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Title: Introduction to Probability and Statistics Eleventh Edition Author: Valued Gateway Client Last modified by: user Created Date: 4/23/2002 3:30:55 AM – PowerPoint PPT presentation

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Title: Statistik bagi sains gunaan


1
Statistik bagi sains gunaan
  • MTH3003 PJJ
  • SEM I 2015/2016

2
Assessment
  • ASSIGNMENT 25
  • Assignment 1 (10)
  • Assignment 2 (15)
  • Mid exam 30
  • Part A (Objective)
  • Part B (Subjective)
  • Final Exam 40
  • Part A (Objective)
  • Part B (Subjective - Short)
  • Part C (Subjective Long)

3
Chapter 1Describing Data with Graphs
  • Definition
  • Graphing

4
Chapter 2Describing Data with Numerical Measures
  • MEASURES OF CENTER- Arithmetic Mean or
    Average- Median- ModeGroup and ungrouped
    data

5
Measures of Variability
  • Range
  • Interquartile Range
  • Variance
  • Standard Deviation
  • Group an ungrouped data

6
Box plot
  • interpret
  • Calculate
  • Q1, Q2 and Q3, IQR, Upper fence, lower fence,
    outlier

7
Interquartiles Range (IQR Q3 Q1)
  • The lower and upper quartiles (Q1 and Q3), can be
    calculated as follows
  • The position of Q1 is
  • The position of Q3 is

once the measurements have been ordered. If the
positions are not integers, find the quartiles by
interpolation.
8
Example
  • The prices () of 18 brands of walking shoes
  • 60 65 65 65 68 68 70 70
  • 70 70 70 70 74 75 75 90 95

Position of Q1 0.25(18 1) 4.75 Position of
Q3 0.75(18 1) 14.25
9
Chapter 3Probability and Probability
Distributions
  • Basic concept
  • The probability of an event - how to find prob
  • Counting rules
  • Calculate probabilities

10
Calculate probabilities
  • Event Relations Union, Intersection, Complement
  • Calculating Probabilities for
  • Unions
  • The Additive Rule for Unions
  • A Special Case Mutually Exclusive
  • Complements
  • Intersections
  • Independent and Dependent Events
  • Conditional Probabilities
  • The Multiplicative Rule for Intersections

11
Chapter 4RANDOM VARIABLES
  • Probability Distributions forDiscrete Random
    Variables
  • Properties for Discrete Random Variables
  • Expected Value and Variance

12
Properties for Discrete Random Variables
  • The properties for a discrete probability
    function (PMF) are
  • Cumulative Distribution Function (CDF)

13
Example
  • Toss a fair coin three times and define X
    number of heads.

x 3 2 2 2 1 1 1 0
X p(x)
0 1/8
1 3/8
2 3/8
3 1/8
P(X 0) 1/8 P(X 1) 3/8 P(X 2)
3/8 P(X 3) 1/8
1/8 1/8 1/8 1/8 1/8 1/8 1/8 1/8
HHH
HHT
HTH
THH
HTT
THT
TTH
TTT
14
Chapter 5Several Useful Discrete Distributions
  • Discrete distributions
  • The binomial distribution
  • The Poisson distribution
  • The hypergeometric distribution
  • To find probabilities
  • formula
  • cumulative table

15
Key Concepts
  • I. The Binomial Random Variable
  • 1. Five characteristics n identical independent
    trials, each resulting in either success S or
    failure F probability of success is p and
    remains constant from trial to trial and x is
    the number of successes in n trials.
  • 2. Calculating binomial probabilities
  • a. Formula
  • b. Cumulative binomial tables
  • 3. Mean of the binomial random variable m np
  • 4. Variance and standard deviation s 2 npq
    and

16
Example
A marksman hits a target 80 of the time. He
fires five shots at the target. What is the
probability that exactly 3 shots hit the target?
P(x 3) P(x ? 3) P(x ? 2) .263 - .058
.205
Check from formula P(x 3) .205
17
Key Concepts
  • II. The Poisson Random Variable
  • 1. The number of events that occur in a period
    of time or space, during which an average of m
    such events are expected to occur. Examples
  • The number of calls received by a switchboard
    during a given period of time.
  • The number of machine breakdowns in a day
  • 2. Calculating Poisson probabilities
  • a. Formula
  • b. Cumulative Poisson tables
  • 3. Mean of the Poisson random variable E(x) m
  • 4. Variance and standard deviation s 2 m and

18
Example
 
19
Key Concepts
  • III. The Hypergeometric Random Variable
  • 1. The number of successes in a sample of size n
    from a finite population containing M
    successes and N - M failures
  • 2. Formula for the probability of k successes in
    n trials
  • 3. Mean of the hypergeometric random variable
  • 4. Variance and standard deviation

20
Example
A package of 8 AA batteries contains 2 batteries
that are defective. A student randomly selects
four batteries and replaces the batteries in his
calculator. What is the probability that all four
batteries work?
Success working battery N 8 M 6 n 4
21
Chapter 6The normal probability distribution
  • The Standard Normal Distribution
  • 1. The normal random variable z has mean 0 and
    standard deviation 1.
  • 2. Any normal random variable x can be
    transformed to a standard normal random
    variable using
  • 3. Convert necessary values of x to z.
  • 4. Use Normal Table to compute standard normal
    probabilities.

22
Example
The weights of packages of ground beef are
normally distributed with mean 1 pound and
standard deviation 0.1. What is the probability
that a randomly selected package weighs between
0.80 and 0.85 pounds?
23
The Normal Approximation to the Binomial
  • We can calculate binomial probabilities using
  • The binomial formula
  • The cumulative binomial tables
  • 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.

24
Approximating the Binomial
  • Make sure to include the entire rectangle for the
    values of x in the interval of interest. That is,
    correct the value of x by 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!

25
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!
26
Example
27
Chapter 7Sampling Distributions
  • Sampling Distributions
  • Sampling distribution of the sample mean
  • Sampling distribution of a sample proportion
  • Finding Probabilities for the
  • Sample Mean
  • Sample Proportion

28
The Sampling Distribution of the Sample Mean
  • A random sample of size n is selected from a
    population with mean m and standard deviation s.
  • The sampling distribution of the sample mean
    will have mean m and standard deviation
    .
  • If the original population is normal, the
    sampling distribution will be normal for any
    sample size.
  • If the original population is non normal, the
    sampling distribution will be normal when n is
    large.

The standard deviation of x-bar is sometimes
called the STANDARD ERROR (SE).
29
Finding Probabilities for the Sample Mean
  • 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 Z Table.

Example A random sample of size n 16 from a
normal distribution with m 10 and s 8.
30
The Sampling Distribution of the Sample Proportion
The standard deviation of p-hat is sometimes
called the STANDARD ERROR (SE) of p-hat.
31
Finding Probabilities for the Sample Proportion
  • 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 Z Table.

If both np gt 5 and np(1-p) gt 5
Example A random sample of size n 100 from a
binomial population with p 0.4.
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