11.07.2020

My bed is 3 inches by 2 2/3 inches by 1/3 inch.what is the volume of my bed

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17.02.2022, solved by verified expert
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volume of the bed is My bed is 3 inches by 2 2/3 inches by 1/3 inch.what, №15219272, 11.07.2020 10:42 cubic inches.

Step-by-step explanation:

It is given that the bed is My bed is 3 inches by 2 2/3 inches by 1/3 inch.what, №15219272, 11.07.2020 10:42 inches, thus the volume of the bed is given as:

My bed is 3 inches by 2 2/3 inches by 1/3 inch.what, №15219272, 11.07.2020 10:42 where l is the length, w is the width and h is the height of the bed.

Now, substituting the given values, we get

My bed is 3 inches by 2 2/3 inches by 1/3 inch.what, №15219272, 11.07.2020 10:42

My bed is 3 inches by 2 2/3 inches by 1/3 inch.what, №15219272, 11.07.2020 10:42

My bed is 3 inches by 2 2/3 inches by 1/3 inch.what, №15219272, 11.07.2020 10:42 cubic inches.

Thus, the volume of the bed is My bed is 3 inches by 2 2/3 inches by 1/3 inch.what, №15219272, 11.07.2020 10:42 cubic inches.

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Faq

Mathematics
Step-by-step answer
P Answered by PhD
Dam you have a small bed

3 * 1/3 * 2 2/3

= 1 * 2 2/3

= 2 2/3 cubic inches
Mathematics
Step-by-step answer
P Answered by Master

2.7

Step-by-step explanation:

v=lwh

v=(3)(2 2/3)(1/3)

v=2.7

i divided 2/3 and got .666667 so i just rounded that to .7, so it might be a bit off in the rounding

hope this helps!

Mathematics
Step-by-step answer
P Answered by PhD

Step-by-step explanation:

volume \: of \: bed  \\  \\ = 3 \times 2 \frac{2}{3}  \times  \frac{1}{3}   \\ \\  = 3 \times  \frac{8}{3}  \times  \frac{1}{3}  \\  \\  =  \frac{8}{3}  \\  \\  = 2 \frac{2}{3}  \:  {inch}^{3}

Mathematics
Step-by-step answer
P Answered by PhD

Step-by-step explanation:

volume \: of \: bed  \\  \\ = 3 \times 2 \frac{2}{3}  \times  \frac{1}{3}   \\ \\  = 3 \times  \frac{8}{3}  \times  \frac{1}{3}  \\  \\  =  \frac{8}{3}  \\  \\  = 2 \frac{2}{3}  \:  {inch}^{3}

Mathematics
Step-by-step answer
P Answered by Specialist

2 2/3 inches cubed

Step-by-step explanation:

volume is length x width x height. 3 x 2 2/3 x 1/3 = 2 2/3.

Mathematics
Step-by-step answer
P Answered by PhD

3x + 2y + 1 = 0

subtract 3x+1 from each side

3x + 2y + 1  - 3x -1=  -3x -1

2y = -3x-1

divide by 2 on each side

2y/2 = -3x/2 -1/2

y = -3/2 x -1/2

this is in the form y = mx +b where m is the slope

m = -3/2

the slope is -3/2

Mathematics
Step-by-step answer
P Answered by PhD

3x + 2y + 1 = 0

subtract 3x+1 from each side

3x + 2y + 1  - 3x -1=  -3x -1

2y = -3x-1

divide by 2 on each side

2y/2 = -3x/2 -1/2

y = -3/2 x -1/2

this is in the form y = mx +b where m is the slope

m = -3/2

the slope is -3/2

Mathematics
Step-by-step answer
P Answered by Specialist

Step-by-step explanation:

Hello!

Given the data for the variables:

Y: Selling price of a house on the shore of Tawas Bay

X₁: Number of bathrooms of a house on the shore of Tawas Bay.

X₂: Square feet of a house on the shore of Tawas Bay.

X₃: Number of bedrooms of a house on the shore of Tawas Bay.

The multiple regression model is Y= α + β₁X₁ + β₂X₂ + β₃X₃ + εi

a. Using software I've entered the raw data and estimated the regression coefficients:

^α= a= -5531.01

Represents the mean selling price of the houses when 0 bathrooms, 0 square feet and 0 bedrooms.

^β₁= b₁= -1386.21

Represents the modification of the mean selling price of the houses when the number of bathrooms increases in one unit and the square feet and number of bedrooms remain unchanged.

^β₂= b₂= 60.28

Represents the modification of the mean selling price of the houses when the square feet increase in one unit and the number of bathrooms and bedrooms remain unchanged.

^ β₃= b₃= 54797.08

Represents the modification of the mean selling price of the houses when the number of bedrooms increase in one unit and the number of bathrooms and square feet of the houses remain unchanged.

