# One-Sided Hypothesis Test with T-Statistic in R?

I want to test the following hypothesis in R using a t-statistic and compute the p-value:

Null Hypothesis : mu <= 50

Alternate : mu > 50

``````data = c(52.7, 53.9, 41.7, 71.5, 47.6, 55.1,
62.2, 56.5, 33.4, 61.8, 54.3, 50.0,
45.3, 63.4, 53.9, 65.5, 66.6, 70.0,
52.4, 38.6, 46.1, 44.4, 60.7, 56.4);
``````

It should be very easy, but I'm not sure how to do it. Thank you for your help!

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More serious, check out statmethods.net for some basic stats in R. In particular the fourth example of statmethods.net/stats/ttest.html. – Sacha Epskamp Dec 11 '12 at 0:27
+1 for the LMGTFY reference @SachaEpskamp – Brandon Bertelsen Dec 11 '12 at 1:11
I realize this should be very easy, but the examples I've found and the sites listed above are all for Ho: mu=50, whereas I need mu<=50. I'm not sure how to indicate that to R. – ruya Dec 11 '12 at 1:31
take a look at `?t.test` and be sure to read about the arguments `x`, `mu`, and `alternative` ... – Ben Bolker Dec 11 '12 at 2:44

If your `H0` equals: `mu<=50` the right command is:
``````t.test(data, mu=50, alternative = 'greater')
With `alternative` you define `H1`. Consequently it is: `H1: mu > 50`. The output shows the `p.value`, mean and `t-value`. That's it.