I have 365 daily measurements that all have standard errors associated with them.
Date | Prediction | Standard Error
-----------------------------------------
Jan-01-2003 | 24.8574 | 10.6407
Jan-02-2003 | 10.8658 | 3.8237
Jan-03-2003 | 12.1917 | 5.7988
Jan-04-2003 | 11.1783 | 4.3016
Jan-05-2003 | 16.713 | 5.3177
etc ...
What is the statistically appropriate way of getting the yearly average with a 95% Confidence Interval around it ? I am assuming that the errors must be propagating somehow and need to be accounted for.
Google returns mostly information on how to calculate the average or standard deviation of a set of numbers, not a set of numbers with errors.
I would also appreciate some type of internet reference so I can refer to it later.