^Y= -5531.01 -1386.21X₁ + 60.28X₂ + 54797.08X₃

b)

R²= 0.55

R²Aj= 0.49

The coefficient of determination gives you an idea of how much of the variability of the dependent variable (Y) is due to the explanatory variables. Each time you add another explanatory variable to the regression the coefficient increases regarding of real contribution of the new variable. This could lead to thinking (wrongly) that the new variables are good to explain the dependent variable.  

The adjusted coefficient of determination is a correction made to the raw coefficient of determination to have a more unbiased estimation of the effect the independent variables have over the dependent variable.

⇒ As you can see both coefficient are around 50%, which means that these explanatory variables

c)

The standard error estimate, this is the estimate of the population variance of the errors. In the ANOVA is represented by the Mean Square of the errors (MME)

Se²= MME= 3837640577.01

Se= 61948.6931

d) and f)

For the hypotheses tests for each slope the t- and p-values are:

α: 0.05

β₁: t_{H_0}= \frac{b_1-\beta_1 }{Sb_1} t= -0.06; p-value: 0.9528 ⇒ Do not reject H₀, the test is not significant.

β₂: t_{H_0}= \frac{b_2-\beta_2 }{Sb_2} t= 2.56; p-value: 0.0180 ⇒ Reject H₀, the test is significant.

β₃: t_{H_0}= \frac{b_3-\beta_3 }{Sb_3} t= 2.28; p-value: 0.0326 ⇒ Reject H₀, the test is significant.

e)

H₀: β₁= β₂= β₃

H₁: At least one βi is different from the others ∀ i=1, 2, 3

α: 0.05

F= 9.03

p-value: 0.0004

⇒ Reject H₀, the test is significant.

I hope it helps!

Mathematics
Step-by-step answer
P Answered by Master

Step-by-step explanation:

Hello!

Given the data for the variables:

Y: Selling price of a house on the shore of Tawas Bay

X₁: Number of bathrooms of a house on the shore of Tawas Bay.

X₂: Square feet of a house on the shore of Tawas Bay.

X₃: Number of bedrooms of a house on the shore of Tawas Bay.

The multiple regression model is Y= α + β₁X₁ + β₂X₂ + β₃X₃ + εi

a. Using software I've entered the raw data and estimated the regression coefficients:

^α= a= -5531.01

Represents the mean selling price of the houses when 0 bathrooms, 0 square feet and 0 bedrooms.

^β₁= b₁= -1386.21

Represents the modification of the mean selling price of the houses when the number of bathrooms increases in one unit and the square feet and number of bedrooms remain unchanged.

^β₂= b₂= 60.28

Represents the modification of the mean selling price of the houses when the square feet increase in one unit and the number of bathrooms and bedrooms remain unchanged.

^ β₃= b₃= 54797.08

Represents the modification of the mean selling price of the houses when the number of bedrooms increase in one unit and the number of bathrooms and square feet of the houses remain unchanged.

^Y= -5531.01 -1386.21X₁ + 60.28X₂ + 54797.08X₃

b)

R²= 0.55

R²Aj= 0.49

The coefficient of determination gives you an idea of how much of the variability of the dependent variable (Y) is due to the explanatory variables. Each time you add another explanatory variable to the regression the coefficient increases regarding of real contribution of the new variable. This could lead to thinking (wrongly) that the new variables are good to explain the dependent variable.  

The adjusted coefficient of determination is a correction made to the raw coefficient of determination to have a more unbiased estimation of the effect the independent variables have over the dependent variable.

⇒ As you can see both coefficient are around 50%, which means that these explanatory variables

c)

The standard error estimate, this is the estimate of the population variance of the errors. In the ANOVA is represented by the Mean Square of the errors (MME)

Se²= MME= 3837640577.01

Se= 61948.6931

d) and f)

For the hypotheses tests for each slope the t- and p-values are:

α: 0.05

β₁: t_{H_0}= \frac{b_1-\beta_1 }{Sb_1} t= -0.06; p-value: 0.9528 ⇒ Do not reject H₀, the test is not significant.

β₂: t_{H_0}= \frac{b_2-\beta_2 }{Sb_2} t= 2.56; p-value: 0.0180 ⇒ Reject H₀, the test is significant.

β₃: t_{H_0}= \frac{b_3-\beta_3 }{Sb_3} t= 2.28; p-value: 0.0326 ⇒ Reject H₀, the test is significant.

e)

H₀: β₁= β₂= β₃

H₁: At least one βi is different from the others ∀ i=1, 2, 3

α: 0.05

F= 9.03

p-value: 0.0004

⇒ Reject H₀, the test is significant.

I hope it helps!

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