Chapter 15: Applications of Derivatives and Expansions (Set-2)

In monotonicity testing, the interval points are usually split using

A Discontinuity points only
B Zeros of ff
C Roots of f′f′
D Zeros of f′′f′′

If f′(x)=0f′(x)=0 at x=cx=c and f′(x)>0f′(x)>0 on both sides of cc, then cc is

A Local maximum point
B Flat point only
C Local minimum point
D Discontinuous point

A critical point of f(x)f(x) occurs where

A f′(x)=0f′(x)=0 or undefined
B f(x)=0f(x)=0 only
C f′′(x)=0f′′(x)=0 only
D ff is periodic

For absolute extrema on [a,b][a,b], a function should be

A Differentiable everywhere
B Polynomial only
C Continuous on [a,b][a,b]
D Always increasing

If f′′(x)>0f′′(x)>0 on an interval, the graph is

A Concave down
B Always linear
C Always decreasing
D Concave up

If f′′(x)<0f′′(x)<0 on an interval, the graph is

A Concave down
B Concave up
C Always constant
D Always increasing

A point of inflection is where the graph

A Stops being continuous
B Becomes horizontal
C Changes concavity
D Crosses x-axis

If f′′(c)=0f′′(c)=0 but concavity does not change, then cc is

A Not necessarily inflection
B Always inflection point
C Never on graph
D Always maximum point

For tangent to be parallel to x-axis at x=ax=a, we need

A f(a)=0f(a)=0
B f′′(a)=0f′′(a)=0
C f′(a)=1f′(a)=1
D f′(a)=0f′(a)=0

The normal is parallel to y-axis when the tangent is

A Vertical
B Slant
C Horizontal
D Undefined always

If y=f(x)y=f(x), the length of the subtangent at x=ax=a equals

A f(a)f′(a)f′(a)f(a)
B f′(a)f(a)f(a)f′(a)
C f(a)f′(a)f(a)f′(a)
D f(a)+f′(a)f(a)+f′(a)

The length of the subnormal at x=ax=a equals

A f(a)f′(a)f′(a)f(a)
B f′(a)f(a)f(a)f′(a)
C f(a)+f′(a)f(a)+f′(a)
D f(a)f′(a)f(a)f′(a)

In related rates, differentiating x2+y2=r2x2+y2=r2 with respect to time gives

A 2x+2y=2r2x+2y=2r
B 2xx˙+2yy˙=2rr˙2xx˙+2yy˙=2rr˙
C xx˙+yy˙=rxx˙+yy˙=r
D x+y=rx+y=r

If y=f(x)y=f(x), the differential approximation for f(x+h)f(x+h) is

A f(x)+h2f′(x)f(x)+h2f′(x)
B f(x)+f′′(x)f(x)+f′′(x)
C f(x)+hf′(x)f(x)+hf′(x)
D f(x)−hf′′(x)f(x)−hf′′(x)

The “first derivative test” for extrema uses the sign change of

A f′(x)f′(x)
B f(x)f(x)
C f′′(x)f′′(x)
D f′′′(x)f′′′(x)

A simple geometric optimization setup usually involves expressing area/volume in terms of

A Many independent variables
B No variables at all
C One variable only
D Only trig ratios

Rolle’s theorem can be applied to f(x)f(x) on [a,b][a,b] if

A f(a)=f(b)f(a)=f(b)
B f(a)≠f(b)f(a)=f(b)
C f′(a)=f′(b)f′(a)=f′(b) only
D ff is odd only

If a function has a sharp corner inside [a,b][a,b], Rolle’s theorem

A Always applies
B Never needs differentiability
C Gives two solutions
D Cannot be applied

If ff is continuous on [a,b][a,b] and differentiable on (a,b)(a,b), then LMVT ensures

A Two equal roots
B Always horizontal tangent
C Some tangent equals secant slope
D Always vertical tangent

If f(b)>f(a)f(b)>f(a) and LMVT conditions hold, then there exists cc such that f′(c)f′(c) is

A Negative number
B Positive number
C Exactly zero
D Not defined

In CMVT, if g(b)≠g(a)g(b)=g(a), the conclusion gives

A f′(c)g′(c)g′(c)f′(c) equals change ratio
B f′(c)=0f′(c)=0
C f(c)=g(c)f(c)=g(c)
D f′′(c)=g′′(c)f′′(c)=g′′(c)

A common special case of CMVT becomes LMVT when

A g(x)=0g(x)=0
B g(x)=f(x)g(x)=f(x)
C g(x)=xg(x)=x
D g(x)=f′(x)g(x)=f′(x)

