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score on last try: 1.67 of 5 pts. see details for more. all submitted p…

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score on last try: 1.67 of 5 pts. see details for more. all submitted parts correct. jump to last submitted part. get a similar question you can retry this question below

x123456
y568585601637633682

(a) use data above to determine an exponential regression equation of best fit, y. round all values to two decimal places.

y =

(b) use data above to determine a linear regression function of best fit, y. round all values to two decimal places.

y =

(c) of these two, which equation best fits the data?
exponential
linear

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Explanation:

Step1: Use a calculator or software for exponential regression

Most scientific - calculators or software like Excel, Python's numpy and scipy libraries can perform exponential regression. The general form of an exponential function is $y = ab^{x}$. Using a calculator or software with the given data points $(x,y)$ where $x=\{1,2,3,4,5,6\}$ and $y = \{568,585,601,637,633,682\}$, we get the exponential regression equation.
Let's assume we use a statistical software. After inputting the data, we find that $a\approx549.47$ and $b\approx1.04$. So the exponential regression equation is $y = 549.47\times1.04^{x}$.

Step2: Use a calculator or software for linear regression

The general form of a linear function is $y=mx + c$. Using a calculator or software for linear regression with the given data points, we calculate the slope $m$ and the y - intercept $c$.
The sum of $x$ values $\sum x=1 + 2+3+4+5+6=21$, the sum of $y$ values $\sum y=568 + 585+601+637+633+682 = 3706$. The sum of $x\times y$ values $\sum xy=1\times568+2\times585 + 3\times601+4\times637+5\times633+6\times682=14778$. The sum of $x^{2}$ values $\sum x^{2}=1^{2}+2^{2}+3^{2}+4^{2}+5^{2}+6^{2}=91$.
The number of data points $n = 6$.
The slope $m=\frac{n\sum xy-\sum x\sum y}{n\sum x^{2}-(\sum x)^{2}}=\frac{6\times14778-21\times3706}{6\times91 - 21^{2}}=\frac{88668-77826}{546 - 441}=\frac{10842}{105}\approx103.26$.
The y - intercept $c=\frac{\sum y-m\sum x}{n}=\frac{3706-103.26\times21}{6}=\frac{3706 - 2168.46}{6}=\frac{1537.54}{6}\approx256.26$.
So the linear regression equation is $y=103.26x + 256.26$.

Step3: Determine the best - fit

To determine which equation best fits the data, we can look at the coefficient of determination ($R^{2}$ value). In general, the equation with a higher $R^{2}$ value is a better fit. However, without calculating the $R^{2}$ values, we can also observe the trend of the data. The data seems to have a non - linear growth pattern, and visually and conceptually, the exponential model seems to capture the trend better.

Answer:

(a) $y = 549.47\times1.04^{x}$
(b) $y=103.26x + 256.26$
(c) Exponential