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C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 1
Chapter 1:
Describing Data
Lesson 4: Data Sources, Variables (and Types of Variables) and
Measurement Scales
TIME FRAME: 1 hour session
OVERVIEW OF LESSON
In this activity, students will be given lectures (and assessments) regarding the typical sources of
data (both primary data sources such as surveys and censuses, direct observations experiments,
as well as secondary data sources such as survey reports, books, magazines, blogs), variables, the
general classifications of variables (quantitative and qualitative), and the different measurement
scales for data.
LEARNING OUTCOME(S): At the end of the lesson, the learner is able to
 list various data sources;
 define and distinguish between qualitative and quantitative variables, and between
discrete and continuous variables (that are quantitative); and,
 identify different scales of measurement.
LESSON OUTLINE:
1. Introduction/Motivation
2. Lesson Proper: Sources of Data; Types of Data Sources; and Variables (including Broad
Classifications of Variables)
3. Simulation Activity : Analysis of Measurement Scales
4. Advanced Lesson ( For Enrichment): Types of Data by Time Dependence
DEVELOPMENT OF THE LESSON
(A)Introduction/Motivation
Begin by ask students to recall learnings in past lessons that
 “data” (records collected from experiments, observations, experience, surveys and
administrative forms) have variability,
 there are various ways of generating measurements/data and issues behind these
measurement, and
 we can summarize this variability (or distribution) of data by way of graphs (pie
charts, bar charts, pictograms), or some descriptive summary numbers (such as
modes, and medians).
C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 2
Mention the importance of knowing the manner in which data are collected, as this will have
implications to the way data will be analyzed. Illustrate this point with the following
question:
 Is 301 smaller than 302? While numerically, 301 is smaller than 302, but the
numbers may mean room numbers (and room 301 might, in fact, be bigger than room
302). The numbers 301and 302 may also mean classification codes (say for
occupations, or for geographic locations), in which case, there may not be a meaning
for orders in these codes (that is, one number may not really be smaller than another).
(B) Lesson Proper
(1) Sources of Data
For 5 minutes, ask students to identify various types of sources of data. These may include:
 Experiments
 Direct observation (i.e., measuring amount of land owned by farmer)
 Surveys (sample survey or census)
o Face-to-face interviews
o Telephone surveys
o Mail/e-mail/SMS/Online surveys
 Administrative records
 Internet (social media, search engines, etc.)
 Reports of surveys conducted, reports of administrative records
 News articles, blogs, facebook posts about survey reports
Ask students how they think the proportion of total land devoted to farming is obtained (there
can be a direct measurement of land, but this information can also be sourced from admin
data, or from a census or sample survey of farmers with their reported answers).
(2) Types of Data Sources
Suggest that all these data sources listed above can be classified into primary and secondary
sources. Ask students what differentiates primary data from secondary data.
Special Note: When data are collected, they may be gathered for purposes of answering a
research question. Primary data is collected first hand by a researcher directly from the
source of information, while secondary data are those acquired through existing records
(one step removed from the original source, usually describing, summarizing, analyzing,
evaluating, derived from, or based on primary source materials).
(3) Variables
C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 3
For 5 minutes, tell students to imagine that their seatmates are unknown to them. What
would be three questions they may want to ask other than their seatmate’s name, facebook
username, address, email address, and telephone number. Examples may be:
 What is your height?
 What province where you born in?
 What type of movies do you enjoy watching?
 How many are you in the family?
 How old is your mother?
Inform students that when units being studied (persons, families, companies, farms,
countries, events, objects) have properties or characteristics that takes on different values,
these properties or characteristics are called variables. For example, the height of a student is
a variable since the value of heights changes from student to student. Occasionally, a variable
can only assume one value, then it is called a constant. For instance, in a class of fifteen-year
olds, the age in years of students is constant.
Broad Classification of Variables
Mention to students that variables can be broadly classified as either quantitative or
qualitative, with the latter further classified into discrete and continuous types (see Figure 1).
(i) Qualitative variables express a categorical attribute, such as sex (male or female),
religion, marital status, region of residence, highest educational attainment.
Qualitative variables do not strictly take on numeric values (although we can have
numeric codes for them, e.g., for sex variable, 1 and 2 may refer to male, and female,
respectively). Qualitative data answer questions “what kind.” Sometimes, there is a
sense of ordering in qualitative data, e.g., income data grouped into high, middle and
low-income status. Data on sex or religiondo not have the sense of ordering, as there
is no such thing as a weaker or stronger sex, and a better or worse religion.
Qualitative variables are sometimes referred to as categorical variables.
(ii) Quantitative (otherwise called numerical) data, whose sizes are meaningful, answer
questions such as “how much” or “how many”. Quantitative variables have actual
units of measure. Examples of quantitative variables include the height, weight,
number of registered cars, household size, and total household expenditures/income
of survey respondents. Quantitative data may be further classified into:
a. Discrete data are those data that can be counted, e.g., the number of days for
cellphones to fail, the ages or survey respondents measured to the nearest year,
and the number of patients in a hospital. These data assume only (a finite or
infinitely) countable number of values.
C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 4
b. Continuous data are those that can be measured, e.g. the exact height of a survey
respondent and the exact volume of some liquid substance. The possible values
are uncountably infinite.
