## Hot answers tagged statistics

3

It's a bug: https://github.com/scipy/scipy/issues/2069
A different work-around for your example is to give the size argument explicitly along with the arguments that you are already using.
For example, here's the buggy case:
In [1]: import scipy.stats as ss
In [2]: x = ss.uniform.rvs(np.zeros(5), np.array([1,2,3,4,5]))
In [3]: x
Out[3]: array([ ...

2

If I would asked this question on interview - I will propose something like described in this paper, looks like best match for your task's formulation. In this paper you will find optimized approximate approach to solve multiple salesmen problem with all salesmen starting in one point. It can be adopted if we know where employees leave by solving each single ...

2

To calculate the covariance, you'll want something like the below, which has a nested loop, going through each list, and accumulates the covariance using the formula for covariance.
# let's get the mean of `X` (add all the vals in `X` and divide by
# the length
x_mean = float(sum(X)) / len(X)
# now, let's get the mean for `Y`
y_mean = float(sum(Y)) / ...

2

Indeed as Dmitry mentions this is a case of the multiple travelling salesman porblem.
Being NP-hard naturally the interviewers are looking for you to suggest a heursitic optimisation algorithm.
I think the key in this case is they are looking for an algorithm which is able to update in real time to changes in the number and location of destinations. Ant ...

2

Basically you need to project the data along the direction of the classifier, plot a histogram for each class, and then rotate the histogram so its x axis is parallel to the classifier. Some trial-and-error with scaling the histogram is needed in order to get a nice result. Here's an example of how to do it in Matlab, for the naive classifier (difference of ...

2

Just wondering if we are talking about something like the below?
Perc =RAND() =B2*C2 =D2/SUM($D$2:$D$5) =E2*20
P1 5% 0.168440417 0.008422021 0.026888651 0.537773022
P2 15% 0.23130968 0.034696452 0.110773983 2.215479657
P3 25% 0.424406873 0.106101718 0.338746737 ...

2

Python is a general purpose language, but R was designed specifically for statistics. It's almost always going to take a few more lines of code to achieve the same (statistical) goal in python, purely because R comes ready to fit regression models (using lm) as soon as you boot it up.
The short answer to your question is No - your python code is already ...

1

According to the R docs:
Performs one- and two-sample Wilcoxon tests on vectors of data; the latter is also known as ‘Mann-Whitney’ test.
So just use
from scipy.stats import mannwhitneyu
mannwhitneyu(range(10), range(12))
# (50.0, 0.26494055917435472)

1

I don't think that there is a formula which would fit exactly to your requirements. I would use a very straightforward solution:
Generate 80% of data using =RANDBETWEEN(0,20)/100
Generate 10% of data using =RANDBETWEEN(20,30)/100
Generate 5% of data using =RANDBETWEEN(30,50)/100
and so on
You can easily change the precision of generated data by modifying ...

1

Ok it seems that you are very confused by both validating as well as what cross_val_score does. First thing first, you should not do any of the above approaches. If you are not searching for some hyperparameters, but instead just want to answer the question "How good is DT with min_samples_split=20 on my data", then you should do:
dt = ...

1

It seems you are dealing with time-series-analysis and prediction. You could look at the Python library Statsmodels which offers ARMA and ARIMA models straight out of the box.

1

Based on what you say/show, DTW is perfect
See the bottom right of http://www.cs.ucr.edu/~eamonn/sampleslides2.jpg
or the right of http://www.cs.ucr.edu/~eamonn/sampleslides3.jpg

1

In short you do not. Decision trees (building block of random forest) do not work this way. If you work with linear models then there is quite simple distinction if feature is "positive" or "negative", because the only impact it can have on the final result is being added (with weight). Nothing more. However, ensemble of decision trees can have arbitrary ...

1

Python's product function in itertools can also help here, which can be combined with enumerate to return the required indexes for P as follows:
from itertools import product
X = [1, 2]
Y = [1, 2, 3]
P = [[0.25,0.25,0.0], [0.0, 0.25, 0.25]]
mean_x = float(sum(X) / len(X))
mean_y = float(sum(Y) / len(Y))
print sum((x[1] - mean_x) * (y[1] - mean_y) * ...

1

You could do :
boxplot(df$Count~df$Month)
it will return :
If you want to display January then February, do :
df[,1]<-factor(df[,1],levels=c('January','February'))
boxplot(df$Count~df$Month)
or just :
boxplot(df$Count~df$Month,names=c('January','February'))

1

Each call to readline() method will return string that ends with '\n' (for unix) or '\r\n' (for windows).
It will read till the end of stream is reached i.e. until there are lines in the file. I think this answers your 1st question
To answer your second question, every call to readLine() will return successive lines from the input stream (file). It returns ...

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