IDNLearn.com helps you find the answers you need quickly and efficiently. Join our interactive Q&A community and access a wealth of reliable answers to your most pressing questions.
Sagot :
Let's look at the given data points:
[tex]\[ \begin{array}{|c|c|} \hline x & y \\ \hline 2 & -8 \\ \hline 3 & -18 \\ \hline 4 & -32 \\ \hline 5 & -50 \\ \hline 6 & -72 \\ \hline \end{array} \][/tex]
We need to determine which type of function, linear [tex]\((y = mx + b)\)[/tex], quadratic [tex]\((y = ax^2)\)[/tex], or exponential [tex]\((y = a(b)^x)\)[/tex], best fits this data.
After analyzing the patterns within the table:
1. Linear Fit:
- Linear equations follow the form [tex]\(y = mx + b\)[/tex]. Checking the first differences of [tex]\(y\)[/tex] with respect to [tex]\(x\)[/tex] can give us insight. If these first differences are not constant, a linear model is not suitable.
2. Quadratic Fit:
- Quadratic equations follow the form [tex]\(y = ax^2 + bx + c\)[/tex]. In this problem, we assume a simplified form without the linear term, i.e., [tex]\(y = ax^2\)[/tex]. We have checked the fit of a quadratic function.
3. Exponential Fit:
- Exponential equations follow the form [tex]\(y = a(b)^x\)[/tex]. Checking the ratios of consecutive [tex]\(y\)[/tex]-values can give us insight. If these ratios are not constant, an exponential model is not suitable.
Given that we are provided the coefficients for a quadratic function [tex]\(y = ax^2\)[/tex]:
After analyzing the data, it was found that the quadratic function fits well. The equation for the quadratic fit is:
[tex]\[ y = -2x^2 \][/tex]
This conclusion comes from determining the quadratic coefficients. The coefficient [tex]\(a\)[/tex] is approximately [tex]\(-2\)[/tex], and the coefficients [tex]\(b\)[/tex] and [tex]\(c\)[/tex] were not significant given the near-zero values taken from the analysis. Therefore:
[tex]\[ \boxed{-2x^2} \][/tex]
This quadratic equation [tex]\(y = -2x^2\)[/tex] best models the given data set.
[tex]\[ \begin{array}{|c|c|} \hline x & y \\ \hline 2 & -8 \\ \hline 3 & -18 \\ \hline 4 & -32 \\ \hline 5 & -50 \\ \hline 6 & -72 \\ \hline \end{array} \][/tex]
We need to determine which type of function, linear [tex]\((y = mx + b)\)[/tex], quadratic [tex]\((y = ax^2)\)[/tex], or exponential [tex]\((y = a(b)^x)\)[/tex], best fits this data.
After analyzing the patterns within the table:
1. Linear Fit:
- Linear equations follow the form [tex]\(y = mx + b\)[/tex]. Checking the first differences of [tex]\(y\)[/tex] with respect to [tex]\(x\)[/tex] can give us insight. If these first differences are not constant, a linear model is not suitable.
2. Quadratic Fit:
- Quadratic equations follow the form [tex]\(y = ax^2 + bx + c\)[/tex]. In this problem, we assume a simplified form without the linear term, i.e., [tex]\(y = ax^2\)[/tex]. We have checked the fit of a quadratic function.
3. Exponential Fit:
- Exponential equations follow the form [tex]\(y = a(b)^x\)[/tex]. Checking the ratios of consecutive [tex]\(y\)[/tex]-values can give us insight. If these ratios are not constant, an exponential model is not suitable.
Given that we are provided the coefficients for a quadratic function [tex]\(y = ax^2\)[/tex]:
After analyzing the data, it was found that the quadratic function fits well. The equation for the quadratic fit is:
[tex]\[ y = -2x^2 \][/tex]
This conclusion comes from determining the quadratic coefficients. The coefficient [tex]\(a\)[/tex] is approximately [tex]\(-2\)[/tex], and the coefficients [tex]\(b\)[/tex] and [tex]\(c\)[/tex] were not significant given the near-zero values taken from the analysis. Therefore:
[tex]\[ \boxed{-2x^2} \][/tex]
This quadratic equation [tex]\(y = -2x^2\)[/tex] best models the given data set.
Thank you for being part of this discussion. Keep exploring, asking questions, and sharing your insights with the community. Together, we can find the best solutions. Thank you for choosing IDNLearn.com. We’re committed to providing accurate answers, so visit us again soon.