Title: Ingredients of Multivariable Change: Models, Graphs, Rates
1Ingredients of Multivariable Change Models,
Graphs, Rates
- 7.1
- Multivariable Functions and
- Contour Graphs
2Multivariable Function
- Many of the functions that describe everyday
situations are multivariable functions. - These are functions with a single output variable
that depends on two or more input variables. - For example,
- a manufacturers profit depends on several
variables, including sales, market price, and
costs. - The volume of a tree is a function of its height
and diameter. - Crop yield is a function of variables such as
temperature, rainfall, and amount of fertilizer.
3Multivariable Function Notation
- A rule f that relates one output variable to
several input variables x1, x2, , xn is called a
multivariable function if for each input (x1, x2,
, xn) there is exactly one output f(x1, x2, ,
xn).
4Problem 2 page 532
5Multivariable FunctionsGraphically
- Multivariable functions with two input variables
can be graphed using either contour curves or as
a three-dimensional graph
6Contour Curve
- contour curve is similar to a topographical map,
a two-dimensional map that shows terrain by
outlining different elevations. - Each curve on a topographical map represents a
constant elevation and is known as a contour
curve. - In general, a contour curve for a function with
two input variables is the collection of all
points for which , where K is a constant. - The contour curve for a specific value of K is
sometimes referred to as the K-contour curve or a
level curve.
7Contour Curve
Multiple Level
Not all level curve are continuous
8Contour Curves from Data
9Interpreting a Contour Curve Sketched on a Table
of Data. Problem 14 (page 535)
10Problem 20 Page 537
11Change and Percentage Change in Output
12Direction and Steepness
- If the input variables of a multivariable
function can be compared, the idea of steeper
descent can be discussed. - When the constants K used for the K-contour
curves are equally spaced, the steepness of the
three-dimensional graph at different points (or
in different directions) can be compared by
noting the closeness (frequency) of the contour
curves. - If the contour curves are close together near a
point, the surface is steeper in that region than
in a portion of the graph where the contour
curves are spaced farther apart.
13consider the elevation of the tract of Missouri
farmland with the contour graph
- Starting at (0.4, 1) , will a hiker be going
downhill or uphill if he walks 0.4 mile north?
south? east? west?
14consider the elevation of the tract of Missouri
farmland with the contour graph
- Starting at (1.0, 0.6), which direction results
in the steeper descent - east 0.4 mile or north 0.4 mile? Explain.
15Contour Graphs for Functions on Two Variables
- Data tables do not show every possible value for
the input and output values of a multivariable
function. - When sketching contour curves on tables, assume
that the multivariable function is continuous
over the entire input intervals and that the
contour curve will be continuous and relatively
smooth.
16Problem 26-page 538
17Formulas for Contour Curves
18Ingredients of Multivariable Change Models,
Graphs, Rates
- 7.2
- Cross-Sectional Models and
- Rates of Change
19Cross-sectional modeling
- Cross-sectional modeling is a simple extension of
the data-modeling techniques from Chapter 1. - Cross sections can be used to understand the
behavior of data sets having two input variables.
20Illustration of Cross Sections
- The number of jobs held by the average American
depends on several variables, including his or
her age and level of education, as shown in Table
7.6.
The cross section of the population who received
high school diplomas but did not have
post-high-school education is represented by the
row of data with 4 years of education
(highlighted in Table 7.6).
21Cross Sections from Three Perspectives
- A cross section of a multivariable function is a
relation with one less dimension (variable) than
the original multivariable function.
22Quick example
23Cross-Sectional Models from Data
- When data is given in a table with two input
variables and one output variable, modeling the
data in one row (or one column) results in a
cross-sectional model. - A cross-sectional model is a model of a subset of
multivariable data obtained by holding all but
one input variable constant and modeling the
output variable with respect to that one input
variable.
24Problem 2- Page 547
25Rates of Change of Cross-Sectional Models
26Problem 4, 8, 14 pages 548 - 550
27Ingredients of Multivariable Change Models,
Graphs, Rates
- 7.3
- Partial Rates of Change
28- Derivatives of cross-sectional functions were
discussed in Section 7.2. - In Section 7.3, the discussion of derivatives is
expanded to include derivatives of multivariable
functions. - These partial derivative functions give
rate-of-change formulas for all simple cross
sections of a multivariable function.
29Partial Derivatives
- Derivatives describe change in the output value
of a function caused when one input variable is
changing. - Derivatives of multivariable function are called
partial derivatives because they describe change
in only one input direction, so they give only a
partial picture of change.
30Partial Derivatives as Multivariable Functions
- Partial derivatives of a multivariable function
can be used to find rates of change (with respect
to a particular input variable) at any point on
the function. - Partial-derivative functions are multivariable
functions with the same number of variables as
the original functions.
31Second Partial Derivatives
- A partial derivative of a partial-derivative
function is called a second partial derivative.
32Second Partial Derivatives
33Problem 10, 12, 14, 18, 20, 22, 24
34Ingredients of Multivariable Change Models,
Graphs, Rates
- 7.4
- Compensating for Change
35Compensating for Change
- When the output of a function depends on two
input variables and must remain fixed at some
constant level, a change in one of the input
variables must be compensated for by a change in
the other input variable. - Tangent lines and partial derivatives are used to
answer a questions dealing with compensating for
change.
36Rates of Change in Three Directions
- A rate of change of the output of a multivariable
function with respect to one of the input
variables can be found as a partial derivative of
the function. - It is also possible to determine the rate of
change of one of the input variables with respect
to another input variable. - For functions on two input variables, such a rate
of change is represented graphically as a line
tangent to a contour graph.
37Lines Tangent to Contour Curves
- On a function f with two input variables x and y,
if the output is constant at level K, the rate of
change of one input variable with respect to the
other input variable at a point on the K-contour
curve is the slope of the line (in the f k
plane) tangent to the curve at that point.
38The Slope at a Point on a Contour Curve
- For a function f with input variables x and y,
the slope of a line tangent to a constant contour
level can be computed using partial derivatives
of f.
39Compensation of Input Variables
- The change needed in one input variable to
compensate for a change in the other input
variable to maintain a constant function output
is approximated using a line tangent to a contour
curve. The slope of the tangent line can be
calculated either directly from an algebraic
formula, giving one input variable in terms of
the other variable, or indirectly by using
partial derivatives of the function.
40Problem 2, 10, 18