Lecture note on research methods design quality criteria: for Housing Studies students
Describe three qualitative research methods design
quality criteria and three quantitative research methods design quality
criteria in the context of primary research methods used in part-time Housing
Studies dissertation projects.
In housing studies
dissertations, quality criteria differ between qualitative and quantitative
paradigms because they address different notions of “good evidence.” Below are
three core criteria for each, explained in the context of primary research on
housing (e.g., interviews with residents, surveys of housing conditions, policy
implementation studies).
Three qualitative design quality criteria
1. Credibility (trustworthiness of findings)
Credibility is the
qualitative analogue of internal validity: it asks whether the findings
accurately reflect participants’ experiences and the phenomenon studied (e.g.,
how public housing residents perceive recent regeneration policies).hopkinsmedicine+1
In a part-time
Housing Studies dissertation, you might enhance credibility by:
- Using triangulation
(e.g., combining interviews, focus groups, and policy documents).
- Conducting member
checking (sharing summaries or themes with participants to confirm
accuracy).
- Engaging in prolonged
engagement with the field (e.g., multiple site visits to a housing
estate over time).hopkinsmedicine
2. Transferability (applicability to other
contexts)
Transferability
corresponds loosely to external validity: it concerns whether findings can be
meaningfully applied or “transferred” to other settings, not statistically
generalised.hopkinsmedicine
For housing
research, this often means:
- Providing thick
description of the context (location, housing type, policy
environment, demographic profile).
- Clearly describing your sampling
strategy (e.g., maximum-variation sampling across different public
housing blocks in Hong Kong or Singapore).
- Discussing how your findings
resonate with or differ from existing housing literature in other cities.hopkinsmedicine
A reader can then
judge whether your insights about, say, stigma in subsidised housing might transfer
to similar estates elsewhere.
3. Confirmability (neutrality from researcher
bias)
Confirmability
addresses whether findings are grounded in the data rather than the
researcher’s preconceptions—particularly important when studying sensitive
housing topics (eviction, informality, discrimination).ncbi.nlm.nih+1
You can
demonstrate confirmability by:
- Keeping an audit trail
of decisions (how you selected cases, coded transcripts, refined themes).
- Practising reflexivity
(a research diary noting how your position—e.g., as a practitioner or
resident—might shape interpretation).
- Using peer debriefing
(discussing emerging interpretations with supervisors or colleagues).hopkinsmedicine
Together,
credibility, transferability, and confirmability form a coherent framework for
judging the rigour of qualitative primary research in housing studies.ncbi.nlm.nih+1
Three quantitative design quality criteria
1. Internal validity (causal credibility)
Internal validity
asks whether observed relationships (e.g., between housing quality and health
outcomes) can be attributed to the variables of interest rather than
confounding factors.ncbi.nlm.nih+1
In a part-time
dissertation, you might strengthen internal validity by:
- Using clear operational
definitions (e.g., specifying how “housing quality” is
measured—objective inspection scores vs self-reported indices).
- Controlling for confounders
in analysis (income, household size, tenure).
- Choosing designs that reduce
bias (e.g., longitudinal panels rather than one-off cross-sectional
snapshots where possible).hopkinsmedicine
2. External validity (generalisability)
External validity
concerns the extent to which results from your sample can be generalised to a
broader population or other contexts (e.g., from one district’s public rental
housing to the city-wide stock).ncbi.nlm.nih+1
Practical steps
include:
- Employing random or
stratified sampling where feasible (e.g., sampling households across
different housing types and districts).
- Clearly describing the population
and setting so readers can judge similarity to other contexts.
- Replicating analyses in sub-samples
or comparing with existing large-scale housing surveys.hopkinsmedicine
Even with
convenience samples (common in part-time projects), you can discuss limits to
generalisability transparently and situate findings within wider housing
datasets.
3. Reliability (consistency of measurement)
Reliability refers
to the consistency and stability of measurements if the study were repeated
under similar conditions.ncbi.nlm.nih+1
In housing
research, this might involve:
- Using standardised
instruments (e.g., validated housing quality or satisfaction scales).
- Reporting internal
consistency (e.g., Cronbach’s alpha for multi-item scales).
- Ensuring standardised
data collection procedures (training enumerators; clear protocols for
physical inspections).hopkinsmedicine
High reliability
ensures that observed patterns are not artefacts of measurement error—critical
when your dissertation informs policy-relevant conclusions about housing
conditions or needs.
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