Although widely known of as a concept,
and always required within scientific studies, theory has always been a struggle to define, especially as various
scientific institutions chose different perspectives to understand and explain
their idea of theory. However, in this week’s post I aim to explain a general
understanding of theory and put it in a relatable context, applicable for people of different backgrounds and faculties.
In her essay The Nature of Theory in Information Systems, Shirley Gregor breaks
down the concept of theory stating that a common, central understanding of
theory is the goal of being able to explain and predict a phenomenon. In order
to be able to explain a phenomenon, a
connection between the cause and an event (causation) has to be presented. Further
on, to predict a phenomenon it is
necessary to apply some level of generalization, nonetheless there are
different opinions on how comprehensive this generalization should be. To
Gregor, generalization and causation is the core of theory, however, according
to philosophers it should also be added that these explanations and predictions
are supposed to be testable (able to verify of falsify). Essentially, theory is institutionalized
ideas of understanding, used as supporting logic in scientific studies.
It is
easier to get a better understanding of theory by simply determining what it is not. Robert I. Sutton and
Barry M. Staw lists five common occurrences that frequently substitute and
present itself as theory in scientific essays and articles.
These
occurrences consist of references (previous
presented arguments), data (empirical
evidence), list of variables or
constructs (concepts), diagrams
(categories for data) and hypothesis or
predictions (assumptions without logical explanations about empirical
relationships).
In order
to put theory, and the use of it, in a context, I have read the article
“Influential IT management trends: an international study” by Jerry Luftman et
al. (2015). This is an empirical study, based on a survey of senior executives
that has been conducted since 1980. The
aim of the study is to detect, present and predict the main management concerns
and most influential technologies of the time. For the most part in the essay,
we are shown diagrams and variables with the writers describing what the numbers
represent. It shows the growth and/or decrease of phenomena over the past few
years, but while it is possible to conclude some generalized flows, the
variables do not explain the reason, why and/or how the flows occur.
In
addition to explaining theory, Gregor also determined five types of theories in
Infomastions Systems (IS). These types consist of (1.) theory for analysing,
(2.) theory for explaining, (3.) theory for predicting, (4.) theory for
explaining & predicting and (5.) theory for design & action.
Luftman
et al. presents the study of IT management trends as a theory for predicting in
their introduction and add predictive remarks in the data analysis e.g.:
“we
expect that [business productivity] will continue to remain among the top 10
for the foreseeable future” (p.296)
However,
in the conclusion these statements are not specifically discussed apart from a
few vague comments about the future, and as these never reach a conclusion
about the future the predictive aspect of the analysis lose its value.
Although
somewhat using predictive generalizations, I would define this essay mainly as
a theory for analysing. It describes the currently occurring IT phenomena,
summarizing the changes and flows without explicitly referring to any
causality. The data is recorded and classified according to a framework based
on geography and year, which gives a broad idea of the conditions over time.
Gregor mentions that this kind of schematic approach is useful in cases where
little is known about a phenomenon, making it meaningful by putting it into
categorical terms. It is important that the phenomenon’s logic and
characteristics defining each category are clear in order to mediate the
facts/knowledge correctly. In addition, it is also vital for the
classifications system to be extensive enough to present all features of the
phenomenon. In failing to use the right classifications and categories,
valuable information can be excluded from the analysis, which would in turn
invalidate the study’s results.
Luftman
et al. have had multiple, extensive choices in the survey, but have chosen to
only present the most prominent results in order to present credible results. I
do believe they have organized the schema in the best possible way, but on the
other side, there is a lack of theory throughout the essay. As substitute they
use a few references to Luftman’s earlier studies and rely on the repeatability
of the data in the study.
Although
their only ambition is to show the current state, with Sutton and Staw’s article
in mind, I would say Luftman et al. could improve their study by providing the
reader with the perspective of a theory - considering that without a clear
theoretic background an essay lose its value.
Luftman
Jerry, Derksen Barry, Dwivedi Rajeev, et al. ”Influential IT Management Trends: an
international Study”, Journal of Information
Technology
(2015) 30
http://link.springer.com.focus.lib.kth.se/article/10.1057%2Fjit.2015.18
accessed 14.09.2016
I totally agree with your opening statement "theory has always been a struggle to define". I feel the same way when reading the texts. Your post provides the insightful viewpoints which give me much more understanding on the concept. However, I would love to see how you explain the concept of putting the theory into practice use.
SvaraRadera