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Слайды и текст к этой презентации:
№1 слайд
Содержание слайда: BBA182 Applied Statistics
Week 1 (2) Introduction to Statistics
Dr Susanne Hansen Saral
Email: susanne.saral@okan.edu.tr
https://piazza.com/class/ixrj5mmox1u2t8?cid=4#
www.khanacademy.org
№2 слайд
Содержание слайда: Population vs. Sample
№3 слайд
Содержание слайда: Statistical key definitions
POPULATION
A population is the collection of all items of interest under investigation. N represents the population size
Populations are usually very large, therefore it is impossible to investigate entire populations. It would be too
Time consuming
Costly
№4 слайд
Содержание слайда: Statistical key definitions SAMPLE
A sample is an observed subset of the population
n represents the sample size
№5 слайд
Содержание слайда: Statistical key definitions
PARAMETER VS. STATISTICS
A parameter is a specific characteristic of a population (mean, median, range, etc.)
Example: The mean (average) age of all students at OKAN
A statistic is a specific characteristic of a sample (sample mean, sample median, sample range, etc.)
Example: The mean (average) age of a sample of 500 students at OKAN
№6 слайд
Содержание слайда: Why do we collect samples instead of
investigating the entire population?
Populations usually are infinite and their parameters are rarely
known.
The only way we can find the estimated value of a population
parameter is by collecting a sample from the population of interest.
№7 слайд
Содержание слайда: Why do we collect samples instead of
investigating the entire population?
Populations are usually infinite. Therefore impossible to investigate the entire population
Less time consuming to investigate a subset (sample) of the population than investigating the entire population. Timely delivery of the results.
Less costly to administer, because workload is reduced
It is possible to obtain statistical valid and reliable results based on samples.
№8 слайд
Содержание слайда: Randomness (Turkish: Rasgelelik)
Our final objective in statistics is to make valid and reliable statements about the population based on sample data. (inferential statistics)
Therefore we need a sample that represents the entire population
One important principle that we must follow in the sample selection process is randomness.
№9 слайд
Содержание слайда: Main sampling techniques
Simple random sampling
Systematic sampling
Both techniques respect randomness and therefore provide reliable and valid data for statistical analysis
№10 слайд
Содержание слайда: Random Sampling
Simple random sampling is a procedure in which:
Each member/item in the population is chosen strictly by chance
Each member/item in the population has an equal chance to be chosen
Each member/item has to be independent from each other
Every possible sample of n objects is equally likely to be chosen
The resulting sample is called a random sample.
№11 слайд
Содержание слайда: Sampling error
In statistics we make decision about a population based on sample data, because the population parameter is unknown. Ex. Elections
Statisticians know that the sample statistic is rarely identical to the population parameter, but the two values are close.
The difference between the sample statistic and the population parameter is called sampling error.
№12 слайд
Содержание слайда: Inferential statistics
Drawing conclusion about a population
based a sample information.
№13 слайд
Содержание слайда: Inferential statistics
To draw conclusions about the population based on a
sample we need to collect data.
№14 слайд
Содержание слайда: What is data?
Data = information
Data can be numbers: Size of a hotel bill, number of hotel guests, number of nights stayed in a Hilton hotel, size of a swimming-pool, etc.
Data can be categories: Gender, Nationalities, marital status, tourist attractions, codes, university major, etc.
№15 слайд
Содержание слайда: Data and context
Data are useless without a context.
When we deal with data we need to be able to answer at least the two following first questions in order to make sense of the data:
1) Who?
2) What?
2) When?
3) Where?
4) How?
№16 слайд
Содержание слайда: Data and context
Data values are useless without their context
Consider the following:
Amazon.com may collect the following data:
What information can we get out of this?
№17 слайд
Содержание слайда: Data and context
We need to put the data into context in order to get information out of it
№18 слайд
Содержание слайда: What is statistics?
It is a basic study of transforming data into information :
how to collect it
how to organize it
how to summarize it, and finally
to analyze and interpret it
№19 слайд
Содержание слайда: Where does data come from?
Market research
Survey (online questionnaires, paper questionnaires, etc.)
Interviews
Research experiments (medicine, psychology, economics)
Databases of companies, banks, insurance companies
Internet
other sources
№20 слайд
Содержание слайда: Descriptive Statistics
Collect data
e.g., Survey, interview
Present data
e.g., Tables and graphs
Summarize data
e.g., Sample mean =
№21 слайд
Содержание слайда: Create your account in
Khan Academy
Go to www.khanacademy.org create an account with your email address or your Facebook account (if you have one).
Add me (Susanne Hansen Saral) as a coach:
Follow the instructions from the hand-out
№22 слайд
Содержание слайда: PIAZZA.COM
Piazza.com – class platform for:
Posting class lectures, course syllabus, class announcement, youtube videos, etc.