Sampling goes to the heart of good quantitative research. The research agency will be responsible, but you need to be able to judge appropriate proposals.
It matters. There’s no point doing it unless it’s with the audience you think you want to affect.
Sampling is a trade off between making the sample is big enough to give confidence in the findings and not being too expensive. It needs to be big enough to give a reliable reflection of what you’re audience as a whole thinks, but size is nothing without recruiting a REPRESENTATIVE sample.
As a rule of thumb:
Samples of less than 100 should be treated with caution.
Samples of 500 are robust enough to leave out any margin for error.
Remember, if you want to sub-sample, like maybe looking at two life stages within a sample, the 100 rule still applies.
Of course, you can get scientific and look at ‘sample error’. This is a calculation that lets you know that if you repeated the survey, the likelihood of the same answer is xx. Bigger samples always means smaller error.
It depends on the scale of the answer too though. Like if 95% of your sample say they like chocolate, that’s pretty clear cut. But what if 50% of people say that?
Ask the research agency. It matters. Here’s an example:
Spontaneous brand awareness = 20%
Sample size = 400
Sample error = 4.3%
So the real answer = 20% plus or minus 4.3%
Since quant is about proof, make sure your proof is reliable!!
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