Interactive feature space extension for multidimensional data projection

Article


Pérez, D., Zhang, L., Schaefer, M., Schreck, T., Keim, D. and Díaz, I. 2015. Interactive feature space extension for multidimensional data projection. Neurocomputing. 150 (Part B), pp. 611-626. https://doi.org/10.1016/j.neucom.2014.09.061
TypeArticle
TitleInteractive feature space extension for multidimensional data projection
AuthorsPérez, D., Zhang, L., Schaefer, M., Schreck, T., Keim, D. and Díaz, I.
Abstract

Projecting multi-dimensional data to a lower-dimensional visual display is a commonly used approach for identifying and analyzing patterns in data. Many dimensionality reduction techniques exist for generating visual embeddings, but it is often hard to avoid cluttered projections when the data is large in size and noisy. For many application users who are not machine learning experts, it is difficult to control the process in order to improve the “readability” of the projection and at the same time to understand their quality. In this paper, we propose a simple interactive feature transformation approach that allows the analyst to de-clutter the visualization by gradually transforming the original feature space based on existing class knowledge. By changing a single parameter, the user can easily decide the desired trade-off between structural preservation and the visual quality during the transforming process. The proposed approach integrates semi-interactive feature transformation techniques as well as a variety of quality measures to help analysts generate uncluttered projections and understand their quality.

KeywordsFeature transformation; dimensionality reduction; multidimensional data projection
PublisherElsevier
JournalNeurocomputing
ISSN0925-2312
Electronic1872-8286
Publication dates
Online28 Oct 2014
Print20 Feb 2015
Publication process dates
Deposited24 Oct 2016
Accepted29 Sep 2014
Output statusPublished
Accepted author manuscript
License
File Access Level
Open
Copyright Statement

© 2014. This manuscript version is made available under the CC-BY-NC-ND 4.0 license http://creativecommons.org/licenses/by-nc-nd/4.0/

Digital Object Identifier (DOI)https://doi.org/10.1016/j.neucom.2014.09.061
LanguageEnglish
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