Advancing Research in Enterprise Architecture
An Information Systems Paradigms Approach
Ovidiu Noran
School of Information and Communication Technology, Griffith University, Nathan QLD, Australia
Keywords: Enterprise Architecture, Information Systems, Research Paradigms, Action Research.
Abstract: Enterprise Architecture (EA) is an Information Systems (IS)-related domain aspiring to become a mature
discipline underpinned by its own schools of thought. As with other emerging research areas, currently there
is no widespread consensus on EA formal theoretical foundations and associated paradigms; thus, the EA
researcher needs to find and tailor paradigms and research methods from related disciplines. As a possible
solution contributing towards the maturing of the EA field, this paper advocates the application of social
science-inspired qualitative research methods and paradigms typically engaged in the IS area to EA research.
The paper starts by performing a critical review of the mainstream IS research assumptions, methods and
paradigms in view of their suitability and expressiveness for the EA research endeavour according to
ontological and epistemological assumptions specific to EA. Subsequently, the paper demonstrates the
application of the reviewed IS research artefacts through a sample EA research strategy framework based on
an IS-inspired reflective and iterative action research paradigm.
1 INTRODUCTION
Enterprise Architecture (EA) is a domain related to
Information Systems (IS) that attempts to bridge the
management, IS, Information Technology (IT) and
engineering in order to guide organisations through
the change processes involved in fulfilling their
strategies. In effect, EA translates business vision and
strategy into change by creating, communicating and
improving the key principles and models that describe
the enterprise’s future state and enable its evolution
(Gartner Group, 2008). Several EA research
directions currently exist; however, the ontology of
EA is not yet widely agreed upon. As the EA schools
of thought (Lapalme, 2012) are presently not mature
enough to agree on formal theoretical foundations and
associated paradigms, the EA researcher needs to find
'best matches' in paradigms and research methods
from related disciplines, notably IS. Finding and
customising relevant research artefacts is in fact
beneficial towards promoting creativity in the
discovery of innovative approaches to answer
research problems in the EA domain.
This paper aims to support the search for suitable
artefacts by initially performing a critical review of
the mainstream IS research assumptions, methods and
paradigms in view of their suitability and
expressiveness for the EA research endeavour. This
is followed by an attempt to demonstrate the use of
the IS research artefacts reviewed to EA, in the form
of an example EA research strategy framework
featuring a reflective and iterative action research
paradigm background.
2 RESEARCH ASSUMPTIONS
The research work described in this paper has
examined the paradigms used in classifying the IS
schools of thought described by Iivari (1991) in order
to select appropriate EA research assumptions and
methodologies. From the start, it must be noted that
there is a partially acknowledged connection between
research methods and epistemological assumptions
(Burrell and Morgan, 1979; Iivari, 1991); that is,
adopting a particular epistemological stance may bias
the researcher towards particular research methods.
The view taken in this study is that such dependence
and biases are acceptable, provided they are
acknowledged by the researcher and taken into
account when evaluating the research results.
Noran, O.
Advancing Research in Enterprise Architecture - An Information Systems Paradigms Approach.
In Proceedings of the 18th International Conference on Enterprise Information Systems (ICEIS 2016) - Volume 2, pages 539-548
ISBN: 978-989-758-187-8
Copyright
c
2016 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
539
2.1 Ontological Assumptions
2.1.1 The EA View of IS: Technical System
and Social System
The EA view of IS is important in order to underpin
the stance towards using research artefacts
originating in the IS body of knowledge. Thus, EA
typically considers IS to be a subsystem of an
enterprise used to collect, process, store, retrieve and
distribute information within the enterprise and
between the enterprise and its environment (Bernus
and Schmidt, 1998), comprising “not only
technologies but people, processes and organisational
mechanisms” (Stohr and Konsynsky, 1992) “aimed at
maintaining an integrated information flow
throughout the enterprise” (Bernus and Schmidt,
1998) and providing the quality and quantity of
information “whenever and wherever needed” (ibid.).