Special Note:
For quantitative data, arithmetical operations have some physical interpretation. One can add
301 and 302 if these have quantitative meanings, but if, as pointed out, earlier, they refer to
room numbers, then adding these numbers does not make any sense. Even though a variable
may take numerical values, it does not make the corresponding variable quantitative! The
issue is whether performing arithmetical operations on these data would make any sense. It
would certainly not make sense to sum two zip codes or multiply two room numbers.
(C)Simulation Activity
Tell students to imagine that they are psychologists who want to study whether eating
breakfast will help kids focus in school. (Perhaps students who eat a healthy breakfast will do
best on a quiz, students who eat an unhealthy breakfast will get an average performance, and
students who do not eat anything for breakfast will do the worst on a quiz). How to being the
study?
Ask students to identify variables that need to be studied here. They are:
VARIABLES
Qualitative Quantitative
ContinuousDiscrete
Figure 1. Broad classification of Variables
C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 5
 what type of breakfast did the child take : a healthy an unhealthy breakfast or no
breakfast (This clearly varies from child to child and perhaps even from day to day)
 performance on a quiz (Teresa might do poorly on a quiz, while Joselito may do
well. Or Teresa might do poorly today but she may do well tomorrow. Scores on a
quiz change, and thus, the performance on a quiz is a variable).
How do we measure these variables?
Inform students that there are four major scales of measurement of variables: nominal,
ordinal, interval and ratio. The scale of measurement depends on the variable itself.
(a) Nominal scale of measurement arises when we have variables that are categorical
and non-numeric or where the numbers have no sense of ordering. In other words,
the numbers or categories can be put into any order, and it will not really matter.
Consider the numbers on the uniforms of basketball players. Is the player wearing
a number 7 a worse player than the player wearing number 10? Maybe, or maybe
not, but the number on the uniform does not have anything to do with their
performance. The numbers on the uniform merely help identify the basketball
player. Other examples of the nominal scale include sex, marital status, religious
affiliation. For the research on the effect of breakfast on school performance,
children can be coded 1 as having healthy breakfast, 2 not a healthy breakfast, and
3 no breakfast. These numerical codes do not really matter.
(b) Ordinal scale also deals with categorical variables, but where order is important.
Suppose that, instead of looking at scores on a specific quiz for the research on
effect of breakfast on school performance, we examine the letter grades overall
for the course for each student.
Grade Scores
A 90-100
B 80-89
C 70-79
D 60-69
F 59 and below
So Joselito has an A, and Teresa has a C, and there are other students with Bs and
Ds and Fs. The letters here have a meaningful sense of ordering, unlike basketball
player uniforms, the letter grades suggests that Joselito is doing better than
Teresa. Other examples of the ordinal scale include socio economic status (A to
E, where A is wealthy, E is poor), IQ test core, difficulty of questions in an exam
(easy, medium difficult), rank in a contest (first place, second place, etc.),
perceptions in Likert scales.
C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 6
Note to Teacher: While there is a sense or ordering, there is no zero point in an
ordinal scale. In addition, there is no way to find out how much “distance” there
is between one category and another. In a scale from 1 to 10, the difference
between 7 and 8 may not be the same difference between 1 and 2).
(c) Interval scale tells us that one unit differs by a certain amount of the property
from another unit. When measuring temperature in Celsius, a 10 degree difference
has the same meaning anywhere along the scale – the difference between 10 and
20 degree Celsius is the same as between 80 and 90 centigrade. But, we cannot
say that 80 degrees Celsius is twice as hot as 40 degrees Celsius since there is no
true zero, but only an arbitrary zero point. A measurement of 0 degrees Celsius
does not reflect a true "lack of temperature." Thus, Celsius scale is in interval
scale. Other examples of the interval scale include quiz results (even if a student
gets a zero, it does not mean the student has no knowledge), and the IQ of a
person (we can tell not only which person ranks higher in IQ but also how much
higher he or she ranks with another, but zero IQ does not mean no intelligence).
Special Note: The interval scale allows addition and subtraction operations, but it
does not possess an absolute zero. Zero is arbitrary as it does not mean the
variable does not exist. Zero only represents an additional measurement point.
(d) Ratio scale also tells us that one unit has so many times as much of the property
as does another unit. The ratio scale possesses a meaningful (unique and non-
arbitrary) absolute, fixed zero point and allows all arithmetic operations. The
existence of the zero point is the only difference between ratio and interval
measurement. Examples of the ratio scale include mass, heights, weights, energy
and electric charge. A temperature of zero on the Kelvin scale is absolute zero;
this makes the Kelvin scale a ratio scale. If one temperature is three times as high
as another as measured on the Kelvin scale, then it has three times the kinetic
energy of the other temperature. As regards mass, the difference between 120
grams and 135 grams is 15 grams, and this is the same difference between 380
grams and 395 grams. The scale at any given point is constant, and a
measurement of 0 reflects a complete lack of mass. Money is also on a ratio
scale. Money has properties of an interval scale; we can also say that 2000 pesos
is twice more than 1,000 pesos. In addition, money has a true zero point: if you
have zero money, this implies the absence of money.
