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Managerial Economics Lecture: Optimization Technique Date: 08.06.2014.

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Managerial Economics Lecture: Optimization Technique Date: 08.06.2014
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Page 1: Managerial Economics Lecture: Optimization Technique Date: 08.06.2014.

Managerial Economics

Lecture: Optimization TechniqueDate: 08.06.2014

Page 2: Managerial Economics Lecture: Optimization Technique Date: 08.06.2014.

Maximizing profit

• Manager determine the quantity of output to be produced

• Quantity of sales to maximize profit

Page 3: Managerial Economics Lecture: Optimization Technique Date: 08.06.2014.

Optimization Techniques

• Methods for maximizing or minimizingan objective function• Examples– Consumers maximize utility by purchasingan optimal combination of goods– Firms maximize profit by producing andselling an optimal quantity of goods– Firms minimize their cost of production byusing an optimal combination of inputs

Page 4: Managerial Economics Lecture: Optimization Technique Date: 08.06.2014.

Optimization Techniques

• Concept of the DerivativeThe derivative of Y with respect to X isequal to the limit of the ratio ΔY/ΔX asΔX approaches zerody/dx=LimΔY/ΔX x→0

Page 5: Managerial Economics Lecture: Optimization Technique Date: 08.06.2014.
Page 6: Managerial Economics Lecture: Optimization Technique Date: 08.06.2014.

Geometric Relationships

• A marginal value is positive, zero, andnegative, respectively, when a totalcurve slopes upward, is horizontal, andslopes downward• A marginal value may be negative, butan average value can never be negative

Page 7: Managerial Economics Lecture: Optimization Technique Date: 08.06.2014.

Steps in Optimization

• Define an objective function of one ormore choice variables• Define the constraint on the values ofthe objective function• Determine the values of the choicevariables that maximize or minimize theobjective function while satisfying theconstraint

Page 8: Managerial Economics Lecture: Optimization Technique Date: 08.06.2014.

New Management Tools forOptimization

• Benchmarking (tool for improving productivity and quality)

• Total Quality Management (constantly improving the quality of products and the firm’s processes to deliver more value to customers; e.g. Six Sigma)

• Reengineering (radical redesign of all the firm’s processes to achieve major gains)

• Learning Organization (values continuing learning, both individual and collective)

Page 9: Managerial Economics Lecture: Optimization Technique Date: 08.06.2014.

Management Tools forOptimization

• Broad-banding (elimination of multiple salarygrades to foster movement among jobs withinthe firm and lower cost)• Direct Business Model (eliminating the time

and cost of third-party distribution)

Page 10: Managerial Economics Lecture: Optimization Technique Date: 08.06.2014.

Management Tools forOptimization

• Networking (forming of temporary strategicalliances among firms as per their core

competence)• Performance Management (holding executivesand their subordinates accountable for

delivering the desired results)

Page 11: Managerial Economics Lecture: Optimization Technique Date: 08.06.2014.

Other Management Tools forOptimization

• Pricing Power (ability of a firm to raise prices faster

than the rise in its costs and vice-versa)• Small-World Model (linking well-connectedindividuals from each level of the organization to

oneanother to improve flow of information and theoperational efficiency)

Page 12: Managerial Economics Lecture: Optimization Technique Date: 08.06.2014.

Other Management Tools forOptimization

• Strategic Development (continuous review ofstrategic decisions)• Virtual Integration (treating suppliers and

customersas if they were part of the company which reducesthe need for inventories)• Virtual Management (ability of a manager to

simulateconsumer behavior using computer models)

Page 13: Managerial Economics Lecture: Optimization Technique Date: 08.06.2014.

Univariate Optimization

• Given objective function Y = f(X)• Find X such that dY/dX = 0• Second derivative rules:• If d2Y/dX2 > 0, then X is a minimum• If d2Y/dX2 < 0, then X is a maximum

Page 14: Managerial Economics Lecture: Optimization Technique Date: 08.06.2014.

Example 1

• Given the following total revenue (TR) function, determine the quantity of output (Q) that will maximize total revenue:

• TR = 100Q – 10Q2• dTR/dQ = 100 – 20Q = 0• Q* = 5 and d2TR/dQ2 = -20 < 0

Page 15: Managerial Economics Lecture: Optimization Technique Date: 08.06.2014.

