Title: SWP32RES RESEARCH FOR SOCIAL WORK PRACTICE B
1SWP32RES RESEARCH FOR SOCIAL WORK PRACTICE B
- LECTURE THREE - Overview of the Research Process
2The Social Work Research Process
- 1) Identify the Research Problem Area
- 2) Identify Personal Motivation for Interest
in this Problem Area - 3) Formulate Focussed Research Question/s or
Hypotheses
3- 4) Review the Literature
- 5) Reformulate Research Question/s or
Hypotheses - 6) Develop a Plan for the Research Study
41. Operationally define key terms,
concepts and variables.2. Decide on research
approach - quantitative, qualitative or a
combined approach.3. Decide on research
design. 4. Define and decide upon access to
sample and sample size.
5- 5. Decide on data collection method and
instruments (questionnaires, interviews,
secondary data analysis or observation) - 6. How the data is to be analysed.
- 7. Staging and timing of the study.
- 8. Costing of the study.
6- 9. Pretesting and Piloting of the data
collection instrument/s. - 10. Write up research proposal.
- 11. Obtain necessary ethics clearance.
7- 7) Collect the Data
- 8) Analyse the Data (includes the data
reduction (whether quantitative or qualitative)
and statistical analysis) - 9) Write up the Research Findings
- 10) Disseminate the Findings
- 11) Implement and Utilise the Findings
8Abuses of Research Ethics
- 1) Experiments on Jewish inmates of Nazi
concentration camps during World War 11 - 2) The Tuskeegee experiment
- 3) Milgram studies
- 4) The Laud Humphries study
9Responses to ethical abuses
- 1) World Medical Associations Helsinki
Declaration (1964) 2) This Declaration has
been directly translated into the Australian
National Health and Medical Research
Councils (NHMRC) guidelines on human
experimentation
10- 3) A.A.S.W. (The Australian Association of
Social Workers) which has a section on
research ethics on the latest version of its
Code of Ethics (1999)
11COMMONLY ACCEPTED PRINCIPLES OF ETHICAL RESEARCH
- 1) VOLUNTARY PARTICIPATION INFORMED CONSENT
- 2) PROTECTION FROM HARM
- 3) ANONYMITY CONFIDENTIALITY
12- 4) PREVENTION OF DECEPTION
- 5) PROPER CREDIT FOR RESEARCH ENDEAVOURS
13Bradshaws Taxonomy of Social Need
- In practice, four definitions of Need
- 1. Normative Need (defined by experts/consensus)
- 2. Felt Need (people say they WANT it)
- 3. Expressed Need (WANT turned into DEMAND)
- 4. Comparative Need (Individual or service
provision differences across similar areas) - Interrelations Degree of Support (O/Head) -
apply all four to your project
14Computer Lab Info
- Using SPSS (Statistical Package for the Social
Sciences version11.5) - Allows simple thru to complex analysis of your
data Tables Graphs (Visual can enhance
decision-making understanding) - In social sciences we are more likely to use
categorical data data (plural) is discrete (eg
sex, race, religion, marital status, employment
status, etc) rather than continuous, (eg, age,
years of education, or score on a test). - Graphing these discrete use a Bar Chart or Pie
Chart, cf continuous data using histogram, line
graph (polygraph) or scatterplot.
15Exploratory Data Analysis (EDA)
- EDA appropriate for both qualitative and
quantitative data. Answer the question What is
the data telling us about ..? - Searching for ways of revealing meaning in the
data. The more we know about the data the more
effectively we can use it to refine practice and
theory. - EDA applied to data that is Univariate,
Bivariate, Multivariate, and Causal Analysis
(Causal Pathways very in these days eg child
development field, antenatal pathways etc..) - See O/Head arrow diagrams simple but effective
conceptual framework tool.
16EDA contd
- Data made up of variables A Variable is a set of
values each of which represents an observed value
for the same characteristic for one of the cases
being used in the research, eg income, age, sex,
and so on. - When all observed values put together and ranked
we have a distribution from lowest to highest.
That is, cases are distributed across a range of
values. - We want to visualise the shape and spread of that
distribution eg bell curve graphs - Note assume we have ungrouped data (unit record
data). If using secondary data source, data may
already be grouped.
