Transcript Statistics

Lecture VI
Statistics
Lecture questions
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Mathematical statistics
Sampling
Statistical population and sample
Descriptive statistics
Definition of Statistics
• Statistics is the study of the collection,
organization, analysis, interpretation, and
presentation of data. It deals with all
aspects of this, including the planning of
data collection in terms of the design of
experiments.
• Mathematical statistics is the study of
statistics from a mathematical standpoint.
Data analysis
• descriptive statistics - the part of statistics
that describes data, i.e. summarises the
data and their typical properties.
• inferential statistics - the part of statistics
that draws conclusions from data (using
some model for the data). It uses
mathematical probabilities, make
generalizations about a large group based
on data collected from a small sample of
that group.
Sampling
• In statistics, sampling is concerned with the
selection of a subset of individuals from
within a statistical population to estimate
characteristics of the whole population.
• The advantages of sampling are
1. the cost is lower
2. data collection is faster
3. since the data set is smaller it is possible to
ensure homogeneity and to improve the
accuracy and quality of the data.
Statistical population and
sample
• A statistical population is a set of entities
concerning which statistical inferences are
to be drawn, often based on a random
sample taken from the population. (N is
population size).
• A sample is a subset of a population. n is
sample size.
Sampling process stages
• Defining the population of concern
• Specifying a sampling method for selecting
items or events from the frame
• Determining the sample size
• Implementing the sampling plan
• Sampling and data collecting
Properties of a “good” sample
• Adequate sample size (statistical power)
• Random selection (representative)
Sampling methods
• Probability methods
a.random sampling
b.systematic sampling
c. stratified sampling
• Nonprobability methods
a.Cluster sample.
b.Convenience sample.
The advantage of probability sampling is that
sampling error can be calculated.
Simple random sample
• simple random sample is a subset of
individuals (a sample) chosen from a
larger set (a population). Each individual is
chosen randomly and entirely by chance,
such that each individual has the same
probability of being chosen at any stage
during the sampling process, and each
subset of k individuals has the same
probability of being chosen for the sample
as any other subset of k individuals[1].
This process and technique is known as
simple random sampling
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