Suppose I am collecting data on how much money is processed by the 16 banks in an economy. I want to quantify how "concentrated" the flow of money is—that is, the extent to which the larger banks process more money than the smaller banks.
In a certain random interval of time, I recorded the transaction volume in dollars and as a percentage at each bank. To avoid dependency issues, let's assume that the ranks of the banks are known prior to sampling. The banks are then referred to by these fixed ranks; therefore, in this random sample, the transaction volume does not strictly decrease as rank increases.
bank volume pc
1 75800 0.336440
2 49500 0.219707
3 50200 0.222814
4 7900 0.035064
5 9000 0.039947
6 6200 0.027519
7 6500 0.028850
8 5300 0.023524
9 4800 0.021305
10 4100 0.018198
11 1100 0.004882
12 1100 0.004882
13 1100 0.004882
14 800 0.003551
15 1400 0.006214
16 500 0.002219
The first and third columns then describe a histogram that estimates the pmf $f(x)$, where $X$ is a random variable denoting the rank of the bank at which a given dollar is transacted.
To estimate the sample mean, or the expected rank of the bank at which a random dollar is transacted, I take the dot product of bank
and pc
, which comes out to 3.0203. This is easy, and we don't need any corrections that depend on the sample size.
But I am interested in computing unbiased estimators for statistics based on higher moments. In the formula for the sample variance (for example), to get an unbiased estimator we correct the maximum likelihood estimator by multiplying it by $\frac{N}{N-1}$:
$$s^2 = \frac{1}{N-1} \sum_i^N (x_i - \bar x)^2$$
I'm not sure what number I should use for $N$ in a context like this. One option could be to treat each dollar as an $x_i$ (a trial). Then our (enormous) "sample" would consist of 75800 1s, 50500 2s, and so on, and we can use the correction above with $\frac{N}{N-1} = \frac{225300}{225299} \approx 1$. But you could just as easily argue for using hundreds of dollars, or cents, or whatever as the trial unit, which would drastically alter the sample size.
- What does sample size mean in a situation like this?
- What "sample" should I use to compute unbiased estimators for the standard deviation, skewness, and kurtosis of this distribution?
I realize there are other tools economists use to quantify how concentrated the flow of money is. I am not asking about these other tools, but rather seeking a conceptual understanding of sample size as it relates to unbiased estimators.