In summary, we have the following measurement scales:
Type of Scale Characteristics of Scale Basic Empirical Operation
Nominal No order, distance, or origin Determination of Equality
Ordinal Has order but no distance or
unique origin
Determination of greater or lesser
values
Interval Both with order and distance
but no unique origin
Determination of equality of
intervals or difference
C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 7
Ratio Has order, distance and
unique origin
Determination of equality of ratios
The scale of measurement depends mainly on the method of measurement, not on the
property measured. The weight of primary school students measured in kilograms has a ratio
scale, but the students can be labeled into overweight, normal, underweight, and in which
case, the weight is then measured in an ordinal scale. Also, many scales are only interval
because their zero point is arbitrarily chosen
(D)Advanced Lesson (for Enrichment; may be skipped)
Types of Variables according to Time Dependence
Inform students that data may also be classified according to their dependence on time.
 If individuals, establishments, households, events, etc., are observed at the same point
in time (or under the same general conditions), the data set is called cross-sectional.
Table 1. Example of a cross-sectional data - Ages and monthly income of selected voters
Person Name Monthly
Income Ages
(years)
1 Linda 6475 55
2 Romualdo 18600 32
3 Kerwin 23150 34
4 Ramon 9200 26
5 Randolph 24100 35
6 Carminda 13500 28
..
19 Dominador 7250 22
20 Grace 13450 64
 Time series data represent an indicator subject's changes over the course of time. For
example, the total number of primary students in a certain school district by years,
and monthly interest rates charged by a bank, hourly readings of blood pressure of a
patient in a hospital, are time series data set.
Table 2. Example of a time series data – Pupil to teacher ratio at the primary level in
Philippines : 2000-2013
Cross Sectional data set
C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 8
Year Pupil-
teacher
ratio,
secondary
2000 20.36
2001 20.32
2002 18.91
2003 16.18
2004 16.64
2005 16.73
2006 16.21
2007 16.39
2008 16.24
2009 16.53
2010 15.99
2011 16.69
2012 16.75
2013 15.46
 Some data sets have both time series and cross sectional features. These are called
panel data. These data contains observations of multiple variables obtained over
several time periods for the same subjects (persons, establishments, countries, etc.)
Table 3. Example of Panel Data: Value of Production of Selected Metal Manufacturing
Firms
Firm Type of firm Year Production
1 Steel 2012 2.2 MT
1 Steel 2013 2.4 MT
1 Steel 2014 2.8 MT
2 Copper 2012 4.2 MT
2 Copper 2013 4.3 MT
2 Copper 2014 4.5 MT
3 Tin 2012 3.8 MT
Panel Data Set
C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 9
KEY POINTS
 Data sources: Primary Data Sources (direct observation, experiments, surveys,
censuses, admin data) and Secondary Data Sources (survey reports, reports on admin
data, news articles, blogs, facebook posts about survey reports, etc)
 Types of Data: qualitative and quantitative (further broken down into discrete and
continuous)
 Measurement scales: nominal, ordinal, interval, ratio
C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 10
REFERENCES
Albert, J. R. G. (2008).Basic Statistics for the Tertiary Level (ed. Roberto Padua, Welfredo
Patungan, Nelia Marquez), published by Rex Bookstore.
Takahashi, S. (2009). The Manga Guide to Statistics. Trend-Pro Co. Ltd.
Workbooks in Statistics 1: 11th
Edition, Institute of Statistics, UP Los Banos, College Laguna
4031
C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 11
ASSESSMENT
1. The website of Philippine Airlines provides a questionnaire instrument that can be answered
electronically. Which of the following methods of data collection is involved when people
complete the questionnaire?
a) Published sources
b) Survey
c) Experimentation
d) Direct Observation
ANSWER: B
2. The father of Noel was planning to meet with his boss to discuss a raise in his annual salary. In
preparation, he wanted to use the Consumer Price Index (generated by the Philippine Statistics
Authority) to determine the percentage increase in his salary in terms of real income over the last
three years. Which of the following methods of data collection was involved when he used the
Consumer Price Index?
a) Published sources
b) Experimentation
c) Survey
d) Direct Observation
ANSWER: A
3. In Metro Manila, one may want to record how long it takes to go from one end of the MRT to
another... Which of the following methods of data collection is involved here?
a) Published sources
b) Experimentation
c) Survey
d) Direct Observation
ANSWER: D
4. Which of the following are qualitative variables? Among the quantitative variables, classify
them as discrete or continuous.
 height of students measured in number of centimeters
 weight of teachers in school measured in number of kilograms
 number of days it rained
 hair color
C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 12
 sex
 average daily temperature
 civil status
 brand of soap being used
 highest educational attainment
 total household expenditures last month in pesos
 number of children in a household
 number of customers waiting to be served at a supermarket counter
 waiting time of a customer standing on queue for service at a bank
 amount spent on rice last week by a household
 distance traveled by a student going to school
 time consumed on facebook on a particular day
ANSWER:
 height of students measured in number of centimeters (quantitative: continuous)
 weight of teachers in school measured in number of kilograms (quantitative:
continuous)
 number of days it rained (quantitative: discrete)
 hair color (qualitative)
 sex (qualitative)
 average daily temperature (quantitative: continuous)
 civil status (qualitative)
 brand of soap being used (qualitative)
 highest educational attainment (qualitative)
 total household expenditures last month in pesos (quantitative: discrete)
 number of children in a household (quantitative: discrete)
 number of customers waiting to be served at a supermarket counter (quantitative:
discrete)
 waiting time of a customer standing on queue for service at a bank(quantitative:
continuous)
 amount spent on rice last week by a household (quantitative: discrete)
 distance traveled by a student going to school (quantitative: continuous)
 time consumed on facebook on a particular day (quantitative: continuous)
5. A survey of students in a certain school is conducted. The survey questionnaire details the
following information: (a) number of family members who are working; (b) ownership of a cell
phone among family members; (c) length (in minutes) of longest call made on each cell phone
owned per month; (d) ownership/rental of dwelling; (e) amount spent on food in one week; (h)
occupation of household head; (i) total family income; (j) number of years of schooling of each
family member; (k) access of family members to social media; (l) amount of time last week spent
C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 13
by each family member using the internet. For each of these variables, determine whether the
variable is qualitative or quantitative), and if the latter, state whether it is discrete or continuous.
