Survey
* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
METHODS OF RESEARCH Learning objectives ◦ At the end of this chapter, students will be able to understand: ◦ The difference between primary and secondary data and between quantitative and qualitative data ◦ The range of different research methods and sources of data used by sociologists and an assessment of their strengths and limitations ◦ The stages of research design: deciding on research strategy; formulating research problems and hypotheses; sampling and pilot studies; conducting the research; interpreting the results and reporting the findings Data Primary ◦ Primary data is information collected personally by the research ◦ Includes: questionnaires, interviews, observational studies ◦ Strengths: ◦ Researcher has complete control over how data is collected, by whom, and for what purpose ◦ Researcher designs and carries our their own research increasing reliability and validity of data ◦ Weaknesses: ◦ Time-consuming to design and execute ◦ Can be expensive; potentially limited access to target group: refusal to participate or death Secondary ◦ Secondary data is data that already exists in some form ◦ Includes: government reports and statistics, personal letters, diaries, research by other sociologists ◦ Strengths: ◦ Ability to save time and money; can by highly reliable (official statistics) ◦ Sometimes, it is the ONLY available resource ◦ Useful for historical and comparative purposes ◦ Weaknesses: ◦ Not always produced with sociologists in mind ◦ Can be unreliable or reflecting narrow views rather than wider opinions Quantitative Data ◦ Expressed: ◦ Raw number, percentage, rate ◦ Strengths: ◦ Kruger (2003): data allows us to summarize vast sources of information and make comparisons across categories over time (EXAMPLES?) ◦ Correlation can test whether hypotheses are true or false; track changes in a longitudinal study ◦ Weaknesses: ◦ Artificial environments ◦ Captures narrow range of information—Day (1998): who, what, when, and where of people's behaviour ◦ McCullough (1988) suggests issues are only measured if they are known prior to the beginning of research Qualitative ◦ Explores the "why" rather than the "what, when, where" ◦ Used to understand meanings applied to behaviour; quality of behaviour ◦ Strengths: ◦ Greater freedom to study people in their normal settings ◦ Matveev: researchers gain a more realistic feel of the world that cannot be experienced through numerical data and statistical analysis ◦ Limitations: ◦ Small group study—limits opportunity to apply data widely ◦ Difficult to compare across time and location because groups will never be the same METHODS OF SOURCES OF DATA Primary Methods Quantitative Qualitative ◦ Questionnaires ◦ Semi-structured interviews ◦ Structured interviews ◦ Unstructured interviews ◦ Content analysis ◦ Non-participant observation ◦ Experiments ◦ Participant observation ◦ Laboratory experiments ◦ Case studies ◦ Field/natural experiments ◦ Semiology ◦ Cross-sectional surveys Secondary Methods Quantitative ◦ Official statistics Qualitative ◦ Documentary sources RESEARCH DESIGN Designing Research ◦ Oberg (1999) says there are four interconnected stages of research design: ◦ Planning is where the researcher decides on the strategy and formulates research hypotheses or questions ◦ Information gathering involves identifying a sample to study, conducting an initial pilot study and applying research methods to collect data ◦ Information processing relates to the idea that once data has been gathered, its meaning must be analysed and interpreted ◦ Evaluation involves both an internal analysis that asks questions about how the research was conducted and an external analysis, whereby conclusions are reported to a wider public audience for analysis and criticism The research problem Research hypothesis or question Collecting data (sampling) Data analysis Presenting completed research Sampling ◦ Sampling is a relatively small proportion of people who belong to the target population ◦ Must accurately reflect target population ◦ Sampling Techniques: ◦ Simple random sampling—similar to a lottery; based on probability that random drawing will produce representative sample ◦ Systematic sampling—taking a sample from the sampling frame ◦ Stratified random sampling—dividing the target populations into groups with known characteristics ◦ Stratified quota sampling—not everyone in target population has a chance to be picked ◦ Non-representative sampling—used to understand a particular group in depth ◦ Opportunity sampling—choosing a sample that gives the best opportunity to test a hypothesis ◦ Pilot study—mini-version of a full-scale study to test feasibility Completing the Research ◦ Foucault (1970) says data “can never speak for itself;” therefore, it must always be analysed and interpreted after collection ◦ Analysis and Interpretation: ◦ Internal analysis to ensure data is logical/consistent ◦ Practical analysis relating to the purpose of doing something with the data ◦ External analysis relating to the idea that all research represents the outcome of a process of social construction ◦ Glaser and Strauss (1967) suggest the final stage of the design process involves four related elements: ◦ Analysing related research to discover common themes and trends in data ◦ Reflecting on research itself-does it support or disprove the hypothesis? ◦ It is possible to discover patterns in the data? ◦ Does the researcher suggest ways the data can be linked to create an overall theory?