For EA, the business change processes are the
main driver of IS development and the object of IT
requirements (Earl, 1990). The above-mentioned IS
definition implies a dualistic EA view of IS, where
mechanistic (technical), but also utilitarian (users)
and reflective (designers) aspects (Swanson, 1988)
must be considered. Thus, in an EA perspective the
IS as a fundamental component of the enterprise
exists within a complex organisational, political and
behavioural context (view shared by the Decision
Support System IS school of thought (Keen and Scott
Morton, 1978)). EA acknowledges that the IS plays
an essential role in the design and operation of the
organisation/s, both as a technical system and as an
organisational and social one (Pava, 1983),
depending on the view taken: ‘tool’ or ‘institutional’
(Iacono and Kling, 1988).
Vice versa, from an IS viewpoint, EA is a holistic
change management paradigm that bridges
management and engineering best-practice,
providing the “[…] key requirements, principles and
models that describe the enterprise's future state. […].
Thus, EA comprises people, processes, information
and technology of the enterprise, and their
relationships to one another and to the external
environment” (Gartner Research, 2012). This EA
definition reinforces the view of enterprises as
collaborative social systems composed of
commitments (Neumann et al., 2011) and socio-
technical systems (Pava, 1983) with voluntaristic
people (McGregor, 1960) in a complex
organisational, political and behavioural context
(Iivari, 1991; Markus, 1983).
2.1.2 EA View of Data: Constitutive
Meanings, Partially Descriptive Facts
Similar to the Software Engineering school approach
(Fairley, 1985; Sommerville, 1989), the modelling
involved in EA sees information as an interpretation
of reality, a way to communicate and to achieve a
common understanding. However, as Lehtinen and
Lyytinen (1986) assert, a performative function of
data also exists, enabling users to do things; in EA,
this function translates into simulations, forecasts and
operation (e.g. using executable enterprise models).
Adopting a dual view of the data allows creating
models that promote common understanding
(descriptive facts) while at the same time allowing for
subjective meanings that construct possible realities
(e.g. forecasts and designs). In addition, the
interpretive view of data allows constructing
customised models targeted to audiences having
various competencies; notably however, these models
must be views of a unique agreed-upon perception of
‘reality’, typically enabled by a consistent set of
underlying meta-models and ontologies.
2.1.3 EA View of Human Beings:
Voluntaristic with Deterministic
Elements
A deterministic view of humans as adopted by the SE
and Implementation schools of thought appears to be
generally inappropriate to the EA research stream. In
contrast, the voluntaristic position advocates user
participation (Lundeberg et al., 1981) since end-user
rejection of a technically successful project will
ultimately render it useless (Swanson, 1988);
motivational (encouraging / inhibiting) factors
inherently present in organisations also promote a
voluntaristic view of human beings. Therefore, a
human view relevant to EA has to reflect aspects of
Theory Y (McGregor, 1960) where people are
voluntaristic in nature but display deterministic
elements. This is because stakeholders are typically
influenced by personal context, previous experiences
(e.g. unpopular systems forced on the organisation)
and organisational culture (e.g. clan, adhocracy,
hierarchy, market (Cameron and Quinn, 2006)).
2.1.4 EA View of Technology: Human
Choice with Deterministic Elements
EA studies typically produce a variety of technically
acceptable solutions. Therefore, human choice is
essential in the adoption of a particular (type of)
solution to a given EA problem. The adoption of a
specific solution by a group of people is a result of the
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complex interaction of several factors such as
technical needs and individual and group ambitions,
agendas and beliefs. Thus, the acceptance and
adoption of a proposed 'umbrella' solution by
(potentially competing) human groups is very much a
political process that involves taking ownership by
identifying and confirming contributions to a
common overarching framework. By taking into
account the non-deterministic nature of humans it is
possible to achieve a synergy towards an inherently
common, although differently perceived final
purpose. In EA, achieving unanimously agreed-upon
meaningful enterprise models and modelling
methodologies for the present (AS-IS) and chosen
future (TO-BE) states is a core enabler of any
successful change effort.
The deterministic elements of technology must
also be considered, e.g. in order to model the effects
of externally managed or imposed technological
infrastructure (typically caused by outsourcing or by
misalignment of IS vs. enterprise goals). Therefore, a
deterministic view may suitable to some extent to
model an existing AS-IS situation, while a human
choice view is perhaps best adopted in designing
possible desired TO-BE states.
2.1.5 EA View of Organisations:
Interactionism, Structuralism to Some
Extent
A static, structuralist view of the organisation allows
constructing models that are relatively stable.