ANSWER:
(a) number of family members who are working (quantitative: discrete);
(b) ownership of a cell phone among family members (qualitative);
(c) length (in minutes) of longest call made on each cell phone owned per month
(quantitative: continuous);
(d) ownership/rental of dwelling (qualitative);
(e) amount spent in pesos on food in one week (quantitative: discrete);
(h) occupation of household head (qualitative);
(i) total family income (quantitative: discrete);
(j) number of years of schooling of each family member (quantitative: discrete);
(k) access of family members to social media (qualitative);
(l) amount of time last week spent by each family member using the
internet(quantitative: continuous; Note to Teacher: if time measured in countable units,
then discrete)
6. (May be skipped if advanced lesson was not discussed) The Philippine Statistics Authority
(PSA) conducts a triennial Family Income and Expenditure Survey to determine the income and
expenditure patterns in the country. This survey, based on a probability sample of about 50
thousand households, is also the main source of official poverty data, and it provides weights for
the consumer price index, also generated by the PSA. What type of data source is this survey?
a) Cross section survey
b) Time series
c) Panel data survey
ANSWER : A
7. (May be skipped if advanced lesson was not discussed) Every quarter, the PSA releases the
growth in the Gross Domestic Product (GDP) as a measure of the economic performance in the
country. This data source is considered a
a) Cross section data source
b) Time series
c) Panel data
ANSWER : B
7. (May be skipped if advanced lesson was not discussed) From 2003 up to 2009, the PSA
interviewed about 15,000 sample households across rounds of the Family Income and
C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 14
Expenditure Survey, as well as the Annual Poverty Indicator Survey. This data source is
considered a
a) Cross section data source
b) Time series
c) Panel data
ANSWER : C
8. Identify the scale of measurement for the following:
 body temperature measured in degrees Fahrenheit (interval)
 military title: Private, Seargent, Lieutenant, Captain, Major, Colonel, General
(ordinal)
 clothing: hat, shirt, shoes, pants (nominal)
 A score on a 5-point quiz measuring knowledge of probability and statistics (ordinal)
 place (city/municipality) of birth (nominal)
Explanatory Note:
 Teachers have the option to just ask this assessment orally to the entire class, or to group
students and ask them to identify answers, or to give this as homework, or to use some
questions/items here for a chapter examination.
C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 15
HANDOUT FOR STUDENTS
General Classification of Variables
(i) Qualitative variables (also called categorical) do not strictly take on numeric values
(but we can develop numeric codes for them, e.g., for a variable representing sex, the
values 1 and 2 may indicate male, and female, respectively). Qualitative data answer
questions “what kind.” Sometimes there is a sense of ordering in qualitative data, for
example, for income data grouped into high, middle and low-income status. Data
pertaining to sex or religion, on the other hand, do not have the sense of ordering, as
there is no such thing as a weaker or stronger sex, and a better or worse religion.
(ii) Quantitative (otherwise called numerical) data, whose sizes are meaningful, answer
questions such as “how much” or “how many”. Quantitative variables have actual
units of measure. Quantitative data may be further classified into:
a. Discrete data are those data that can be counted, e.g., the number of days before
some equipment fails, the ages or survey respondents measured to the nearest
year, and the number of patients in a hospital. These data assume only a countable
number of values
b. Continuous data are those that can be measured, e.g. the exact height of a survey
respondent and the exact volume of some liquid substance.
Scales of Measurement
(i) The nominal scale of measurement arises when we have variables that are and non-
numeric or where the numbers have no sense of ordering. In other words, the numbers
or categories can be put into any order, and it will not really matter. Examples of the
nominal scale include sex, marital status, religious affiliation.
(ii) The ordinal scale also deals with categorical variables, but where order is important.
Examples of the ordinal scale include socio economic status (A to E, where A is
wealthy, E is poor), IQ test core, difficulty of questions in an exam (easy, medium
difficult), rank in a contest (first place, second place, etc.), perceptions in Likert
scales.
(iii) The interval scale tells us that one unit differs by a certain amount of the property
from another unit. Examples of interval scale include measuring temperature in
Celsius, quiz results , IQ of a person. The interval scale does not possess an absolute
zero.
