dedup_wf_001--46d56d95213876cee5251ac84899d0c2

GUASOM is a data mining tool designed for knowledge discovery in large astronomical spectrophotometric archives developed in the framework of Gaia DPAC (Data Processing and Analysis Consortium). Our tool is based on a type of unsupervised learning Artificial Neural Networks named Self-organizing maps (SOMs). SOMs permit the grouping and visualization of big amount of data for which there is no a priori knowledge and hence they are very useful for analyzing the huge amount of information present in modern spectrophotometric surveys. SOMs are used to organize the information in clusters of objects, as homogeneously as possible according to their spectral energy distributions, and to project them onto a 2D grid where the data structure can be visualized. Each cluster has a representative, called prototype which is a virtual pattern that better represents or resembles the set of input patterns belonging to such a cluster. Prototypes make easier the task of determining the physical nature and properties of the objects populating each cluster. Our algorithm has been tested on the ALHAMBRA survey spectrophotometric observations, here we present our results concerning the survey segmentation, visualization of the data structure, separation between types of objects (stars and galaxies), data homogeneity of neurons, cluster prototypes, redshift distribution and crossmatch with other databases (Simbad).

Tags
Data and Resources
To access the resources you must log in

This item has no data

Identity

Description: The Identity category includes attributes that support the identification of the resource.

Field Value
PID https://www.doi.org/10.5281/zenodo.1041764
PID https://www.doi.org/10.5281/zenodo.1041763
URL http://dx.doi.org/10.5281/zenodo.1041764
URL https://zenodo.org/record/1041764
URL http://dx.doi.org/10.5281/zenodo.1041763
URL https://figshare.com/articles/GUASOM_analysis_of_the_Alhambra_survey/6913568
Access Modality

Description: The Access Modality category includes attributes that report the modality of exploitation of the resource.

Field Value
Access Right Open Access
Attribution

Description: Authorships and contributors

Field Value
Author Garabato, Daniel, 0000-0002-7133-6623
Author Manteiga, Minia, 0000-0002-7711-5581
Author Dafonte, Carlos, 0000-0003-4693-7555
Author Álvarez, Marco A., 0000-0002-6786-2620
Publishing

Description: Attributes about the publishing venue (e.g. journal) and deposit location (e.g. repository)

Field Value
Collected From figshare; Datacite; FigShare
Hosted By Zenodo; figshare; FigShare
Publication Date 2017-10-02
Additional Info
Field Value
Language UNKNOWN
Resource Type Other literature type; Conference object
system:type publication
Management Info
Field Value
Source https://science-innovation-policy.openaire.eu/search/publication?articleId=dedup_wf_001::46d56d95213876cee5251ac84899d0c2
Author jsonws_user
Last Updated 25 December 2020, 05:09 (CET)
Created 25 December 2020, 05:09 (CET)