Chapter 17: Functions of Several Variables (Set-2)

When checking lim⁡(x,y)→(a,b)f(x,y)lim(x,y)→(a,b)f(x,y), the most reliable requirement is

A Same value one path
B Exists on x-axis
C Same value every path
D Exists on y-axis

A function is continuous at (a,b)(a,b) only if

A Partial derivatives exist
B Limit equals function value
C Mixed partials are equal
D Gradient is nonzero

If f(a,b)f(a,b) is undefined but the limit exists, then

A Not continuous at point
B Continuous by default
C Differentiable at point
D Limit must be zero

A common quick method to show a limit does not exist is

A Compute second derivatives
B Integrate over region
C Compare two approach paths
D Factor the numerator

If substitution gives a finite value for a limit, then

A Limit is guaranteed
B Limit may still fail
C Function is continuous
D Differentiability follows

Directional limits being equal for all directions implies

A Limit always exists
B Continuity always holds
C Differentiability always holds
D Not sufficient always

A polynomial in x,yx,y is continuous in R2R2 because it is

A Always bounded
B Always differentiable only
C Built from continuous operations
D Always has inverse

A rational function p/qp/q in x,yx,y is continuous wherever

A Denominator is nonzero
B Numerator is nonzero
C xx is positive
D yy is positive

Using polar form near (0,0)(0,0) is most helpful when expression contains

A Only x+yx+y
B x2+y2x2+y2 terms
C Only xyxy
D Only constants

If after polar conversion the limit depends on θθ, then

A Limit must be zero
B Limit must be one
C Limit does not exist
D Continuity is assured

In ∂f∂x∂x∂f at (a,b)(a,b), the variable held constant is

A xx fixed
B Both change equally
C Neither is fixed
D yy fixed

A first-order partial derivative measures

A Area under surface
B Rate of change direction
C Curve length on surface
D Volume under surface

The mixed partial fxyfxy means

A Differentiate y then y
B Differentiate x then y
C Differentiate x then x
D Integrate then differentiate

Clairaut’s theorem is used mainly to

A Prove continuity always
B Swap mixed partial order
C Compute Jacobian only
D Find limits quickly

The gradient of f(x,y)f(x,y) is

A ⟨fx,fy⟩⟨fx,fy⟩
B ⟨f,x⟩⟨f,x⟩
C ⟨x,y⟩⟨x,y⟩
D ⟨fxx,fyy⟩⟨fxx,fyy⟩

Directional derivative DufDuf requires uu to be

A Any nonzero vector
B A zero vector
C A unit vector
D A tangent vector

Formula for directional derivative in direction uu is

A ∇f×u∇f×u
B ∇f⋅u∇f⋅u
C f⋅uf⋅u
D f/uf/u

For z=f(x,y)z=f(x,y), the tangent plane at (a,b)(a,b) uses

A fxx,fyyfxx,fyy values
B Only Jacobian value
C Only Euler theorem
D fx,fyfx,fy values

Total differential dfdf for f(x,y)f(x,y) is

A f dx+f dyfdx+fdy
B fxdx+fydyfxdx+fydy
C dx+dydx+dy
D fxdy+fydxfxdy+fydx

If x=x(t),y=y(t)x=x(t),y=y(t), then dzdtdtdz for z=f(x,y)z=f(x,y) equals

A fxx′+fyy′fxx′+fyy′
B fx+fyfx+fy
C x′+y′x′+y′
D fxytfxyt

A function f(x,y)f(x,y) is homogeneous of degree nn if

A f(tx,ty)=ff(tx,ty)=f always
B f(tx,ty)=tnff(tx,ty)=tnf
C f(tx,ty)=t+ff(tx,ty)=t+f
D f(tx,ty)=0f(tx,ty)=0

Euler’s theorem for degree nn in two variables states

A fx+fy=nfx+fy=n
B fxx+fyy=0fxx+fyy=0
C xfx+yfy=nfxfx+yfy=nf
D x+y=nx+y=n

If a function is homogeneous of degree 1, then Euler gives

A xfx+yfy=0xfx+yfy=0
B xfx+yfy=fxfx+yfy=f
C xfx+yfy=2fxfx+yfy=2f
D xfx+yfy=1xfx+yfy=1

To verify homogeneity quickly, the best step is to

A Replace x,yx,y by tx,tytx,ty
B Compute Hessian first
C Find Jacobian first
D Integrate over region

For f(x,y,z)f(x,y,z) homogeneous of degree nn, Euler form is

A fx+fy+fz=nfx+fy+fz=n
B fxx+fyy+fzz=0fxx+fyy+fzz=0
C xfx+yfy+zfz=nfxfx+yfy+zfz=nf
D x+y+z=nx+y+z=n

The Jacobian ∂(u,v)∂(x,y)∂(x,y)∂(u,v) is

A Sum of partials
B Product of variables
C Laplacian value
D Determinant of partials

