In Problems 43 - 48 , the graph of the function g is formed by applying the indicated sequence of transformations to the given function f . Find an equation for the function g and graph g using − 5 ≤ x ≤ 5 and − 5 ≤ y ≤ 5 . The graph of f x = x 2 is reflected in the x axis and shifted to the left 2 units and up 4 units.
In Problems 43 - 48 , the graph of the function g is formed by applying the indicated sequence of transformations to the given function f . Find an equation for the function g and graph g using − 5 ≤ x ≤ 5 and − 5 ≤ y ≤ 5 . The graph of f x = x 2 is reflected in the x axis and shifted to the left 2 units and up 4 units.
In Problems
43
-
48
, the graph of the function
g
is formed by applying the indicated sequence of transformations to the given function
f
. Find an equation for the function
g
and graph
g
using
−
5
≤
x
≤
5
and
−
5
≤
y
≤
5
.
The graph of
f
x
=
x
2
is reflected in the
x
axis and shifted to the left
2
units and up
4
units.
Is it possible to show me how to come up with an exponential equation by showing all the steps work and including at least one mistake that me as a person can make. Like a calculation mistake and high light what the mistake is. Thanks so much.
iid
1. The CLT provides an approximate sampling distribution for the arithmetic average Ỹ of a
random sample Y₁, . . ., Yn f(y). The parameters of the approximate sampling distribution
depend on the mean and variance of the underlying random variables (i.e., the population
mean and variance). The approximation can be written to emphasize this, using the expec-
tation and variance of one of the random variables in the sample instead of the parameters
μ, 02:
YNEY,
· (1
(EY,, varyi
n
For the following population distributions f, write the approximate distribution of the sample
mean.
(a) Exponential with rate ẞ: f(y) = ß exp{−ßy}
1
(b) Chi-square with degrees of freedom: f(y) = ( 4 ) 2 y = exp { — ½/ }
г(
(c) Poisson with rate λ: P(Y = y) = exp(-\}
>
y!
y²
2. Let Y₁,……., Y be a random sample with common mean μ and common variance σ². Use the
CLT to write an expression approximating the CDF P(Ỹ ≤ x) in terms of µ, σ² and n, and
the standard normal CDF Fz(·).
Need a deep-dive on the concept behind this application? Look no further. Learn more about this topic, subject and related others by exploring similar questions and additional content below.