(iv) The ratio scale also tells us that one unit has so many times as much of the property
as does another unit. The ratio scale possesses a meaningful (unique and non-
arbitrary) absolute, fixed zero point and allows all arithmetic operations. Examples of
C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 16
the ratio scale include mass, heights, weights, energy and electric charge, temperature
in the Kelvin scale
From Takahashi, S. (2009). The Manga Guide to Staitstics. Trend-Pro Co. Ltd.
C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 17
C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 18

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Lesson 1 04 types of data

  • 1. C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 1 Chapter 1: Describing Data Lesson 4: Data Sources, Variables (and Types of Variables) and Measurement Scales TIME FRAME: 1 hour session OVERVIEW OF LESSON In this activity, students will be given lectures (and assessments) regarding the typical sources of data (both primary data sources such as surveys and censuses, direct observations experiments, as well as secondary data sources such as survey reports, books, magazines, blogs), variables, the general classifications of variables (quantitative and qualitative), and the different measurement scales for data. LEARNING OUTCOME(S): At the end of the lesson, the learner is able to  list various data sources;  define and distinguish between qualitative and quantitative variables, and between discrete and continuous variables (that are quantitative); and,  identify different scales of measurement. LESSON OUTLINE: 1. Introduction/Motivation 2. Lesson Proper: Sources of Data; Types of Data Sources; and Variables (including Broad Classifications of Variables) 3. Simulation Activity : Analysis of Measurement Scales 4. Advanced Lesson ( For Enrichment): Types of Data by Time Dependence DEVELOPMENT OF THE LESSON (A)Introduction/Motivation Begin by ask students to recall learnings in past lessons that  “data” (records collected from experiments, observations, experience, surveys and administrative forms) have variability,  there are various ways of generating measurements/data and issues behind these measurement, and  we can summarize this variability (or distribution) of data by way of graphs (pie charts, bar charts, pictograms), or some descriptive summary numbers (such as modes, and medians).
  • 2. C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 2 Mention the importance of knowing the manner in which data are collected, as this will have implications to the way data will be analyzed. Illustrate this point with the following question:  Is 301 smaller than 302? While numerically, 301 is smaller than 302, but the numbers may mean room numbers (and room 301 might, in fact, be bigger than room 302). The numbers 301and 302 may also mean classification codes (say for occupations, or for geographic locations), in which case, there may not be a meaning for orders in these codes (that is, one number may not really be smaller than another). (B) Lesson Proper (1) Sources of Data For 5 minutes, ask students to identify various types of sources of data. These may include:  Experiments  Direct observation (i.e., measuring amount of land owned by farmer)  Surveys (sample survey or census) o Face-to-face interviews o Telephone surveys o Mail/e-mail/SMS/Online surveys  Administrative records  Internet (social media, search engines, etc.)  Reports of surveys conducted, reports of administrative records  News articles, blogs, facebook posts about survey reports Ask students how they think the proportion of total land devoted to farming is obtained (there can be a direct measurement of land, but this information can also be sourced from admin data, or from a census or sample survey of farmers with their reported answers). (2) Types of Data Sources Suggest that all these data sources listed above can be classified into primary and secondary sources. Ask students what differentiates primary data from secondary data. Special Note: When data are collected, they may be gathered for purposes of answering a research question. Primary data is collected first hand by a researcher directly from the source of information, while secondary data are those acquired through existing records (one step removed from the original source, usually describing, summarizing, analyzing, evaluating, derived from, or based on primary source materials). (3) Variables
  • 3. C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 3 For 5 minutes, tell students to imagine that their seatmates are unknown to them. What would be three questions they may want to ask other than their seatmate’s name, facebook username, address, email address, and telephone number. Examples may be:  What is your height?  What province where you born in?  What type of movies do you enjoy watching?  How many are you in the family?  How old is your mother? Inform students that when units being studied (persons, families, companies, farms, countries, events, objects) have properties or characteristics that takes on different values, these properties or characteristics are called variables. For example, the height of a student is a variable since the value of heights changes from student to student. Occasionally, a variable can only assume one value, then it is called a constant. For instance, in a class of fifteen-year olds, the age in years of students is constant. Broad Classification of Variables Mention to students that variables can be broadly classified as either quantitative or qualitative, with the latter further classified into discrete and continuous types (see Figure 1). (i) Qualitative variables express a categorical attribute, such as sex (male or female), religion, marital status, region of residence, highest educational attainment. Qualitative variables do not strictly take on numeric values (although we can have numeric codes for them, e.g., for sex variable, 1 and 2 may refer to male, and female, respectively). Qualitative data answer questions “what kind.” Sometimes, there is a sense of ordering in qualitative data, e.g., income data grouped into high, middle and low-income status. Data on sex or religiondo not have the sense of ordering, as there is no such thing as a weaker or stronger sex, and a better or worse religion. Qualitative variables are sometimes referred to as categorical variables. (ii) Quantitative (otherwise called numerical) data, whose sizes are meaningful, answer questions such as “how much” or “how many”. Quantitative variables have actual units of measure. Examples of quantitative variables include the height, weight, number of registered cars, household size, and total household expenditures/income of survey respondents. Quantitative data may be further classified into: a. Discrete data are those data that can be counted, e.g., the number of days for cellphones to fail, the ages or survey respondents measured to the nearest year, and the number of patients in a hospital. These data assume only (a finite or infinitely) countable number of values.