If u=u(x,y)u=u(x,y) and v=v(x,y)v=v(x,y), then the Jacobian matrix is

A (uvxy)(uxvy)
B (uxuyvxvy)(uxvxuyvy)
C (xuyv)(xyuv)
D (uxvxuyvy)(uxuyvxvy)

If ∂(u,v)∂(x,y)≠0∂(x,y)∂(u,v)=0 at a point, then mapping is

A Globally periodic
B Always linear
C Locally invertible
D Always continuous only

For inverse transformations, a basic relation is

A Juv/xy+Jxy/uv=1Juv/xy+Jxy/uv=1
B Juv/xy−Jxy/uv=0Juv/xy−Jxy/uv=0
C Juv/xy Jxy/uv=0Juv/xyJxy/uv=0
D Juv/xy Jxy/uv=1Juv/xyJxy/uv=1

For polar coordinates x=rcos⁡θ,y=rsin⁡θx=rcosθ,y=rsinθ, ∣∂(x,y)∂(r,θ)∣∂(r,θ)∂(x,y) equals

A 1/r1/r
B rr
C r2r2
D sin⁡θsinθ

A “singular Jacobian” at a point typically means

A Determinant becomes one
B Matrix is symmetric
C Mixed partials unequal
D Determinant becomes zero

For u=x+yu=x+y, v=x−yv=x−y, ∂(u,v)∂(x,y)∂(x,y)∂(u,v) equals

A 00
B −2−2
C 11
D 22

A Jacobian is most directly used in

A Long division
B Change of variables
C Partial fractions
D Binomial expansion

In three variables, ∂(u,v,w)∂(x,y,z)∂(x,y,z)∂(u,v,w) is a

A 2×2 determinant
B 3×3 determinant
C 1×1 determinant
D 4×4 determinant

A functional dependence test often checks whether a certain Jacobian is

A Identically one
B Always negative
C Identically zero
D Always increasing

Differentiability of f(x,y)f(x,y) at a point implies

A Discontinuity at point
B Jacobian equals one
C Euler theorem holds
D Continuity at point

A critical point of f(x,y)f(x,y) usually satisfies

A f=0f=0 only
B fx=0,fy=0fx=0,fy=0
C fxy=0fxy=0 only
D Jacobian equals zero

For the second derivative test, the discriminant is

A D=fxfyD=fxfy
B D=fxxfyy−(fxy)2D=fxxfyy−(fxy)2
C D=fxx+fyyD=fxx+fyy
D D=fxy+fyxD=fxy+fyx

If D>0D>0 and fxx>0fxx>0, then point is

A Local maximum
B Local minimum
C Saddle point
D No conclusion

If D>0D>0 and fxx<0fxx<0, then point is

A Local maximum
B Local minimum
C Saddle point
D No conclusion

If D<0D<0 at a critical point, then point is

A Local minimum
B Local maximum
C Saddle point
D Global minimum

If D=0D=0 in second derivative test, then

A Must be minimum
B Must be maximum
C Must be saddle
D Test is inconclusive

Lagrange multipliers are mainly used for

A Finding simple limits
B Constrained optimization
C Solving linear systems
D Expanding polynomials

On the level curve f(x,y)=cf(x,y)=c, the gradient ∇f∇f is

A Tangent to curve
B Perpendicular to curve
C Parallel to x-axis
D Always zero

For surface F(x,y,z)=0F(x,y,z)=0, a normal direction at a point is given by

A ∇F∇F vector
B ∇f∇f vector
C Any tangent vector
D Position vector

The equation of normal line to z=f(x,y)z=f(x,y) at (a,b)(a,b) uses

A Only f(a,b)f(a,b) value
B Direction from surface normal
C Only fxxfxx value
D Only Jacobian value

Total differential is most useful for

A Exact global maximum
B Solving quadratic roots
C Small change approximation
D Computing area exactly

A basic condition often used in implicit differentiation F(x,y)=0F(x,y)=0 is

A F=0F=0 never
B Fx=0Fx=0 always
C y=0y=0 always
D Fy≠0Fy=0

Continuity of a composite function f(g(x,y),h(x,y))f(g(x,y),h(x,y)) is ensured if

A Only outer is continuous
B All pieces are continuous
C Only inner is continuous
D Only partials exist

A standard linear approximation near (a,b)(a,b) for f(x,y)f(x,y) is

A f(a,b)+fxΔx+fyΔyf(a,b)+fxΔx+fyΔy
B f(a,b)+fxxΔx2f(a,b)+fxxΔx2
C f(a,b)+fyyΔy2f(a,b)+fyyΔy2
D f(a,b)+ΔxΔyf(a,b)+ΔxΔy

Leave a Reply

Your email address will not be published. Required fields are marked *