A Review and Characterization of Progressive Visual Analytics

Progressive Visual Analytics (PVA) has gained increasing attention over the past years. It brings the user into the loop during otherwise long-running and non-transparent computations by producing intermediate partial results. These partial results can be shown to the user for early and continuous i...

Full description

Bibliographic Details
Main Authors: Marco Angelini, Giuseppe Santucci, Heidrun Schumann, Hans-Jörg Schulz
Format: Article
Language:English
Published: MDPI AG 2018-07-01
Series:Informatics
Subjects:
Online Access:http://www.mdpi.com/2227-9709/5/3/31
id doaj-5481098ca73a4a8cbfe9893ff96cb585
record_format Article
spelling doaj-5481098ca73a4a8cbfe9893ff96cb5852020-11-24T21:33:26ZengMDPI AGInformatics2227-97092018-07-01533110.3390/informatics5030031informatics5030031A Review and Characterization of Progressive Visual AnalyticsMarco Angelini0Giuseppe Santucci1Heidrun Schumann2Hans-Jörg Schulz3Sapienza University of Rome, 00185 Rome, ItalySapienza University of Rome, 00185 Rome, ItalyUniversity of Rostock, 18059 Rostock, GermanyAarhus University, 8000 Aarhus Aarhus, DenmarkProgressive Visual Analytics (PVA) has gained increasing attention over the past years. It brings the user into the loop during otherwise long-running and non-transparent computations by producing intermediate partial results. These partial results can be shown to the user for early and continuous interaction with the emerging end result even while it is still being computed. Yet as clear-cut as this fundamental idea seems, the existing body of literature puts forth various interpretations and instantiations that have created a research domain of competing terms, various definitions, as well as long lists of practical requirements and design guidelines spread across different scientific communities. This makes it more and more difficult to get a succinct understanding of PVA’s principal concepts, let alone an overview of this increasingly diverging field. The review and discussion of PVA presented in this paper address these issues and provide (1) a literature collection on this topic, (2) a conceptual characterization of PVA, as well as (3) a consolidated set of practical recommendations for implementing and using PVA-based visual analytics solutions.http://www.mdpi.com/2227-9709/5/3/31visual analyticsprogressive visualizationincremental visualizationonline algorithms
collection DOAJ
language English
format Article
sources DOAJ
author Marco Angelini
Giuseppe Santucci
Heidrun Schumann
Hans-Jörg Schulz
spellingShingle Marco Angelini
Giuseppe Santucci
Heidrun Schumann
Hans-Jörg Schulz
A Review and Characterization of Progressive Visual Analytics
Informatics
visual analytics
progressive visualization
incremental visualization
online algorithms
author_facet Marco Angelini
Giuseppe Santucci
Heidrun Schumann
Hans-Jörg Schulz
author_sort Marco Angelini
title A Review and Characterization of Progressive Visual Analytics
title_short A Review and Characterization of Progressive Visual Analytics
title_full A Review and Characterization of Progressive Visual Analytics
title_fullStr A Review and Characterization of Progressive Visual Analytics
title_full_unstemmed A Review and Characterization of Progressive Visual Analytics
title_sort review and characterization of progressive visual analytics
publisher MDPI AG
series Informatics
issn 2227-9709
publishDate 2018-07-01
description Progressive Visual Analytics (PVA) has gained increasing attention over the past years. It brings the user into the loop during otherwise long-running and non-transparent computations by producing intermediate partial results. These partial results can be shown to the user for early and continuous interaction with the emerging end result even while it is still being computed. Yet as clear-cut as this fundamental idea seems, the existing body of literature puts forth various interpretations and instantiations that have created a research domain of competing terms, various definitions, as well as long lists of practical requirements and design guidelines spread across different scientific communities. This makes it more and more difficult to get a succinct understanding of PVA’s principal concepts, let alone an overview of this increasingly diverging field. The review and discussion of PVA presented in this paper address these issues and provide (1) a literature collection on this topic, (2) a conceptual characterization of PVA, as well as (3) a consolidated set of practical recommendations for implementing and using PVA-based visual analytics solutions.
topic visual analytics
progressive visualization
incremental visualization
online algorithms
url http://www.mdpi.com/2227-9709/5/3/31
work_keys_str_mv AT marcoangelini areviewandcharacterizationofprogressivevisualanalytics
AT giuseppesantucci areviewandcharacterizationofprogressivevisualanalytics
AT heidrunschumann areviewandcharacterizationofprogressivevisualanalytics
AT hansjorgschulz areviewandcharacterizationofprogressivevisualanalytics
AT marcoangelini reviewandcharacterizationofprogressivevisualanalytics
AT giuseppesantucci reviewandcharacterizationofprogressivevisualanalytics
AT heidrunschumann reviewandcharacterizationofprogressivevisualanalytics
AT hansjorgschulz reviewandcharacterizationofprogressivevisualanalytics
_version_ 1725953264478846976