REVIEW OF DATA

ST101 – DR. ARIC LABARR


WHAT IS/ARE DATA?

data

noun 


\ˈdā - tə\  

factual information used as a basis for reasoning, discussion, or calculation

Information – measurements or values describing an object, person, place, thing, etc.

Inference – using information to come to some conclusion. 

Want to use the information to draw conclusions and make better decisions in the context of our problem.

Who, what, where, when, why, how?


DATA TABLE

Date

Weekday

Season

Weather Type

Temperature

(°F)

Humidity 

(%)

# Casual Users

# Registered Users

1/1/2011

Saturday

Winter

Misty

46.7

80.6

331

654

1/2/2011

Sunday

Winter

Misty

48.4

69.6

131

670

1/3/2011

Monday

Winter

Clear / 

Partly Cloudy

34.2

43.7

120

1229

1/4/2011

Tuesday

Winter

Clear / 

Partly Cloudy

34.5

59.0

108

1454

1/5/2011

Wednesday

Winter

Clear / 

Partly Cloudy

36.8

43.7

82

1518

Observations


DATA TABLE

Date

Weekday

Season

Weather Type

Temperature

(°F)

Humidity 

(%)

# Casual Users

# Registered Users

1/1/2011

Saturday

Winter

Misty

46.7

80.6

331

654

1/2/2011

Sunday

Winter

Misty

48.4

69.6

131

670

1/3/2011

Monday

Winter

Clear / 

Partly Cloudy

34.2

43.7

120

1229

1/4/2011

Tuesday

Winter

Clear / 

Partly Cloudy

34.5

59.0

108

1454

1/5/2011

Wednesday

Winter

Clear / 

Partly Cloudy

36.8

43.7

82

1518

Variables


QUALITATIVE (CATEGORICAL) VARIABLES

Date

Weekday

Season

Weather Type

Temperature

(°F)

Humidity 

(%)

# Casual Users

# Registered Users

1/1/2011

Saturday

Winter

Misty

46.7

80.6

331

654

1/2/2011

Sunday

Winter

Misty

48.4

69.6

131

670

1/3/2011

Monday

Winter

Clear / 

Partly Cloudy

34.2

43.7

120

1229

1/4/2011

Tuesday

Winter

Clear / 

Partly Cloudy

34.5

59.0

108

1454

1/5/2011

Wednesday

Winter

Clear / 

Partly Cloudy

36.8

43.7

82

1518


QUANTITATIVE (NUMERICAL) VARIABLES

Date

Weekday

Season

Weather Type

Temperature

(°F)

Humidity 

(%)

# Casual Users

# Registered Users

1/1/2011

Saturday

Winter

Misty

46.7

80.6

331

654

1/2/2011

Sunday

Winter

Misty

48.4

69.6

131

670

1/3/2011

Monday

Winter

Clear / 

Partly Cloudy

34.2

43.7

120

1229

1/4/2011

Tuesday

Winter

Clear / 

Partly Cloudy

34.5

59.0

108

1454

1/5/2011

Wednesday

Winter

Clear / 

Partly Cloudy

36.8

43.7

82

1518


GATHERING DATA

Data is everywhere.

1 zettabyte = 1,000,000,000,000 GB

With all this data being gathered and stored, we need to understand good practices of gathering data.

Data gathered without thinking ahead of time leaves itself open for problems later.

*IDC Digital Universe 


GATHERING DATA

Population

Sample

Statistic

Parameter

Population – set of all objects/individuals of interest.

Sample – subset of the population that information is actually obtained.

Statistic – measures computed from a sample.

Parameter – measures computed from a population.



8


RANDOMNESS AND SAMPLING

Population

Sample

Statistic

Parameter

Having randomness helps make the sample representative of the population.


Protects us from having certain pieces of information overly influence our sample.


RANDOMNESS AND SAMPLING

Population

Sample

Statistic

Parameter

Having a good representative sample means the inference we make from the statistic to the parameter is reasonable!