17Measures of Central TendencyDESCRIPTIVE
STATISTICS
- Shape of distribution symmetric or skewed? The
symmetric bell-shaped normal distribution - Spread of values? Are there unusually high and
low values or all clustered? - Mean (Interval or ratio data is the average),
median (ordinal data half above and below, or
50th ile), mode (nominal data most frequently
occurring score or value), SD (std deviation) - If mean, median and mode all the same then the
data are symmetrical.
18Data Levels of Measurement
- 1. Nominal data (also referred to as Categorical,
Discrete, Dichotomous) has mutually exclusive
categories. We often look at relationship between
categorical variables by Cross-tabs and bar
charts (in SPSS). Usually only a small range of
values. Can assign a numerical code to count
categorical data. - 2.Ordinal data similar to nominal data but has
some order or ranking to it, eg client
satisfaction, level of education, agreement
ratings (SD thru SA Likert scale) - 2.1 Nominal and Ordinal data sometimes referred
to as Qualitative data, whereas Interval and
Ratio referred to as quantitative data. - 3. Interval Data (also known as continuous,
metric). Values are different in magnitude but
the difference is not meaningful, eg Celsius or
IQ scale. Someone with score of 100 not twice as
bright as score of fifty. - 4 Ratio Data Like Interval data (continuous
)but difference in values is meaningful eg age.
Age 20 cf age 10 ratio is 21. Scatterplots
often used to visually illustrate relationship
between two continuous variables.
19Descriptive data analysis
- Overall in social work research, we are
interested in individual variables and their
shape and size as well as the relationships
between variables, how they co-relate or co-vary
(as one increases so does the other which
variable affects the other), whether they form
groups, and if so can we predict group
membership, and so on. This involves the use of
bivariate and multivariate data techniques. - Descriptive data is very useful in describing
characteristics of our sample, but limited
because univariate. We need bivariate data to
get more specific meaning as to whether there is
a relationship between variables, and if so, how
strong that relationship is, and its direction.
Eg, the impact of different interventions.
Descriptives only tell us so much. We then use
bivariate data to get more detailed understanding
of impact of intervention. - Must also be very clear on what is the question
we are trying to answer. Descriptives help us
summarise the raw data and make it comprehensible
in terms of the research question. - Also, important that we use the appropriate
measure for the type of data we have. That is,
discrete or continuous data. Note Alston
Bowles use just two terms 1. DISCRETE covers
all nominal and ordinal data, and 2. CONTINUOUS
covers all Interval and ratio data. - We should stick to these two terms as well -
Alston Bowles Ch 14, p234 on. V/good for
assignment.
20Normal Distribution Descriptive Stats
(continuous /interval data only)
- Symmetrical, bell-shaped data referred to as
PARAMETRIC DATA (cf non-parametric eg
Correlation, see later slide) - (see graph O/Heads normal, skewness, kurtosis,
and Standard Deviation) - Assumptions of parametric data
- 1.normally distributed data
- 2. Homogeneity of variance
- 3. interval level data
- 4. Independence
- Do a FREQUENCY DISTRIBUTION ( diagram) to see if
our data violates assumps, or is from non-normal
distribution, re appropriateness of descriptive
stats (Mean, median, Mode, percentages, and
graphs). For example, average income data often
distorted by very high and very low income
earners.
21Descriptive stats
- Plot a histogram to look at the distribution of
data, and can overlay normal curve. - Check for extreme values or outliers (eg Kerry
Packers very high income) Can distort the
Mean. Remove or transform data. - Discrete data (Categorical / nominal /
Non-interval data) not approp for mean, or
Median. Mode ok for nominal data, and Proportions
, and Bar or Pie charts. Also Frequency tables
appropriate where nominal data has small number
of categories eg sex, marital status, etc.. - Some ordinal data (eg Likert scales) can be
treated as interval to obtain mean, eg QA. - Need to SELECT each Intervention group and run
Descriptives on each, for comparison. And on
variables within each intervention group, eg
gender. Or, cross-tab variables of interest and
use control variable (layer) such as intervention
group or gender and so on.
22Non-parametric data and tests
- Less, or more relaxed, assumptions about interval
data data not need to be normally distributed - Tests based on ranking of data rather than actual
data itself. - Eg, Correlation Pearson parametric or
Spearmans non-parametric)