Term
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Definition
collection of numerical data
AND
collection, analysis, interpretation
or explanation, and presentation of
numerical data. |
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Term
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Definition
consists of methods
dealing with the collection, tabulation,
summarization, and presentation of data |
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Term
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Definition
onsists of methods
that permit one to reach conclusions and
make estimates about populations based
upon information from a sample |
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Term
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Definition
all members of a class or category of
interest |
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Term
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Definition
portion or subset of a population |
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Term
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Definition
enumeration or evaluation of all
members of a populatio |
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Term
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Definition
– a summary measure of the individual
observations made in a census |
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Term
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Definition
a summary measure of the individual
observations made by evaluation of a sampl |
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Term
5 reasons Why Should Engineers
Study Statistics? |
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Definition
Statistics enables one to:
1. Present and describe numerical information properly
2. Draw conclusions about large populations from sample
information
3. Improve processes (engineer quality into a product)
4. Properly design experiments and model physical
relationships
5. Obtain reliable predictions of real-world responses |
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Term
|
Definition
collection of related
categorical or numerical information |
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Term
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Definition
a characteristic that can take
different values (ex. temperature, height,
cost) |
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Term
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Definition
a characteristic that has a
fixed value (ex. pi, e – natural log) |
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Term
|
Definition
only
whole number values (countable values,
such as the number of students in a
class; number of planes departing an
airport in an hour) |
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Term
|
Definition
represent
numerical measurements on a
continuous scale (ex. length, weight,
age) |
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Term
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Definition
variables based
on counts or proportions (number of
times an event occurs, % of defective
items, etc.) |
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Term
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Definition
continuous
variables such as time, height, weight,
etc. |
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Term
|
Definition
Defines a characteristic of an object or
event by a specific criterion that is
precisely the same to different
individuals and will remain the same
over time
Not a vague description that may be
interpreted differently by different
individuals |
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Term
What is an example of operational an definition? |
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Definition
Coffee is too hot to drink if it is
warmer than 180 degrees Fahrenheit.
The time it takes to make a cake is
measured from the time the first
ingredient is added to the mixing bowl
until the cake is cooked |
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Term
|
Definition
Cost – cheaper to
study a small group
than all individuals
Time – less time to
collect/analyze data
Accuracy – smaller
data sizes reduce the
opportunity for “human
errors” when compiling
data
Feasibility – it is not
practical, nor possible
(in the case of
destructive testing) to
study a complete
population
Scope of information –
can gather more
information per
individual when fewer
individuals are studied |
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Term
|
Definition
a sample in
which the probability or chance of
selecting an element from the
population is known |
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Term
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Definition
not as
scientifically rigorous, used when a
probability sample is not possible or
cost effectiv |
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Term
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Definition
All elements of a population have an
equal chance of being included in the
sampl |
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Term
Sampling with replacement |
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Definition
a member of a
population can be represented more than
once (ex. in a random drawing for various
door prizes, the winners’ names are put
back into the “pot” after each drawing) |
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Term
Sampling without replacement |
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Definition
a member
of a population can only be represented
once (ex. you can only win one door prize –
your name is not returned to the “pot”) |
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Term
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Definition
based on easy
availability of members of a population (“take
what you can get”) |
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Term
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Definition
– member selection based on
the opinion or judgment of some expert |
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Term
|
Definition
sample members based on
characteristics judged to be important to the
study (ex. if 10% of the population is known to
be left-handed, 10% of the sample will be
chosen to be left-handed) |
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Term
Benefits of Nonprobability Samples? |
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Definition
Advantages
Convenient
Speedy
Lower cost
Good for rough
approximations such
as for pilot
investigations
Disadvantages
Lack of accuracy due to
bias
Limited generalization of
results possible |
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Term
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Definition
– fitness for use
Defined by the needs, expectations,
perceptions, and experience of the
customer
“Beauty is in the eye of the beholder |
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Term
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Definition
Useful for process improvement, a.k.a.
quality improvement
Plan Do Check Act |
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