@article{MAKHILLJEAS2018132117092, title = {Using Random Forest Algorithm for Clustering}, journal = {Journal of Engineering and Applied Sciences}, volume = {13}, number = {21}, pages = {9189-9193}, year = {2018}, issn = {1816-949x}, doi = {jeasci.2018.9189.9193}, url = {https://makhillpublications.co/view-article.php?issn=1816-949x&doi=jeasci.2018.9189.9193}, author = {Laith,Zinah and}, keywords = {Random forest,clustering,Gaussian mixture,point,robust,complex}, abstract = {Clustering is considered one of the most critical unsupervised learning problems. It endeavors to find an accurate structure in a collection of unlabeled data. In this study, we apply random forest clustering and density estimation for unsupervised decision. A dual assignment parameter will be used as a density estimator by combining random forest and Gaussian mixture model. Experiments were conducted using different datasets. Efficiency of using this algorithm is in capturing the underlying structure for a given set of data points. The random forest algorithm that is used in this research is robust and can discriminate between the complex features of data points among different clusters.} }