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Pertemuan 12 Aplikasi Sebaran Normal

Pertemuan 12 Aplikasi Sebaran Normal. Matakuliah : I0284 - Statistika Tahun : 2005 Versi : Revisi. Learning Outcomes. Pada akhir pertemuan ini, diharapkan mahasiswa akan mampu : Mahasiswa akan dapat menghitung peluang Binomial dengan sebaran normal. Outline Materi.

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Pertemuan 12 Aplikasi Sebaran Normal

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  1. Pertemuan 12Aplikasi Sebaran Normal Matakuliah : I0284 - Statistika Tahun : 2005 Versi : Revisi

  2. Learning Outcomes Pada akhir pertemuan ini, diharapkan mahasiswa akan mampu : • Mahasiswa akan dapat menghitung peluang Binomial dengan sebaran normal.

  3. Outline Materi • Metode deskriptif untuk sebaran normal • pendekatan normal pada sebaran Binomial • Pendekatan normal pada sebaran poisson • Koreksi kekontinuan

  4. The Normal Approximation to the Binomial • We can calculate binomial probabilities using • The binomial formula • The cumulative binomial tables • Do It Yourself! applets • When n is large, and p is not too close to zero or one, areas under the normal curve with mean np and variance npq can be used to approximate binomial probabilities.

  5. Approximating the Binomial • Make sure to include the entire rectangle for the values of x in the interval of interest. This is called the continuity correction. • Standardize the values of x using • Make sure that np and nq are both greater than 5 to avoid inaccurate approximations!

  6. Example Suppose x is a binomial random variable with n = 30 and p = .4. Using the normal approximation to find P(x 10). n = 30 p = .4 q = .6 np = 12 nq = 18 The normal approximation is ok!

  7. Example Applet

  8. Example A production line produces AA batteries with a reliability rate of 95%. A sample of n = 200 batteries is selected. Find the probability that at least 195 of the batteries work. The normal approximation is ok! Success = working battery n = 200 p = .95 np = 190 nq = 10

  9. Central Limit Theorem: If random samples of n observations are drawn from a nonnormal population with finite m and standard deviation s, then, when n is large, the sampling distribution of the sample mean is approximately normally distributed, with mean m and standard deviation . The approximation becomes more accurate as n becomes large. Sampling Distributions • Sampling distributions for statistics can be • Approximated with simulation techniques • Derived using mathematical theorems • The Central Limit Theorem is one such theorem.

  10. Example Applet Toss a fair coin n = 1 time. The distribution of x the number on the upper face is flat or uniform.

  11. Example Applet Toss a fair coin n = 2 time. The distribution of x the average number on the two upper faces is mound-shaped.

  12. Example Applet Toss a fair coin n = 3 time. The distribution of x the average number on the two upper faces is approximately normal.

  13. The Central Limit Theorem also implies that the sum of n measurements is approximately normal with mean nm and standard deviation . • Many statistics that are used for statistical inference are sums or averages of sample measurements. • When n is large, these statistics will have approximately normal distributions. • This will allow us to describe their behavior and evaluate the reliability of our inferences. Why is this Important?

  14. How Large is Large? If the sample is normal, then the sampling distribution of will also be normal, no matter what the sample size. When the sample population is approximately symmetric, the distribution becomes approximately normal for relatively small values of n. (ex. n=3 in dice example) When the sample population is skewed, the sample size must be at least 30 before the sampling distribution of becomes approximately normal.

  15. The Central Limit Theorem can be used to conclude that the binomial random variable x is approximately normal when n is large, with mean npand standard deviation . • The sample proportion, is simply a rescaling of the binomial random variable x, dividing it by n. • From the Central Limit Theorem, the sampling distribution of will also be approximately normal, with a rescaled mean and standard deviation. The Sampling Distribution of the Sample Proportion

  16. A random sampleof size n is selected from a binomial population with parameter p. • The sampling distribution of the sample proportion, • will have mean p and standard deviation • If n is large, and p is not too close to zero or one, the sampling distribution of will be approximately normal. The Sampling Distribution of the Sample Proportion The standard deviation of p-hat is sometimes called the STANDARD ERROR (SE) of p-hat.

  17. If the sampling distribution of is normal or approximately normal,standardize or rescale the interval of interest in terms of • Find the appropriate area using Table 3. Finding Probabilities for the Sample Proportion Example: A random sample of size n = 100 from a binomial population with p = .4.

  18. Example The soda bottler in the previous example claims that only 5% of the soda cans are underfilled. A quality control technician randomly samples 200 cans of soda. What is the probability that more than 10% of the cans are underfilled? n = 200 S: underfilled can p = P(S) = .05 q = .95 np = 10 nq = 190 This would be very unusual, if indeed p = .05! OK to use the normal approximation

  19. Selamat Belajar Semoga Sukses.

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