However, the interactionist view of an organisation
has a logical connection to the voluntaristic view of
people and the human choice view of technology
previously reviewed. Thus, the existence of
organisational culture, power, politics and
‘discretionary coalitions’ (Pava, 1983) is undeniable;
any undertaking towards integration and
reconciliation of the existing and emergent EA
framework and methodologies of the various schools
of thought must take this fact into consideration.
In the global market conditions, successful
organisations are typically agile - continuously
evolving in response to, or even to pre-empt changes
in the environment. As a result, enterprise models
must be either promptly constructed as a 'snapshot' of
the current state and regularly updated, or constructed
in a way that reflects the modelled target over its
entire life cycle. In the current research, the
'structuralism to some extent' approach adopted
allows modelling the inherent degree of inertia
present in organisations and the user resistance to
change; these issues need to be properly addressed so
as to obtain user satisfaction and cooperation and thus
make organisational changes 'stick'.
2.2 Epistemological Assumptions
Enterprise models as a core component of the EA
effort are being constructed for various reasons - such
as enhancing the understanding of the enterprise
structure, operation and lifecycle, enabling enterprise
operation via executable models, or allowing to test
various future state scenarios. Invariably though, the
declared, tacit or emerging ultimate purpose of
enterprise modelling within EA is change.
Consistent with the ontological assumptions
previously adopted (e.g. voluntaristic human beings
and technology as a human choice), perception,
interpretation and understanding are crucial to the
development of consistent enterprise models and
agreed-upon EA methodologies. For example,
technical-wise 'perfect’ methods to construct specific
models are pointless if the intended audience does not
possess the required competencies to understand
them and therefore will seldom or never put them to
use. Thus, in the author’s opinion, EA research must
adopt an anti-positivistic epistemological stance
focused on the interpretations of the stakeholders.
This will allow to decide the required formalisation
extent of the enterprise architecture framework (EAF)
artefacts (e.g. modelling frameworks, methodologies,
etc.) in order to match the intended audience
competencies; this will promote shared user
understanding leading to commitment to (and thus
actual use of) the resulting EA endeavour
deliverables.
Although implicit associations of the
epistemology with the research methods exist (see
Burrell and Morgan (1979), the author supports the
view of relative independence of the two as advocated
by Iivari (1991). This stance allows some flexibility
in choosing the research methods that best suit the
research, while keeping within the chosen
epistemological stance.
2.3 Ethics of Research
The majority of IS schools of thought adhere to
Iivari’s (ibid.) view that practical relevance
unavoidably implies a means-end approach. This is
reflected in the EA perspective: research has to serve
the interests of the host organisation (ibid.), while
considering stakeholders’ satisfaction; practical
research outcomes would be useless if not fully
understood and accepted by the intended users and
decision makers. Thus, according to Lucas (1981) the
Advancing Research in Enterprise Architecture - An Information Systems Paradigms Approach
541
users must firstly be satisfied with and have
favourable attitudes towards the EA artefacts
produced; as a result, they will actually use them and
by doing so, achieve payoffs for the organisation.
Hence, an interpretivist approach appears to be
appropriate in EA research so as to investigate the
motivation, purpose and effects of the EA efforts,
culminating in the previously stated view that the
fundamental aims of the EA endeavour are
understanding and change.
2.4 Other Research Assumptions
2.4.1 Research Paradigm
In view of the previous assumptions, an 'umbrella'
research paradigm for this study is close to the social-
relativist area according to Hirschheim and Klein
(1989), or the interpretivist domain as defined by
Burrell and Morgan (1979) (see
Figure 1).
Functionalist tendencies may be present, without
necessarily denying the existence of conflict, or
adopting a positivist approach (as argued by this
framework’s critics, e.g. Chua (1986) and Nurminen
(1997)).
Figure 1: Proposed EA position within mainstream IS
research paradigms.
