scispace - formally typeset
Search or ask a question

Showing papers by "Hebron University published in 2023"



Book ChapterDOI
01 Jan 2023
TL;DR: In this article , the authors implemented the genetic algorithm (GA) for the dimension arrangement optimization of radial coordinate visualization tools and compared the result obtained using GA with some solutions obtained without optimization, and found that their result was close to the optimal solution 4 times more than non-optimized solution.
Abstract: Visualization of high dimensional data aims to eliminate the difficulties and efforts of working with tabular and abstract data forms. One of the critical challenges for visualization methods is the dimension arrangement problem; where the final result of visualization is completely affected by the set and the order of the dimensions along the visualization anchors. According to the nature of this problem it is treated as an NP-complete problem; where optimization tools are required for solving such a problem. In this study, Researchers implemented the genetic algorithm (GA) to be used for the dimension arrangement optimization of radial coordinate visualization tools. During the testing of GA we work with a dataset of proteomic data to preserve the pairwise structural relations of the dataset instances as much as possible. We compared the result obtained using our GA optimization with some solutions obtained without optimization, and we found that our result was close to the optimal solution 4 times more than non-optimized solution.