Event-Oriented Data Integration: A Qualitative Strategy in Studying Professional Practice

2008 ◽  
Vol 22 (1) ◽  
pp. 38-55 ◽  
Author(s):  
Solfrid Vatne ◽  
May Solveig Fagermoen

The purpose of this article is to present a qualitative mixed-method strategy that uncovers the compound reality in professional practice and the inner aspects of actions, feelings, values, and thoughts embedded therein. The authors developed a systematic strategy for collecting and handling data from different sources. This strategy, called event-oriented data integration represents within-method triangulation as well as triangulation during data analysis. The analysis involves 2 distinctive new steps for structuring of data—the braiding of data threads and the braiding of data ropes. We found that the process of weaving together different data created an inclusive text that allowed the researcher to undertake a holistic, coherent, and consistent analysis and to attain a more complete picture of professional practice.

2021 ◽  
Author(s):  
Ekaterina Chuprikova ◽  
Abraham Mejia Aguilar ◽  
Roberto Monsorno

<p>Increasing agricultural production challenges, such as climate change, environmental concerns, energy demands, and growing expectations from consumers triggered the necessity for innovation using data-driven approaches such as visual analytics. Although the visual analytics concept was introduced more than a decade ago, the latest developments in the data mining capacities made it possible to fully exploit the potential of this approach and gain insights into high complexity datasets (multi-source, multi-scale, and different stages). The current study focuses on developing prototypical visual analytics for an apple variety testing program in South Tyrol, Italy. Thus, the work aims (1) to establish a visual analytics interface enabled to integrate and harmonize information about apple variety testing and its interaction with climate by designing a semantic model; and (2) to create a single visual analytics user interface that can turn the data into knowledge for domain experts. </p><p>This study extends the visual analytics approach with a structural way of data organization (ontologies), data mining, and visualization techniques to retrieve knowledge from an extensive collection of apple variety testing program and environmental data. The prototype stands on three main components: ontology, data analysis, and data visualization. Ontologies provide a representation of expert knowledge and create standard concepts for data integration, opening the possibility to share the knowledge using a unified terminology and allowing for inference. Building upon relevant semantic models (e.g., agri-food experiment ontology, plant trait ontology, GeoSPARQL), we propose to extend them based on the apple variety testing and climate data. Data integration and harmonization through developing an ontology-based model provides a framework for integrating relevant concepts and relationships between them, data sources from different repositories, and defining a precise specification for the knowledge retrieval. Besides, as the variety testing is performed on different locations, the geospatial component can enrich the analysis with spatial properties. Furthermore, the visual narratives designed within this study will give a better-integrated view of data entities' relations and the meaningful patterns and clustering based on semantic concepts.</p><p>Therefore, the proposed approach is designed to improve decision-making about variety management through an interactive visual analytics system that can answer "what" and "why" about fruit-growing activities. Thus, the prototype has the potential to go beyond the traditional ways of organizing data by creating an advanced information system enabled to manage heterogeneous data sources and to provide a framework for more collaborative scientific data analysis. This study unites various interdisciplinary aspects and, in particular: Big Data analytics in the agricultural sector and visual methods; thus, the findings will contribute to the EU priority program in digital transformation in the European agricultural sector.</p><p>This project has received funding from the European Union's Horizon 2020 research and innovation program under the Marie Skłodowska-Curie grant agreement No 894215.</p>


Author(s):  
Kara S. Evans ◽  
Elizabeth Baoying Wang

Healthcare providers treat a plethora of conditions associated with the human body for a patient to achieve optimal healthiness. However, aspects of a patients' entire wellbeing can often be overlooked, which leads to issues such as drug interactions, missed diagnoses, and other gaps in care. Healthcare can benefit from implementing better data management and integration to improve data analysis, which could bridge gaps in care. This chapter will explain data analysis and data integration, why they are pertinent in the healthcare system, and their associated rewards and challenges. After analyzing these healthcare facets, this chapter will conclude with a proposal for healthcare providers to leverage technology for patients' general wellbeing and a healthier population.


