## Hot answers tagged statistics

5

There are lots of things wrong here.
for(i in 1:simsize=simsize)
should be throwing an error:
> for(i in 1:simsize=simsize) { print(i)}
Error: unexpected '=' in "for(i in 1:simsize="
Better is
for(i in seq_len(simsize))
Then
x <- function(ran.func)
is not doing what you thought it was; it is returning a function with xbars[i]<-mean(x) as ...

3

http://jsfiddle.net/naeemshaikh27/92wj8cv9/ see the console, I have the same code as yours, but you have just made a syntaxt error, document.write(array1[i] . "<br />");
Try changing it to document.write(array1[i] + "<br />");

3

I believe this is what you want (data in A):
> A
ID Desc Val CODEX IsCustomer
1: 1 hallpo 0 Random TRUE
2: 98 TEST 0 Random FALSE
3: 765 asdfsd 0 Random TRUE
4: 13 alla 100 Random TRUE
5: 3 asdfs 123 Random FALSE
6: 24 sd 2 Random FALSE
Try (thank you akrun and David)
B <- A[Val != 0]
...

3

If you inspect the body of the function ks.test you will see the following line somewhere in the body:
if (length(unique(x)) < n) {
warning("ties should not be present for the Kolmogorov-Smirnov test")
TIES <- TRUE
}
This tells you that when the number of unique elements in x is below the number of elements - you will get this warning. In ...

2

You can extract just the ISIN with str_extract and a good ISIN regex:
library(stringr)
VAL <- c("TES+XS0255015603+ae2s",
"TEST*XS0255015603+d2aasd", "safd*adf*XS0255015603++", "gasdfs*dsa*US0917971006",
"asdfsUS0917971006adf", "steve", "sd-asd-afds-US0917971006")
isin_pat <- ...

2

Basically, if you proceed with replacement in gsub, you need to put parenthesis on the group you want to isolate:
> df
ID VAL
1: 1 TES+XS0255015603+ae2s
2: 2 TEST*XS0255015603+d2aasd
3: 4 safd*adf*XS0255015603++
4: 2 gasdfs*dsa*US0917971006
5: 3 asdfsUS0917971006adf
6: 24 sd-asd-afds-US0917971006
> ...

2

There are a few problems here:
1) Even though the question used dput the object has a pointer in it so it won't be usable on other systems. I have edited out the pointer to give:
df <-
structure(list(ID = c(1L, 2L, 4L, 2L, 3L, 24L), VAL = c("TES+XS0255015603+ae2s",
"TEST*XS0255015603+d2aasd", "safd*adf*XS0255015603++", "gasdfs*dsa*US0917971006",
...

2

To extract just the values, use the -o and -P grep options:
grep -rioPh --include="*_out.txt" "(?<=${varName}=)[\d.]+" .
That looks for a pattern like nHops=1.234 and just prints out 1.234
Given your sample data:
$ var="var1"
$ grep -oPh "(?<=$var=)[\d.]+" exp_1_try_{1,2,3}.txt
30.523
78.98
78.100
To output some stats, you should be able to ...

1

After your write.csv() call, you can append to the csv with the following call to cat().
cat("\n", "Freq", summary[,1], sep = "\n", append = TRUE, file = "result.csv")
In the above call, here's what's happening:
first add an extra blank line with "\n".
then add the "Freq" line you requested above the summary
next is summary[,1] for the n part of the ...

1

Dealing with NA first and then add your column:
> df[is.na(df)]=""
> df$New = with(df, A==B)
> df
A B New
1 1 1 TRUE
2 test No Match FALSE
3 2 No Match FALSE
4 3 3 TRUE
5 TRUE
6 Test Test TRUE
7 No Match FALSE
Or remove NA from your initial data.frame with df = ...

1

I utilized the below function to obtain the answer:
> A <- with(df, max(abs(Data-Expected)))
> A
0.082
Basically, this function calculates the differences between the two columns into a new vector, whose values are transformed into absolute values, and from the absolute values the largest one is obtained.
Credit to Josh O'Brien.

1

An rpy2 implementation:
import rpy2.robjects as robjects
def Ftest_pvalue_rpy2(d1,d2):
"""docstring for Ftest_pvalue_rpy2"""
rd1 = (robjects.FloatVector(d1))
rd2 = (robjects.FloatVector(d2))
rvtest = robjects.r['var.test']
return rvtest(rd1,rd2)[2][0]
With this result:
In [4]: x1 = [0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 68.7169110318]
In ...

1

Here is a solution based on @Khashaa's suggestion:
power.z = function(mu,n) {
power = 1 - pnorm( 1.645 - (mu - 75)/(2.5/sqrt(n)) , 0, 1)
return(power)
}
power.bin = function(mu,n) {
p = 1 - pnorm(75, mu, 2.5)
power = 1 - pnorm( 1.645*sqrt(.25/(p*(1-p))) - (p-.5)/sqrt(p*(1-p)/n), 0, 1)
return(power)
}
fnDiffZBin = function(mu, n) abs(power.z(mu, ...

1

Similar to an answer several months ago, the Statistics Toolbox doesn't support the Symbolic Toolbox currently.
Therefore, you can proceed by hard coding the PDF itself and integrating it:
d = exp(-(log(x)-mu)^2/(2*sigma^2))/(x*sigma*sqrt(2*pi));
int(d, x, 0, 10);
Or you can use the logncdf function, which may be cleaner.

1

Sorry, I noticed you said you looked at the documentation in your question. My fault for not seeing that.
As I understand it, with X and Y being your original data matrices, A and B are the sets of coefficients that perform a change of basis to maximally correlate your original data. Your data is represented in the new bases as the matrices U and V.
So to ...

1

Assuming that you have timestamps for the reported numbers, you can construct the likelihood function for a parametric distribution, find the maximum-likelihood parameter estimates, and then compute an appropriate quantile (0.95, 0.99, 0.999, whatever) and report that as the daily how-bad-is-it number. I say parametric distribution because I don't know how ...

1

Obviously there are Java and Python packages that extract PMML files and return the evaluation.
In Java, see JPmml: https://github.com/jpmml
In Python, see Augustus: https://code.google.com/p/augustus/

1

Here is a different approach, which is nonparametric. You can bound the empirical cumulative distribution function above and below: between x_i and x_{i + 1}, (1) it is bounded below by the fraction of values which are certainly less than or equal to x_i, and (2) it is bounded above by the fraction of values which are certainly greater than x_i.
These ...

1

There are several problems with your code (e.g., x in your function is never defined and is not retained between calls to addValue), so I'm guessing that this is a chopped-down version of the real code and you still have remnants remaining. Instead of picking it apart verbosely, I'll just offer my own suggested code and a few pointers.
The function addValue ...

1

Your question if I get it right is not about programming or about math.
It is about business analysis :-)
You wrote : is clearly selling well.
What is your criteria to decide what is WELL?
In different situation and business flows there are many parameters.
For example if your product 1 price is 1 000 000. - you did huge sales.
and at the same time ...

1

Problem #1: c(x) and d(x) are lists of random numbers with a given distribution of probabilities. When you plot a histogram of c(x) or d(x), you are plotting the frequency of occurrence of each number. This frequency is just equal to the distribution.
e(x) is a totally different object. You have coded it as the probability distribution itself, not a set of ...

1

This could occur when you have plyr loaded along with dplyr. You can either do this on a new R session or use
dplyr::summarise(sys,
numeric = sum(NUMERIC)
)

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