topic – 05. definition ‘an interview is a purposeful discussion between two or more people’...
TRANSCRIPT
Topic – 05
Definition
‘An interview is a purposeful discussion between two or more people’
Kahn and Cannell (1957)
Types of interview/Three major types
Structured interviewSemi-structured interviewUnstructured/In-depth interview
Structured interview:Data collection technique in which an interviewer
physically meets the respondent, reads them the same set of questions in a predetermined order, and records his or her response, usually with pre-coded answers.
Semi-structured interview:Wide-ranging category of interview in which the
interviewer commences with a set of interview themes but is prepared to vary the order in which questions are asked and to ask new questions in the context of the research situation. The responses/information/ data are recorded by note-taking, or perhaps by tape-recording the conversation.
Unstructured/In-depth interview:Loosely structured and informally conducted
interview that may commence with one or more themes to explore with participants but without a predetermined list of questions to work through. These are used to explore in depth a general area in which one is interested; these are therefore also known as in-depth interview. The interviewee is given the opportunity to talk freely about events, behavior and beliefs in relation to the topic area.
(See Box 9.3 for further details)
‘Observation involves the systematic observation, recording, description, analysis and interpretation of
people’s behaviour’
Observation: The two major types
» Participant observation: Observation in which the researcher attempts to participate fully in the lives and activities of the research subjects and thus becomes a member of the subjects’ group
» Structured observation: Structured observation is concerned with the frequency of events. It is characterized by a high level of predetermined structure and quantitative analysis.
Data collection and analysis
» Choosing an ‘off the shelf’ coding scheduleBox 8.1 provides a checklist of questions to ask
when choosing an ‘Off the Shell’ coding schedule.
» Designing your own coding scheduleGuidelines for developing your own coding
schedule is available in Table 8.1
» Combining both types of scheduleA specimen for recording sheet for
observing behaviour in groups isprovided in Figure 8.2
Credibility of Research Findings
Important considerations
Reliability?
Validity?
Generalizability?
Reliability
Reliability can be assessed by posing three questions:+ Will the measure yield the same results on other
occasions?+ Will similar observations be reached by other
observers?+ Is the measure/instrument stable and consistent
across time, space and researcher in yielding findings?
Can we measure reliability? Yes, using computer
4-Threats to reliability+ (i) Subject/participant error+ (ii) Subject/participant bias+ (iii) Observer error and+ (iv) Observer bias
ValidityWhether the findings are really about
what they appear to be about.
Validity depends upon:*History (same history or not),*Testing (if respondents know they
are being tested),* Mortality (participants’ dropping
out),* Maturation (tiring up), and* Ambiguity (about causal direction).
Generalizability The extent to which research results
are generalizable.
Logic leaps and false assumptions
Research design is based on a flow of logic
and number of assumptions,which must stand to closest scrutiny
Data Quality Issues(A: Semi-structured & unstructured interviews)
Lack of standardization in the use of semi-structured and unstructured/in-depth interview cases may lead to raise concerns, related to:
» Reliability:˃ Whether alternative researchers would reveal similar
information/results; concerns about reliability relate to the issues of bias.
» Forms of bias:˃ Interviewer bias: comments, tone, or non-verbal behaviour of
interviewer may create bias in the way that interviewees respond to questions being asked; or researcher may demonstrate bias in interpreting responses; or interviewer remains unable to develop trust of interviewees, and they provide limited information.
˃ Interviewee or response bias: interviewees may feel information is sensitive; he/she is not empowered to deliver information related to organization; interview is too-time consuming.
Data Quality Issues(Semi-structured & unstructured
interviews)
Generalizability:It may not be possible to make generalizations about the entire population where results are based on a small and unrepresentative number of cases.
Validity:˃ High level of validity is possible to the extent to which the
researcher gains access to their participants’ knowledge and experience and because of the interaction between researcher and interviewee which allows meanings to be probed, topics to be covered from a variety of angles and questions made clear to the respondents.
