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Scheme Of Work For AQA AS Statistics (5381) Subject Content 1. a) Collection of data b) Presenting data c) Simple random sampling 2) Measures Of Average and Spread Learning Objectives 1) To distinguish between: Primary and secondary data Qualitative and quantitative data Discrete and continuous data Raw data and grouped data 2)Bar diagrams of discrete data Module Time in lessons S1 Resources S1 Chap 1 Ex 1a, 1b, 1c S2 1 1 Key Maths or Edexcel GCSE Stats text 3) Pie charts S2 2 4) Histograms for continuous data with equal and unequal class intervals 5) Cumulative Frequency S2 2 Crawshaw and Chambers Ex 1c Crawshaw and Chambers Ex 1b S2 1 6) Box plots S2 1-2 7) Understand the concept of a simple random sample. S1 Notes for teaching and learning Much of the terminology could be written on a sheet for the students. Don’t spend too much time on this first section. To encourage independent learning students could be given the topics of box plots, cumulative frequency, pie charts and possibly median by interpolation of grouped data to prepare and present to the class. Line diagrams, component bar charts and multiple bar charts. Quick recap of constructing a pie chart and calculation of appropriate radii for comparison of data – (need to ring AQA to check if this is still needed) Crawshaw and Chambers Ex 1n Craw Ex 2c Only a quick recap of GCSE Maths content needed 1 S1 Pages 5 – 7. Quick recap of GCSE work. In addition formally identify outliers as a value more than 1.5 times the IQR distant from the nearest quartile. Also mention skewness. Students need to understand the concept of a simple random sample but it will not be tested in the exam. Measures needed for ungrouped and grouped data. Spend time on the idea of bounds, mid-values of groups etc with both discrete and continuous data Introduce 60 – notation Medians of grouped data must be found by interpolation but only modal class of grouped data needs to be identified. Calculate mode, median and mean S1 3 S1 Ch 2 Ex 2a, 2b. (Crawshaw and Chambers Ex 1d, 1m and some of 1n) Calculate range, IQR, variance and standard deviation S1 4 S1 Ex 2c,2d,2e (Craw Ex 1e, 1g) Make sure students can efficiently use the statistical functions on their calculators. Teach the difference between s and but questions requiring the knowledge of which to use will not be set. Change of scale S1 1 S1 Ex 2f (Craw Ex 1h) Questions requiring linear scaling will not be set but students still need to be aware of the effect on numerical measures. I.e. the effect on the mean and standard deviation of adding a constant a to a set of data or multiplying a set of data by a. Choose numerical measures appropriate to a given context S1 1 S1 Ex 2g Draw and interpret scatter diagrams Evaluation and interpretation of the product moment S1 0.5 – 1 S1 3-4 Evaluate and interpret Spearmans Rank Coefficient Of Rank Correlation Use tables to test a hypothesis about a Spearmans Rank correlation coefficient or product moment correlation coefficient. S3 2 S3 2 TEST 3) Correlation and regression S1 Chap 7 and Ex 7a X axis is the independent or explanatory variable and the y axis is the dependent or response variable. Emphasise product moment is a measure of linear correlation only. Teach the fact that r = 0 does not necessarily imply that there is no relationship between variables & that an association does not necessarily imply cause & effect. Do some examples where students calculate xy etc and substitute into the formula but it’s to be encouraged that r should be found directly from the calculator Slot in some Past A level questions for practice S3 Chap 3 and Ex 3a Crawshaw Ex 12d S3 Ex 3b + mixed exercise Teach how to use the formula but again once the data is ranked pupils should be encouraged to use the r button directly on the calculator. Informally you’ll have to talk about H0 and H1 and a significance test. To find the equation of regression lines using the method of least squares Interpret the values obtained for the gradient and intercept of the regression line Plot a regression line on a scatter diagram and use it for predictive purposes Calculate residuals and use them to check the fit of a regression line or to improve predictions. S1 To identify mutually exclusive and independent events. To apply the addition law P(AB)=P(A)+P(B)- P(AB) To apply the multiplication law P(AB)=P(A)P(B/A) =P(B)P(A/B) and to independent events to apply the rule P(AB)=P(A)P(B). Solve simple probability problems using tree diagrams or laws of probability. To recognise when to use the binomial distribution To state any assumptions necessary to use the binomial distribution To apply the binomial distribution to a variety of problems. To know the mean, variance and standard deviation of a binomial distribution To understand the concepts of a continuous distribution Understand the properties of normal distributions S1 6 S1 Chap 8 Only y on x line needs to be looked at. Encourage the use of the calculator to obtain the gradient and intercept. Emphasise that extending a line to forecast in the future (extrapolation) is not always reliable. 2 Give several A level questions for practice. TEST 4. Probability 5. Binomial Distribution 6. Normal Distribution To transform to standardised normal distribution and to use tables to calculate probabilities Use tables of percentage points of the normal distribution To find an unknown mean and/or standard deviation of a normal distribution. 8 S1 Chap 3 (Craw Exercises 3a,3b,3d,3g) S1 S1 5 S1 Chap 4 Students doing the course who have only done Intermediate Maths at GCSE will not be familiar with calculating with probabilities knowing when to add or subtract. On S1 only simple probabilities will be set that can be solved by counting equally likely outcomes and/or the use of tree diagrams or frequency tables. n (Craw Ex 5a,5b,5c) Use of x notation is required Students need to calculate probabilities using the formula and by using tables. 