Hypothesis testing
Hypothesis testing is used to reject or retain a hypothesis based upon the measurement of an observed sample. We will not be going into theoretical aspects but will be discussing how to implement the various scenarios of hypothesis testing in R.
Lower tail test of population mean with known variance
The null hypothesis is given by  where is the hypothesized lower bound of the population mean.
Let us assume a scenario where an investor assumes that the mean of daily returns of a stock since inception is greater than $10. The average of 30 days' daily return sample is $9.9. Assume the population standard deviation is 0.011. Can we reject the null hypothesis at .05
significance level?
Now let us calculate the test statistics z
which can be computed by the following code in R:
> xbar= 9.9 > mu0 = 10 > sig = 1.1 > n = 30 > z = (xbar-mu0)/(sig/sqrt(n)) > z
Here:
xbar
: Sample...