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Measurement / Market research / Random sample / Telephone / Ringtone / Margin of error / Confidence interval / Sample / Survey sampling / Statistics / Sampling / Survey methodology
Date: 2015-02-23 11:33:15
Measurement
Market research
Random sample
Telephone
Ringtone
Margin of error
Confidence interval
Sample
Survey sampling
Statistics
Sampling
Survey methodology

TELEPHONE CARAVAN® Methodology The following pages describe the methodology used for the ORC International Telephone CARAVAN® survey conducted January 29February 1, 2015. The study was conducted using two probability s

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