BASIC STATISTICAL TOOLS. What is Statistics Statistics refers to the collection, presentation, ...

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BASIC STATISTICAL TOOLS

What is Statistics

Statistics refers to the collection, presentation, analysis, and utilization of numerical data

to make inferences and reach decisions in the face of uncertainty in economics, business, and other social and physical sciences.

Statistics is subdivided into descriptive and inferential.

Descriptive statistics

Descriptive statistics : Methods of organizing, summarizing, and presenting data in an informative way.

EXAMPLE : According to Consumer Reports, Whirlpool washing machine owners reported 9 problems per 100 machines during 1995. The statistic 9 describes the number of problems out of every 100 machines.

Inferential statistics

Inferential statistics is the process of reaching generalizations about the whole (called the population) by examining a portion (called the sample).

A population is a collection of all possible individuals, objects, or measurements of interest.

A sample is a portion, or part, of the population of interest.

EXAMPLE

Suppose that we have data on the incomes of 1000 U.S. families. This body of data can be summarized by finding the average family income and the spread of these family incomes above and below the average. The data also can be described by constructing a table, chart, or graph of the number or proportion of families in each income class. This is descriptive statistics.

If these 1000 families are representative of all U.S. families, we can then estimate and test hypotheses about the average family income in the United States as a whole. This is statistical inference.

TYPES OF DATA

There are three types of data that are generally available for empirical analysis.

1. Time series2. Cross-sectional3. Pooled (A combination of time series and

cross-sectional)

TIME SERIES DATA

Collected over a period of time, such as the data on:

GDP, employment, unemployment, money supply, government deficit.

Such data may be collected at regular intervals:Daily (e.g. Stock prices)Weekly (e.g. Money supply)Monthly (e.g. Unemployment rate)Quarterly (e.g. GDP)Annually (e.g. Government budget)This is called the frequency of the data.

TIME SERIES DATA

These data may be quantitative in nature (e.g. Prices, income, money supply)

Or qualitative in nature (e.g. Male or female, employed or unemployed, married or unmarried, white or black)

Qualitative variables are also called dummy or categorical variables.

CROSS-SECTIONAL DATA

These are data on one or more variables collected at one point in time

For example GDP of European Union Countries in 2010.

Government budget deficit of BRIC countries.

POOLED DATA

In Pooled data we have elements of both time series and cross-sectional data.

For example Unemployment rate for 10 countries for a

period of 20 years. (Pooled data)Data on the unemployment rate for each

country for the 20 year period (Time series)Data on the unemployment rate for the 10

countries for any single year (Cross-sectional)

Frequency Distribution

Frequency distribution: A grouping of data into categories showing the number of observations in each category.

The number of classes is usually between 5 and 15.

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Frequency Distribution

Class mark (midpoint): A point that divides a class into two equal parts. This is the average between the upper and lower class limits.

Class interval: For a frequency distribution having classes of the same size, the class interval is obtained by subtracting the lower limit of a class from the lower limit of the next class.

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Frequency Distribution

Class mark (midpoint): A point that divides a class into two equal parts. This is the average between the upper and lower class limits.

Class interval: For a frequency distribution having classes of the same size, the class interval is obtained by subtracting the lower limit of a class from the lower limit of the next class.

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EXAMPLE 1

Dr. Tillman is the dean of the school of business and wishes to determine the amount of studying business school students do. He selects a random sample of 30 students and determines the number of hours each student studies per week:

15.0, 23.7, 19.7, 15.4, 18.3, 23.0, 14.2, 20.8, 13.5, 20.7, 17.4, 18.6, 12.9, 20.3, 13.7, 21.4, 18.3, 29.8, 17.1, 18.9, 10.3, 26.1, 15.7, 14.0, 17.8, 33.8, 23.2, 12.9, 27.1, 16.6.

Organize the data into a frequency distribution.

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EXAMPLE 1 continued

Hours studying Frequency, f 8-12 1 13-17 12 18-22 10 23-27 5 28-32 1 33-37 1

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Consider the classes 8-12 and 13-17. The class marks are 10 and 15. The class interval is 5 (13-8).