Need good sampling to have good estimates.

Bias – certain outcomes are favored over other outcomes in samples.

2 Common Types of Bias:

Selection Bias

Undercoverage

Nonresponse

Sampling Bias

Convenience sampling

Voluntary sampling


BAD SAMPLING METHODS LEAD TO BIAS


Need good sampling to have good estimates.

4 Common Techniques:

Simple Random Sampling (SRS)

Stratified Random Sampling (STS)

Cluster Sampling

Systematic Sampling


GOOD SAMPLING METHODS


The gathering of data leads to questions around the ethical collection and use of that data.

As Christians we are held to an even higher standard around ethical considerations.

In observational studies / experiments we must keep the interest of the subject we are collecting data from at the forefront. 

Collection of data:

Institutional review boards

Informed consent

Confidentiality


ETHICAL CONSIDERATIONS AROUND DATA


EXPLORING DIFFERENT TYPES OF VARIABLES

Date

Weekday

Season

Weather Type

Temperature

(°F)

Humidity 

(%)

# Casual Users

# Registered Users

1/1/2011

Saturday

Winter

Misty

46.7

80.6

331

654

1/2/2011

Sunday

Winter

Misty

48.4

69.6

131

670

1/3/2011

Monday

Winter

Clear / 

Partly Cloudy

34.2

43.7

120

1229

1/4/2011

Tuesday

Winter

Clear / 

Partly Cloudy

34.5

59.0

108

1454

1/5/2011

Wednesday

Winter

Clear / 

Partly Cloudy

36.8

43.7

82

1518

Qualitative – explore within a category or across categories.


EXPLORING DIFFERENT TYPES OF VARIABLES

Date

Weekday

Season

Weather Type

Temperature

(°F)

Humidity 

(%)

# Casual Users

# Registered Users

1/1/2011

Saturday

Winter

Misty

46.7

80.6

331

654

1/2/2011

Sunday

Winter

Misty

48.4

69.6

131

670

1/3/2011

Monday

Winter

Clear / 

Partly Cloudy

34.2

43.7

120

1229

1/4/2011

Tuesday

Winter

Clear / 

Partly Cloudy

34.5

59.0

108

1454

1/5/2011

Wednesday

Winter

Clear / 

Partly Cloudy

36.8

43.7

82

1518

Quantitative – explore center, spread, and “look” of variables.


EXPLORING VARIABLES VISUALLY

Qualitative Variable Plots

Pie chart – graph in which a circle is divided into sections that each represent a proportion of the whole.

Bar chart – numerical values of variables are represented by the height or length of lines or rectangles of equal width.


Quantitative Variable Plots

Line graph – uses lines to connect individual data points over time.

Scatterplot – the values of two variables are plotted along two axes, the pattern of the resulting points revealing any relationship present.



EXPLORING VARIABLES NUMERICALLY

Measures of Center or “Typical”

Mode – the mode of a variable is the most common value.

Mean – the mean of a variable is the sum of all the values divided by the number of values.

Median – value in the middle when the data items are arranged in ascending order.

Measures of Spread or Variation

Range – difference between the largest and smallest values.

Variance – measure of dispersion around the mean of the data set.

Standard deviation – the square root of the variance (helps with units of variance).


PROBABILITY

The probability that an event happens is a numerical measure of the likelihood of that event’s occurrence.

0

0.5

1

Likelihood of Occurrence

Probability

The event is

very unlikely 

to happen.

The event is

equally likely 

to happen as

unlikely to.

The event is

very likely

to happen.

18


LAW OF LARGE NUMBERS

The law of large numbers states that as the number of independent trials increases, in the long run the proportion for a certain event gets closer and closer to a single value (the probability of the event).


The probability distribution for a random variable describes how probabilities are distributed over the values of the random variable.

Relative frequencies can be used as estimates to the probability of an event occurring. 

Probability distributions for discrete random variables are best described with tables, graphs, or equations.

