A sketchy dissertation report sample on business analytics: for MBA students
With regard to the article of Mamakou (2026) “Linking business analytics to firm performance: A mixed-method analysis of capabilities, decision quality, and firm size” Journal of Business Research 2012: 116219, the analysis is as follows:
What are: (1) the main research theme, (2) the main research issues, and (3) the main research objectives, and (4) the main research questions of this article?
Based
on the content of the article "Linking Business Analytics to Firm
Performance: A Configurational Approach" and the references provided, the
key research elements are as follows:
1. Main
Research Theme: The central theme of the article is the
exploration of how different dimensions of business analytics capabilities
(technical, human, and contextual resources) interact to influence firm
performance. It emphasizes the importance of a configurational approach to
understanding the interplay between business analytics capabilities and
decision quality as a mechanism to improve firm outcomes.
2. Main
Research Issues:
- The fragmented and inconclusive findings in
prior research regarding the direct effect of business analytics
capabilities on firm performance.
- The lack of a comprehensive framework that
integrates technical, human, and contextual dimensions of business
analytics capabilities.
- The question of how firm size influences the
effectiveness of these capabilities.
- How business analytics capabilities lead to
enhanced decision quality and how this in turn affects firm performance.
- The need to move beyond symmetrical models to
use configurational methods such as fuzzy-set Qualitative Comparative
Analysis (fsQCA) to capture complex causal relationships.
3. Main
Research Objectives:
- To develop and test a configurational model that
links the interplay of business analytics capabilities with decision
quality and firm performance.
- To empirically investigate how combinations of
business analytics technical, human, and contextual resources produce
superior firm performance.
- To examine the mediating role of decision
quality in the relationship between business analytics capabilities and
firm performance.
- To assess the moderating impact of firm size
on these relationships.
4. Main
Research Questions:
- How do combinations of business analytics
capabilities influence firm performance?
- What is the role of decision quality as a
mediator between business analytics capabilities and firm performance?
- How does firm size affect the configuration of
business analytics capabilities that lead to enhanced performance?
- Can a configurational (fsQCA) approach better
explain the complex interactions and outcomes of business analytics
investments compared to traditional symmetrical methods?
These elements provide the framework and rationale
for the study, aiming to deepen the understanding of how business analytics
resources collectively create value and improve firm outcomes in varying
organizational contexts.
Describe
two main arguments of the article in terms of the Toulmin model of argument.
Using the Toulmin model of argument, which includes the components: Claim, Data (Evidence), Warrant (the reasoning linking data to claim), Backing, Qualifier, and Rebuttal, two main arguments from the article are as follows:
Argument
1: Business analytics capabilities impact firm performance through decision
quality, but not all capability elements contribute equally or directly.
- Claim: Business analytics
capabilities (BAC) enhance firm performance primarily by improving
decision quality, and some BAC elements serve as complements while others
substitute or suppress each other, meaning “more capability” does not
always translate to better performance.
- Data/Evidence: Empirical findings show that data quality has both a direct
positive effect on firm performance and an indirect effect via decision
quality, whereas analytical tools, skills, and business knowledge
significantly predict decision quality but do not directly predict firm
performance.
- Warrant: The
resource-based view (RBV) supports the notion that mere accumulation of
resources is insufficient; instead, the orchestration of resources into
effective decision routines (decision quality) is the proximate mechanism
that creates business value.
- Backing: Prior
literature on BAC and BDAC confirms that analytics capabilities typically
function as multi-dimensional resource systems with organizational
processes mediating their value creation (Akter et al., 2016; Gupta &
George, 2016; Mikalef et al., 2019; Wamba et al., 2017).
- Qualifier: This
relationship holds stronger in digitally mature environments where data
integration and decision cycles are faster, while less digitized settings
may dilute the impact.
- Rebuttal: The
article acknowledges that some capability elements may act as substitutes
or suppressors, complicating a simple linear relationship between
capability accumulation and performance gains, which challenges the
assumption that increasing capabilities always increases performance.
Argument
2: Firms achieve high performance through multiple distinct configurations of
business analytics capabilities, moderated by firm size.
- Claim: There is no single best
configuration of business analytics capabilities for superior firm
performance; different bundles can lead to high performance, and firm size
acts as a boundary condition influencing which configurations are
effective.
- Data/Evidence: Configurational (fsQCA) analysis reveals multiple high-performance
pathways with different combinations of data quality, analytical tools,
skills, business knowledge, and decision quality, some of which depend on
firm size, indicating equifinality and causal asymmetry.
- Warrant:
Dynamic capabilities (DC) theory posits that in turbulent environments,
competitive advantage arises from a firm’s ability to flexibly deploy and
reconfigure resources according to context, implying multiple viable
"paths" rather than a single best approach.
- Backing: The
study extends DC reasoning by showing decision quality as a micro-foundation
of sensing, seizing, and transforming via analytics capabilities, and
citing that firm size modifies these capability-performance relationships
(Josefy et al., 2015).
- Qualifier: The
configurations and their effectiveness are contingent on organizational
context and the feasibility of orchestration at scale, with smaller firms
gaining stronger marginal benefits from decision quality improvements.
- Rebuttal: Not
all capability bundles are size-contingent; some pathways are
size-nonbinding, so firm size is a boundary condition but not an absolute
limiter.
These two arguments encapsulate the article’s
theoretical advancement by combining RBV and DC perspectives and utilizing both
symmetrical and configurational analyses to explain how business analytics
capabilities translate into firm performance outcomes in context-sensitive ways
In terms of an MBA dissertation report structure, highlight 3 main points from the article on each of the following dissertation chapters: Introduction Literature review Research methodology Presentation of research findings Discussion of research findings Conclusions and recommendations.