Suggestions on Constructing a Frequency Distribution

The class intervals used in the frequency distribution should be equal.

Determine a suggested class interval by using the formula: i = (highest value-lowest value)/number of classes.

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Suggestions on Constructing a Frequency Distribution

Use the computed suggested class interval to construct the frequency distribution. Note: this is a suggested class interval; if the computed class interval is 97, it may be better to use 100.

Count the number of values in each class.

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Relative Frequency Distribution

The relative frequency of a class is obtained by dividing the class frequency by the total frequency.

The sum of the relative frequencies equals 1.

Frequency,f

RelativeFrequency

8-12 1 1/30=.0333

13-17 12 12/30=.400

18-22 10 10/30=.333

23-27 5 5/30=.1667

28-32 1 1/30=.0333

33-37 1 1/30=.0333

TOTAL 30 30/30=1

T

Hours

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EXAMPLE 2

The cans in a sample of 20 cans of fruit contain net weights of fruit ranging from 19.3 to 20.9 oz, as given in the Table. If we want to group these data into 6 classes, we get class intervals of 0.3 oz

[21,0 – 19,2/6 ]= 0,3 oz. The weights given in the Table can be arranged into the frequency distributions given in the next Table.

Frequency Distribution of Weights

Stem-and-Leaf Displays

Stem-and-Leaf Display: A statistical technique for displaying a set of data. Each numerical value is divided into two parts: the leading digits become the stem and the trailing digits the leaf.

Note: An advantage of the stem-and-leaf display over a frequency distribution is we do not lose the identity of each observation.

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EXAMPLE 3

Colin achieved the following scores on his twelve accounting quizzes this semester: 86, 79, 92, 84, 69, 88, 91, 83, 96, 78, 82, 85. Construct a stem-and-leaf chart for the data.

stem leaf

6 9

7 8 9

8 2 3 4 5 6 8

9 1 2 6

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Graphic Representation of a Frequency Distribution

The three commonly used graphic forms are histograms, frequency polygons, and cumulative frequency distribution.Histogram: A graph in which the classes are

marked on the horizontal axis and the class frequencies on the vertical axis. The class frequencies are represented by the heights of the bars and the bars are drawn adjacent to each other.

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Histogram for Hours Spent Studying

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Hours spent studying

Fre

qu

ency

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Histogram of Weights

Frequency Polygon

A frequency polygon consists of line segments connecting the points formed by the class midpoint and the class frequency.

Frequency Polygon for Hours Spent Studying

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Hours spent studying

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Cumulative Frequency Distribution

A cumulative frequency distribution is used to determine how many or what proportion of the data values are below or above a certain value.

Cumulative Frequency Distribution For Hours Studying

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Hours Spent Studying

Frequency

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Bar Chart

A bar chart can be used to depict any of the levels of measurement (nominal, ordinal, interval, or ratio).

EXAMPLE 3: Construct a bar chart for the number of unemployed people per 100,000 population for selected cities.

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EXAMPLE continued

City Number of unemployedper 100,000 population

Atlanta, GA 7300Boston, MA 5400Chicago, IL 6700

Los Angeles, CA 8900New York, NY 8200

Washington, D.C. 8900

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Bar Chart for the Unemployment Data

7300

5400

6700

89008200

8900

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Cities

# u

nem

plo

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AtlantaBostonChicagoLos AngelesNew YorkWashington

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Pie Chart

A pie chart is especially useful in displaying a relative frequency distribution. A circle is divided proportionally to the relative frequency and portions of the circle are allocated for the different groups.

EXAMPLE 4: A sample of 200 runners were asked to indicate their favorite type of running shoe.

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EXAMPLE continued

Draw a pie chart based on the following information.

Type of shoe # of runners

Nike 92

Adidas 49

Reebok 37

Asics 13

Other 9

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Pie Chart for Running Shoes

Nike

Adidas

ReebokAsics

Other

Nike

Adidas

ReebokAsics

Other

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MEASURES OF CENTRAL TENDENCY

Central tendency refers to the location of a distribution. The most important measures of central

tendency are (1) the mean, (2) the median, and (3) the mode.

