The use of discrete data in principal component analysis for socio-economic status evaluation
Kolenikov, Stanislav; & Angeles, Gustavo. (2005). The use of discrete data in principal component analysis for socio-economic status evaluation. UNC Chapel Hill.
Kolenikov, Stanislav; & Angeles, Gustavo. (2005). The use of discrete data in principal component analysis for socio-economic status evaluation. UNC Chapel Hill.
1381.ris — Octet Stream, 958 bytes
Outline
1. Motivation for socio-economic status (slide 3)
Who is interested in SES, and why?
2. Principal component analysis (slide 11)
Is this a reasonable procedure to generate weights for SES index?
3. Applications: Bangladesh DHS+, 2000 (slide 23) and Russia, RLMS 1994–2001 (slide 34)
Does it work for developing countries? Does it work for middle income countries?
Does it work with binary data only?
4. Monte Carlo study of the different flavors of PCA (slide 40)
Can we make any general conclusions about the methods?
5. Conclusions and references (slide 48)
How much room is there for improvement?
GEN
Kolenikov, Stanislav
Angeles, Gustavo
2005
UNC Chapel Hill
1381