PROBABILITY DISTRIBUTION


Let x be the number of TV’s sold at a small department store in one day where x can only take the values of {0, 1, 2, 3, 4, 5}

We expect to sell 1.88 TV’s per day on average with variance of 2.522.

DISCRETE PROBABILITY EXAMPLE

TV’s Sold

Number of Days (Freq)

0

90

0.25

0.00

0.883

1

85

0.23

0.23

0.177

2

70

0.19

0.38

0.002

3

45

0.12

0.36

0.150

4

50

0.14

0.56

0.629

5

25

0.07

0.35

0.681

365

1.00

1.88

2.522


The binomial distribution looks at the probabilities of the number of successes occurring in the n independent trials.

The binomial probability function is comprised of two intuitive pieces:


BINOMIAL DISTRIBUTION

 

Number of outcomes providing exactly

x successes in n trials

Probability of a particular

sequence of trial outcomes

with x successes in n trials


 

PROBABILITIES ON INTERVALS

 

 

 


A random variable follows a uniform distribution whenever the probability is proportional to the interval’s length.

In other words, every value has an equal probability of happening.

The probability density function for the uniform distribution is:


UNIFORM PROBABILITY DISTRIBUTION

 


The Normal probability distribution is one of the most common and important distributions for describing a continuous random variable.

The Normal distribution is the foundation of statistical inference:

Hypothesis Testing

Confidence Intervals

Regression Analysis

Appears in nature and real-world data.


NORMAL PROBABILITY DISTRIBUTION


CHARACTERISTICS OF NORMAL DISTRIBUTION

 

More Probable

Less Probable


EMPIRICAL RULE

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 


All Normal distributions can be converted into standard Normal distributions for ease of computing probabilities under the curve.


CONVERSION OF NORMAL DISTRIBUTIONS

 

 


SAMPLING ERROR

Population:   1,   3,   5,   5,   7,   9,   4,   6,   10,   2

 

Sample 1:   1,   10,   6,   9

 

Sample 2:   1,   3,   2,   5

 

 

 

If sample statistics (like the sample mean) had a predictable pattern, 

then the errors would have a typical pattern as well!


 

CENTRAL LIMIT THEOREM


 

 

 

 


 

 

 

 


A point estimator cannot be expected to provide the exact value of the population parameter.

An interval estimate can be computed by adding and subtracting a margin or error to the point estimate:



The purpose of an interval estimate is to provide information about how close the point estimate is to the value of the parameter.


MARGIN OF ERROR

 

33


Confidence Intervals are interval estimates where we say we have a certain level of confidence in the interval.

For example, we are 95% confident that the population average daily number of total users of the bike rental company is between 4,000 and 5,000.


CONFIDENCE INTERVALS

If we were to take many samples (same size) that

each produced different confidence intervals, then

95% of them would contain the true parameter.


CONFIDENCE INTERVALS EXAMPLE

 

 

 

 

 

 

 


CONFIDENCE INTERVALS FOR MEANS AND PROPORTIONS

Proportions:



Means:

 

 

 

 

 


CONFIDENCE INTERVALS FOR MEANS AND PROPORTIONS

Proportions:



Means:

 

 

 

 

 

 


I have a coin that you believe is fair to start.

To test if this coin is fair, you ask me to flip the coin repeatedly and record the results.






No longer believe the coin is fair.




HYPOTHESIS TESTING THROUGH EXAMPLE

Flip Number

Result

P-value

1

Heads

0.50

2

Heads

0.25

3

Heads

0.125

4

Heads

0.0625

5

Heads

0.03125

NULL Hypothesis

Test Statistic

Decision on NULL Hypothesis


HYPOTHESIS TESTING

A hypothesis test uses data to help evaluate an initial claim about a parameter from the population.

There are 4 main steps to hypothesis testing:

State the hypotheses

Test statistic

P-value

Decision on null hypothesis

 

How likely is this to happen?

 


TYPE I VS. TYPE II ERRORS

Correct

Type II 

Type I 

Correct

TRUTH

CHOICE


Data is everywhere.