0.5 S1 P.81 i.e. area under the curve = 1, mustn’t take negative values etc. 0.5 S1 P.93 i.e. shape, symmetry and area properties, knowledge that approx 2/3 of the observations lie within and equivalent results. S1 Chap 5 Rounding z values to 2 dp is acceptable. 7 (Craw Ex 7a – 7g) i.e. given the probability go backwards to get the z value. Students may need to solve two simultaneous equations. 7. Central Limit Theorem 8. Confidence Intervals To understand the terms population and sample To know that unbiased estimates of the population mean and variance are x and S2. To understand what is mean’t by the distribution of the sample mean To find probabilities involving sample means via knowledge of the Central Limit Theorem. S1 To calculate a confidence interval for the mean of a normal distribution with a known variance To calculate a confidence interval for the mean of any distribution from a large sample using a normal distribution. To be able to make inferences from confidence intervals. S1 To understand the concepts of trend, seasonal variation, short term and random variation. Use moving averages to estimate seasonal effects. Make forecasts by extrapolating the trend and where appropriate applying a seasonal effect. Modify forecasts where appropriate to allow for short term variation. To define simple (without replacement) and unrestricted (with replacement) random samples. To use random numbers from tables or calculators to generate random samples. To define stratified, cluster, quota and systematic samples To find the expected value, standard deviation and variance of discrete random variables To apply and interpret the above in real world situations Knowledge of the conditions necessary for a Poisson distribution To model a real world situation using a Poisson distribution Top use tables of the Poisson distribution To use the mean and variance of the Poisson distribution To have knowledge of and use the distribution of the sum of independent Poisson distributions. S2 2 S1 Ex 5j (Craw Ex 8f) Use the terms ‘parameter’ and ‘statistic’ when referring to population and sample. To include the standard error of the sample mean n and it’s estimator S . n i.e. using the normal distribution as an approximation to the sampling distribution of the mean of a large sample from any distribution. 3-4 S1 Chap 6 Where variances are known and unknown. Based on whether a calculated confidence interval includes or does not include a ‘hypothesised’ mean value. TEST 9. Time series analysis 10. Sampling 11. Discrete probability distributions 12. Poisson Distribution 3-4 S2 Chap 1 Could set this topic as one where groups study the chapter and present it to the class. Students may need to use regression to estimate trend. Students need to understand that forecasts are projections of past patterns and should be treated with caution. S2 2-3 S2 Chap 2 Most of the notes could be on a sheet for pupils. Advantages and disadvantages of the different methods of sampling are needed. S2 3 S4 Chapter 1 (More in Craw Ex 4a – 4d) S2 4 Use of E(X) = x. P(X=x) E(g(X) = g(x). P(X=x) i.e. E(X2) = x2 . P(X=x) Var(X) = E((X-E(X))2 = E(X2) – ((E(X))2. S1 – Edition 1 Ex 6a and 6b. Evaluation of probabilities using the formula is not needed. Only need to teach calculating probabilities using tables. (Craw Ex 5i and 5m) For the questions in both textbooks you will need to check that all questions can be done just using tables before you set them. Page 122 13. Hypothesis tests for the mean 14. Contingency tables 15. Distribution free methods (Non Parametric tests) To define a null and alternative hypothesis and significance level of a hypothesis test. To construct a critical region and to understand whether to use a 1 or 2 tailed test. Have an understanding of the concepts of Type 1 and Type 2 errors. To test a hypothesis about a population mean based on :1) a sample from a normal distribution with known standard deviation. 2) A large sample from an unspecified distribution To analyse contingency tables using the 2 distribution To recognise conditions under which this analysis is valid To combine classes in a contingency table to ensure expected values are over 5. To apply Yates correction when dealing with a 2x2 table To understand what is meant by a non parametric test 1. Tests of average To carry out a sign test (for medians) To carry out a Wilcoxon signed rank test for medians/means 2. Analysis of paired samples Use sign test and Wilcoxon signed rank test to analyse results of a paired comparison. Understand what is meant by control and experimental group; appreciate why blind and double blind trials are used; to understand the terms experimental error, bias, replication and randomisation. 3. Two independent samples To carry out a Mann Whitney U test on data collected as two unpaired samples 4. More than two independent samples Use Kruskal Wallis test to test the hypothesis that more than 2 independent samples come from identical populations. S2 4 S3 Chap 2 (and S4 Chap 3) A Type 1 error is the probability of rejecting H0 when it is actually true A Type 2 error is the probability of accepting H0 when it is false. Questions requiring you to calculate a Type 2 error will not be set. S4 Chap 3 Students must appreciate the need for random samples. S4 Chap 4 Ex 4a S3 4 S4 Chap 5 (Craw Ex 11c) S3 3 S3 Chap 4 2-3 S3 Chap 5 2 S3 Chap 6 2 Hopefully a handout from the board! (There is a question on the Specimen Paper) Wilcoxon signed rank test assumes the distribution is symmetrical and consequently that the mean and median are the same. Questions requiring choice between the sign test, Wilcoxon signed rank test and the z test from Module S2 may be set. Hypothesis to be tested is that the 2 independent samples come from normal populations