| dcem_star_cluster_mv {DCEM} | R Documentation | 
dcem_star_cluster_mv (multivariate data): Part of DCEM package.
Description
Implements the EM* algorithm for multivariate data. This function is called by the dcem_star_train routine.
Usage
dcem_star_cluster_mv(data, meu, sigma, prior, num_clusters, iteration_count, num_data)
Arguments
| data | (matrix): The dataset provided by the user. | 
| meu | (matrix): The matrix containing the initial meu(s). | 
| sigma | (list): A list containing the initial covariance matrices. | 
| prior | (vector): A vector containing the initial priors. | 
| num_clusters | (numeric): The number of clusters specified by the user. Default value is 2. | 
| iteration_count | (numeric): The number of iterations for which the algorithm should run, if the convergence is not achieved then the algorithm stops and exits. Default: 200. | 
| num_data | (numeric): Number of rows in the dataset. | 
Value
A list of objects. This list contains parameters associated with the Gaussian(s) (posterior probabilities, meu, co-variance and priors)
- (1) Posterior Probabilities: prob A matrix of posterior-probabilities for the points in the dataset. 
- (2) Meu: meu: A matrix of meu(s). Each row in the matrix corresponds to one meu. 
- (3) Sigma: Co-variance matrices: sigma: List of co-variance matrices. 
- (4) Priors: prior: A vector of prior. 
- (5) Membership: membership: A vector of cluster membership for data. 
References
Parichit Sharma, Hasan Kurban, Mehmet Dalkilic DCEM: An R package for clustering big data via data-centric modification of Expectation Maximization, SoftwareX, 17, 100944 URL https://doi.org/10.1016/j.softx.2021.100944