We can do amazing things with data – explore it, understand it, make inferences from it.

God gives us glimpses of this world through data.

Must use the information we find wisely and ethically.

SUMMARY


COMPLETE EXAMPLE WITH BIKE DATA

REVIEW OF DATA


You have been hired as a data analyst by IAA BikeSharing Inc. (the “Customer”) and your task is to provide key insights and recommendations about their business. 

The Customer is a bike rental business, operating in Washington DC and Arlington, VA. 

OVERVIEW OF PROBLEM


“Bike sharing systems are a new generation of traditional bike rentals where the whole process from membership to rental and return has become automatic. Through these systems, a user can easily rent a bike from a particular position and return it back to another position. Currently, there are over 500 bike-sharing programs around the world which are composed of over 500 thousand bicycles. Today, there exists great interest in these systems due to their important role in traffic, environment and health issues…

Compared to other transport services such as bus or subway, the duration of travel from the departure to the arrival position is explicitly recorded in these systems. This feature turns bike sharing systems in a virtual sensor network that can be used for sensing mobility in the city…”


MISSION STATEMENT


The company has provided detailed rental and environmental data for a two-year period (2011 and 2012). 

The data are based on their Washington DC operations and cover measures such as daily rental counts, precipitation, day of week, season, and other variables which might have a potential impact on rental behavior. 


DATA


Describe the key statistical measures of registered and casual users.

Identify any extreme observations in the counts of registered and casual users. 

Do they tend to appear on certain days? 

Certain seasons?

Describe any changes in registered users from 2011 to 2012. 

Do you see any improvements? 

Are these improvements evident across all months? 

Are there any months that stand out, in terms of over- or under- performance?


KEY GOALS OF ANALYSIS – PART 1


Identify key probabilities around customers:

Probability a customer is a registered user given the season is Fall

Probability a customer is a registered user given the season is Summer

Provide interval estimates for these probabilities

The Customer’s Marketing Division also has preconceived notions on the average number of total users for the 2012 seasons as follows to help develop their marketing budgets:

The average number of total users in the Summer is no less than 6500.

The average number of total users in the Fall is no more than 6500.

Validate the above claims using the appropriate statistical tests.


KEY GOALS OF ANALYSIS – PART 2


Describe the key statistical measures of registered and casual users.

Identify any extreme observations in the counts of registered and casual users. 

Do they tend to appear on certain days? 

Certain seasons?

Describe any changes in registered users from 2011 to 2012. 

Do you see any improvements? 

Are these improvements evident across all months? 

Are there any months that stand out, in terms of over- or under- performance?


KEY GOALS OF ANALYSIS – PART 1


REGISTERED VS. CASUAL USERS

Registered Users

Casual Users


MEASURES OF CENTER / TYPICAL

Registered Users

Mean = 3,656.2 users per day

Median = 3,662 users per day

Casual Users

Mean = 848 users per day

Median = 713 users per day


MEASURES OF VARIABILITY

Registered Users

Range = 6,946 – 20           = 6,926 users per day

Standard Deviation = 686.6 users per day

IQR = 4,783.3 – 2,488.5        = 2,294.8 users per day

Casual Users

Range = 3,410 – 2           = 3,408 users per day

Standard Deviation = 1,560.3 users per day

IQR = 1,096.5 – 315.3        = 781.2 users per day



Describe the key statistical measures of registered and casual users.

Identify any extreme observations in the counts of registered and casual users. 

Do they tend to appear on certain days? 

Certain seasons?

Describe any changes in registered users from 2011 to 2012. 

Do you see any improvements? 

Are these improvements evident across all months? 

Are there any months that stand out, in terms of over- or under- performance?


