Title: Quadratic Equations
1Chapter 7
2- A quadratic equation is one that can be written
in the form _____________________________ where
a, b, c are real numbers and a ?0. - The degree of a quadratic equation is ______.
- E.g.
3- The related function has equation ______________
- It has a graph in the shape of a _______________.
- Every quadratic equation has two solutions
(roots). They may be - a) ___________________________________
- b) ___________________________________
- c) ___________________________________
4Methods of Solving Quadratic Equations
- Graphing Graph related function
and locate its real roots
(x-intercepts) - On TI-83/84, use 2nd Calc 2 Zero
- Factoring If possible, factor the expression.
Set each factor equal to zero and solve. - Quadratic Formula
5Solve by graphing on the calculator. Give answers
to nearest tenth.
6Solve by factoring.
7Solve by factoring.
8Solve by factoring.
9Solve the higher order equation by factoring.
10Solve the higher order equation by factoring.
11Solve using the Quadratic Formula.
12Solve using the Quadratic Formula (Give answers
to two decimal places.)
13- For equations in the form
, the discriminant is the value of
______________ .(This is the expression under
the radical in the Quadratic Formula.)
We can use the discriminant to determine the
character (number and type) of the roots of a
quadratic equation.
14Character of the Roots
- If b2 4ac gt 0 and is a perfect square, the
equation has _____________________________________
___. - If b2 4ac gt 0 and is NOT a perfect square, the
equation has _____________________________________
__. - If b2 4ac 0, the equation has
__________________________________________. - If b2 4ac lt 0, the equation has
________________ - ___________________________.
15First find the value of the discriminant then
use it to describe the number and type of roots.
16Mathematical Modeling
- In real world applications we often encounter
numerical data in the form of a table. The
powerful mathematical tool, regression analysis,
can be used to analyze numerical data. In
general, regression analysis is a process for
finding a function that best fits a set of data
points. - In the next example, we use a linear model
obtained by using linear regression on a graphing
calculator.
17Regression Notes
- Regression a process used to relate two
quantitative variables. - Independent variable the x variable (or
explanatory variable) - Dependent variable the y variable (or response
variable) - To interpret the scatterplot, identify the
following - Form
- Direction (for linear models)
- Strength
18Form
- Form the function that best describes the
relationship between the two variables. - Some possible forms would be linear, quadratic,
cubic, exponential, or logarithmic.
19Direction
- Direction a positive or negative direction can
be found when looking at linear regression lines
only. - The direction is found by looking at the sign of
the slope.
20Strength
Strength how closely the points in the data are
gathered around the form.
21Making Predictions
- Predictions should only be made for values of x
within the span of the x-values in the data set. - Predictions made outside the data set are called
extrapolations, which can be dangerous and
ridiculous thus, extrapolating is not
recommended.
22Example of Linear Regression
Prices for emerald-shaped diamonds taken from an
on-line trader are given in the following table.
Find the linear model that best fits this
data. Weight (carats) Price 0.5 1,677 0.6 2,
353 0.7 2,718 0.8 3,218 0.9 3,982
23Scatter Plots
Enter these values into the lists in a graphing
calculator as shown below .
24Scatter Plots
We can plot the data points in the previous
example on a Cartesian coordinate plane, either
by hand or using a graphing calculator. If we
use the calculator, we obtain the following plot
25Example of Linear Regression(continued)
Based on the scatterplot, the data appears to be
linearly correlated thus, we can choose linear
regression from the statistics menu, we obtain
the second screen, which gives the equation of
best fit.
The linear equation of best fit is y 5475x -
1042.9.
26Scatter Plots
We can plot the graph of our line of best fit on
top of the scatterplot
27Making a Prediction
- Is it appropriate to use the model to predict the
price of an emerald-shaped diamond that weighs
0.75 carats? If so, estimate the price. -
- Is it appropriate to use the model to predict the
price of an emerald-shaped diamond that weighs
2.7 carats? If so, estimate the price.
28Quadratic Regression
A visual inspection of the plot of a data set
might indicate that a parabola would be a better
model of the data than a straight line. In
that case, rather than using linear regression to
fit a linear model to the data, we would use
quadratic regression on a graphing calculator to
find the function of the form y ax2 bx c
that best fits the data. From the ?? CALC menu,
choose 5 QuadReg
29Example of Quadratic Regression
An automobile tire manufacturer collected the
data in the table relating tire pressure x (in
pounds per square inch) and mileage (in thousands
of miles.) x Mileage 28 45 30 52 32 55 34 51 36 47
Using quadratic regression on a graphing
calculator, find the quadratic function that best
fits the data. Round values to 6 decimal places.
30Example of Quadratic Regression(continued)
Enter the data in a graphing calculator and
obtain the lists below.
Choose quadratic regression from the STAT Calc
menu and obtain the coefficients as shown
This means that the equation that best fits the
data is y -0.517857x2 33.292857x-
480.942857
31Example of Quadratic Regression(continued)
Use the model to estimate the number of miles you
could get from tires inflated at a) 35 psi and
b) 40 psi.
32Another Example of Modeling
The following table shows crop yields, Y (in
bushels), for various amounts of fertilizer used,
x (in lbs/100 ft2), for 18 different equally
sized plots.
Plot 1 2 3 4 5 6 7 8 9 19 11 12 13 14 15 16 17 18
x Fertilizer (lbs/ 100ft2) 0 0 5 5 10 10 15 15 20 20 25 25 30 30 35 35 40 40
Y Yield (bushels) 4 6 10 7 12 10 15 17 18 21 20 21 21 22 21 20 19 19
33Example (continued)
- Use your calculator to graph a scatter plot of
the data and comment on the type of relationship
that exists between the two variables (the amount
of fertilizer used , x, and the crop yield, y.)
It appears that the data follows a quadratic
relationship with a lt 0.
34Example (continued)
- Use the calculator to find the quadratic function
of best fit. Give values to 4 significant digits.
Sketch this function in the same window as your
scatter plot.
35Example (continued)
- Use the function to predict the optimal amount of
fertilizer (in pounds per 100ft2) to use and the
crop yield (in bushels) when the optimal amount
of fertilizer is applied. Give values to 3
significant digits.
Use the graphing calculator and the graph of the
quadratic model to find the maximum point.
According to the model, if we apply 31.5 pounds
of fertilizer per 100 sq. feet, the crop yield
will be 20.8 bushels.