16
1 Introduction to applied statistics & applied statistical methods Prof. Dr. Chang Zhu 1 Aim Basic concepts about statistical analysis Apply the theories and techniques for data analysis Apply the SPSS software to conduct data analysis Interpret the output of data analysis

Applied statistics lecture 1

Embed Size (px)

Citation preview

Page 1: Applied statistics lecture 1

1

Introduction to applied statistics

& applied statistical methods

Prof. Dr. Chang Zhu1

Aim

• Basic concepts about statistical analysis

• Apply the theories and techniques for

data analysis

• Apply the SPSS software to conduct data

analysis

• Interpret the output of data analysis

Page 2: Applied statistics lecture 1

2

Learning approach

• Theory/concepts integrated with practical

application/exercises

Planning

• Content and assignment

Page 3: Applied statistics lecture 1

3

• SPSS (originally, Statistical Package for the

Social Sciences)

Page 4: Applied statistics lecture 1

4

Working with data

• Starting with SPSS

Working with SPSS

• Data view

• Variable view

Page 5: Applied statistics lecture 1

5

Handling data

• Open

• Opening a datafile

• Open an excel file

• Import data

• Transform excel file to spss file

• Save

Data input: an example

•Variable name Coding value

Student ID ID 1-50

Gender gender 1=male,

2=female

Economic level Econ 1=low,

2=middle

3=upper class

Reading level ReadLevel 1=low, 2= middle,

3= high

Page 6: Applied statistics lecture 1

6

Getting to know your data

• What are variables?

• Which types of variables are they?

• What are cases?

Variable names

• A variable

• a quantitative expression of a construct

• can be measured

• can vary

e.g. age, gender, educational background,

studying subject….

Page 7: Applied statistics lecture 1

7

Variable names in SPSS

• A variable name must be

• unique

• only in certain format: Eg. school, or

sch_name; not school-name, school

name

Type of variables

• Numeric: numbers

• String: letters, and numbers

Important to know: if it is a string

variable, you cannot compute it or

conduct numeric operations

Page 8: Applied statistics lecture 1

8

Type of variables

• Nominal

• Ordinal

• Interval (scale)

• Ratio (scale)

Type of variables

• Nominal

• Ordinal

• Interval

• Ratio

Categorical Data

Continuous Data

Scale

Page 9: Applied statistics lecture 1

9

Nominal and Ordinal

Categories

• Nominal Variables

– No meaningful Order in Choice

– E.g, gender (male, female)

profession (teacher, doctor, …)

Nominal and Ordinal

Categories

• Ordinal Variables

– Related in a Meaningful Sequence

– The order matters but not the difference between

values

– E.g, the order of winning in a competition (1, 2, 3)

hotel stars (1, 2, 3, 4)

Page 10: Applied statistics lecture 1

10

Categorical Data

Nominal and Ordinal Variables collect data

• Require Respondents to Choose from

o Independent categories

o Mutually exclusive categories

• Questions which ask for choice from 1 or

more categories

Interval Variables

• Same as Ordinal but always equally spaced

categories

• Cannot identify a Start Point on the scale

used; No absolute measure

•Inefficient ................................Efficient

1.........2................3..............4..............5

•No agreed definition of ‘Efficiency’

Page 11: Applied statistics lecture 1

11

Ratio Variables

• Ratio scales are like interval scales, but they

have true zero points.

• E.g. How many meetings did you attend this

week? (0, 1, 2, 3)

Continuous data

Interval and Ratio variables (Scale) collect data

• responses can be related to each other

• range of possible answers have an equal

distance between each other

Page 12: Applied statistics lecture 1

12

Measurement in SPSS

• In SPSS, there are three options for a

measurement:

• Nominal, Ordinal and Scale (either interval or

ratio)

Handling data

• Scoring

• Code/Recode

• Label

• Compute

• Split

• Select cases

Page 13: Applied statistics lecture 1

13

Compute

Recode

Page 14: Applied statistics lecture 1

14

PointCarré

• Introduction to Applied Statistics and

Applied Statistical Methods

• Example data

Exercise

• Computer SPSS Exercise:

Creating 4-6 variables in SPSS

Specify the correct measurement of the

variable

Create at least 10 cases

Calculate Mean, SD, Median, ….

Recode, compute….

Page 15: Applied statistics lecture 1

15

Exercise

• (more experienced students)

– Selecting of data

– Splitting of data

– Explore

– Graphics

– Charts

Assignment

• Create your own sample data

• Min. 10 variables

• Min. 50 cases

Page 16: Applied statistics lecture 1

16

• Questions?