25 research outputs found
Qualitative Structural Model for Capabilities in Open Data Organizations
Open data is increasingly becoming an essential asset for many organizations. However, large numbers of organizations fall short when it comes to utilizing open data effectively to fully leverage the potential of it. There are ample evidences that this shortcoming is attributable to the poor understanding of what types of capabilities are required to successfully conduct data related activities. At the same time, research on open data capabilities and how they relate to one another remains sparse. Based on the theoretical foundation constructed from the integration of Capability-based Theory and Dynamic Capability Theory and, extant literature and interviews of leadership of open data organizations, we attempt to address this knowledge gap by investigating open data capabilities and relationships between them. Findings help validate the two theories in the open data organizations and reveal unknown knowledge about open data capability areas and how they affect one another
Open Data Capability Architecture - An Interpretive Structural Modeling Approach
Despite of increasing availability of open data as a vital organizational resource, large numbers of start-ups and organizations fail when it comes to utilizing open data effectively. This shortcoming is attributable to the poor understanding of what types of capabilities are required to successfully conduct data related activities. At the same time, research on open data capabilities and how they relate to one another remains sparse. Guided by extant literature, interviews of these organizations, and drawn from Interpretive Structural Modeling (ISM) approach which are pair comparison methods to evolve hierarchical relationships among a set of elements to convert unclear and unstructured mental models of systems into well-articulated models that act as base for conceptualization and theory building, this study explores open data capabilities and the relationships and the structure of the dependencies among these areas. Findings from this study reveal hitherto unknown knowledge regarding how the capability areas relate one another in these organizations. From the practical standpoint, the resulting architecture has the potential to transform capability management practices in open data organizations towards greater competitiveness through more flexibility and increased value generation. From the research point of you, this paper motivates theory development in this discipline
Towards Open Data Impact Evaluation Framework – An Empirical Analysis of the Demand-side Response
Open data is widely presumed to have a social, environmental, political, and economic impact; however, the evidence to that impact has remained scarce. The impacts must be explored and quantified to give a reasonable insight into the supply-side activities and demand-side responses. Based on the data collected from open data users in Ireland, we address the questions what the impacts of open data are and what indicators can be used to quantify the impacts of future open data initiatives. Findings from this study revealed impact categories, areas, and specific indicators to each impact areas. Output of this research directly contributes to the development and implementation of the National Open Data Strategy. This research recommends that open data leaders revisit indicators in respond to the change of social context and call for new forms of joint action between public and private stakeholders to deliver data-driven public goods
An Ontology for Open Government Data Business Model
Despite the existence of number of well-known conceptualization
in e-Business and e-Commerce, there have been no efforts so far to
develop a detailed, comprehensive conceptualization for business
model. Current business literature is replete with fragmented
conceptualizations, which only partially describe aspects of a
business model. In addition, the existing conceptualizations do not
explicitly support the emerging phenomenon of open government
data – an increasingly valuable economic and strategic resource.
Consequently, no comprehensive, formal, executable open
government data business model ontology exists, that could be
directly leveraged to facilitate the design, development of an
operational open data business model. This paper bridges this gap
by providing a parsimonious yet sufficiently detailed,
conceptualization and formal ontology of open government data
business model for open data-driven organizations. Following the
design science approach, we developed the ontology as a ‘design
artefact’ and validate the ontology by using it to describe an open
data business model of an open data-driven organization
Entrepreneurism and e-government in Finland: Barriers to Entry
Entrepreneurship is generally considered as central to economic
development. Therefore, decisions by government to directly
support entrepreneurs with Electronic Government (e-Gov)
services can have significant impact on economic development.
Given the current downward trend in new entrepreneur numbers
in many countries, e-Gov services may arguably be best
targeted at promotion and lowering of barriers in establishing
new businesses. However, delivering effective e-Gov services
to entrepreneurs in starting new businesses will require concrete
knowledge of entrepreneurial needs on one hand and the
barriers to entry and challenges on the other hand.
