Apr
19 |
comment |
Generate list of n (strictly positive) values such that the list has predetermined mean x and std. dev. y
Nice answer, but I had an impression that the question asker was also concerned with the sample mean and std. dev. deviating from the parameters defining the parent distribution, when the sample size is small. I thought the issue could be mitigated by integrating over the pdf, normalizing to the list size desired, rather than randomly sampling. I felt that was something quite contrived. Anyways... |
Apr
19 |
comment |
Generate list of n (strictly positive) values such that the list has predetermined mean x and std. dev. y
As any arbitrary distribution would do, you could use the truncated normal distribution mentioned (see Wikipedia for detail). I realized it is not so complicated to find the corresponding PDF for a = 0 and b -> infinity for that model. Once the PDF is found, then the question becomes how to scale that distribution and to bin the resulting histogram so that the total number of count equals the desired length for the list. You construct the list by multiplying the entries by count at each bin. I am not aware of any plug-and-chug solution for the latter process, but that might just be me. |
Apr
18 |
revised |
Generate list of n (strictly positive) values such that the list has predetermined mean x and std. dev. y
added clarification for the simplification |
Apr
18 |
comment |
Generate list of n (strictly positive) values such that the list has predetermined mean x and std. dev. y
I didn't know exactly know what the context in which the original question was necessary, so I cannot provide the most optimal solution. It is of course possible to design some arbitrary probability distribution that satisfies the premise of the question, but if it can really be arbitrary, then there is probably no optimal solution either. But if you are dealing with arrival times of customers, then you could look into something like the Poisson process and start from there. |
Apr
18 |
comment |
Generate list of n (strictly positive) values such that the list has predetermined mean x and std. dev. y
Not that I know that's efficient enough or really not contrived. I just don't find the premise of the question making sense (which is the reason why I think it is not a proper approach to the question you are really trying to solve). The mean and standard deviation is a way of characterizing probability distribution, so if you are saying the distribution really does not matter, then I have to question why you care so much about the mean and standard deviation to begin with (because without a distribution, they are not very meaningful for interpretation). |
Apr
18 |
comment |
Generate list of n (strictly positive) values such that the list has predetermined mean x and std. dev. y
With any distribution you must assume, there are certain restrictions in the way mean and standard deviation can be chosen so that you cannot choose everything freely, arbitrary and hope the values drawn are strictly positive. With my example, you just need to choose mean and standard deviation so that the minimum b are positive. You could do something similar with different distribution, but then some other restrictions are imposed (like with Poisson, the mean and variance is related one-to-one). You simply cannot pick everything arbitrarily. Otherwise you need something by brute force. |
Apr
18 |
answered | Generate list of n (strictly positive) values such that the list has predetermined mean x and std. dev. y |
Apr
18 |
comment |
Generate list of n (strictly positive) values such that the list has predetermined mean x and std. dev. y
Also, do you need to ensure that a set of values having its mean and standard deviation "very close" to those predefined? I ask because if you draw a set of values from some probability distribution, with a small sample your mean and standard deviation computed from that sample can be quite a bit different from those of the parent population. In practice, we don't do this kind of thing (we only make an assumption about the probability distribution), but it is not clear from the question what the goal really is. |
Apr
18 |
comment |
Generate list of n (strictly positive) values such that the list has predetermined mean x and std. dev. y
If maintaining the mean and standard deviation is important, I suspect that you are making some assumption about the distribution of those values. Aside from being strictly positive, do you have other requirements, or can the probability function totally arbitrary? |
Apr
18 |
comment |
Find roots using scipy.optimize.fsolve. What went wrong?
The function is not properly indented (near if-else), and the variable E20 is not defined. Please provide minimally working code snippet. |
Apr
17 |
answered | MapReduce: How to keep track of states across multiple lines in the mapper (say for counting trigrams)? |
Apr
17 |
answered | Is it possible to add additional input to a later step of an mrjob? |
Apr
16 |
answered | Numpy: Create a mask array to select rectangle |
Apr
16 |
answered | Python program to rotate a line not working |
Apr
15 |
comment |
How to find the inflection point in a noisy curve?
Smoothing is not really necessary here, but I just used it to estimate where the signal starts contributing more to the data. If you deal with noisier data than used in this example, however, you probably need some way of modeling that transition; smoothing is just a quickie. |
Apr
15 |
answered | How to find the inflection point in a noisy curve? |
Apr
15 |
comment |
How to find the inflection point in a noisy curve?
Are you in need of finding the actual inflection point (i.e., where the concavity changes, up or down)? Or are you trying to identify the starting point the spectrum where the signal is strong? The red point is not an inflection point, strictly speaking. |
Apr
14 |
comment |
Always run python 2.6 instead of 3.4 in centos
This is indeed a good point. Replacing the default Python used by the system will break a lot of things. |
Apr
14 |
revised |
Ensuring minimum distance between choices
clearer |
Apr
14 |
answered | Ensuring minimum distance between choices |