Top Banner
Qualitative Comparative Analysis What, When and How? Dumitrela Negură BA
18

What, When and How? Dumitrela Negură BA. Introduced by Charles Ragin in 1987, when stumbling upon the causal inference problems generated by a small sample.

Mar 31, 2015

Download

Documents

Beau Kanney
Welcome message from author
This document is posted to help you gain knowledge. Please leave a comment to let me know what you think about it! Share it to your friends and learn new things together.
Transcript
Page 1: What, When and How? Dumitrela Negură BA. Introduced by Charles Ragin in 1987, when stumbling upon the causal inference problems generated by a small sample.

Qualitative Comparative Analysis

What, When and How?

Dumitrela Negură BA

Page 2: What, When and How? Dumitrela Negură BA. Introduced by Charles Ragin in 1987, when stumbling upon the causal inference problems generated by a small sample.

Introduced by Charles Ragin in 1987, when stumbling upon the causal inference problems generated by a small sample

Represents a method that bridges qualitative and quantitative analysis

Why? Because it is difficult to do in-depth qualitative work with sets larger than 15 (although not impossible) and is not very meaningful to do traditional statistical approaches on sets this small

Qualitative Comparative Analysis (QCA)

Page 3: What, When and How? Dumitrela Negură BA. Introduced by Charles Ragin in 1987, when stumbling upon the causal inference problems generated by a small sample.

Most aspects of QCA require familiarity with cases and in-depth knowledge of the theory

With QCA, it is possible to assess causation that is very complex, involving different combinations of causal conditions capable of generating the same outcome

Page 4: What, When and How? Dumitrela Negură BA. Introduced by Charles Ragin in 1987, when stumbling upon the causal inference problems generated by a small sample.

It is used in comparative case-oriented and in small scale research, for studying a small-to-moderate number of cases in which a specific outcome has occurred, compared with those where it has not

It is very useful when you have small samples (N=8 to N=200 or N=5 to N=50)

Used in : sociology, psychology, political science and history but can be applied to health related research

When do we use it ?

Page 5: What, When and How? Dumitrela Negură BA. Introduced by Charles Ragin in 1987, when stumbling upon the causal inference problems generated by a small sample.

QCA uses as units of analysis crisp and fuzzy sets and subsets

How?

Page 6: What, When and How? Dumitrela Negură BA. Introduced by Charles Ragin in 1987, when stumbling upon the causal inference problems generated by a small sample.

QCA was developed originally for the analysis of configurations of crisp set memberships (conventional Boolean sets)

With crisp sets, each case is assigned one of two possible membership scores in each set included in a study: 1 (yes/ presence) or 0 (no/ absence)

Crisp sets

Page 7: What, When and How? Dumitrela Negură BA. Introduced by Charles Ragin in 1987, when stumbling upon the causal inference problems generated by a small sample.

Fuzzy sets( fs/QCA) solve the problem of trying to force-fit cases into one of two categories

Fuzzy sets can have three or more categories (any value between 0 and 1):

1.00 = fully in 0.80 = mostly in 0.60 = more in than out0.40 = more out than in0.20 = mostly out0.00 = fully out

! Are not well suited for conventional truth table analysis !

Fuzzy sets

Page 8: What, When and How? Dumitrela Negură BA. Introduced by Charles Ragin in 1987, when stumbling upon the causal inference problems generated by a small sample.

Crisp vs. Fuzzy sets

Page 9: What, When and How? Dumitrela Negură BA. Introduced by Charles Ragin in 1987, when stumbling upon the causal inference problems generated by a small sample.

The simple way is to construct truth tables ( used only for crisp sets) and use Boolean algebra, considering all the logical combination of the causal conditions

The three basic Boolean operators are:o logical OR (+)o logical AND (*)o logical NOT (replacing the upper case letter with a lower

case letter) A dash symbol [-] represents the “don’t care” value for a

given binary variable, meaning it can be either present (1) or absent (0)

The arrow [→] is used to express the link between a set of conditions

For example: A+B *C-> Y or a+B*c->y ( where Y is the outcome)

Crisp-set analysis

Page 10: What, When and How? Dumitrela Negură BA. Introduced by Charles Ragin in 1987, when stumbling upon the causal inference problems generated by a small sample.

