## Hot answers tagged statistics

3

If you know the pdf function, it's easy to create a new distribution with sympy.stats. Take a look at the existing distributions in the sympy source. You just need to subclass SingleContinuousDistribution and define some methods. For example, here is the normal distribution (with the docstrings removed):
class ...

2

I don't know of a predefined function, but it's very easy. The n-th raw moment of the samples contained in vector x is
mean(x.^n)
If x is matrix and you want the raw moment of each colum:
mean(x.^n, 1)

2

If you use the default .NET Membership from Sitecore. The last login is stored in the .NET Membership SQL table.
var membershipUser = System.Web.Security.Membership.GetUser(user.Name, false);
var createdate = string.Empty;
var lastlogin = string.Empty;
if (membershipUser != null)
{
createdate = membershipUser.CreationDate.ToString("yyyy MMMM dd");
...

1

The problem is simple: the formula to calculate the density is not the one supporting matrices, have a look:
https://github.com/sympy/sympy/blob/sympy-0.7.6.1/sympy/stats/crv_types.py#L1641
In this expression, (x-self.mean) gets squared (i.e. raised to the power of 2), but the square of non-square matrix is not defined.
In short, it looks like ...

1

MATLAB doesn't have the OBLIMIN rotation method implemented yet, because the promax method does the same thing, only it is much much faster.
You'll not get the exact same output with this method compared to the SPSS OBLIMIN output, but they should be pretty close, as they're doing the same thing. (Actually, promax is also an oblique rotation, except it's ...

1

IMO, the most readable way:
edited to answer your updated question
library(dplyr)
library(stringr)
df <- date.data %>%
group_by(
DATE = as.Date(DATE),
HOUR = as.numeric(str_sub(TIME, 1, 2))
) %>%
tally
# create a data frame with all dates/hours
expand.grid(
# include all dates from first to last
DATE = ...

1

Additional option would be the following. First, you create a column for hour in mutate(). Then, you count how many data points exist by DATE and hour in count(). Once you ungroup the data, you join two data frames to create your desired outcome. The expand.grid() part creates all combination of DATE and hour (00 to 23). Since you have 02 for 2, I used ...

1

My approach would be to count the number of vertical edges on each horizontal scanline. Each letter will produce two or more edges.
First, use the sobel operator to calculate x derivative:
Now we have positive and negative edges, but we want to count them both as positive. So take the absolut value:
Now count the edges on each line. This can be done ...

1

You should use np.where and then count the length of the obtained vector of indices:
indices = np.where(x3 <= value)
count = len(indices[0])

1

import numpy as np
import pandas as pd
from collections import Counter
import matplotlib.pyplot as plt
arr = np.random.randint(0, 100, (100000,1))
df = pd.DataFrame(arr)
cnt = Counter(df[0])
df_p = pd.DataFrame(cnt, index=['data'])
df_p.T.plot(kind='hist')
plt.show()
That whole script took a very short period to execute (~2s) for (100,000x1) array. I ...

1

If efficiency counts, you can use the numpy function bincount, which need integers :
import numpy as np
a=np.random.rand(66049).reshape((66049,1)).round(3)
z=np.bincount(np.int32(1000*a[:,0]))
it takes about 1ms.
Regards.

1

Better make sure the homework police aren't patrolling...? Plus you have not provided any code, but I'm feeling generous, so this may help you out:
prisoners <- sample(x = 1:0, size = 404638, prob = c(0.678, 1 - 0.678), replace = TRUE)
prop.table(table(prisoners))
# prisoners
# 0 1
# 0.3225772 0.6774228
boot_samples <- ...

1

What do you mean "the forecast function does not work"? I get exactly the plot you want and the predict function gives exactly the same forecasts:
> fcst <- forecast(var, h=3)
> pred <- predict(var, n.ahead=3)
> fcst
consumption
Point Forecast Lo 80 Hi 80 Lo 95 Hi 95
2011 Q1 0.7421472 -0.06576279 1.550057 ...

1

What you need is predict. See http://stackoverflow.com/a/31410788/2824732
See:
new <- data.frame(carReg=-6.45, cpi=-2.73 , primConstTot=0.1,
resProp.Dwell= 0.2 ,cbre.office.primeYield=0.2,cbre.retail.capitalValue=-393)
predict(fit,new )
plot(predict(fit, new))
> predict(fit,new )
1
1.556804

1

The implementation of the Rice distribution in scipy.stats.rice uses a slightly different parameterization than the parameterization described in the wikipedia article.
To make your plots agree, change this line
Rsci=scst.rice(pr,scale=sigma)
to
Rsci=scst.rice(pr/sigma, scale=sigma)
Here's a longer explanation:
The PDF shown on wikipedia is
The ...

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