KEY GOALS OF ANALYSIS – PART 1


REGISTERED VS. CASUAL USERS

Registered Users

Casual Users


5 HIGHEST REGISTERED USER DAYS

Date

Weekday

Season

Weather Type

Temperature

(°F)

Humidity 

(%)

# Registered Users

9/26/2012

Wednesday

Fall

Clear / 

Partly Cloudy

71.3

63.1

6,946

9/21/2012

Friday

Summer

Clear / 

Partly Cloudy

68.3

66.9

6,917

10/10/2012

Wednesday

Fall

Clear / 

Partly Cloudy

61.1

63.1

6,911

10/24/2012

Wednesday

Fall

Clear / 

Partly Cloudy

67.3

63.6

6,898

10/3/2012

Wednesday

Fall

Misty

73.2

79.4

6,844


5 HIGHEST REGISTERED USER DAYS

Date

Weekday

Season

Weather Type

Temperature

(°F)

Humidity 

(%)

# Registered Users

9/26/2012

Wednesday

Fall

Clear / 

Partly Cloudy

71.3

63.1

6,946

9/21/2012

Friday

Summer

Clear / 

Partly Cloudy

68.3

66.9

6,917

10/10/2012

Wednesday

Fall

Clear / 

Partly Cloudy

61.1

63.1

6,911

10/24/2012

Wednesday

Fall

Clear / 

Partly Cloudy

67.3

63.6

6,898

10/3/2012

Wednesday

Fall

Misty

73.2

79.4

6,844


5 HIGHEST REGISTERED USER DAYS

Date

Weekday

Season

Weather Type

Temperature

(°F)

Humidity 

(%)

# Registered Users

9/26/2012

Wednesday

Fall

Clear / 

Partly Cloudy

71.3

63.1

6,946

9/21/2012

Friday

Summer

Clear / 

Partly Cloudy

68.3

66.9

6,917

10/10/2012

Wednesday

Fall

Clear / 

Partly Cloudy

61.1

63.1

6,911

10/24/2012

Wednesday

Fall

Clear / 

Partly Cloudy

67.3

63.6

6,898

10/3/2012

Wednesday

Fall

Misty

73.2

79.4

6,844


5 HIGHEST REGISTERED USER DAYS

Date

Weekday

Season

Weather Type

Temperature

(°F)

Humidity 

(%)

# Registered Users

9/26/2012

Wednesday

Fall

Clear / 

Partly Cloudy

71.3

63.1

6,946

9/21/2012

Friday

Summer

Clear / 

Partly Cloudy

68.3

66.9

6,917

10/10/2012

Wednesday

Fall

Clear / 

Partly Cloudy

61.1

63.1

6,911

10/24/2012

Wednesday

Fall

Clear / 

Partly Cloudy

67.3

63.6

6,898

10/3/2012

Wednesday

Fall

Misty

73.2

79.4

6,844


5 HIGHEST CASUAL USER DAYS

Date

Weekday

Season

Weather Type

Temperature

(°F)

Humidity 

(%)

# Casual Users

5/19/2012

Saturday

Spring

Clear / 

Partly Cloudy

68.4

45.6

3,410

5/27/2012

Sunday

Spring

Clear / 

Partly Cloudy

76.0

69.7

3,283

4/7/2012

Saturday

Spring

Clear / 

Partly Cloudy

54.6

25.4

3,252

9/15/2012

Saturday

Summer

Clear / 

Partly Cloudy

69.1

50.1

3,160

3/17/2012

Saturday

Winter

Misty

61.1

75.6

3,155


5 HIGHEST CASUAL USER DAYS

Date

Weekday

Season

Weather Type

Temperature

(°F)

Humidity 

(%)

# Casual Users

5/19/2012

Saturday

Spring

Clear / 

Partly Cloudy

68.4

45.6

3,410

5/27/2012

Sunday

Spring

Clear / 

Partly Cloudy

76.0

69.7

3,283

4/7/2012

Saturday

Spring

Clear / 

Partly Cloudy

54.6

25.4

3,252

9/15/2012

Saturday

Summer

Clear / 

Partly Cloudy

69.1

50.1

3,160

3/17/2012

Saturday

Winter

Misty

61.1

75.6

3,155


5 HIGHEST CASUAL USER DAYS

Date

Weekday

Season

Weather Type

Temperature

(°F)

