7,086 research outputs found

    A unified view of data-intensive flows in business intelligence systems : a survey

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    Data-intensive flows are central processes in today’s business intelligence (BI) systems, deploying different technologies to deliver data, from a multitude of data sources, in user-preferred and analysis-ready formats. To meet complex requirements of next generation BI systems, we often need an effective combination of the traditionally batched extract-transform-load (ETL) processes that populate a data warehouse (DW) from integrated data sources, and more real-time and operational data flows that integrate source data at runtime. Both academia and industry thus must have a clear understanding of the foundations of data-intensive flows and the challenges of moving towards next generation BI environments. In this paper we present a survey of today’s research on data-intensive flows and the related fundamental fields of database theory. The study is based on a proposed set of dimensions describing the important challenges of data-intensive flows in the next generation BI setting. As a result of this survey, we envision an architecture of a system for managing the lifecycle of data-intensive flows. The results further provide a comprehensive understanding of data-intensive flows, recognizing challenges that still are to be addressed, and how the current solutions can be applied for addressing these challenges.Peer ReviewedPostprint (author's final draft

    Data Visualization in Business Intelligent &Analysis – Analysis of First Positioned Tools According to Gartner’s Magic Quadrant in Ability to Execute

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    Data Visualization tools in Business Intelligent (BI) and Analysis are very effective because they allow gaining of deeper understanding of huge amounts of data stored in databases. For this reasons many market research companies take into consideration usage of Data Visualization tools as part of their BI solutions and analyze their competitive advantage at the market as well as the benefits and disadvantages. In this paper, the Data Visualization tools that are on the top of Gartner and Forrester researches, Tableau and Qlik, are taken into consideration. They are positioned higher on the “Ability to execute” axis and\ud according to researchers’ report, are faster growing sales tools and deserve analyses in details. They are used as Visual Data Analysis (VDA) tools from theoretical and practical side and are analyzed for previous defined Key\ud Performance Indicators in order to gain deeper insights and make a comparison of their ability to execute

    Studies on Visual Analytics in the Information Systems Literature: A Review

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    Interactions in Visualizations to Support Knowledge Activation

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    Humans have several exceptional abilities, one of which is the perceptual tasks of their visual sense. Humans have the unique ability to perceive data and identify patterns, trends, and outliers. This research investigates the design of interactive visualizations to identify the benefits of interacting with information. The research question leading the investigation is how does interacting with visualizations support analytical reasoning of emergent information to activate knowledge? The study uses the theory of distributed cognition and human-information interaction to apply the design science research framework. The motivation behind the research is to identify guidelines for interactive visualizations to enhance a user’s ability to make decisions in dynamic situations and apply knowledge gleaned from the visualization. An experiment is used to analyze the use of an interactive dashboard in a dynamic decision-making situation. The results of this experiment specifically look at the combination of interactions as they support the distribution of cognition over three spaces of a human-visualization cognitive system. The results provide insight into the benefits that interactions have for enhancing analytical reasoning, expanding the use of visualizations beyond communicating or disseminating information. Providing a broad range of interactions that work with multiple views of information increases the opportunities that users have to complete tasks. This research contributes to the information visualization discipline by expanding the focus from representing data to representing and interacting with information. Secondly, my results provide an example of a qualitative assessment based on the value of visualization, in comparison to traditional usability assessment

    Web 2.0 and destination marketing: current trends and future directions

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    Over the last decade, destination marketers and Destination Marketing Organizations (DMOs) have increasingly invested in Web 2.0 technologies as a cost-effective means of promoting destinations online, in the face of drastic marketing budgets cuts. Recent scholarly and industry research has emphasized that Web 2.0 plays an increasing role in destination marketing. However, no comprehensive appraisal of this research area has been conducted so far. To address this gap, this study conducts a quantitative literature review to examine the extent to which Web 2.0 features in destination marketing research that was published until December 2019, by identifying research topics, gaps and future directions, and designing a theory-driven agenda for future research. The study’s findings indicate an increase in scholarly literature revolving around the adoption and use of Web 2.0 for destination marketing purposes. However, the emerging research field is fragmented in scope and displays several gaps. Most of the studies are descriptive in nature and a strong overarching conceptual framework that might help identify critical destination marketing problems linked to Web 2.0 technologies is missing

