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Pemodelan Kualitas Proses Kode Matakuliah: I0092 – Statistik Pengendalian Kualitas Pertemuan : 2.

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Presentation on theme: "Pemodelan Kualitas Proses Kode Matakuliah: I0092 – Statistik Pengendalian Kualitas Pertemuan : 2."— Presentation transcript:

1 Pemodelan Kualitas Proses Kode Matakuliah: I0092 – Statistik Pengendalian Kualitas Pertemuan : 2

2 2 Learning Objectives

3 3 Easy to find percentiles of the data; see page 43 Stem-and-Leaf Display

4 4 Also called a run chart Marginal plot produced by MINITAB Plot of Data in Time Order

5 5 Group values of the variable into bins, then count the number of observations that fall into each bin Plot frequency (or relative frequency) versus the values of the variable Histograms – Useful for large data sets

6 6 Histogram for discrete data

7 7

8 8 Numerical Summary of Data

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10 10

11 11 The Box Plot (or Box-and-Whisker Plot)

12 12 Comparative Box Plots

13 13 Probability Distributions

14 14

15 15 Will see many examples in the text Sometimes called a probability mass function Sometimes called a probability density function

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23 23 The Hypergeometric Distribution

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25 25 Basis is in Bernoulli trials The random variable x is the number of successes out of n Bernoulli trials with constant probability of success p on each trial The Binomial Distribution

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29 29 Frequently used as a model for count data The Poisson Distribution

30 30

31 31 The random variable x is the number of Bernoulli trials upon which the rth success occurs The Pascal Distribution

32 32 When r = 1 the Pascal distribution is known as the geometric distribution The geometric distribution has many useful applications in SQC

33 33 The Normal Distribution

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37 37 Original normal distribution Standard normal distribution

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39 39

40 40 Practical interpretation – the sum of independent random variables is approximately normally distributed regardless of the distribution of each individual random variable in the sum

41 41 The Lognormal Distribution

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43 43

44 44 The Exponential Distribution

45 45 Relationship between the Poisson and exponential distributions

46 46 The Gamma Distribution

47 47 The gamma distribution has many applications in reliability engineering; see Example 2-121, text page 71 When r is an integer, the gamma distribution is the result of summing r independently and identically exponential random variables each with parameter λ

48 48 The Weibull Distribution

49 49 When β = 1, the Weibull distribution reduces to the exponential distribution

50 50 Determining if a sample of data might reasonably be assumed to come from a specific distribution Probability plots are available for various distributions Easy to construct with computer software (MINITAB) Subjective interpretation

51 51 Normal Probability Plot

52 52

53 53 Other Probability Plots What is a reasonable choice as a probability model for these data?

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