Humidity 

(%)

# Casual Users

5/19/2012

Saturday

Spring

Clear / 

Partly Cloudy

68.4

45.6

3,410

5/27/2012

Sunday

Spring

Clear / 

Partly Cloudy

76.0

69.7

3,283

4/7/2012

Saturday

Spring

Clear / 

Partly Cloudy

54.6

25.4

3,252

9/15/2012

Saturday

Summer

Clear / 

Partly Cloudy

69.1

50.1

3,160

3/17/2012

Saturday

Winter

Misty

61.1

75.6

3,155


5 HIGHEST CASUAL USER DAYS

Date

Weekday

Season

Weather Type

Temperature

(°F)

Humidity 

(%)

# Casual Users

5/19/2012

Saturday

Spring

Clear / 

Partly Cloudy

68.4

45.6

3,410

5/27/2012

Sunday

Spring

Clear / 

Partly Cloudy

76.0

69.7

3,283

4/7/2012

Saturday

Spring

Clear / 

Partly Cloudy

54.6

25.4

3,252

9/15/2012

Saturday

Summer

Clear / 

Partly Cloudy

69.1

50.1

3,160

3/17/2012

Saturday

Winter

Misty

61.1

75.6

3,155


5 LOWEST REGISTERED USER DAYS

Date

Weekday

Season

Weather Type

Temperature

(°F)

Humidity 

(%)

# Registered Users

10/29/2012

Monday

Fall

Rain or Snow

54.8

88.0

20

1/27/2011

Thursday

Winter

Clear / 

Partly Cloudy

34.1

68.8

416

12/26/2012

Wednesday

Winter

Rain or Snow

38.2

82.3

432

12/25/2011

Sunday

Winter

Clear / 

Partly Cloudy

40.8

68.1

451

1/26/2011

Wednesday

Winter

Rain or Snow

36.0

86.3

472


5 LOWEST CASUAL USER DAYS

Date

Weekday

Season

Weather Type

Temperature

(°F)

Humidity 

(%)

# Casual Users

10/29/2012

Monday

Fall

Rain or Snow

54.8

88

2

12/26/2012

Wednesday

Winter

Rain or Snow

38.2

82.3

9

1/18/2011

Tuesday

Winter

Misty

35.9

86.2

9

1/27/2011

Thursday

Winter

Clear / 

Partly Cloudy

34.1

68.8

15

1/12/2011

Wednesday

Winter

Clear / 

Partly Cloudy

32.2

60.0

25


Describe the key statistical measures of registered and casual users.

Identify any extreme observations in the counts of registered and casual users. 

Do they tend to appear on certain days? 

Certain seasons?

Describe any changes in registered users from 2011 to 2012. 

Do you see any improvements? 

Are these improvements evident across all months? 

Are there any months that stand out, in terms of over- or under- performance?


KEY GOALS OF ANALYSIS – PART 1


REGISTERED USERS OVER TIME


REGISTERED USERS OVER TIME


REGISTERED USERS OVER TIME


REGISTERED USERS OVER TIME


AVERAGE REGISTERED USERS YEAR OVER YEAR


AVERAGE REGISTERED USERS YEAR OVER YEAR


AVERAGE REGISTERED USERS YEAR OVER YEAR


Identify key probabilities around customers:

Probability a customer is a registered user given the season is Fall

Probability a customer is a registered user given the season is Summer

Provide interval estimates for these probabilities

The Customer’s Marketing Division also has preconceived notions on the average number of total users for the 2012 seasons as follows to help develop their marketing budgets:

The average number of total users in the Summer is no less than 6500.

The average number of total users in the Fall is no more than 6500.

Validate the above claims using the appropriate statistical tests.


KEY GOALS OF ANALYSIS – PART 2


Last modified: Monday, October 17, 2022, 1:28 PM