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T-Statistic
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Simplify T-Statistic Learning with Plainmath's Expert Tips and Real-World Examples
Recent questions in T-Statistic
College Statistics
Answered question
Cale Terrell
2022-10-26
X
1
,
.
.
.
X
n
iid with
f
(
x
;
θ
)
=
1
θ
(
1
+
x
)
−
θ
+
1
θ
For the statistic
T
(
x
)
=
(
X
1
,
.
.
.
,
X
n
)
(which I guess just means compute the MLE in a general sense for the sample)
College Statistics
Answered question
Evelyn Freeman
2022-10-23
Say that given an estimator
T
^
, of a statistic
T
, we have that
n
(
T
^
−
T
)
→
D
N
(
0
,
V
a
r
)
, where
n
is the sample size. Consider now
−
T
^
, does the asymptotic result hold also in this case? If yes/no, under which conditions?
College Statistics
Answered question
Nayeli Osborne
2022-10-22
Let
θ
′
,
θ
∈
Θ
such that
θ
′
≠
θ
. I want to prove that
T
is a sufficient statistic if and only if
f
(
x
,
θ
′
)
f
(
x
,
θ
)
is a function dependent only on
T
(
x
)
.
College Statistics
Answered question
Raiden Barr
2022-10-22
Showing that
∑
i
=
1
n
X
i
2
is a sufficient statistic for
θ
from an
N
(
0
,
θ
)
population
College Statistics
Answered question
Ignacio Riggs
2022-10-21
Why is an “unbiased estimator” called as such?
College Statistics
Answered question
propappeale00
2022-10-18
The concept of a minimal sufficient statistic, which captures nothing more than the essential.
Is it true that any random variable
X
as above has a sufficient statistic?
College Statistics
Answered question
duandaTed05
2022-10-13
Given
X
1
,
X
2
,
…
,
X
n
are i.i.d with
f
(
x
)
=
1
π
1
1
+
x
2
. Find the minimal sufficient statistic for
1
π
n
(
∏
i
=
1
n
1
+
(
x
i
−
θ
)
2
)
.
If we are given the entire sample set, we could easily obtain the order statistic of that sample, so how could
T
(
X
)
=
(
x
1
,
…
,
x
n
)
is wrong?
College Statistics
Answered question
unjulpild9b
2022-09-26
Whether to use
Z
or
T
test statistic for a sample of
50
, known sample variance and unknown population variance
College Statistics
Answered question
gaby131o
2022-09-25
The
t
-statistic for the sample mean is
t
=
x
¯
−
μ
s
How is the sample estimate of the standard error computed in this context? In particular, does it make use of the population mean or the sample mean?
College Statistics
Answered question
Joyce Sharp
2022-09-24
Find the complete statistic for Uniform
θ
,
θ
+
1
College Statistics
Answered question
zaviknuogg
2022-09-23
Suppose we have
X
1
,
…
,
X
n
i.i.d,
X
i
∼
Exp
(
1
,
μ
)
(pdf is
f
μ
(
x
)
=
e
−
(
x
−
μ
)
for
x
≥
μ
and
0
for
x
<
μ
). Is there any one dimensional (i.e.
T
:
R
n
→
R
) sufficient statistic for parameter
μ
? Obvious two dimensional sufficient statistic is
T
(
x
1
,
…
,
x
n
)
=
(
∑
x
i
,
min
x
i
)
College Statistics
Open question
cieloeventosm4
2022-08-25
So, assuming that
W
0
is the intercept and
W
1
is the coefficient in a simple linear regression model, the way to calculate a t statistic for
W
1
is
(
W
1
−
0
) /std error of
W
1
how do I calculate the t statistic for
W
0
?
College Statistics
Open question
Zaiden Soto
2022-08-20
The concept of a minimal sufficient statistic, which captures nothing more than the essential.
Suppose
X
has a sufficient statistic
T
. Must it also have a minimal sufficient statistic?
College Statistics
Open question
balafiavatv
2022-08-19
How to rigorously justify using a
T
-test rather than just
X
¯
−
Y
¯
?
College Statistics
Open question
Shyla Odom
2022-08-19
A random variable
X
is distributed with pdf
f
(
x
,
θ
)
.
T
(
x
)
is a sufficient statistic for
θ
,
, and
S
(
x
)
is a minimal sufficient statistic for
θ
.
. The following is stated in my notes without explanation:
E
θ
(
T
∣
S
)
=
g
(
S
)
for some function
g
(independent of
θ
.
).
E
θ
here refers to the fact that the expectation is a function of
θ
.
.
how can we more formally show this is true, using the definition of sufficiency?
College Statistics
Open question
June Mejia
2022-08-17
Exponential family:
f
(
x
|
θ
)
=
c
(
x
)
d
(
θ
)
exp
[
a
(
θ
)
b
(
x
)
]
T
=
∑
b
(
x
i
)
Show that
T
is a sufficient statistic
College Statistics
Answered question
balafiavatv
2022-08-10
If we know the value of a sufficient statistic, but not the sample that generated it, am I right to suspect that the conditional distribution of any other statistic given the sufficient statistic will not depend on the parameter of interest?
College Statistics
Answered question
metodystap9
2022-08-09
How to show
T
(
x
)
isn't a sufficient statistic?
College Statistics
Answered question
Gifty Addae
2022-07-30
College Statistics
Answered question
Damien Horton
2022-07-23
Given a sample
X
1
,
.
.
.
,
X
n
∼
N
(
θ
,
θ
2
)
show, using the definition of completeness, that the statistic
T
=
(
∑
i
X
i
,
∑
i
X
i
2
)
is not complete for
n
≥
2
. Use the fact that
E
θ
[
2
(
∑
i
X
i
)
2
−
(
n
+
1
)
∑
i
X
i
2
]
=
0
The statistic
T
(
X
→
)
is said to be complete for the distribution of
X
→
if, for every misurable function
g
,
E
θ
[
g
(
T
)
]
=
0
∀
θ
⟹
P
θ
(
g
(
T
)
=
0
)
=
1
∀
θ
1
2
3
4
T-Statistics can help you answer questions about the mean of a population given a sample. This is done by using equations to calculate if the mean of the population is significantly different from a specific value, or to compare two distinct samples to each other. T-Statistics can provide powerful insights and answers, and are a great tool for anyone who wants to analyze a sample to draw conclusions. With the help of a t-statistic, you can answer questions such as "is the average of this sample significantly different from this given value?". T-Statistics can provide helpful information and give you the tools necessary to make effective decisions.
College Statistics
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Confidence intervals
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