Title
Visual Analysis Scenarios For Understanding Evolutionary Computational Techniques' Behavior
Abstract
Machine learning algorithms are used in many applications nowadays. Sometimes, we need to describe how the decision models created output, and this may not be an easy task. Information visualization (InfoVis) techniques (e.g., TreeMap, parallel coordinates, etc.) can be used for creating scenarios that visually describe the behavior of those models. Thus, InfoVis scenarios were used to analyze the evolutionary process of a tool named AutoClustering, which generates density-based clustering algorithms automatically for a given dataset using the EDA (estimation-of-distribution algorithm) evolutionary technique. Some scenarios were about fitness and population evolution (clustering algorithms) over time, algorithm parameters, the occurrence of the individual, and others. The analysis of those scenarios could lead to the development of better parameters for the AutoClustering tool and algorithms and thus have a direct impact on the processing time and quality of the generated algorithms.
Year
DOI
Venue
2019
10.3390/info10030088
INFORMATION
Keywords
Field
DocType
information visualization, machine learning, evolutionary algorithms, clustering algorithms
Population,Data mining,Information visualization,Evolutionary algorithm,Computer science,Parallel coordinates,Artificial intelligence,Decision model,Cluster analysis,Machine learning
Journal
Volume
Issue
ISSN
10
3
2078-2489
Citations 
PageRank 
References 
0
0.34
7
Authors
5