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3

Everything you are looking to do is available trough both the Graph API and the Marketing API. 1) Yes this is possible, as you pointed out. You can read more here 2) I would suggest that you read through the Marketing API doc I linked above to find out the full structure of an ad. But in short, an ad is split into the following 4 objects: Ad Campaign: ...


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So, the hard part of this is transforming your data into the right shape, which is why it's nice to share something that really looks like your data, not just a single column. Let's say your data is this a matrix with 10,000 rows and 10 columns. I'll just use a uniform distribution so it will be a boring plot at the end n = 10000 k = 10 mat = ...


2

I guess you prefer some guidance instead of a working code as the full solution. To be able to query a dictionary for the amount of persons that recorded observations in certain day, and to query for the amount of wolves observed by a person in certain day, I would create a dictionary with a key composed by day and personId and value as observation data. ...


2

I'd suggest to create custom class which can hold/store related data. Let it be Statisztika with the following fields/properties: Day, PersonId, Visitor and CountOfVisits. Statisztika class definition: public class Statisztika { private int iday = 0; private int ipersonid = 0; private int ivisitor =0; private int icount =0; //class ...


2

Another example numFailures = 6; timeLength = 720; % hours pFailure = numFailures / timeLength; % call this to randomly determine if there was a failure. If called enough times the probability of 1 will be equal to pFailure isFailed = rand(1) < pFailure; We can verify by calling in a loop: for k=1:1e5 isFailed(k) = rand(1) < pFailure; end ...


1

I think that this website, which has an online calculator of Shannon's entropy for an arbitrary string, a formula, and a quite good explanation will help: http://www.shannonentropy.netmark.pl/ From that calculator, what you are looking for is the "metric entropy", which equals Shannon's enthropy divided by the string length, which is a measure of the ...


1

The string is not a random bit string. It seems to consist entirely of characters in some kind of alphabet. The characters may be part of some kind of fully randomized input set though. To really test for randomness you need to translate your ciphertext to a bit string. Then get one of the test applications defined by NIST or the German BSI to test for ...


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It turns out that when estimating the parameters, large values in sel$x will cause the exponentiation to blow up and error. This guy has a fix on github here: https://github.com/theofilos/BTYD I basically took all of his code in pnbd.R, and prepend it to my code for the Pareto/NBD analysis and it seems to fix that issue.


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This is due to the use of a "multi-step" recursion like asymmetricP05. Such a pattern allows the warping path to be composed of long segments, e.g. knight's moves. To verify the monotonicity, you should only consider the starting positions of each of the "knight's moves" - not all of the cells passed through. The index1 and index2 properties do include ...


1

I think that you are misled by the idea that you're fitting a probability density function; you are fitting apparently something else. If what you displayed as bars is a histogram of the data values counted in some bins, please norm it to the number of points, so the total sum of the rectangle areas will be indeed 1 and not the number of points in your ...


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considering the vectors a and b of @pfuhlert, which could provide a nice reproducible example to your question, for which you could provide a desired output, I think you are looking for: names in common between the 2 vectors: commons <- intersect(a, b) and so: how many unique names in the vectors match length(commons) # 2 their positions (in a ...


1

I just found this wikipedia page discussing data of equal significance vs weighted data. The correct way to calculate the biased weighted estimator of variance is , though this on-the-fly implementation is more efficient computationally as it does not require calculating the weighted average before looping over the sum on the weighted differences squared ...


1

That is not a lot to go on, but I would probably start with the hexbin or hexbinplot package. Several alternatives are presented in this SO post. Formatting and manipulating a plot from the R package "hexbin"



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