Purpose of Data Analysis
Organize and interrogate data generated via interviews, observations, visuals, etc. Allows evaluators to see patterns, identify themes discover relationships and make interpretations
How is qualitative data analysis different from quantitative?
Researchers generate non-numerical data and wish to analyze
When considering the “goals” of data analysis what is key?
The results they seek for data analysis should support their research question
Goals of data analysis include? Hint: Three T’s
Purpose of Taxonomy in Data Analysis? Simplest way of understanding taxonomy?
Increase clarity in defining and comparing complex phenomena
* Simplest way to understand it is A way of understanding and classifying things according to similarities and differences
Divides into manageable chunks
Purpose of Themes in Data Analysis
Looks to characterize experiences of individual participants by general insights from whole data
What were concepts that were recurring amongst the participant when looking at that specific subject of inquiry
Example in the textbook about Themes
Semi-structured interviews of people who had an ACL injury and some common themes that arised from wanting to return to sport: fear, lifestyle priorities, differences in personality
Purpose of Theory in Data Analysis
Making a theory by interlocking causal variables that explain some sort of physical, social or personal reality
What is Inductive and Deductive Analysis?
Inductive: Exploratory, data driven approach to identify taxonomies, themes or theory
Deductive: Top down, theory-based approach going from theory, taxonomy or themes that exist by which researchers code the data (analyze the data)
What is abductive data analysis?
Why is abductive data analysis a hybrid of deductive and inductive?
Uses existing theories (deductive) while finding new insights from the data (inductive)
Qualitative data analysis is fundamentally distinctive from quantitative through these three ideas…?
Qualitative analysis is: Immediate, Ongoing, Spiral
What is Immediate Data Analysis?
What is Ongoing Data Analysis?
What is spiral data anaysis
Common steps used in analysis approaches for strategies of inquiry?
What is key to Organizing and Preparing the data for analysis?
Must take into account context of verbatim; even the umms and hmms that someone says could provide insight to how they feel
What is key to reading or looking at all the data in data analysis?
Going through the data multiple times so that nothing beneficial is skipped.
This is an important step when you’re analyzing data because it results in richer and insightful final interpretations
Researcher can focus on larger picture than can get missed
What is key to coding all the data in data analysis?
Example: Participant talks about being interested in products with ingredients grown naturally
Codes (common phrases mentioned time and time again): Natural, Locally grown
- These codes are put into categories
What is “In-vivo” in data analysis
Refers to coding the data and this is words or phrases used by the participant that the researcher singles out
Purpose: Prevents researchers from imposing their own framework
What do coding strategies depend on?
a) Type of data
b) Types of coding categories of interest
Types of coding categories of interest include? What do they mean?
Themes that arise from codes due to maybe being an expected result, unusual or even surprising
2 Key points of data analysis direct researchers towards aspects of data. These are?
What are conceptual codes?
Essential components of a conceptual domain
The main essential codes (something important that has been mentioned multiple times) that link back to the main research question or purpose or noticing reccuring themes or overarching concepts