chapter 1 basic statistics statistics in engineering collecting engineering data data summary...
TRANSCRIPT
CHAPTER 1
Basic Statistics Statistics in Engineering Collecting Engineering Data Data Summary and Presentation Probability Distributions
- Discrete Probability Distribution- Continuous Probability
Distribution Sampling Distributions of the Mean
and Proportion
STATISTICS IN ENGINEERINGStatistics is the area of science that deals with collection, organization, analysis, and interpretation of data.
It also deals with methods and techniques that can be used to draw conclusions about the characteristics of a large number of data points, commonly called a population.By using a smaller subset of the entire data called sample.
Because many aspects of engineering practice involve working with data, obviously some knowledge of statistics is important to an engineer.
Engineers apply physical and chemical laws and mathematics to design, develop, test, and supervise various products and services.
Engineers perform tests to learn how things behave under stress, and at what point they might fail.
Specifically, statistical techniques can be a powerful aid in designing new products and systems, improving existing designs, and improving production process.
As engineers perform experiments, they collect data that can be used to explain relationships better and to reveal information about the quality of products and services they provide.
Collecting Engineering Data Direct observation
The simplest method of obtaining data.
Advantage: relatively inexpensive
Drawbacks: difficult to produce useful information since it does not consider all aspects regarding the issues.
ExperimentsMore expensive methods but better way to produce data
Data produced are called experimental
SurveysMost familiar methods of data collection
Depends on the response rate
Personal InterviewHas the advantage of having higher expected response rateFewer incorrect respondents.
Data PresentationData can be summarized or presented in two ways:
1. Tabular2. Charts/graphs.
The presentations usually depends on the type (nature) of data whether the data is in qualitative (such as gender and ethnic group) or quantitative (such as income and CGPA).
Data Presentation of Qualitative DataTabular presentation for qualitative data is usually in the form of frequency table that is a table represents the number of times the observation occurs in the data.The most popular charts for qualitative data are:
3. bar chart/column chart;4. pie chart; and5. line chart.
Example:
frequency table
Bar Chart: used to display the frequency distribution in the graphical form.
Observation FrequencyMalay 33Chinese9Indian 6Others 2
Pie Chart: used to display the frequency distribution. It displays the ratio of the observations
Line chart: used to display the trend of observations. It is a very popular display for the data which represent time.
Malay
Chinese
Indian
Others
Jan Feb Mar Apr May Jun Jul Aug Sep Oct Nov Dec
10 7 5 10 39 7 260 316 142 11 4 9
Tabular presentation for quantitative data is usually in the form of frequency distribution that is a table represent the frequency of the observation that fall inside some specific classes (intervals)
There are few graphs available for the graphical presentation of the quantitative data. The most popular graphs are:1. histogram;2. frequency polygon; and3. ogive.
Frequency Distribution
When summarizing large quantities of raw data, it is often useful to distribute the data into classes. There are no specifics rules to determine the classes size and the number of individual belonging to each class.
Example: Frequency DistributionCGPA (Class) Frequency
2.50 - 2.75 2
2.75 - 3.00 10
3.00 - 3.25 15
3.25 - 3.50 13
3.50 - 3.75 7
3.75 - 4.00 3
Histogram: Looks like the bar chart except that the horizontal axis represent the data which is quantitative in nature. There is no gap between the bars.
Frequency Polygon: looks like the line chart except that the horizontal axis represent the class mark of the data which is quantitative in nature.
Ogive: line graph with the horizontal axis represent the upper limit of the class interval while the vertical axis represent the cummulative frequencies.
Data SummarySummary statistics are used to summarize a set of
observations.
Two basic summary statistics are measures of central tendency and
measures of dispersion.
Measures of Central Tendency
Mean
Median
Mode
Measures of Dispersion
Range
Variance
Standard deviation
Measures of Central Tendency Mean
Mean of a sample is the sum of the sample data divided by the total number sample. Mean for ungroup data is given by:
Mean for group data is given by:
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Median: The middle value after the data is arranged from the lowest to the highest value. If the number of data is even, median is the average of the two middle values.
Mode: The value with the highest frequency in a data set.
*It is important to note that there can be more than one mode and if no number occurs more than once in the set, then there is no mode for that set of numbers.
Example->
Example: Ungrouped Data
CGPA(x) Frequency(f) fx
2.625 2 5.250
2.875 10 28.750
3.125 15 46.875
3.375 13 43.875
3.625 7 25.375
3.875 3 11.625
Total 50 161.750
Mean:
Median:(3.125+3.375)/2=3.25 Mode:3.125
1
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161.753.235
50
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Example: Grouped Data
Measures of Dispersion Range = Largest value – smallest value Variance: measures the variability (differences)
existing in a set of data. The variance for the ungrouped data:
The variance for the grouped data:
The positive square root of the variance is the standard deviation
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A large variance means that the individual scores (data) of the sample deviate a lot from the mean.
A small variance indicates the scores (data) deviate little from the mean.
Example: Ungrouped Data 7 , 6, 8, 5 , 9 ,4, 7 , 7 , 6, 6
Range = 9-4=5 Mean =
Variance=
Standard Deviation=
22 ( ) 18.5
2.05561 9
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Column1
Mean 6.5
Standard Error 0.453Median 6.5Mode 7
Standard Deviation 1.434
Sample Variance 2.056Kurtosis 0.239Skewness 0Range 5Minimum 4Maximum 9Sum 65Count 10
Using excel and click data analysis, choose descriptive statistics to get the data summary result.
Example: Grouped Datax f
4 10
3 12
2 8
1 6
0 4
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52 2
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2 2 2 2 2 2
, 2.45
1
10 4 12 3 8 2 6 1 4 0 40 2.45
391.69
1.69 1.30
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f xMean x
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f x nxVariance
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