HP (Hewlett-Packard) 50g ユーザーズマニュアル

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L @)STAT @PLOT  @SCATR
produce scattergram of y vs. x
@STATL
show line for log fitting
Θ To return to STAT menu use: L@)STAT
Θ To get your variable menu back use: J.
Confidence intervals
Statistical inference is the process of making conclusions about a population 
based on  information from sample data.   In order for the sample data to be 
meaningful, the sample must be random, i.e., the selection of a particular 
sample must have the same probability as that of any other possible sample out 
of a given population.  The following are some terms relevant to the concept of 
random sampling:
Θ Population:  collection of all conceivable observations of a process or
attribute of a component. 
Θ Sample: sub-set of a population.
Θ Random sample: a sample representative of the population.
Θ Random variable: real-valued function defined on a sample space.  Could
be discrete or continuous.
If the population follows a certain probability distribution that depends on a 
parameter 
θ, a random sample of observations (X
1
,X
2
,X
3
,... , X
n
), of size n, 
can be used to estimate 
θ.
Θ Sampling distribution: the joint probability distribution of X
1
,X
2
,X
3
,... , X
n
.
Θ A statistic: any function of the observations that is quantifiable and does not
contain any unknown parameters.  A statistic is a random variable that
provides a means of estimation.