Question: Why is the normal distribution of such importance to statistical models?
I was first introduced to this brain-wringing distribution back in statistics 101. I was told many real-life phenomena are approximated well by this model and it is used quite frequently across a variety of disciplines. That was that, I didn't think anything more on the topic then.
Fast forward to today, I am in the process of re-starting my journey into the wonderful world of mathematics, specifically within the space of probability measures (pun unintended
). Being stuck on a question where I have to take a normal random variable and transform X and transform it to Z=e^X, I ask:
Why? Why must I stay up late working on convoluted integrations because of this normal distribution? Why is the normal distribution of such importance to statistical models?
Is it something to do with its tails, its bell shape curve, etc.? Is it by happenstance that the distribution approximates many phenomenon which clump around the middle and taper off at either ends?
Or (hopefully) is there some greater elegance and mathematical purity to this model, independent of its applicability to the real world? Just like how e and pi seem like specific definitions to overcome specific issues in maths (e.g. pi to get the area of a circle) but happen to interwine in many ways in other areas that would not have been apparent at their initial construction.
I was first introduced to this brain-wringing distribution back in statistics 101. I was told many real-life phenomena are approximated well by this model and it is used quite frequently across a variety of disciplines. That was that, I didn't think anything more on the topic then.
Fast forward to today, I am in the process of re-starting my journey into the wonderful world of mathematics, specifically within the space of probability measures (pun unintended
Why? Why must I stay up late working on convoluted integrations because of this normal distribution? Why is the normal distribution of such importance to statistical models?
Is it something to do with its tails, its bell shape curve, etc.? Is it by happenstance that the distribution approximates many phenomenon which clump around the middle and taper off at either ends?
Or (hopefully) is there some greater elegance and mathematical purity to this model, independent of its applicability to the real world? Just like how e and pi seem like specific definitions to overcome specific issues in maths (e.g. pi to get the area of a circle) but happen to interwine in many ways in other areas that would not have been apparent at their initial construction.