Given $s$ successes in $n$ trials, where $p=\frac{s}{n}$, is there a standard way to determine if I have enough data to compute a meaningful statistic? For example, given $s=1, n=10, p=0.1$, the 95% confidence interval ranges from $0.002 < p < 0.445$.
It seems like I could just use the gap between the 95% confidence interval, but it falls apart with rare events (ie: $\frac{s=1}{n=10}$ vs $\frac{s=10}{n=100}$), the 95% confidence of the one on the left is +/- 0.345 while the one on the right is +/- 0.045, yet relative to the estimated probability they are the about the same.
Since I am using the estimated probability to tell if a process is in control in the context of it's historical trend, I don't want to raise an alert on an outlier that's caused by too little data.
Am I trying to solve this the wrong way?
I am very grateful for any guidance that points me in the right direction. Thanks for reading!