    Cognition Matters: Enduring Questions in Cognitive IS Research

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    We explore the history of cognitive research in information systems (IS) across three major research streams in which cognitive processes are of paramount importance: developing software, decision support, and human-computer interaction. Through our historical analysis, we identify “enduring questions” in each area. The enduring questions motivated long-standing areas of inquiry within a particular research stream. These questions, while perhaps unapparent to the authors cited, become evident when one adopts an historical perspective. While research in all three areas was influenced by changes in technologies, research techniques, and the contexts of use, these enduring questions remain fundamental to our understanding of how to develop, reason with, and interact with IS. In synthesizing common themes across the three streams, we draw out four cognitive qualities of information technology: interactivity, fit, cooperativity, and affordances. Together these cognitive qualities reflect IT’s ability to influence cognitive processes and ultimately task performance. Extrapolating from our historical analysis and looking at the operation of these cognitive qualities in concert, we envisage a bright future for cognitive research in IS: a future in which the study of cognition in IS extends beyond the individual to consider cognition distributed across teams, communities and systems, and a future involving the study of rich and dynamic social and organizational contexts in which the interplay between cognition, emotion, and attitudes provides a deeper explanation of behavior with IS

    An Evidence-based Roadmap for IoT Software Systems Engineering

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    Context: The Internet of Things (IoT) has brought expectations for software inclusion in everyday objects. However, it has challenges and requires multidisciplinary technical knowledge involving different areas that should be combined to enable IoT software systems engineering. Goal: To present an evidence-based roadmap for IoT development to support developers in specifying, designing, and implementing IoT systems. Method: An iterative approach based on experimental studies to acquire evidence to define the IoT Roadmap. Next, the Systems Engineering Body of Knowledge life cycle was used to organize the roadmap and set temporal dimensions for IoT software systems engineering. Results: The studies revealed seven IoT Facets influencing IoT development. The IoT Roadmap comprises 117 items organized into 29 categories representing different concerns for each Facet. In addition, an experimental study was conducted observing a real case of a healthcare IoT project, indicating the roadmap applicability. Conclusions: The IoT Roadmap can be a feasible instrument to assist IoT software systems engineering because it can (a) support researchers and practitioners in understanding and characterizing the IoT and (b) provide a checklist to identify the applicable recommendations for engineering IoT software systems

    Evaluation methodology for visual analytics software

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    O desafio do Visual Analytics (VA) é produzir visualizações que ajudem os utilizadores a concentrarem-se no aspecto mais relevante ou mais interessante dos dados apresentados. A sociedade actual enfrenta uma quantidade de dados que aumenta rapidamente. Assim, os utilizadores de informação em todos os domínios acabam por ter mais informação do que aquela com que podem lidar. O software VA deve suportar interacções intuitivas para que os analistas possam concentrar-se na informação que estão a manipular, e não na técnica de manipulação em si. Os ambientes de VA devem procurar minimizar a carga de trabalho cognitivo global dos seus utilizadores, porque se tivermos de pensar menos nas interacções em si, teremos mais tempo para pensar na análise propriamente dita. Tendo em conta os benefícios que as aplicações VA podem trazer e a confusão que ainda existe ao identificar tais aplicações no mercado, propomos neste trabalho uma nova metodologia de avaliação baseada em heurísticas. A nossa metodologia destina-se a avaliar aplicações através de testes de usabilidade considerando as funcionalidades e características desejáveis em sistemas de VA. No entanto, devido à sua natureza quatitativa, pode ser naturalmente utilizada para outros fins, tais como comparação para decisão entre aplicações de VA do mesmo contexto. Além disso, seus critérios poderão servir como fonte de informação para designers e programadores fazerem escolhas apropriadas durante a concepção e desenvolvimento de sistemas de VA
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