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Statistical Measures of Data
Statisticians utilize various kinds of measurements based on
the collected data as an initial step towards developing
inferences on the population from which observations were taken.
Some measures reflect, in a sense, the center or middle point of
a set of data; others provide a measure of the variability of the
data. These measures can apply to either the population as a
whole or to a sample taken from the population.
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Nonparametric Statistics
( 3 items )
Nonparametric Statistics
Nonparametric statistics is the field of statistical inference
where no assumption is made about the probability distribution of
the population under study. While most sample tests assume that
the parent population(s) of the sample data is (are) normally
distributed, the statistical methods of nonparametric statistics
are valid for any probability distribution that the population
may have (with certain exceptions).
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Sampling Theory
( 7 items )
Sampling Theory
Sampling theory is the field of statistics that is involved
with the collection, analysis and interpretation of data gathered
from random samples of a population under study. The application
of sampling theory is concerned not only with the proper
selection of observations from the population that will
constitute the random sample; it also involves the use of
probability theory, along with prior knowledge about the
population parameters, to analyze the data from the random sample
and develop conclusions from the analysis. The normal
distribution, along with related probability distributions, is
most heavily utilized in developing the theoretical background
for sampling theory.
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Related Continuous Probability Distribution
( 3 items )
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Normal Distribution
( 4 items )
Normal Distribution
The normal distribution with parameters m
and s , denoted as N(m,s2)
, is the continuous probability distribution with the following
probability density function:
where p = 3.14159..... and e
= 2.71828..... .
A random variable that has a normal distribution is called a normal
random variable and is said to be normally distributed.
Also known as the Gaussian distribution, the normal distribution
is the cornerstone of the field of statistical inference, and
definitely the most important continuous probability distribution
in the study of statistics.
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Discrete Probability Distributions
( 10 items )
Discrete Probability Distribution
A discrete probability distribution is a
function with a domain whose elements are the discrete values
that a discrete random variable can assume, and a range whose
elements are the probabilities associated with the values in the
domain. The domain of a discrete probability distribution
consists of the sample points of a discrete sample space. The sum
of all the probability values in the range is equal to 1. The
mean and variance of a discrete probability distribution are the
mean and variance, respectively, of all elements in its range.
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Probability Distributions
( 5 items )
Probability Distributions
The probability distribution of a random
variable is a function whose domain contains the values that the
random variable can assume, and whose range is a set of values
associated with the probabilities of the elements of the domain.
The probability distribution of a discrete random variable is
called a discrete probability distribution,
while the probability distribution of a continuous random
variable is called a continuous probability distribution.
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Random Variables
( 2 items )
Random Variables
A random variable is a function that can take
on values corresponding to a sample point in a sample space. As
each sample point is associated with a probability value, random
variables assumes its values with a certain probability that
depends on the sample point on which the value is based. A random
variable that is defined over a discrete sample space has a
finite or countable number of possible values and is called a discrete
random variable. A random variable that is defined over
a continuous sample space has an infinite set of possible values
and is called a continuous random variable.
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Events and Probabilities
( 4 items )
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Probability Concepts
( 4 items )
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Statistical Representations of Data
( 3 items )
Statistical Representation of Data
The statistician is often faced with the task of summarizing
large amounts of data in a compact format that yields meaningful
information concerning the data. Without displaying the values
for each observation taken from the population, it is possible to
present the data concisely and meaningfully using certain
procedures. Such procedures often involve frequency distributions
or graphs of the data.
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Statistics Basics
( 2 items )
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