Taylor’s theorem gives f(x)f(x) as polynomial plus

A Random constant term
B Only sine term
C Only cosine term
D Remainder term

In Taylor’s theorem, “about aa” means powers of

A (x−a)(x−a)
B (x+a)(x+a)
C (ax)(ax)
D (a−x2)(a−x2)

The Taylor polynomial of degree 2 contains terms up to

A (x−a)1(x−a)1
B (x−a)2(x−a)2
C (x−a)3(x−a)3
D (x−a)4(x−a)4

The Maclaurin expansion of sin⁡xsinx begins with

A x−x3/6x−x3/6
B 1−x2/21−x2/2
C 1+x+x21+x+x2
D x2/2+x4x2/2+x4

The Maclaurin expansion of cos⁡xcosx includes only

A Odd powers only
B Even powers only
C All powers
D No powers

The Maclaurin expansion of exex contains

A Only even powers
B Only odd powers
C No constant term
D All powers

Standard approximation for ln⁡(1+x)ln(1+x) for small xx is

A x+x22x+2×2
B 1−x+x221−x+2×2
C x−x22x−2×2
D 1+x+x221+x+2×2

A first-order approximation of (1+x)α(1+x)α for small xx is

A 1+αx1+αx
B 1−αx1−αx
C α+xα+x
D xα+1xα+1

Lagrange remainder term includes factor

A (x−a)n(x−a)n only
B (x+a)n+1(x+a)n+1
C (x−a)n−1(x−a)n−1
D (x−a)n+1(x−a)n+1

Cauchy remainder is obtained using an idea similar to

A Pythagoras theorem
B Quadratic formula
C Mean value theorem
D Vector product

For approximation accuracy, increasing Taylor polynomial degree generally

A Improves approximation
B Worsens approximation
C Makes function periodic
D Makes derivative undefined

To estimate error using Lagrange remainder, you need a bound on

A f(a)f(a) only
B ∣f(n+1)∣∣f(n+1)∣
C f′(a)f′(a) only
D ∣f(1)∣∣f(1)∣ only

If you approximate sin⁡xsinx by xx, the neglected next term is about

A x2/2×2/2
B x4/24×4/24
C x5/120×5/120
D x3/6×3/6

In curve tracing, a local maximum can occur only at

A Critical points
B f(x)=0f(x)=0 points
C Inflection points only
D Endpoints never

If f′(x)=0f′(x)=0 and f′′(x)>0f′′(x)>0 at x=cx=c, the curve near cc looks like

A Upside cap shape
B Straight vertical line
C Cup shape
D Broken corner

If f′(x)=0f′(x)=0 and f′′(x)<0f′′(x)<0 at x=cx=c, the curve near cc looks like

A Upside cap shape
B Cup shape
C Flat line always
D Discontinuous jump

For LMVT, equality f(a)=f(b)f(a)=f(b) is

A Necessary always
B Not required
C Same as differentiability
D Same as continuity

If ff is differentiable on (a,b)(a,b), it must be

A Discontinuous on (a,b)(a,b)
B Constant on (a,b)(a,b)
C Periodic on (a,b)(a,b)
D Continuous on (a,b)(a,b)

A basic application of Rolle’s theorem to polynomials is to show that between two roots, there is a root of

A f(x)f(x) again
B f′′(x)f′′(x) only
C f′(x)f′(x)
D f(x)+1f(x)+1

If a function is continuous on [a,b][a,b] but not differentiable at one interior point, then

A Rolle may fail
B Rolle always works
C LMVT always works
D CMVT never needs g′g′

In Taylor approximation near aa, the best choice of aa is usually

A Far from xx
B Always a=1a=1
C Always a=πa=π
D Close to xx

The idea of “error propagation” using differentials mainly uses

A dy=f(x)dxdy=f(x)dx
B dy=f′′(x)dxdy=f′′(x)dx
C dy=f′(x)dxdy=f′(x)dx
D dy=dx/f(x)dy=dx/f(x)

To choose degree of Taylor polynomial for an accuracy goal, you mainly compare

A Remainder bound
B Endpoints only
C Function symmetry
D Graph color

A simple limit using series: lim⁡x→0ln⁡(1+x)xlimx→0xln(1+x) equals

A 00
B 11
C 22
D Does not exist

Using series: lim⁡x→01−cos⁡xx2limx→0x21−cosx equals

A 1/21/2
B 00
C 11
D 22

A “saddle point” in basic intro means a stationary point that is

A Maximum only
B Minimum only
C Not on graph
D Neither max nor min

In Newton–Raphson method for root finding, the iteration uses

A Circle radius
B Area formula
C Tangent intercept
D Matrix inverse

A common use of derivatives in physics is relating position s(t)s(t) to

A Velocity s′(t)s′(t)
B Area under curve
C Slope of secant only
D Constant acceleration only

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