TU-L0022 - Statistical Research Methods D, Lecture, 2.11.2021-6.4.2022
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Choosing between qualitative and quantitative research (10:11)
When starting a research project, one of the most important decisions to
make is whether to do a qualitative or quantitative study. This video
explains when and why qualitative or quantitative methods should be
used.
Click to view transcript
When
you start doing a research study, one of the most important, early
questions is whether you should do a qualitative study or a quantitative
study. In practice, professional researchers tend to specialize so that
they do more qualitative studies or more quantitative studies, or
mostly qualitative or mostly quantitative. But more generally, whether
you do a qualitative study or a quantitative study, depends on what
you're studying. So if there is a person who specializes in quantitative
studies, then that person typically specializes also addressing the
kinds of questions to which a quantitative approach is better. And
similarly, if a person is focusing on qualitative studies, then that
guides their choice of research questions.
Why would one want to
use a qualitative study or a quantitative study depending on the
research question is something that I will address now. Before we go
into the choosing between qualitative and quantitative approach, we need
to understand how these approaches have been criticized. So many
qualitative researchers criticize quantitative research, and many
quantitative researchers criticize qualitative research. And then there
are researchers who criticize both approaches. The main criticism toward
quantitative research is that the numbers are really just numbers. They
don't tell us much about the social world. So we don't, based on the
numbers, we don't know what is real and what is a person's
interpretation. So it's difficult to distinguish between a realist
research and interpretive research if you just have numbers. Then the
measurement processes, they produce numbers and those numbers might not
be as precise as we think. So if you have a regression coefficient of
0.235, then that creates you a false sense of precision when you
basically can just say that the effect could be positive. So the numbers
give us false sense of precision and accuracy.
For some reason,
if we quantify something, people trust us more than if we explain the
same finding based on qualitative data. Then the measurement instruments
are sometimes not as great as people think that they are. If we ask a
person whether the company that they work for is innovative or not, that
might be affected by social desirability. For example, it might not
accurately reflect the actual level of innovativeness of a company. Then
finally, the relationships between two variables presents a static
snapshot. So we can only observe correlations or differences between
means or differences between numbers. They don't really tell us much
about the causal process. So we don't get to observe the actual causal
process, we only observe the inputs and the outputs, but the actual
causal process remains a black box for a quantitative researcher.
So
qualitative research also has been criticized. And one is that it is
too subjective. So you can always come up with a story from a set of
interviews, and it's not clear if two people would come up with the same
story. So it's entirely possible that from the same data two people
would come up with a completely different explanation for the
phenomenon. With quantitative research, the procedures are more
objective. There is more like a cookbook kind of thing, where you pick
your procedures, you apply those procedures. And if two people apply the
same procedure, they will end up with the same result. Qualitative
research is difficult to replicate. And this relates to the fact that
the qualitative data analysis process is subjective. It is very
difficult for two people to replicate exact same analysis. The same
thing with interviews. If you interview a person, then that person will
not tell you the same things from one interview to another in contrast
to measuring, for example, the weight of the person which should stay
the same over time. So there are lots of things that are undocumented
that really can't be documented about social interactions in qualitative
research that affect the results. Then there's the problem with
generalizability.
If you are studying a single case, you really
can't make any strong claims about generalizability. If you study a
sample of 100 companies, you are in a much better position to claim
generalizability than if you study a single company. And finally,
there's the lack of transparency in that, what is actually documented in
the methods section and the results section
in qualitative research
is not as well established as it is for quantitative research. So
researchers make all kinds of decisions, all kinds of inferences during
their analysis that don't end up being documented in the actual
published paper. So this is a disadvantage of qualitative research.
Now,
so both can be criticized but which one should you use based on the
research question? This relates to the maturity of the field that you're
studying or the maturity of the topic. We have nascent topics, nascent
fields where we really don't know much about the topic. And then we have
mature fields or mature topics where we already could have a couple of
good theories that explain what is going on. When we're focusing on
nascent topics and nascent fields, then we need to start with
conceptualization. So we need to understand what kind of concepts we
need to make sense of the phenomenon. And then we need to think about
how those concepts are related causally, so we need some theory. So in
nascent fields or nascent topics, we're focused more on
conceptualization and theory building. And for this kind of research,
qualitative research is a lot better because it allows you to go and
actually see what is going on.
In mature fields, when we have
already a few competing theories, we need to start focusing more on
testing on what works, what doesn't work, to what extent different
theories explain the phenomenon we're studying. And for this
quantitative research that puts numerical values on the strength of
different theories is a lot better approach. Also because we already
have the concepts we can start building measures. So there are practices
that we do theory building with qualitative research, there we have
open-ended questions, we have why, we don't really know an answer. And
in mature fields we have a pretty good understanding of what the
potential answers to our questions could be. So we are, instead of
asking why, we are asking, among these alternatives, which of this work,
or how well does this theory explain this particular phenomenon?
So
the questions in mature fields are much more focused and much more
close-ended than in nascent fields. And that steers us toward using
quantitative techniques. What kind of problems we encounter if we are
using an incorrect research approach or a suboptimal research approach?
If we are working on mature fields and we are using qualitative
research, then the problem is that we are too easily reinventing the
wheel. If there already is like five or seven theories that explain the
phenomenon, and we start looking at what explains the phenomenon, we
have basically two options. Either we reinvent one of the existing
theories maybe with different labels, or we invent a completely new
theory. But if we already have seven theories, then what's the point of
giving an eighth theory? Instead of coming up with new theory in mature
fields, we should be more focused on checking which of those theories
actually explain the phenomenon in larger samples. So the problem here
is that our qualitative study that produces theory, does not really
answer the thing that we want to do in mature field, which is more like
focusing on what works instead of producing new explanations.
In
contrast, in nascent fields, if we do a quantitative study. So there's a
typo in the paper here it should be quantitative, not qualitative. The
problems are that if we do a quantitative analysis and we don't really
have a strong theory to start with, then how would we construct
measures? If we lack good concepts, we can't really measure things. So
our measures could be very weak or even completely invalid. Another
thing is that if we are focusing on, if we have a field where we don't
have explanations for the phenomenon, and we start looking for
statistical associations, then that becomes like a fishing expedition.
And it is very likely that we end up reporting correlations for other
associations that are either because of chance only or completely
spurious.
So the problem with using a quantitative approach in
nascent field is that to do quantitative research well, we need concepts
and we need theories, and those would not exist in nascent fields. So
in practice, we use qualitative research for addressing new questions
and then we move toward more quantitative approaches, once we have an
existing theory base for a phenomenon. So quite often there is this
sequence of first doing qualitative studies to gain initial
understanding, and then you apply quantitative studies to see which of
those initial ideas actually work. In practice, people tend to focus or
specialize either on qualitative research or quantitative research, and
that tends to dictate whether they work with nascent questions or mature
questions.