Overcoming Data Quality Issues(Semi-structured & unstructured interviews)
The following points help avoid sources of bias
1. Your own preparation and readiness for the interview2. The level of information supplied to the interviewee3. The appropriateness of your appearance at the interview4. The nature of opening comments made when interview
commences5. Your approach to questioning6. The impact of your behaviour during the course of interview7. Your ability to demonstrate attentive listening skills8. Your scope to test understanding9. Your approach to recording information
Threats to validity and reliability
» Subject error
» Time error
» Observer effects and strategies to overcome this:
– habituation and
– minimal interaction
Part - II
Probability samplingand
Non-probability sampling
• Probability samples: ones in which members of the population have a known chance (probability) of being selected
• Non-probability samples: instances in which the chances (probability) of selecting members from the population are unknown
• Probability sampling requires a sampling frame, and when a sampling frame is not possible, non-probability sampling is used
• Sampling frame: Sampling frame is a complete list of all the cases in the population, from which sample will be drawn (Recall we have already discussed sampling frame error).
• Where no suitable list exists, researcher will have to compile his/her own sampling frame.
• It is important to ensure that sampling frame is unbiased, current and accurate
Two Major Sampling techniquesProbability (representative) and Non-probability (Judgemental)
Source: Saunders et al. (2009)
Figure 7.2 Sampling techniques
SIMPLE RANDOM SAMPLING
• Simple random sampling: the probability of being selected is “known and equal” for all members of the population
• Blind Draw Method (e.g. putting names “placed in a hat” and then drawn randomly)
• Random Numbers Method (all items in the sampling frame given numbers, numbers then drawn using table or computer program)
• Advantages:
• Known and equal chance of selection
• Easy method when there is an electronic database
• Disadvantages: (Overcome with electronic database)
• Complete accounting of population needed
• Cumbersome to provide unique designations to every population member
Systematic Sampling Systematic sampling: way to select a probability-based
sample from a directory or list. This method is at times more efficient than simple random sampling;
here sampling interval is used
Sampling interval (SI) = population list size (N) divided by a predetermined sample size (n)
How to draw: • 1) Calculate SI, • 2) Select a number between 1 and SI randomly,• 3) Go to this number as the starting point and
the item on the list here is the first in the sample, • 4) Add SI to the position number of this item and
the new position will be the second sampled item,• 5) continue this process until desired sample size
is reached.
Cluster Sampling
Method by which the population is divided into groups (clusters), any of
which can be considered a representative sample.
• These clusters are mini-populations and therefore are heterogeneous.
• Once clusters are established, a random draw is done to select one (or more) cluster(s) to represent the population.
• Area (next slide) and systematic sampling (discussed earlier) are two common methods.
Cluster Sampling – Area Method
• Divide the geo area into sectors (sub-areas) and give them names/numbers, determine
how many sectors are to be sampled (typically a judgment call), randomly select
these sub-areas. Do either a census or a systematic draw within each area.
• To determine the total geo area estimate, add the counts in the sub-areas together
and multiply this number by the ratio of the total number of sub-areas divided by
number of sub-areas.
The population is separated into homogeneous groups/segments/strata and a sample is taken from each.
The results are then combined to get the picture of the total population.
This method is used when thepopulation distribution of items is skewed.
It allows us to draw a more representative sample. Hence, if there are more of certain type of items in the population,
the sample will have more of this type;and if there are fewer of another type,
there will be fewer of that type,in the sample.
Non- probability sampling techniques
(Judgemental sampling)
Quota sampling
Purposive sampling
Snowball sampling
Self-selection sampling
Convenience sampling
Judgment samples
Samples that require a judgment or an “educated guess” on the part of the
researcher as to who should represent the population.
Also, “judges” (informed individuals) may be asked to suggest who should be in the
sample.Subjectivity enters in here, and certain members of the population will have a
smaller, little or no chance ofselection compared to others
Referral and Quota Sampling Methods
• Referral samples (snowball samples): samples which require respondents to provide the names of additional respondents• Members of the population who are less known,
disliked, or whose opinions conflict with the respondent have a low probability of being selected.
• Quota samples: samples that set a specific number of certain types of individuals to be interviewed• Often used to ensure that convenience samples will
have desired proportion of different respondent classes
Convenience Sampling Method
• Convenience samples: samples drawn at the convenience of the interviewer. People tend to make the selection at familiar locations and to choose respondents who are like themselves.• Error occurs:• 1) in the form of members of the population who
are infrequent or nonusers of that location, and• 2) who are not typical in the population• 3) who are disliked