Unfortunately, research dedicated to the real needs of
entrepreneurs with respect to e-Gov services is limited. This
work fills this knowledge gap through a study of the e-Gov
related factors that could contribute to lowering the barriers to
entry for new entrepreneurs. Based on the analysis of the
information gathered from a series of structured and semi-structured interviews involving 36 fresh entrepreneurs in
Finland, we identified four factors related to e-Gov services
which could lower the barrier to entrepreneurship
A Tale of Open Data Innovations in Five Smart Cities
Open Data initiatives are increasingly considered as defining elements of emerging smart cities. However, few studies have attempted to provide a better understanding of the nature of this convergence and the impact on both domains. This paper presents findings from a detailed study of 18 open data initiatives across five smart cities -- Barcelona, Chicago, Manchester, Amsterdam, and Helsinki. Specifically, the study sought to understand how open data initiatives are shaped by the different smart cities contexts and concomitantly what kinds of innovations are enabled by open data in these cities. The findings highlight the specific impacts of open data innovation on the different smart cities domains, governance of the cities, and the nature of datasets available in the open data ecosystem
Multi-functional view of technology governance in tax administration: A case study
Despite digital technology gaining importance in recent years, a
holistic view on its governance in public and tax administration
is yet to be clearly articulated, a shortcoming made more acute by
the centrality of the government sector. Guided by a case study
approach considering three key perspectives in a European tax
administration – 1.) Customer Service Leader; 2.) Information and
Technology Leader; and 3.) Operations Leader. This study surfaces
the elements central to the effective governance of disruptive digital
technologies
A term extraction approach to survey analysis in health care
The voice of the customer has for a long time been a key focus of businesses in all domains. It has received a lot of attention from
the research community in Natural Language Processing (NLP) resulting in many approaches to analysing customers feedback ((aspect-based) sentiment analysis, topic modeling, etc.). In the health domain, public and private bodies are increasingly prioritising patient
engagement for assessing the quality of the service given at each stage of the care. Patient and customer satisfaction analysis relate in
many ways. In the domain of health particularly, a more precise and insightful analysis is needed to help practitioners locate potential
issues and plan actions accordingly. We introduce here an approach to patient experience with the analysis of free text questions from
the 2017 Irish National Inpatient Survey campaign using term extraction as a means to highlight important and insightful subject matters
raised by patients. We evaluate the results by mapping them to a manually constructed framework following the Activity, Resource,
Context (ARC) methodology (Ordenes et al., 2014) and specific to the health care environment, and compare our results against manual
annotations done on the full 2017 dataset based on those categories
Capability architecture for open data
Open data is increasingly becoming an essential asset for many organizations. Large numbers of new start-ups are emerging to benefit from the potential of this asset for a wide range of new products and services. However, despite of significant advances in open data technical and infrastructure capabilities, large numbers of organizations fall short when it comes to utilizing open data effectively. Consequently, they fail to fully leverage the potential of open data. There are ample evidences that this shortcoming is attributable to the poor understanding of what types of capabilities are required to successfully conduct data related activities. At the same time, research on open data capabilities and how they relate to one another remains sparse. The thesis addresses this knowledge gap by investigating capability areas and specific capabilities that are important for generating value from open data, enabling and improving agility and competitive advantage of organizations using open data as one of their key resources to meet their mission goals. In addition, the thesis explores the relationships among the capability areas and the structure of the dependencies among these areas. We adopt a Design Science Research Approach with a theoretical foundation constructed from the integration of Capability-based Theory and Dynamic Capability Theory. Guided by extant literature, data from a global survey of open data organizations and in-depth interviews of leadership of these organizations were analyzed based on the developed theoretical model to identify specific capabilities associated with each capability areas and how these capability areas impact one another. Structural modelling technique was employed to refine these relationships into a layered architecture specifying the dependencies among the capability areas. The structural analysis performed also enables the determination of the nature of these capability areas. Findings from the thesis do not only help validate and refine Capability-based Theory and Dynamic Capability Theory in the open data organization; they reveal hitherto unknown knowledge regarding how the capability areas affect one another in these organizations. From the practical standpoint, the resulting architecture has the potential to transform capability management practices in open data organizations towards greater competitiveness through more flexibility and increased value generation.2019-07-3