Example 2

• Given the following total revenue (TR) function, determine the quantity of output (Q) that will maximize total revenue:

• TR = 45Q – 0.5Q2• dTR/dQ = 45 – Q = 0• Q* = 45 and d2TR/dQ2 = -1 < 0

Page 16: Managerial Economics Lecture: Optimization Technique Date: 08.06.2014.

Example 3

• Given the following marginal cost function (MC), determine the quantity of output that will minimize MC:

• MC = 3Q2 – 16Q + 57• dMC/dQ = 6Q - 16 = 0• Q* = 2.67 and d2MC/dQ2 = 6 > 0

Page 17: Managerial Economics Lecture: Optimization Technique Date: 08.06.2014.

Example 4

• GivenTR = 45Q – 0.5Q2TC = Q3 – 8Q2 + 57Q + 2• Determine Q that maximizes profit (π):π = 45Q – 0.5Q2 – (Q3 – 8Q2 + 57Q + 2)

Page 18: Managerial Economics Lecture: Optimization Technique Date: 08.06.2014.

Example 4: Solution

• Method 1dπ/dQ = 45 – Q – 3Q2 + 16Q – 57 = 0– 12 + 15Q – 3Q2 = 0• Method 2MR = dTR/dQ = 45 – QMC = dTC/dQ = 3Q2 – 16Q + 57Set MR = MC: 45 – Q = 3Q2 – 16Q + 57• Use quadratic formula: Q* = 4

Page 19: Managerial Economics Lecture: Optimization Technique Date: 08.06.2014.

Multivariate Optimization

• Objective function Y = f(X1, X2, ...,Xk)• Find all Xi such that ∂Y/∂Xi = 0• Partial derivative:∂Y/∂Xi = dY/dXi while all Xj (where j ≠ i) areheld constant

Page 20: Managerial Economics Lecture: Optimization Technique Date: 08.06.2014.

Example 5

• Determine the values of X and Y thatmaximize the following profit function:π = 80X – 2X2 – XY – 3Y2 + 100Y• Solution∂π/∂X = 80 – 4X – Y = 0∂π/∂Y = – X – 6Y + 100 = 0Solve simultaneouslyX = 16.52 and Y = 13.91

Page 21: Managerial Economics Lecture: Optimization Technique Date: 08.06.2014.

Constrained Optimization

• Substitution Method– Substitute constraints into the objectivefunction and then maximize the objectivefunction• Lagrangian Method– Form the Lagrangian function by addingthe Lagrangian variable and constraint tothe objective function and then maximizethe Lagrangian function

Page 22: Managerial Economics Lecture: Optimization Technique Date: 08.06.2014.

Example 6

• Use the substitution method tomaximize the following profit function:π = 80X – 2X2 – XY – 3Y2 + 100Y• Subject to the following constraint:X + Y = 12

Page 23: Managerial Economics Lecture: Optimization Technique Date: 08.06.2014.

Example 6: Solution

• Substitute X = 12 – Y into profit:π = 80(12 – Y) – 2(12 – Y)2 – (12 – Y)Y – 3Y2 +

100Yπ = – 4Y2 + 56Y + 672• Solve as univariate function:dπ/dY = – 8Y + 56 = 0Y = 7 and X = 5

Page 24: Managerial Economics Lecture: Optimization Technique Date: 08.06.2014.

Example 7

• Use the Lagrangian method tomaximize the following profit function:π = 80X – 2X2 – XY – 3Y2 + 100Y• Subject to the following constraint:X + Y = 12

Page 25: Managerial Economics Lecture: Optimization Technique Date: 08.06.2014.

Example 7: Solution

• Form the Lagrangian functionL = 80X – 2X2 – XY – 3Y2 + 100Y + λ(X + Y – 12)• Find the partial derivatives and solvesimultaneouslydL/dX = 80 – 4X –Y + λ = 0dL/dY = – X – 6Y + 100 + λ = 0dL/dλ = X + Y – 12 = 0• Solution: X = 5, Y = 7, and λ = -53

Page 26: Managerial Economics Lecture: Optimization Technique Date: 08.06.2014.

Interpretation of theLagrangian Multiplier, λ

• Lambda, λ, is the derivative of theoptimal value of the objective functionwith respect to the constraint– In Example 7, λ = -53, so a one-unitincrease in the value of the constraint (from-12 to -11) will cause profit to decrease byapproximately 53 units


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