  • 4. C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 4 b. Continuous data are those that can be measured, e.g. the exact height of a survey respondent and the exact volume of some liquid substance. The possible values are uncountably infinite. Special Note: For quantitative data, arithmetical operations have some physical interpretation. One can add 301 and 302 if these have quantitative meanings, but if, as pointed out, earlier, they refer to room numbers, then adding these numbers does not make any sense. Even though a variable may take numerical values, it does not make the corresponding variable quantitative! The issue is whether performing arithmetical operations on these data would make any sense. It would certainly not make sense to sum two zip codes or multiply two room numbers. (C)Simulation Activity Tell students to imagine that they are psychologists who want to study whether eating breakfast will help kids focus in school. (Perhaps students who eat a healthy breakfast will do best on a quiz, students who eat an unhealthy breakfast will get an average performance, and students who do not eat anything for breakfast will do the worst on a quiz). How to being the study? Ask students to identify variables that need to be studied here. They are: VARIABLES Qualitative Quantitative ContinuousDiscrete Figure 1. Broad classification of Variables
  • 5. C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 5  what type of breakfast did the child take : a healthy an unhealthy breakfast or no breakfast (This clearly varies from child to child and perhaps even from day to day)  performance on a quiz (Teresa might do poorly on a quiz, while Joselito may do well. Or Teresa might do poorly today but she may do well tomorrow. Scores on a quiz change, and thus, the performance on a quiz is a variable). How do we measure these variables? Inform students that there are four major scales of measurement of variables: nominal, ordinal, interval and ratio. The scale of measurement depends on the variable itself. (a) Nominal scale of measurement arises when we have variables that are categorical and non-numeric or where the numbers have no sense of ordering. In other words, the numbers or categories can be put into any order, and it will not really matter. Consider the numbers on the uniforms of basketball players. Is the player wearing a number 7 a worse player than the player wearing number 10? Maybe, or maybe not, but the number on the uniform does not have anything to do with their performance. The numbers on the uniform merely help identify the basketball player. Other examples of the nominal scale include sex, marital status, religious affiliation. For the research on the effect of breakfast on school performance, children can be coded 1 as having healthy breakfast, 2 not a healthy breakfast, and 3 no breakfast. These numerical codes do not really matter. (b) Ordinal scale also deals with categorical variables, but where order is important. Suppose that, instead of looking at scores on a specific quiz for the research on effect of breakfast on school performance, we examine the letter grades overall for the course for each student. Grade Scores A 90-100 B 80-89 C 70-79 D 60-69 F 59 and below So Joselito has an A, and Teresa has a C, and there are other students with Bs and Ds and Fs. The letters here have a meaningful sense of ordering, unlike basketball player uniforms, the letter grades suggests that Joselito is doing better than Teresa. Other examples of the ordinal scale include socio economic status (A to E, where A is wealthy, E is poor), IQ test core, difficulty of questions in an exam (easy, medium difficult), rank in a contest (first place, second place, etc.), perceptions in Likert scales.
  • 6. C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 6 Note to Teacher: While there is a sense or ordering, there is no zero point in an ordinal scale. In addition, there is no way to find out how much “distance” there is between one category and another. In a scale from 1 to 10, the difference between 7 and 8 may not be the same difference between 1 and 2). (c) Interval scale tells us that one unit differs by a certain amount of the property from another unit. When measuring temperature in Celsius, a 10 degree difference has the same meaning anywhere along the scale – the difference between 10 and 20 degree Celsius is the same as between 80 and 90 centigrade. But, we cannot say that 80 degrees Celsius is twice as hot as 40 degrees Celsius since there is no true zero, but only an arbitrary zero point. A measurement of 0 degrees Celsius does not reflect a true "lack of temperature." Thus, Celsius scale is in interval scale. Other examples of the interval scale include quiz results (even if a student gets a zero, it does not mean the student has no knowledge), and the IQ of a person (we can tell not only which person ranks higher in IQ but also how much higher he or she ranks with another, but zero IQ does not mean no intelligence). Special Note: The interval scale allows addition and subtraction operations, but it does not possess an absolute zero. Zero is arbitrary as it does not mean the variable does not exist. Zero only represents an additional measurement point. (d) Ratio scale also tells us that one unit has so many times as much of the property as does another unit. The ratio scale possesses a meaningful (unique and non- arbitrary) absolute, fixed zero point and allows all arithmetic operations. The existence of the zero point is the only difference between ratio and interval measurement. Examples of the ratio scale include mass, heights, weights, energy and electric charge. A temperature of zero on the Kelvin scale is absolute zero; this makes the Kelvin scale a ratio scale. If one temperature is three times as high as another as measured on the Kelvin scale, then it has three times the kinetic energy of the other temperature. As regards mass, the difference between 120 grams and 135 grams is 15 grams, and this is the same difference between 380 grams and 395 grams. The scale at any given point is constant, and a measurement of 0 reflects a complete lack of mass. Money is also on a ratio scale. Money has properties of an interval scale; we can also say that 2000 pesos is twice more than 1,000 pesos. In addition, money has a true zero point: if you have zero money, this implies the absence of money. In summary, we have the following measurement scales: Type of Scale Characteristics of Scale Basic Empirical Operation Nominal No order, distance, or origin Determination of Equality Ordinal Has order but no distance or unique origin Determination of greater or lesser values Interval Both with order and distance but no unique origin Determination of equality of intervals or difference
