Title of article :
Interactive 𝐾-Means Clustering Method Based on User Behavior for Different Analysis Target in Medicine
Author/Authors :
Lei, Yang Northeastern University - Shenyang, China , Yu, Dai Northeastern University - Shenyang, China , Bin, Zhang Northeastern University - Shenyang, China , Yang, Yang Northeastern University - Shenyang, China
Abstract :
Clustering algorithm as a basis of data analysis is widely used in analysis systems. However, as for the high dimensions of the data,
the clustering algorithm may overlook the business relation between these dimensions especially in the medical fields. As a result,
usually the clustering result may not meet the business goals of the users. Then, in the clustering process, if it can combine the
knowledge of the users, that is, the doctor’s knowledge or the analysis intent, the clustering result can be more satisfied. In this
paper, we propose an interactive 𝐾-means clustering method to improve the user’s satisfactions towards the result. The core of this
method is to get the user’s feedback of the clustering result, to optimize the clustering result. Then, a particle swarm optimization
algorithm is used in the method to optimize the parameters, especially the weight settings in the clustering algorithm to make it
reflect the user’s business preference as possible. After that, based on the parameter optimization and adjustment, the clustering
result can be closer to the user’s requirement. Finally, we take an example in the breast cancer, to testify our method.The experiments
show the better performance of our algorithm.
Keywords :
𝐾-Means , Method , Analysis , Medicine
Journal title :
Computational and Mathematical Methods in Medicine