2.4.2 Role of the EA Researcher
Within the framework defined by Hirschheim and
Klein (1989), the EA researcher appears to be a
facilitator in an anti-positivistic stance, believing that
data can be interpreted in different ways by various
stakeholders and taking a social-relativist approach
when tackling the acceptance and effects of the EA
artefacts on the organisation. However, due to the
intrinsic mission of EA (change), the researcher must
reconcile the facilitating role with that of a systems
expert, acknowledging that data describes a unique
reality (vs. information which is the interpretation of
data by the stakeholders) and that research must have
practical outcomes. Thus, the EA researcher acts to
facilitate the audience's understanding of the present
and possible future states of their organisations, but at
the same time plays an expert role in producing a
commonly agreed-upon EA methodology model and
associated deliverables. These artefacts are essential
in guiding the selection of suitable steps in the EA
process and enable additional modelling aspects and
formalisms as necessary for the target audiences.
3 RESEARCH METHODS
This study has used the IS research taxonomy
presented by Galliers (1992) as the main repository of
potential research methods suitable for EA.
Generally, humanities-inspired idiographic research
methods which consider each subject as an ‘agent’
with a unique life history appear to better satisfy the
particular needs of EA research: each enterprise
presents unique features which are best investigated
by getting close to it and exploring its background and
life history. Therefore, anti-positivist-specific
methods such as action research (AR) and case study
feature prominently among the chosen methods. The
researcher has adopted Jick ‘s (1979) view in respect
to the importance of triangulation and of the
'triangulating investigator' (establishing convergence
of results) in research.
3.1 Action Research (AR)
AR is suitable for EA because often the researcher
directly participates in the Universe of Discourse
being researched and because typically, the problems
in this area contain both theoretical (research) and
practical (real-world) aspects that need to be
addressed; this method is also be consistent with the
interpretivist (Burrell and Morgan, 1979) and social
relativist (Hirschheim and Klein, 1989) stances
(Jönsson, 1991). In addition, Davison (2001) argues
that problems for which previous research has yielded
a validated theory are well suited for AR: the action
researcher intervenes in the problem situation,
applying the theory provided, evaluating its
usefulness and potentially enriching it as a result of
the evaluation. This matches the EA situation where
often usable and proven, albeit not always complete
or fully established theoretical artefacts (e.g. EAF
elements) are provided. Notably, AR is perceived by
Subjective
Objective
Conflict
Order
Functionalist
Social Relativist
(Interpretivist)
Radical
Structuralist
Neo-Humanist
Subjective
Objective
Conflict
Order
Functionalist
Social Relativist
(Interpretivist)
Radical
Structuralist
Neo-Humanist
ICEIS 2016 - 18th International Conference on Enterprise Information Systems
542
some IS schools of thought as an iterative process in
which reflection is the crucial phase (Davison, 2001).
There is an on-going debate about rigor vs.
relevance in the IS field. These two apparently
opposing aspects can be reconciled in the author’s
opinion: AR can produce results usable in practice
(relevance) (Benbasat and Zmud, 1999), while a
cyclic type of AR may be used to build the necessary
scientific rigor (Davidson et al., 2004; Davison,
2001). This resolution is also applicable to EA: AR
can produce an applicable repository of EA artefacts
(relevant to practice) and at the same time build the
necessary theoretical rigor and refine these
deliverables with each research iteration. Thus, the
author considers reflection and iteration applied to
AR as essential and equally important aspects when
applied to the EA domain.
3.1.1 EA-specific AR Features and Issues
AR as a qualitative method usable in IS (Baskerville
and Wood-Harper, 1996) displays a great diversity of
methods (Chandler and Tvorbert, 2003; Lau, 1997);
thus, it needs to be further scoped for the EA domain,
using frameworks such as described by Chiasson and
Dexter (2001). This framework contains four AR
characteristics that may be used to distinguish
between various AR approaches: the AR process
model (iterative, reflective, or linear), the structure of
each AR step (rigorous or fluid), the researcher
involvement (collaborative, facilitative, or expert)
and the AR primary goals (organisational
development, system design, scientific knowledge or
training). In terms of the viewpoints of this
framework, the most beneficial AR process model for
EA would include the repetitive use of a sequence of
activities (iterative AR) and reflection upon the
results obtained (reflective AR), leading to
uncovering and resolving potential differences
between the theory in use and the espoused theory
(Avison et al., 2001). Furthermore, as the typical turn-
around period for an EA field test / case study is often
measured in years, it can be argued that the AR steps
should be rigorous, since appropriate succession and
timing of the AR phases are essential to a meaningful
research outcome. In regards to involvement, the EA
researcher is typically both a facilitator and an expert.
