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USING CLASSPAD Consider the shaded area in the diagram below. Find the area between the function , the normal to the curve at, the axis and the axis. NB The normal is the line perpendicular to the tangent. USING CLASSPAD 2 MATHEMATICS METHODS UNIT 4 ● The syllabus contains: ● Random Sampling - (7 hours) ● Sample proportion - (4 hours) ● Confidence Intervals for Proportion (9 hours) RANDOM NUMBERS 1 Mathematics / Year 8 / Statistics and Probability / Data representation and interpretation / ACMSP293 Content Description Explore the variation of means and proportions of random samples drawn from the same population Elaborations using sample properties to predict characteristics of the population RANDOM NUMBERS 2 ● What would be the result if you purchased 5 “Boost” bars ● Use a simulation to repeat the purchase 30 times RANDOM SAMPLING 1 ● On classpad enter rand ( ● What happened ● Define the rand ( function ● If you found 100 random numbers what would the histogram look like ? RANDOM SAMPLING 2 ● Expected histogram if selecting 100 pseudo random numbers. RANDOM SAMPLING 3 ● Enter 100 pseudo numbers into the calculator ● Draw a histogram of the result ● How did it compare with the expected histogram ● Recalculate the result RANDOM SAMPLING 4 ● Selected 10 pseudo numbers, added them together and repeated this experiment 30 times, what would you expect the histogram to look like ? Central Limit Theorem RANDOM SAMPLING 5 ● On the classpad enter rand () 8 ● What happened ? ● On the classpad enter int (rand () 8 + 1) ● What happened ? ● Draw a histogram obtained if a single die is rolled 120 times ● How many sixes would you expect if you rolled a single die 120 times ? SAMPLE PROPORTION ● A sample proportion is the ratio of the number of times a property occurs (e.g success) in a sample, divided by the number in the sample. ● The sample proportion is denoted by 𝑝 (read as 𝑝 hat) 𝑝 = ● 𝑥 𝑛 (where 𝑥 = number of successes and 𝑛 = sample size) Example From a sample of 60 students, 3 had red hair. What is the sample proportion of red hair for the students ? 𝑝 = 𝑥 𝑛 = 3 = 0.05 60 SAMPLE PROPORTION 2 Sampling Distributions Example 1 Select a smartie from a box containing 10 smarties, 3 of which are blue. Replace the smartie and repeat the experiment 10 times. Record the number of blue smarties for the 10 experiments. ● This is a Bernoulli trial. ● Record the theoretical probabilities on the table. X 0 1 2 3 4 5 6 7 8 9 10 𝑝 0 10 1 10 2 10 3 10 4 10 5 10 6 10 7 10 8 10 9 10 10 10 P(𝑃 = 𝑝) SAMPLING PROPORTION 3 Sampling Binomial Distribution ● To find the theoretical probabilities P (x=n) = 10Cn (0.3)n (0.7)10-n ● Method 1 – Using main ● Method 2 – Using Statistics ● Method 3 – Using graph & table SAMPLING PROPORTION 4 ● Lets do example 1 as simulation ● Repeat the simulation 30 times. CONFIDENCE INTERVALS 1 ● This 𝑝 is one value of a population of all of the possible values in the 𝑃 population – the proportion of blue smarties in every 380 g bag. ● So what is the actual proportion of blue smarties ? ● For large random samples the Central Limit Theorem tells us that the sample estimate 𝑝 will lie on a approximate normal distribution of the estimates from all possible samples. ● So we know how many standard deviations from the centre of the normal distribution encompass 90% of the distribution. CONFIDENCE INTERVAL 2 Sampling for unknown Population Proportions ● We will consider the proportion of blue smarties in the population of all smarties produced. ● The 380 g bag contained 352 smarties, of which 43 were blue ● For this sample 𝑝 = 𝑥 𝑛 = 43 352 = 0.12 CONFIDENCE INTERVAL 3 ● We can now find the 90% confidence interval ● ( 𝑝 ) 1.64 ● 0.092 ≤ 𝑝 ≤ 0.148 ● This answer can be found using the classpad 𝑝 1−𝑝 𝑛 ( to 3 decimal places ) CONFIDENCE INTERVALS 4 ● What does this mean ● Our result of 𝑝 0.12 could be the worst case scenario or the best case scenario. 0.92 1.2 1.48 CONFIDENCE INTERVAL 5 ● The margin of error = zc ● Error = 0.028 estimate – error 𝑝 1−𝑝 𝑛 estimate estimate + error Confidence interval 0.92 ● 1.2 1.48 This provides an interval estimate for the true population value and we are 90% confident that the population proportion 𝑝 =0.12 lies in this interval.