  • 7. C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 7 Ratio Has order, distance and unique origin Determination of equality of ratios The scale of measurement depends mainly on the method of measurement, not on the property measured. The weight of primary school students measured in kilograms has a ratio scale, but the students can be labeled into overweight, normal, underweight, and in which case, the weight is then measured in an ordinal scale. Also, many scales are only interval because their zero point is arbitrarily chosen (D)Advanced Lesson (for Enrichment; may be skipped) Types of Variables according to Time Dependence Inform students that data may also be classified according to their dependence on time.  If individuals, establishments, households, events, etc., are observed at the same point in time (or under the same general conditions), the data set is called cross-sectional. Table 1. Example of a cross-sectional data - Ages and monthly income of selected voters Person Name Monthly Income Ages (years) 1 Linda 6475 55 2 Romualdo 18600 32 3 Kerwin 23150 34 4 Ramon 9200 26 5 Randolph 24100 35 6 Carminda 13500 28 .. 19 Dominador 7250 22 20 Grace 13450 64  Time series data represent an indicator subject's changes over the course of time. For example, the total number of primary students in a certain school district by years, and monthly interest rates charged by a bank, hourly readings of blood pressure of a patient in a hospital, are time series data set. Table 2. Example of a time series data – Pupil to teacher ratio at the primary level in Philippines : 2000-2013 Cross Sectional data set
  • 8. C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 8 Year Pupil- teacher ratio, secondary 2000 20.36 2001 20.32 2002 18.91 2003 16.18 2004 16.64 2005 16.73 2006 16.21 2007 16.39 2008 16.24 2009 16.53 2010 15.99 2011 16.69 2012 16.75 2013 15.46  Some data sets have both time series and cross sectional features. These are called panel data. These data contains observations of multiple variables obtained over several time periods for the same subjects (persons, establishments, countries, etc.) Table 3. Example of Panel Data: Value of Production of Selected Metal Manufacturing Firms Firm Type of firm Year Production 1 Steel 2012 2.2 MT 1 Steel 2013 2.4 MT 1 Steel 2014 2.8 MT 2 Copper 2012 4.2 MT 2 Copper 2013 4.3 MT 2 Copper 2014 4.5 MT 3 Tin 2012 3.8 MT Panel Data Set
  • 9. C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 9 KEY POINTS  Data sources: Primary Data Sources (direct observation, experiments, surveys, censuses, admin data) and Secondary Data Sources (survey reports, reports on admin data, news articles, blogs, facebook posts about survey reports, etc)  Types of Data: qualitative and quantitative (further broken down into discrete and continuous)  Measurement scales: nominal, ordinal, interval, ratio
  • 10. C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 10 REFERENCES Albert, J. R. G. (2008).Basic Statistics for the Tertiary Level (ed. Roberto Padua, Welfredo Patungan, Nelia Marquez), published by Rex Bookstore. Takahashi, S. (2009). The Manga Guide to Statistics. Trend-Pro Co. Ltd. Workbooks in Statistics 1: 11th Edition, Institute of Statistics, UP Los Banos, College Laguna 4031
  • 11. C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 11 ASSESSMENT 1. The website of Philippine Airlines provides a questionnaire instrument that can be answered electronically. Which of the following methods of data collection is involved when people complete the questionnaire? a) Published sources b) Survey c) Experimentation d) Direct Observation ANSWER: B 2. The father of Noel was planning to meet with his boss to discuss a raise in his annual salary. In preparation, he wanted to use the Consumer Price Index (generated by the Philippine Statistics Authority) to determine the percentage increase in his salary in terms of real income over the last three years. Which of the following methods of data collection was involved when he used the Consumer Price Index? a) Published sources b) Experimentation c) Survey d) Direct Observation ANSWER: A 3. In Metro Manila, one may want to record how long it takes to go from one end of the MRT to another... Which of the following methods of data collection is involved here? a) Published sources b) Experimentation c) Survey d) Direct Observation ANSWER: D 4. Which of the following are qualitative variables? Among the quantitative variables, classify them as discrete or continuous.  height of students measured in number of centimeters  weight of teachers in school measured in number of kilograms  number of days it rained  hair color
  • 12. C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 12  sex  average daily temperature  civil status  brand of soap being used  highest educational attainment  total household expenditures last month in pesos  number of children in a household  number of customers waiting to be served at a supermarket counter  waiting time of a customer standing on queue for service at a bank  amount spent on rice last week by a household  distance traveled by a student going to school  time consumed on facebook on a particular day ANSWER:  height of students measured in number of centimeters (quantitative: continuous)  weight of teachers in school measured in number of kilograms (quantitative: continuous)  number of days it rained (quantitative: discrete)  hair color (qualitative)  sex (qualitative)  average daily temperature (quantitative: continuous)  civil status (qualitative)  brand of soap being used (qualitative)  highest educational attainment (qualitative)  total household expenditures last month in pesos (quantitative: discrete)  number of children in a household (quantitative: discrete)  number of customers waiting to be served at a supermarket counter (quantitative: discrete)  waiting time of a customer standing on queue for service at a bank(quantitative: continuous)  amount spent on rice last week by a household (quantitative: discrete)  distance traveled by a student going to school (quantitative: continuous)  time consumed on facebook on a particular day (quantitative: continuous) 5. A survey of students in a certain school is conducted. The survey questionnaire details the following information: (a) number of family members who are working; (b) ownership of a cell phone among family members; (c) length (in minutes) of longest call made on each cell phone owned per month; (d) ownership/rental of dwelling; (e) amount spent on food in one week; (h) occupation of household head; (i) total family income; (j) number of years of schooling of each family member; (k) access of family members to social media; (l) amount of time last week spent
