Compared to your other family members, how would you rate yourself as a gift giver on a scale of 0-100? [OC]
Submitted by GradientMetrics t3_ztjykq in dataisbeautiful
Reply to comment by AlexHanson007 in Compared to your other family members, how would you rate yourself as a gift giver on a scale of 0-100? [OC] by GradientMetrics
What is your read on the story? Curious, and just wanting a bit more context, if you were willing to provide.
The question was "how do you compare yourself to others". Yet, the graph is not normally distributed but skewed to positive responses.
Unless the survey happened to pick an abnormally large group of the best present givers, it means that the people responding are overrating themselves.
They can't all be amazing!
Ah, but maybe bad gift givers more often refused to respond!
Ha ha, yeah!
Too embarrassed to answer. :)
It's a perfect Lake Wobegone Effect demonstration.
Indeed.
Had forgotten the name for that. Thank goodness Google exists.
Or... bad gift givers tend to have multiple discrete families?
You sir, are a titan.
(Or madam, non-binary etc)
The comparison is to other family members.
> it means that the people responding are overrating themselves
Only if you assume that gift-giving ability is normally distributed. It doesn't have to be...
It's a comparison against others, not an independent and absolute rating. Assuming our sample population is not biased and is a fair reflection of society, then it does have to be normally distributed.
What this graph is saying is that, compared to others, most people are better at something. That's not possible. That would be like having a race and saying most people finished in 3rd place (assuming there aren't joint finishes).
As someone else pointed out, this is an example of the Lake Wobegon effect.
Why would it have to be normally distributed?
In my eyes a non-biased relative comparison could end up with a whole host of distributions. A relative measure only means that you'll translate and perhaps rescale the original distribution.
Do you have a theorem or specific result to refer to?
I should also point out that the Lake Wobegon effect is at its most relevant when the underlying distribution is symmetric. Meaning that the average and the median are equivalent. This does hold for e.g. normal distributions. But if we allow for distributions with long smaller-than-mean tails, it would be possible that a majority are better than the mean.
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