As for the last framework viewpoint, the primary
goals of AR in EA are typically system design (since
EA perceives enterprises as systems of systems
(Carlock and Fenton, 2001)), scientific knowledge
(advancement of EA as a discipline) and
organisational development (as organisational change
processes are typically a major aspect in EA).
Avison et al. (2001) state several essential issues
that need to be addressed for a successful AR
approach - namely initiation, determination of
authority and degree of formalism. In respect to EA,
initiation appears to be typically both research and
practice-driven. For example, in the process of the
development of the sample research strategy
framework presented in Section 5, a brief analysis of
the current EA environment has revealed research
fragmentation and incompatibility of the enterprise
modelling methods available, leading to the practical
problem of what and how to use, for which problem
(problem-driven). Authority determination in EA-
specific AR for the enterprise architect and EA team
is typically decided according to the policies of the
hosting organisation and the standing of the project
champion (e.g. CEO vs. office manager). Finally, the
degree of AR formalism in EA will have to be high,
so as to enforce rigorousness and ensure the
stakeholders’ trust and support of the architecting
effort.
From the above it can be concluded that EA
research should consider an iterative and reflective
AR type, with iterations occurring in a dual cycle
representing the theoretical and practical significance
of the research undertaken (Checkland, 1991; McKay
and Marshall, 2001). This is represented in Figure 2,
where the meaning of the symbols can be interpreted
from an EA viewpoint as follows:
Figure 2: The dual cycle of Action Research (Checkland,
1991; McKay and Marshall, 2001).
F: the theoretical EA framework adopted (e.g.
an EAF or combination thereof);
M
R
: the EA research method (or a combination
thereof);
M
PS
: the EA problem solving methodology (or
meta-methodology (Noran, 2008));
A: the theoretical EA problem to be solved;
Advancing Research in Enterprise Architecture - An Information Systems Paradigms Approach
543
P: the real world EA problem; e.g. how to
combine and apply existing EAF elements and
domain knowledge for a given EA task.
3.2 Conceptual Development
This constructive type of research method (Iivari et
al., 1998) allows for the necessary creation of EA
artefacts. Therefore, in an iterative AR approach each
research cycle should include a conceptual
development phase to build or refine the EA research
deliverables.
3.3 Descriptive / Interpretive Research
This method can be involved for example in a critical
literature review phase. It allows the researcher to
develop a cumulative knowledge of the EA domain
issues and thus ensure that the current research is
relevant and builds on previous achievements
(Galliers, 1992). For example, in the research
approach framework proposed further on in Section
5, the critical review prepares the researcher for the
entry in the iterative AR cycles by contributing to the
creation of a structured repository of EAF elements.
3.4 Simulation
Galliers (1992) and Eden and Chisholm (1993) argue
that simulation is well-suited to methodology and
theory development, testing and extension. The large
turn-around time involved in EA field tests makes
simulation an effective choice for artefact
development and testing, bearing in mind that the
results obtained can only be checked for internal
validity (Trochim, 2000). In the proposed research
approach framework, simulation is used for prototype
testing and development in the early stages of the
research so as to achieve the quality and detail
necessary for the typically time-consuming EA field
testing.
3.5 Field Experiment and Case Study
This method can be used in EA to externally validate
(i.e. in a real-world situation) the artefact under
development. Thus, in an iterative AR approach, field
experiments would represent the 'action' part of AR
(see e.g. Figure 3) employed in each cycle.
Describing the present states and relevant past
events of the organisations involved in the simulation
and field experiments is essential to the development,
refinement and validation of the artefacts being
developed in an EA research endeavour. In addition,
the potential effects of the research product(s) on the
target organisations should also be investigated. For
these reasons, case study (in conjunction with field
experimentation) also constitutes a useful method for
EA research.
An interesting proposition is the dual use of case
studies (see (Lin, 1998)) in EA: in an interpretive
fashion so as to explore / generate theory and to ask
questions, but also in a positivistic way, to find
predictable aspects (infer EA theory) and test the
effects of proposed artefacts (e.g. EAF elements,
associated methodologies and so on).