  • 13. C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 13 by each family member using the internet. For each of these variables, determine whether the variable is qualitative or quantitative), and if the latter, state whether it is discrete or continuous. ANSWER: (a) number of family members who are working (quantitative: discrete); (b) ownership of a cell phone among family members (qualitative); (c) length (in minutes) of longest call made on each cell phone owned per month (quantitative: continuous); (d) ownership/rental of dwelling (qualitative); (e) amount spent in pesos on food in one week (quantitative: discrete); (h) occupation of household head (qualitative); (i) total family income (quantitative: discrete); (j) number of years of schooling of each family member (quantitative: discrete); (k) access of family members to social media (qualitative); (l) amount of time last week spent by each family member using the internet(quantitative: continuous; Note to Teacher: if time measured in countable units, then discrete) 6. (May be skipped if advanced lesson was not discussed) The Philippine Statistics Authority (PSA) conducts a triennial Family Income and Expenditure Survey to determine the income and expenditure patterns in the country. This survey, based on a probability sample of about 50 thousand households, is also the main source of official poverty data, and it provides weights for the consumer price index, also generated by the PSA. What type of data source is this survey? a) Cross section survey b) Time series c) Panel data survey ANSWER : A 7. (May be skipped if advanced lesson was not discussed) Every quarter, the PSA releases the growth in the Gross Domestic Product (GDP) as a measure of the economic performance in the country. This data source is considered a a) Cross section data source b) Time series c) Panel data ANSWER : B 7. (May be skipped if advanced lesson was not discussed) From 2003 up to 2009, the PSA interviewed about 15,000 sample households across rounds of the Family Income and
  • 14. C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 14 Expenditure Survey, as well as the Annual Poverty Indicator Survey. This data source is considered a a) Cross section data source b) Time series c) Panel data ANSWER : C 8. Identify the scale of measurement for the following:  body temperature measured in degrees Fahrenheit (interval)  military title: Private, Seargent, Lieutenant, Captain, Major, Colonel, General (ordinal)  clothing: hat, shirt, shoes, pants (nominal)  A score on a 5-point quiz measuring knowledge of probability and statistics (ordinal)  place (city/municipality) of birth (nominal) Explanatory Note:  Teachers have the option to just ask this assessment orally to the entire class, or to group students and ask them to identify answers, or to give this as homework, or to use some questions/items here for a chapter examination.
  • 15. C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 15 HANDOUT FOR STUDENTS General Classification of Variables (i) Qualitative variables (also called categorical) do not strictly take on numeric values (but we can develop numeric codes for them, e.g., for a variable representing sex, the values 1 and 2 may indicate male, and female, respectively). Qualitative data answer questions “what kind.” Sometimes there is a sense of ordering in qualitative data, for example, for income data grouped into high, middle and low-income status. Data pertaining to sex or religion, on the other hand, do not have the sense of ordering, as there is no such thing as a weaker or stronger sex, and a better or worse religion. (ii) Quantitative (otherwise called numerical) data, whose sizes are meaningful, answer questions such as “how much” or “how many”. Quantitative variables have actual units of measure. Quantitative data may be further classified into: a. Discrete data are those data that can be counted, e.g., the number of days before some equipment fails, the ages or survey respondents measured to the nearest year, and the number of patients in a hospital. These data assume only a countable number of values b. Continuous data are those that can be measured, e.g. the exact height of a survey respondent and the exact volume of some liquid substance. Scales of Measurement (i) The nominal scale of measurement arises when we have variables that are and non- numeric or where the numbers have no sense of ordering. In other words, the numbers or categories can be put into any order, and it will not really matter. Examples of the nominal scale include sex, marital status, religious affiliation. (ii) The ordinal scale also deals with categorical variables, but where order is important. Examples of the ordinal scale include socio economic status (A to E, where A is wealthy, E is poor), IQ test core, difficulty of questions in an exam (easy, medium difficult), rank in a contest (first place, second place, etc.), perceptions in Likert scales. (iii) The interval scale tells us that one unit differs by a certain amount of the property from another unit. Examples of interval scale include measuring temperature in Celsius, quiz results , IQ of a person. The interval scale does not possess an absolute zero. (iv) The ratio scale also tells us that one unit has so many times as much of the property as does another unit. The ratio scale possesses a meaningful (unique and non- arbitrary) absolute, fixed zero point and allows all arithmetic operations. Examples of
  • 16. C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 16 the ratio scale include mass, heights, weights, energy and electric charge, temperature in the Kelvin scale From Takahashi, S. (2009). The Manga Guide to Staitstics. Trend-Pro Co. Ltd.
  • 17. C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 17
  • 18. C h a p t e r 1 D e s c r i b i n g D a t a – L e s s o n 4 Page 18