DocumentCode
3576415
Title
Exploratory computing: a draft Manifesto
Author
Di Blas, Nicoletta ; Mazuran, Mirjana ; Paolini, Paolo ; Quintarelli, Elisa ; Tanca, Letizia
Author_Institution
DEIB, Politec. di Milano, Milan, Italy
fYear
2014
Firstpage
577
Lastpage
580
Abstract
The advent of the Big Data challenge has stimulated research on methods and techniques to deal with the problem of managing data abundance. Many approaches have been developed, but for the most part, they attack one specific side of the problem: e.g. efficient querying, analysis techniques that summarize data or reduce its dimensionality, data visualization, etc. The approach proposed in this paper aims instead at taking a comprehensive view: first of all, it takes into account that human exploration is an iterative and multi-step process and therefore allows building upon a previous query on to the next, in a sort of “dialogue” between the user and the system. Second, it aims at supporting a variety of user experiences, like investigation, inspiration seeking, monitoring, comparison, decision-making, research, etc. Third, and probably most important, it adds to the notion of “big” the notion of “rich”: Exploratory Computing (EC) aims at dealing with datasets of semantically complex items, whose inspection may reach beyond the user´s previous knowledge or expectations: an exploratory experience basically consists in creating, refining, modifying, comparing various datasets in order to “make sense” of these meanings.
Keywords
Big Data; iterative methods; Big Data; data abundance management; data summarization; data visualization; dimensionality reduction; exploratory computing; iterative process; multistep process; Data analysis; Data mining; Data models; Data visualization; Educational institutions; Portals; Semantics;
fLanguage
English
Publisher
ieee
Conference_Titel
Data Science and Advanced Analytics (DSAA), 2014 International Conference on
Type
conf
DOI
10.1109/DSAA.2014.7058129
Filename
7058129
Link To Document