The Mean

The Median

The median for ungrouped data is the value of the middle item when all the items are arranged in either ascending or descending order in terms of values:

where N refers to the number of items in the population (n for a sample).

The Mode

The mode is the value that occurs most frequently in the data set.

The mean is the most commonly used measure of central tendency. The mean, however, is affected by extreme values in the data set, while the median and the mode are not.

Other measures of central tendency are the weighted mean, the geometric mean, and the harmonic mean

EXAMPLE

A student received the following grades (measured from 0 to 10) on the 10 quizzes he took during a semester: 6, 7, 6, 8, 5, 7, 6, 9, 10, and 6.

Find the mean, median and mode for the population on the 10 quizzes.

EXAMPLE

To find the median for the ungrouped data, we first arrange the 10 grades in ascending order: 5, 6, 6, 6, 6, 7, 7, 8, 9,10.

Then we find the grade of the (N+1)/2 or (10+1)/2= 5,5th item. Thus the median is the average of the 5th and 6th item in the array, or (6+7)/2=6,5

The mode for the ungrouped data is 6 (the value that occurs most frequently in the data set).

Example : Mean for Grouped Data

estimate the mean for the grouped data given in the Table below.

MEASURES OF DISPERSION

Dispersion refers to the variability or spread in the data. The most important measures of dispersion are (1) the average deviation,

(2) the variance, and (3) the standard deviation. We will measure these for populations and

samples,

Average deviation

The average deviation (AD), also called the mean absolute deviation (MAD), is given by

where the two vertical bars indicate the absolute value, or the values omitting the sign.

Variance

The population variance the Greek letter sigma squared) and the sample variance s2 for ungrouped data are given by

2

Standard deviation

The population standard deviation and sample standard deviation s are the positive square roots of their respective variances. For ungrouped data

EXAMPLE

Calculate the Average Deviation, Variance and Standart deviation by using the data for quiz grades.

EXAMPLE continued

SHAPE OF FREQUENCY DISTRIBUTIONS

The shape of a distribution refers to (1) its symmetry or lack of it (skewness) and (2) its peakedness (kurtosis).

Skewness

A distribution has zero skewness if it is symmetrical about its mean. For a symmetrical (unimodal) distribution, the mean, median, and mode are equal.

A distribution is positively skewed if the right tail is longer. Then, mean > median > mode.

A distribution is negatively skewed if the left tail is longer. Then, mode > median > mean

Kurtosis

A peaked curve is called leptokurtic, as opposed to a flat one (platykurtic), relative to one that is mesokurtic.

The kurtosis for a mesokurtic curve is 3.

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500 1000 1500 2000 2500

Series: X2Sample 1960 1982Observations 23

Mean 1035.065Median 843.3000Maximum 2478.700Minimum 397.5000Std. Dev. 617.8470Skewness 0.962455Kurtosis 2.818835

Jarque-Bera 3.582342Probability 0.166765

correlation coefficient

A correlation coefficient is a number that summarizes the degree to which two variables move together.

Correlations range in value from -1 to +1. When the coefficient is 1 (either -1 or +1), the two variables are perfectly "in sync" with each other - a unit change in one is accompanied by a unit change in the other.

If the variables are moving in opposite directions (one increases as the other decreases), it is a negative relationship.

correlation coefficient

We indicate a negative relationship by using a minus sign before the coefficient.

If the variables are moving in the same direction (both are increasing or both are decreasing together), we denote that by reporting the coefficient as a positive number.

When the coefficient is 0, there is no relationship between the two variables.

Typically, coefficients fall somewhere between no relationship (0) and a perfect relationship (+/—1).

Correlation Matrix

The scatterplot

The scatterplot is the visual complement for the correlation coefficient. It visually displays whether there's any connection between the movements of two variables.

One variable is displayed on the X axis while the other variable is displayed on the Y axis.

The values on either axis might be expressed in absolute numbers, percentages, rates, or scores.

Scatterplot

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X2

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X3 vs. X2

Time Series Graph

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X4 X5