DevilsAdvocate
Philosopher
- Joined
- Nov 18, 2004
- Messages
- 7,686
On public television they run some classroom-type shows. There was a great one (made in the 1970s, like the best of them) that had a guy that did a series and explained statistics more clearly than anything I have ever seen. Unfortunately, I can't find the series or any website that even comes close.Can someone point me at a website that has a good explanation, in layman's terms, of why statistical significance is important in an experiment. I'd like to read up a bit on what makes a scientific result statistically significant, and what expressions of error mean (the term escapes me right now, but I'm talking about what is expressed as a +/- range of accuracy in experimental results).
You asked about the “+/- range of accuracy”. This is a margin of error. You often hear about this in polls. Our poll for the U.S. presidential election shows Aaron has 60% of the vote and Barry has 40%, with a margin of error of +- 3%. What does that mean?
This means the poll resulted in 60% of the people saying they would vote for Aaron and 40% would vote for Barry. But how accurate is this poll? An how confident are we that the number are realistic?
We have to look at sample size. If the poll was based on just 10 people, then we don’t have much confidence in the results. If the poll was based on 10 million people, we would be very confident in the result. The larger the sample size, the larger the confidence that our poll numbers are accurate.
Of course even with a very large sample size, our poll isn’t going to be exact. Even if we poll 10 million people and the results are 60% for Aaron, this doesn’t mean that Aaron will get EXACTLY 60% of the vote.
We have to use a combination of margin or error a confidence level. We can say with 100% confidence that Aaron will get 60% of the vote with a margin of error of +- 60%. Or you could say that Aaron will get 60% of the vote with a margin of error of +- 0% at a 0% confidence level. Neither means much. It means you could be equally right or wrong.
You can’t be 100% confident that your projected numbers are correct. You have to allow for some margin of error. So the goal is to calculate a margin of error that has a reasonable level of confidence—like 95%. The lower your margin of error, the lower the confidence level.
If your sample size for a U.S. election was only 10 people, you probably couldn’t get a 95% confidence level without having a margin of error somewhere around +- 100%. Which means it would be meaningless. If your sample size were 10 million, you would have a low margin of error and a 95% confidence level would be no problem.
I wish I could explain this better.