Based on the article "Linking business analytics to firm performance: A mixed-method analysis of capabilities, decision quality, and firm size", here are three main points relevant to each typical MBA dissertation chapter:
1.
Introduction
1. Research
Gap and Context: Existing literature on business analytics
capabilities (BAC) often overlooks the specific mechanisms (like decision
quality) and boundary conditions (e.g., firm size) through which BAC translates
into firm performance, especially in SME-intensive and post-crisis economies
such as Greece.
2. Significance
and Relevance: Understanding how technical, human, and contextual
analytics resources combine to create value is critical for
resource-constrained SMEs and policymakers aiming to drive digital
transformation and competitive advantage in less-studied geographic and
economic contexts.
3. Research
Objectives: The study aims to investigate how distinct BAC
elements affect decision quality and firm performance, explore complementary
capability bundles, and examine the moderating role of firm size, using an
integrated mixed-method approach combining PLS-SEM and fsQCA.
2.
Literature Review
1. Theoretical
Foundations: RBV and DC: BAC is grounded in the Resource-Based View (RBV),
emphasizing unique, valuable, and hard-to-imitate resources, and Dynamic
Capabilities (DC) theory, focusing on firms' ability to reconfigure these
resources to adapt to dynamic environments.
2. Role
of Decision Quality: Decision quality emerges as a central mechanism
linking BAC (especially technical, human, and contextual components) to firm
performance, but is underexplored in the literature that tends to focus on
process performance or dynamic capabilities mediation.
3. Advancement
in BA Analytics: The shift toward AI/ML-driven analytics makes
decision governance and human-AI collaboration critical, extending the concept
of BAC beyond tools to include skills, decision rights, and governance routines
essential for transforming analytic outputs into timely decisions.
3.
Research Methodology
1. Mixed-Method
Design: The study employs Partial Least Squares Structural
Equation Modeling (PLS-SEM) for symmetric net-effect analysis complemented by
fuzzy-set Qualitative Comparative Analysis (fsQCA) to capture equifinal,
configurational pathways linking BAC to firm performance.
2. Empirical
Setting and Sample: Data were collected from Greek firms, providing a
unique SME-intensive, post-crisis European context where digital transformation
policies are actively unfolding, enabling examination of boundary conditions
like firm size.
3. Measurement
and Constructs: BAC is operationalized as a multi-dimensional
capability system encompassing data quality, analytical tools, analytical
skills, and business knowledge, with decision quality measured as a mediator
and firm size included as a moderator.
4.
Presentation of Research Findings
1. Role
of Decision Quality: Data quality directly and indirectly (via decision
quality) improves firm performance; analytical tools, skills, and business
knowledge significantly predict decision quality but do not have direct
performance effects.
2. Configurational
Findings: Multiple capability bundles can lead to high firm
performance, showing equifinality and causal asymmetry; some bundles are
contingent on firm size, illustrating that smaller and larger firms benefit
from different resource configurations.
3. Firm
Size as Boundary Condition: Firm size positively correlates with performance
but moderates the impact of decision quality, with smaller firms showing
stronger marginal gains from decision quality improvements, while larger firms
achieve performance through scale and knowledge.
5.
Discussion of Research Findings
1. Resource
Bundling and RBV Advancement: The study challenges the assumption that isolated
analytics investments automatically yield value, showing that performance
depends on complementary resource bundles and their orchestration into
decision-making routines.
2. Dynamic
Capabilities Perspective Extended: Findings support DC theory by demonstrating
multiple “paths” to performance and the importance of firms’ context-sensitive
orchestration and reconfiguration of analytics capabilities amid environmental
complexity.
3. Practical
Implications for SMEs and Policymakers: Smaller firms should focus on lean, integrated
analytics capabilities to maximize decision quality, while larger firms rely
more on accumulated knowledge and scale, informing resource allocation and
digital transformation strategies.
6.
Conclusions and Recommendations
1. Summary
of Contributions: The research identifies decision quality as the
key mechanism through which business analytics capabilities translate into firm
performance, revealing varied capability configurations and the moderating role
of firm size in an under-explored SME context.
2. Recommendations
for Managers: Managers, especially in SME environments, should
prioritize not just investing in technical analytics tools but foster
complementary human skills, contextual knowledge, and governance routines to
enhance decision quality and business value.
3. Suggestions
for Future Research: Future studies could explore longitudinal effects
of analytics capabilities, deeper investigation into AI/ML governance, and test
these findings in other under-studied geographic regions or sectors to improve
generalizability.
These points align the article’s content with the
structure of a comprehensive MBA dissertation report while reflecting its core
insights and research contributions.
Identify
3 main research ethics involved in this study.
Based on the details provided in the article “Linking business
analytics to firm performance…”, three main research ethics involved in this
study are:
1.
Informed Consent and Voluntary Participation: As the study involves collecting
survey data from firms and individuals working within those firms, ensuring
that participants voluntarily agree to participate with a clear understanding
of the research purpose and usage of data is an ethical imperative (implied by
academic research standards, even if not explicitly stated).
2.
Confidentiality and Data Privacy: The study deals with potentially
sensitive business information regarding analytics capabilities, decision
quality, and firm performance. Protecting the confidentiality of participant
responses and securing data to prevent unauthorized access or identification of
firms is an important ethical consideration.
3.
Declaration of No Conflict of Interest: The author explicitly declares
no known competing financial interests or personal relationships that could
have influenced the research outcomes, maintaining transparency and integrity
of the study.
These ethics
uphold the integrity, trustworthiness, and responsible conduct of the research
examined in this article.