Truth tables list the logically possible combinations of causal conditions and the outcome associated with each combination

Truth tables help us to see clearly the similarities, differences and contradictions between cases

The number of combination is a geometric function of the number of causal conditions (number of causal combinations = , where k is the number of causal conditions)

Truth tables

Page 11: What, When and How? Dumitrela Negură BA. Introduced by Charles Ragin in 1987, when stumbling upon the causal inference problems generated by a small sample.

Causal relations are interpreted in terms of necessary and sufficient conditions

With necessity, the outcome is a subset of the causal condition

With sufficiency, the causal condition is a subset of the outcome

Boolean logic is used to reduce the table to a few statements indicating necessary and sufficient conditions and their combinations

Page 12: What, When and How? Dumitrela Negură BA. Introduced by Charles Ragin in 1987, when stumbling upon the causal inference problems generated by a small sample.

 

Cases

Genes and family history

Unhealthy food

Inactive lifestyle

Environment Health

conditionsOutcome :

Obesity

1 1 0 0 0 0 1

2 0 1 1 0 1 1

3 1 1 1 0 1 1

4 0 0 0 1 0 0

5 0 1 0 0 0 0

6 0 0 0 1 0 0

7 0 1 1 1 1 1

8 0 1 0 1 0 0

9 1 0 0 0 0 1

10 1 1 1 0 1 1

Example:

The number of combinations for this example will be

Page 13: What, When and How? Dumitrela Negură BA. Introduced by Charles Ragin in 1987, when stumbling upon the causal inference problems generated by a small sample.

 

Cases

Genes and family

history (G)

Unhealthy food (U)

Inactive lifestyle (L)

Environment (E) Health

conditions (H)Outcome : Obesity (O)

1,9 1 0 0 0 0 1

2 0 1 1 0 1 1

3, 10 1 1 1 0 1 1

4,6 0 0 0 1 0 0

5 0 0 0 0 0 0

7 0 1 1 1 1 1

8 0 1 0 1 0 0

Truth table: configuration and minimization

This means that we have these possible combinations: G*u*l*e*h + g*U*L*e*H + G*U*L*e*H + g*U*L*E*H -> O

g*u*l*E*h + g*u*l*e*h +g*U*l*E*h -> o

For example G is a sufficient condition and U is necessary but not sufficient for the outcome(O).

Page 14: What, When and How? Dumitrela Negură BA. Introduced by Charles Ragin in 1987, when stumbling upon the causal inference problems generated by a small sample.

Because the truth tables can be very complex because of their size, a specialized software can be used

The software can generate the truth table and also analyzes fuzzy sets

Software

Page 15: What, When and How? Dumitrela Negură BA. Introduced by Charles Ragin in 1987, when stumbling upon the causal inference problems generated by a small sample.

For crisp-set analysis: fs/QCA TOSMANA QCA 3.0

For fuzzy-set analysis: fs/QCA

Free and user friendly softwares

Page 16: What, When and How? Dumitrela Negură BA. Introduced by Charles Ragin in 1987, when stumbling upon the causal inference problems generated by a small sample.

Regression analysis vs. QCA

Page 17: What, When and How? Dumitrela Negură BA. Introduced by Charles Ragin in 1987, when stumbling upon the causal inference problems generated by a small sample.

QCA offers an alternative approach, bridging the qualitative and quantitative methods and it’s used for small scale research

Used for assessing causation

Uses theory-set relationships

Not hard to use but it demands good knowledge of theory and cases

To summarize:

Page 18: What, When and How? Dumitrela Negură BA. Introduced by Charles Ragin in 1987, when stumbling upon the causal inference problems generated by a small sample.

Thank you