3.6 Ethnography
This anthropology-based interpretive research
method aims to explore ‘contextual webs of meaning’
(Myers, 1997), i.e. examine human actions in a
socially constructed context. In particular, post-
modernist (Harvey, 1997) and critical (Myers, 1997)
ethnographies appear to be well-suited for the
exploration of the complex and changing social
context of EA. Ethnography is recommended as a
suitable method for EA research since it may be
effectively used to study the organisational effects of
implementing the change processes driven by
enterprise models created during EA projects.
3.7 Survey
Surveys are a possible alternative to the critical EA
literature review. However, employing surveys of the
major EA schools of thought may prove less useful
due to typical problems such as sensitivity to data
gathering methods (typically questionnaire and
structured interviews), self-selection and interviewee
observation and counteraction of the interviewer
strategy, which are likely to be magnified in the
context of the currently pronounced fragmentation of
current EA research and polarisation of the EA
schools of thought.
3.8 Longitudinal Research
This approach typically allows for the measurement
of behaviour (involving several other research
methods) at a number of points in time during a finite
time span (Galliers, 1992). Longitudinal research
applied in EA could be useful in the same manner as
ethnography; however, due to the extensive period of
time involved (compounded by the typically long
turn-around of EA field tests), it may involve high
cost, obsolesce, bias and could require significant
resources.
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544
4 DATA GATHERING METHODS
The use of primary data in EA is subject to typical
collection method pitfalls. For example,
questionnaires are subject to bias and self-selection
on the respondents' part (Galliers, 1992), delays and
low rate of response, while interviews can be affected
by hidden agendas and by the interviewee lack of self-
disclosure. A better alternative is participant
observation, which can be employed in the field
testing phase to gather primary data, subject to the
research team being representative of the project
environment viewpoints (Trauth, 1997). For example,
participant observation and semi-structured
interviews have been used in the field experiments
employed to test and validate the proposed research
approach framework in Section 5, with the researcher
participating in working groups in charge of EA
artefacts’ life cycle management. The collected data
has been used in the reflection and triangulation
phases of the research framework testing and
validation.
The use of secondary data for research purposes
has critics (Bowering, 1984; Kiecolt and Nathan,
1985) and defenders that argue for its value in
complementing or even replacing primary data
(Jarvenpaa, 1991). Similar to the case of IS, one may
conclude that secondary data may be used in EA if the
purpose and the methods used in the original data
collection can be rigorously ascertained.
Note that in EA, data reflecting business
processes, strategies, networks etc. may provide a
decisive edge to a business in a competitive situation.
Hence, in the EA domain most such data is
confidential thus requiring trust building between the
researcher and the practitioners within the
organisation; this can be achieved e.g. by the adoption
of an ethnographical approach, whereby the
researcher is immersed in the participant
organisation(s) for a significant period of time.
5 CASE STUDY: AN AR-BASED
EA RESEARCH STRATEGY
FRAMEWORK
5.1 Overview
This section presents a sample application of some of
the research methods previously reviewed within a
proposed EA research strategy framework. Note that
in this context, AR is perceived as an overarching
research approach (Galliers, 1992) providing a
context for other research methods – here, conceptual
development, simulation, field testing and case study.
Figure 3 shows the customised dual cycle of the
research strategy employed, based on the work of
McKay and Marshall (2001) and Checkland (1991)
previously explained in Section 3.1.1 and illustrated
in Figure 2.
The inner cycle comprises conceptual
development and simulation followed by reflection.
Besides checking internal validity, this cycle aims to
promptly refine and bring the research deliverables to
a level suitable for field testing (which in EA may
span over significant periods of time, thus requiring a
mature prototype for a meaningful result). The outer
cycle performs a field experiment combined with case
study; the results are reflected upon and then
triangulated with the simulation result.
Several iterations may occur within the inner and
outer cycles; the exit from these cycles is triggered by
mitigation between the required level of artefact
maturity and quality and available research resources.
The results are then refined one last time and critically
assessed in regards to their contribution towards
theory (EA body of knowledge) and practice (e.g. EA
design and operation artefacts).
