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We elaborate a general workflow of weighting-based survey
inference, decomposing it into two main tasks. The first is the
estimation of population targets from one or more sources of
auxiliary information. The second is the construction of weights
that calibrate the survey sample to the population targets. We
emphasize that these tasks are predicated on models of the
measurement, sampling, and nonresponse process whose assumptions
cannot be fully tested. After describing this workflow in abstract
terms, we then describe in detail how it can be applied to the
analysis of historical and contemporary opinion polls. We also
discuss extensions of the basic workflow, particularly inference
for causal quantities and multilevel regression and
poststratification.
David A. Freedman presents here a definitive synthesis of his
approach to causal inference in the social sciences. He explores
the foundations and limitations of statistical modeling,
illustrating basic arguments with examples from political science,
public policy, law, and epidemiology. Freedman maintains that many
new technical approaches to statistical modeling constitute not
progress, but regress. Instead, he advocates a 'shoe leather'
methodology, which exploits natural variation to mitigate
confounding and relies on intimate knowledge of the subject matter
to develop meticulous research designs and eliminate rival
explanations. When Freedman first enunciated this position, he was
met with scepticism, in part because it was hard to believe that a
mathematical statistician of his stature would favor 'low-tech'
approaches. But the tide is turning. Many social scientists now
agree that statistical technique cannot substitute for good
research design and subject matter knowledge. This book offers an
integrated presentation of Freedman's views.
David A. Freedman presents here a definitive synthesis of his
approach to causal inference in the social sciences. He explores
the foundations and limitations of statistical modeling,
illustrating basic arguments with examples from political science,
public policy, law, and epidemiology. Freedman maintains that many
new technical approaches to statistical modeling constitute not
progress, but regress. Instead, he advocates a 'shoe leather'
methodology, which exploits natural variation to mitigate
confounding and relies on intimate knowledge of the subject matter
to develop meticulous research designs and eliminate rival
explanations. When Freedman first enunciated this position, he was
met with scepticism, in part because it was hard to believe that a
mathematical statistician of his stature would favor 'low-tech'
approaches. But the tide is turning. Many social scientists now
agree that statistical technique cannot substitute for good
research design and subject matter knowledge. This book offers an
integrated presentation of Freedman's views.
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