1 / 30

Friday: Lab 3 & A3 due

Friday: 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 Type II error & Power. Today. Table 7.1 Generic recipe for decision making with statistics

luigi
Télécharger la présentation

Friday: Lab 3 & A3 due

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Friday: 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 Type II error & Power

  2. Today

  3. Table 7.1 Generic recipe for decision making with statistics • State population, conditions for taking sample • State the model or measure of pattern……………………………ST • State null hypothesis about population……………………………H0 • State alternative hypothesis……………………………………… HA • State tolerance for Type I error…………………………………… α • State frequency distribution that gives probability of outcomes whenthe Null Hypothesis is true. Choices: • Permutations: distributions of all possible outcomes • Empirical distribution obtained by random sampling of all possibleoutcomes when H0 is true • Cumulative distribution function (cdf) that applies when H0 is trueState assumptions when using a cdf such as Normal, F, t or chisquare • Calculate the statistic. This is the observed outcome • Calculate p-value for observed outcome relative to distribution of outcomes when H0 is true • If p less than α then reject H0 in favour of HAIf greater than α then not reject H0 • Report statistic, p-value, sample sizeDeclare decision

  4. Table 7.2 Key for choosing a FD of a statistic • Statistic of the population is a mean • If data are normal or cluster around a central value • If sample size is large(n>30)……....…………Normal distribution • If sample size is small(n<30)……....…………t distribution • If data are Poisson………………………………..Poisson distribution • If data are Binomial………………………………Binomial distribution • If data do not cluster around central value, examine residuals • If residuals are normal or cluster around a central value • If residuals are normal or cluster around a central value • If sample size is large(n>30)……....…………Normal distribution • If sample size is small(n<30)……....…………t distribution • If residuals are not normal………………………Empirical distribution • Statistic of the population is a variance • If data are normal or cluster around a central value……...Chi-square • If data do not cluster around a central value • If sample size is large(n>30)……....… …Chi-square distribution • If sample size is small(n<30)……....…………Empirical

  5. Table 7.2 Key for choosing a FD of a statistic - continued • Statistic of the population: ratio of 2 variances (ANOVA tables) • If data are normal or cluster around a central value…………….F dist • If data do not cluster around central value, calculate residuals • If residuals are normal or cluster around a central value……….F dist • If residuals do not cluster around a central value • If sample size is large(n>30)……....………………F distribution • If sample size is small(n<30)……....………………..…Empirical • Statistic is none of the above • Search statistical literature for apropriate distribution or confer with a statistician • If not in literature or can not be found…....………………..…Empirical

  6. Example: jackal bones - revisited

  7. Example: jackal bones - revisited 1. 2. 3. 4. 5.

  8. Example: jackal bones - revisited 6. Key 7.

  9. Example: jackal bones - revisited 8. Calculate p from t dist

  10. Example: jackal bones - revisited 9. 10.

  11. Example: jackal bones - revisited Is your data normal?

  12. Example: jackal bones - revisited Is your data normal? It really does not matter! The assumption is that the residuals follow a normal distribution

  13. Example: jackal bones - revisited Are your residuals normal?

  14. Example: roach survival Data: Survival (Ts) in days of the roach Blatella vaga when kept without food or water Females n=10 mean(Ts)=8.5 days var(Ts)=3.6 days Males n=10 mean(Ts)=4.8 days var(Ts)=0.9 days Is the variation in survival time equal between male and female roaches? Data from Sokal & Rohlf 1995, p 189

  15. Example: roach survival 1. 2. 3. 4. 5.

  16. Example: roach survival 6. Key  7. 8.

  17. Example: roach survival 9. 10.

  18. Parameters Formal models (equations) consist of variable quantities and parameters Parameters have a fixed value in a particular situation Parameters are found in functional expressions of causal relations statistical or empirical functions theoretical frequency distributions Parameters are obtained from data by estimation

  19. Parameters - examples • Functional relationship. Scallops density • Mscal=k1 if R=5 or 6 • Mscal=k2 if R not equal to 5 or 6 • Mscal = kg caught pr unit area of seafloor • R = sediment roughness from 1 (sand) to 100 (cobble) • k = mean scallop catch Red for params, blue for variables

  20. Parameters - examples • Statistical relationship. Morphoedaphic equation • Mfish=1.38 MEI0.4661 • Mfish= kg ha-1 yr-1 fish caught per year from lake • MEI = ppm m-1 dissolved organics/lake depth • 0.4661 • 1.38 kg ha-1 ppm-0.4661 m0.4661 Red for params, blue for variables

  21. Parameters - examples • Frequency distribution. Normal distribution Y X μ = mean σ = standard deviation Red for params, blue for variables

  22. Parameter estimates • Scallops density • Mscal= μ1 if R=5 or 6 • Mscal= μ2 if R not equal to 5 or 6 • Theoretical model to calculate μ1 and μ2? • Non-existent •  estimate from data recorded in 28 tows • Mscal= μ1=mean(MR=5,6) n=13 • Mscal= μ2=mean(MR<>5,6) n=15

  23. Parameter estimates • Ryder’s morphoedaphic equation • pM = α MEIβ • ln(pM) = + population = + ln(MEI) sample

  24. Statistical Inference • Two categories: • Hypothesis testing • Make decisions about an unknown population parameter • 2. Estimation • specific values of an unknown population parameter

  25. Parameters • Estimation: • Analytic formula • e.g. slope, mean • 2. Iterative methods • criterion: maximize the likelihood of the parameter • common ways to measure the likelihood: • sums of squared deviations of data from model • G-statistic (Poisson, binomial)

  26. Parameters Uncertainty: Confidence limit: 2 values between which we have a specified level of confidence (e.g. 95%) that the population parameter lies

More Related