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• Today: Lab 3 & A3 due • Mon Oct 1: Exam I this room, 12 pm Please, no computers or smartphones • Mon Oct 1: No grad seminar Next grad seminar: Wednesday, Oct 10 • Next Lab: Tuesday Oct 2 Today Review Q & A Confidence limits Used to evaluate the uncertainty of an estimate made from data A confidence interval gives an estimated range of values which is likely to include an unknown population parameter Example: brook trout length Cat Arm Lake (Great Northern Peninsula) was flooded to create a reservoir for a Hydroelectric Generating Station Potential impact of flooding: reduction in recruitment of fish If that happened, NL Hydro would build hatchery = $$$ Measure size of 0-group to establish baseline for comparison after flooding Example: brook trout length Quantity: Fork length Y = mm n=16 Total population of 0-group: ca 700 Sampling fraction = 16/700 ≈ 2% Sample mean mean(Y)=53.8 mm Estimate of true mean E(Y) unknown How reliable is our estimate of the mean? Example: brook trout length Confidence limits – the concept Example: brook trout length Table 7.5a Generic recipe for calculating a confidence limit 1. State population, state statistic 2. Calculate statistic from data 3. Determine distribution of the estimate 4. State tolerance for Type I error 5. Write a probability statement about the estimate 6. Plug values into statement to obtain confidence limits 7. Make a statement that the limits include the true value of population parameter Example: brook trout length 1. Population: all brook trout < 1 year in Cat Arm Lake in 1982 Statistic: population mean length 2. Calculate statistic mean(Y)=Y=53.8 mm 3. Distribution of estimate Key Table 7.2 Statistic is population mean data cluster around central value sample size is small (n<30) ……..t distribution Example: brook trout length 4. Tolerance for Type I error α = 10% 5. Write probability statement Verbal: the probability that a line from L1 to L2 includes the true mean fork length μY of Cat Arm brook trout is equal to 90% Symbolic: PL1 Y L2 1 P Y t( / 2)[ n1] SE Y Y t(1 / 2)[ n1] SE 1 SE s n Example: brook trout length 6. Plug values into probability statement P Y t( / 2)[ n1] SE Y Y t(1 / 2)[ n1] SE 1 Y 53.8mm SE= 1.45 mm α = 10% t0.05[15] = ? = Example: brook trout length 6. Plug values into probability statement Y 53.8mm SE= 1.45 mm α = 10% t0.05[15] = -1.753 P 53.8 1.753 *1.45 Y 53.8 1.753 *1.45 90% P 51.26 Y 56.34 90% 7. Make statement about population estimate The limits 51.26 cm to 56.3 cm enclose the true population mean μY 90% of the time Confidence limits - comments How do we narrow the confidence interval (i.e. L2 – L1)? 1. increase α 2. increase n 3. decrease σ For many statistics the distribution of the estimate is unknown Solution: generate an empirical distribution by resampling bootstrap Review Q & A • • • • • Quantity Measurement scale Dimensions & Units Equations Data Equations – Sums of squared residuals quantify improvement in fit, compare models • Quantify uncertainty through frequency distributions – Empirical – Theoretical – 4 forms, 4 uses • Hypothesis testing • Confidence interval