularly important compared to usual practices with fairly balanced data.
Easy to apply the crossvalidation on Pytorch
Predict the type of arrhythmia based on Electro-cardiogram (ECG) tool using machine learning models and algorithms.
Add a description, image, and links to the k-fold topic page so that developers can more easily learn about it.
To associate your repository with the k-fold topic, visit your repo's landing page and select "manage topics."