This project is a Python implementation of k-means clustering algorithm.
A list of points in two-dimensional space where each point is represented by a latitude/longitude pair.
The clusters of points.
python run.py --input YOUR_LOC_FILE --clusters CLUSTERS_NO
Note that the runner expects the location file be in data folder.
This project is an implementation of k-means algorithm. It starts with a random point and then chooses k-1 other points as the farthest from the previous ones successively. It uses these k points as cluster centroids and then joins each point of the input to the cluster with the closest centroid. Next, it recomputes the new centroids by computing the means of obtained clusters and repeats the first step again by finding to which cluster each point belongs. The program repeats these two steps until the clusters converge and do not change anymore. View the following link to read more about this project and see some real examples of running k-means algorithm:
http://www.kazemjahanbakhsh.com/codes/k-means.html