Author(s):  
Yan Qi ◽  
Huiping Cao ◽  
K. Selçuk Candan ◽  
Maria Luisa Sapino

In XML Data Integration, data/metadata merging and query processing are indispensable. Specifically, merging integrates multiple disparate (heterogeneous and autonomous) input data sources together for further usage, while query processing is one main reason why the data need to be integrated in the first place. Besides, when supported with appropriate user feedback techniques, queries can also provide contexts in which conflicts among the input sources can be interpreted and resolved. The flexibility of XML structure provides opportunities for alleviating some of the difficulties that other less flexible data types face in the presence of uncertainty; yet, this flexibility also introduces new challenges in merging multiple sources and query processing over integrated data. In this chapter, the authors discuss two alternative ways XML data/schema can be integrated: conflict-eliminating (where the result is cleaned from any conflicts that the different sources might have with each other) and conflict-preserving (where the resulting XML data or XML schema captures the alternative interpretations of the data). They also present techniques for query processing over integrated, possibly imprecise, XML data, and cover strategies that can be used for resolving underlying conflicts.


Author(s):  
Inese Stars ◽  
Zanda Rubene

Adolescent health literacy is a promising innovation in health education. This article reports the findings of research in the experience of adolescents in the methods they used in obtaining health information. A phenomenographic research approach was used to understand how adolescents conceptualized health information obtaining. The study examined data provided by 24 adolescents aged 13 to 16 living in Latvia. The data was collected through qualitative interviews. Phenomenographic data analysis uncovered five categories of description by adolescents in the way they perceived health information obtaining: 1. An opportunity to find out “things” regarding health; 2. The use of different sources of information to obtain health information; 3. The use of multimodal texts to obtain health information; 4. A passive method of obtaining information; and 5. An active method of obtaining information. It is important to integrate the experience of adolescents into health education research to develop a deeper understanding of the pedagogical phenomenon and to enhance health education programmes.


2020 ◽  
pp. 263208432097804
Author(s):  
Paulann Grech ◽  
Reuben Grech

Mixed methods have emerged as potential problem solvers particularly where traditional mono-method approaches fail to deal with specific research problems. The integration of quantitative and qualitative data within mixed methods approaches is central and should be carefully planned and executed. It is equally important to choose an appropriate mixed methods design, that promises to answer the research questions posed at the start of the research endeavour. The authors used an exploratory sequential mixed method approach to explore stroke knowledge and educational needs in a large population. They present the development and use of a framework (matrix) to ensure comprehensive and transparent data integration in their study and may be used as a template for future studies.


Author(s):  
Héctor Oscar Nigro ◽  
Sandra Elizabeth González Císaro

Today’s technology allows storing vast quantities of information from different sources in nature. This information has missing values, nulls, internal variation, taxonomies, and rules. We need a new type of data analysis that allows us represent the complexity of reality, maintaining the internal variation and structure (Diday, 2003). In Data Analysis Process or Data Mining, it is necessary to know the nature of null values - the cases are by absence value, null value or default value -, being also possible and valid to have some imprecision, due to differential semantic in a concept, diverse sources, linguistic imprecision, element resumed in Database, human errors, etc (Chavent, 1997). So, we need a conceptual support to manipulate these types of situations. As we are going to see below, Symbolic Data Analysis (SDA) is a new issue based on a strong conceptual model called Symbolic Object (SO). A “SO” is defined by its “intent” which contains a way to find its “extent”. For instance, the description of habitants in a region and the way of allocating an individual to this region is called “intent”, the set of individuals, which satisfies this intent, is called “extent” (Diday 2003). For this type of analysis, different experts are needed, each one giving their concepts.


Author(s):  
Héctor Oscar Nigro ◽  
Sandra Elizabeth González Císaro

Today’s technology allows storing vast quantities of information from different sources in nature. This information has missing values, nulls, internal variation, taxonomies, and rules. We need a new type of data that allow us to represent the complexity of reality, maintaining the internal variation and structure (Bock & Diday, 2000; Diday, 2002, 2003).


2007 ◽  
Vol 15 (1) ◽  
pp. 34-41 ◽  
Author(s):  
Dirce Stein Backes ◽  
Magda Santos Koerich ◽  
Alacoque Lorenzini Erdmann

This qualitative study aimed to find the values and principles steering health professionals' practice, in order to reach the values guiding humanization. The study took place between October and November 2005, when 17 professionals from a multiprofessional team at a hospital in the South of Brazil were interviewed in three different samples. The methodology used for comparative data analysis and interpretation was based on Grounded Theory, resulting in the creation of a theoretical model, guided by "humanizing care through the valuation of the human being". Data demonstrated that new competencies can be developed, which are capable of provoking a resignification of values and principles guiding humanization, with a view to reaching personal/professional accomplishments through work, allying technical and human skills in professional practice and experiencing humanized care.


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