Hi, I am again asking a generic question and the general response for such questions is cold. I am a beginner but use and write simple R scripts.
I am looking for some ideas to calculate the confidence intervals based on this excerpt from the paper. Moreover it would help if someone points to material to read about degrees of freedom and any related concepts. Thanks, Mohan Cutting Corners: Workbench Automation for Server Benchmarking APPENDIX: Confidence Intervals Given N observations of response time from N runs at given arrival rate λ, the confidence interval for the response time at that λ with a desired confidence level, c%, is computed as follows: ⢠Compute the mean server response time: μ = PN i=1 Ri/N, where Ri is the server response time for the ith run. ⢠Compute the standard deviation for the server response time: Ï = qPN i=1(Ri â μ)2/(N â 1). ⢠Confidence interval for the response time at confidence 100c% is given as: [μ â zpÏ/âN, μ + zpÏ/pN], where p = (1 + c)/2, and zp is the quantile of the unit normal distribution at p. If N <= 30, we replace zp by tp;nâ1, which is the pquantile of a t-variate with nâ1 degrees of freedom, assuming that the response time values from N runs come from a normal distribution. We verified that response times do come from a normal distribution using a normal proability plot. DISCLAIMER:\ ===============...{{dropped:31}}
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