Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Jovan Varga is active.

Publication


Featured researches published by Jovan Varga.


data warehousing and knowledge discovery | 2014

Towards Next Generation BI Systems: The Analytical Metadata Challenge

Jovan Varga; Oscar Romero; Torben Bach Pedersen; Christian Thomsen

Next generation Business Intelligence (BI) systems require integration of heterogeneous data sources and a strong user-centric orientation. Both needs entail machine-processable metadata to enable automation and allow end users to gain access to relevant data for their decision making processes. Although evidently needed, there is no clear picture about the necessary metadata artifacts, especially considering user support requirements. Therefore, we propose a comprehensive metadata framework to support the user assistance activities and their automation in the context of next generation BI systems. This framework is based on the findings of a survey of current user-centric approaches mainly focusing on query recommendation assistance. Finally, we discuss the benefits of the framework and present the plans for future work.


Journal of Web Semantics | 2016

Dimensional enrichment of statistical linked open data

Jovan Varga; Alejandro A. Vaisman; Oscar Romero; Lorena Etcheverry; Torben Bach Pedersen; Christian Thomsen

On-Line Analytical Processing (OLAP) is a data analysis technique typically used for local and well-prepared data. However, initiatives like Open Data and Open Government bring new and publicly available data on the web that are to be analyzed in the same way. The use of semantic web technologies for this context is especially encouraged by the Linked Data initiative. There is already a considerable amount of statistical linked open data sets published using the RDF Data Cube Vocabulary (QB) which is designed for these purposes. However, QB lacks some essential schema constructs (e.g.,źdimension levels) to support OLAP. Thus, the QB4OLAP vocabulary has been proposed to extend QB with the necessary constructs and be fully compliant with OLAP. In this paper, we focus on the enrichment of an existing QB data set with QB4OLAP semantics. We first thoroughly compare the two vocabularies and outline the benefits of QB4OLAP. Then, we propose a series of steps to automate the enrichment of QB data sets with specific QB4OLAP semantics; being the most important, the definition of aggregate functions and the detection of new concepts in the dimension hierarchy construction. The proposed steps are defined to form a semi-automatic enrichment method, which is implemented in a tool that enables the enrichment in an interactive and iterative fashion. The user can enrich the QB data set with QB4OLAP concepts (e.g.,źfull-fledged dimension hierarchies) by choosing among the candidate concepts automatically discovered with the steps proposed. Finally, we conduct experiments with 25 users and use three real-world QB data sets to evaluate our approach. The evaluation demonstrates the feasibility of our approach and shows that, in practice, our tool facilitates, speeds up, and guarantees the correct results of the enrichment process.


data warehousing and olap | 2014

SM4AM: A Semantic Metamodel for Analytical Metadata

Jovan Varga; Oscar Romero; Torben Bach Pedersen; Christian Thomsen

Next generation BI systems emerge as platforms where traditional BI tools meet semi-structured and unstructured data coming from the Web. In these settings, the user-centric orientation represents a key characteristic for the acceptance and wide usage by numerous and diverse end users in their data analysis tasks. System and user related metadata are the base for enabling user assistance features. However, current approaches typically store these metadata in ad-hoc manners. In this paper, we propose a generic and extensible approach for the definition and modeling of the relevant metadata artifacts. We present SM4AM, a Semantic Metamodel for Analytical Metadata created as an RDF formalization of the Analytical Metadata artifacts needed for user assistance exploitation purposes in next generation BI systems. We consider the Linked Data initiative and its relevance for user assistance functionalities. We discuss the metamodel benefits and present directions for future work.


international conference on data engineering | 2016

QB2OLAP: Enabling OLAP on Statistical Linked Open Data

Jovan Varga; Lorena Etcheverry; Alejandro A. Vaisman; Oscar Romero; Torben Bach Pedersen; Christian Thomsen

Publication and sharing of multidimensional (MD) data on the Semantic Web (SW) opens new opportunities for the use of On-Line Analytical Processing (OLAP). The RDF Data Cube (QB) vocabulary, the current standard for statistical data publishing, however, lacks key MD concepts such as dimension hierarchies and aggregate functions. QB4OLAP was proposed to remedy this. However, QB4OLAP requires extensive manual annotation and users must still write queries in SPARQL, the standard query language for RDF, which typical OLAP users are not familiar with. In this demo, we present QB2OLAP, a tool for enabling OLAP on existing QB data. Without requiring any RDF, QB(4OLAP), or SPARQL skills, it allows semi-automatic transformation of a QB data set into a QB4OLAP one via enrichment with QB4OLAP semantics, exploration of the enriched schema, and querying with the high-level OLAP language QL that exploits the QB4OLAP semantics and is automatically translated to SPARQL.


european semantic web conference | 2017

SM4MQ: A Semantic Model for Multidimensional Queries

Jovan Varga; Ekaterina Dobrokhotova; Oscar Romero; Torben Bach Pedersen; Christian Thomsen