5.2 Brief Explanation of the Most
Relevant Framework Components
5.2.1 Critical Literature Review
Typically, EA problems require the use of
components belonging to more than one EAF. The
effective application of such EA components requires
their review and categorisation in respect to their life
cycle and universe of discourse coverage, using a
common reference that has to be expressive and
generic enough to accommodate the scope of all
assessed frameworks. Typically this requirement is
fulfilled by a suitable theoretical model; in several of
the case studies used to develop, test and validate the
sample research strategy framework presented here
(e.g. (Noran, 2009, 2012, 2014; Noran and Panetto,
2013)) this generic, albeit expressive reference has
been provided by ISO15704 Annex A (ISO/IEC,
2005), a document outlining requirements for EAFs.
From the aforementioned case studies it has also
emerged that a mixed descriptive / interpretive
research approach (Galliers, 1992) would be
beneficial for the EA literature review - i.e., rather
than merely appraising the state-of-the-art, also
attempt to assess and interpret the reviewed
knowledge using a consistent EA terminology
(provided by the adopted theoretical model).
Advancing Research in Enterprise Architecture - An Information Systems Paradigms Approach
545
Figure 3: A sample IS AR-based EA research strategy
framework using Galliers (1992) and Wood-Harper (1985).
5.2.2 Theory Testing (Field
Experimentation/ Case Study)
The field experimentation method is associated here
with case study in order to record the effects of EA
artefacts’ application on the target enterprise. As can
be observed from Figure 3, field testing is a two-way
process: external validation is achieved (input from
the environment) while at the same time practical
outcomes are created (output to the environment).
Member checking (Trauth, 1997) should be regularly
involved by validating the models produced with the
stakeholders of the involved organisations. The
feedback thus gathered can be used to reflect on the
research and suitably adjust the artefacts in
subsequent conceptual development phases within
the AR research cycle iterations.
5.2.3 Reflection / Theory Extension
Reflection is necessary after each iteration in order to
elaborate on the field experiment / case study
conclusions and to assert possible causal relationships
(Trochim, 2000). Reflection results in theory
extension and refinement proposals, which are fed
into the conceptual development phase of the next
research iteration. In testing the framework, the AR
iterations have deliberately involved largely diverse
environments, so as to enable an effective
triangulation (Jick, 1979) ascertaining the
convergence of the results obtained in the simulation
and field experiments.
5.2.4 Final Refinement / Critical Assessment
The final refinement phase aims to address
concluding change requests from the reflection
contained in the last AR iteration and to provide an
overarching critical assessment in order to test the
thoroughness of the research in adhering to the stated
AR strategy and researcher's stance, biases and
assumptions. The final results (theoretical and
practical EA research deliverables) are then
disseminated.
5.3 Testing and Application in Practice
The above-described research strategy framework
has been tested during its development in several
practical EA research projects spanning collaborative
networks, disaster management, standards
management, healthcare and environmental
management domains. The lessons learned from each
application (not described here due to space
limitations, however published separately) have
contributed to the development and progressive
refinement of the framework.
6 CONCLUSIONS
AND FURTHER WORK
EA as a maturing IS-related field of research is in
need of suitable and proven research patterns. This
paper has performed an EA-focused critical review of
the main IS ontological and epistemological
assumptions, research paradigms and methods in
view of their suitability given the specific context and
requirements presented by EA. As a general
conclusion, IS provides a rich and useful repository
of research artefacts which, suitably customised, can
significantly assist the EA research endeavour.
The IS research artefacts appraisal was followed
by putting together an illustrative research strategy
framework for EA using a selection of research
methods from the reviewed set, on the background of
an iterative and reflective AR approach.
The sustained quest to find, combine and adapt
suitable research paradigms to tackle various EA
research questions and practical tasks is expected to
continue to contribute towards the advancement of
Preliminary Research Question
R
esearch Design
Critical Literature Review
Adopt / Confirm Theory
Restate Research Question
Theory testing
(simulation )
Theory testing
(field experiment /
case study)
(Triangulation)
Reflection / Theory extension
Conceptual development
AR:
cycle
Previous
Research
Final Refinement
Critical Assessment
Action
Research (AR):
prepare
AR:
exit cycle
AR:
enter cycle
Action
Reflect, decide &
acknowledge AR
Enterprise
Architecture
Frameworks
Best Practice,
Case Studies
Research /
environment
boundary
Contributions
towards Practice
Contributions towards Theory
Alternative
paths
Cycle
(within limits)
Previous Research (Case study & AR)
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EA research by making valuable contributions to the
EA body of knowledge.
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