Implementation of K-Means Clustering Algorithm for Assignment 03 of the course CS6375: Machine Learning.
-
Updated
Jan 15, 2019 - Java
Implementation of K-Means Clustering Algorithm for Assignment 03 of the course CS6375: Machine Learning.
A K-Means algorithm implementation involving various optimization techniques. Used to group MNIST dataset of hand-written numbers 0-9.
K-Mean clustering program in Java to cluster the data point into 4 clusters
K-Means solution to the movie clustering problem as part of a big data project at Ben Gurion University
MapReduce K-Means clustering implementation
An Erlang communication layer and a Java web server as support to horizontal federated learning, targeting KMeans as Machine Learning algorithm.
A Java program that visualizes the Travelling salesman problem solver and K-Means clustering algorithm.
Simple to use KMeans Java library.
A university project on image quantization algorithms and the use of these algorithms in searches for similar images
Clustering K-Means parallel version in Java (applied to image color reduction)
k-means implementation using locality-sensitive hashing
K-means clustering, using a ball tree as internal data structure to accelerate the computation.
Clustering data ruspini menggunakan k-means dan menganalisa cluster menggunakan variance
This repository serves as a portfolio of my diverse collection of small and medium-sized projects, highlighting my skills and expertise in various areas.
Small library for classification and clustering in Java
Add a description, image, and links to the k-means topic page so that developers can more easily learn about it.
To associate your repository with the k-means topic, visit your repo's landing page and select "manage topics."