On-Line Analytical Processing (OLAP) is a data analysis approach to support decision-making. On top of that, Exploratory OLAP is a novel initiative for the convergence of OLAP and the Semantic Web (SW) that enables the use of OLAP techniques on SW data. Moreover, OLAP approaches exploit different metadata artifacts (e.g., queries) to assist users with the analysis. However, modeling and sharing of most of these artifacts are typically overlooked. Thus, in this paper we focus on the query metadata artifact in the Exploratory OLAP context and propose an RDF-based vocabulary for its representation, sharing, and reuse on the SW. As OLAP is based on the underlying multidimensional (MD) data model we denote such queries as MD queries and define SM4MQ: A Semantic Model for Multidimensional Queries. Furthermore, we propose a method to automate the exploitation of queries by means of SPARQL. We apply the method to a use case of transforming queries from SM4MQ to a vector representation. For the use case, we developed the prototype and performed an evaluation that shows how our approach can significantly ease and support user assistance such as query recommendation.


international conference on conceptual modeling | 2018

Managing Polyglot Systems Metadata with Hypergraphs

Moditha Hewasinghage; Jovan Varga; Alberto Abelló; Esteban Zimanyi

A single type of data store can hardly fulfill every end-user requirements in the NoSQL world. Therefore, polyglot systems use different types of NoSQL datastores in combination. However, the heterogeneity of the data storage models makes managing the metadata a complex task in such systems, with only a handful of research carried out to address this. In this paper, we propose a hypergraph-based approach for representing the catalog of metadata in a polyglot system. Taking an existing common programming interface to NoSQL systems, we extend and formalize it as hypergraphs for managing metadata. Then, we define design constraints and query transformation rules for three representative data store types. Furthermore, we propose a simple query rewriting algorithm using the catalog itself for these data store types and provide a prototype implementation. Finally, we show the feasibility of our approach on a use case of an existing polyglot system.


Journal of Systems and Software | 2018

Analytical metadata modeling for next generation BI systems

Jovan Varga; Oscar Romero; Torben Bach Pedersen; Christian Thomsen

Abstract Business Intelligence (BI) systems are extensively used as in-house solutions to support decision-making in organizations. Next generation BI 2.0 systems claim for expanding the use of BI solutions to external data sources and assisting the user in conducting data analysis. In this context, the Analytical Metadata (AM) framework defines the metadata artifacts (e.g., schema and queries) that are exploited for user assistance purposes. As such artifacts are typically handled in ad-hoc and system specific manners, BI 2.0 argues for a flexible solution supporting metadata exploration across different systems. In this paper, we focus on the AM modeling. We propose SM4AM, an RDF-based Semantic Metamodel for AM. On the one hand, we claim for ontological metamodeling as the proper solution, instead of a fixed universal model, due to (meta)data models heterogeneity in BI 2.0. On the other hand, RDF provides means for facilitating defining and sharing flexible metadata representations. Furthermore, we provide a method to instantiate our metamodel. Finally, we present a real-world case study and discuss how SM4AM, specially the schema and query artifacts, can help traversing different models instantiating our metamodel and enabling innovative means to explore external repositories in what we call metamodel-driven (meta)data exploration.


ieee international conference on requirements engineering | 2018

FAME: Supporting Continuous Requirements Elicitation by Combining User Feedback and Monitoring

Marc Oriol; Melanie J. C. Stade; Farnaz Fotrousi; Sergi Nadal; Jovan Varga; Norbert Seyff; Alberto Abelló; Xavier Franch; Jordi Marco; Oleg Schmidt


edbt/icdt workshops | 2017

Big data management challenges in SUPERSEDE

Sergi Nadal Francesch; Alberto Abelló Gamazo; Óscar Romero Moral; Jovan Varga


TDX (Tesis Doctorals en Xarxa) | 2016

Semantic Metadata for Supporting Exploratory OLAP

Jovan Varga

Collaboration


Dive into the Jovan Varga's collaboration.

Top Co-Authors

Avatar

Oscar Romero

Polytechnic University of Catalonia

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Alberto Abelló

Polytechnic University of Catalonia

View shared research outputs
Top Co-Authors

Avatar

Alejandro A. Vaisman

Instituto Tecnológico de Buenos Aires

View shared research outputs
Top Co-Authors

Avatar

Lorena Etcheverry

University of the Republic

View shared research outputs
Top Co-Authors

Avatar

Alberto Abelló Gamazo

Polytechnic University of Catalonia

View shared research outputs
Top Co-Authors

Avatar

Ekaterina Dobrokhotova

Polytechnic University of Catalonia

View shared research outputs
Top Co-Authors

Avatar

Jordi Marco

Polytechnic University of Catalonia

View shared research outputs
Top Co-Authors

Avatar

Marc Oriol

Polytechnic University of Catalonia

View shared research outputs
Researchain Logo
Decentralizing Knowledge