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Science / Survey data collection / Response rate / Random sample / Jon Krosnick / Nonprobability sampling / Random digit dialing / Sample / Satisficing / Statistics / Sampling / Survey methodology
Date: 2014-04-07 17:57:28
Science
Survey data collection
Response rate
Random sample
Jon Krosnick
Nonprobability sampling
Random digit dialing
Sample
Satisficing
Statistics
Sampling
Survey methodology

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