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1 Optimization
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2 General Problem
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3 One Independent Variable x y (Local) maximum Slope = 0
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4 One Independent Variable (cont’d) slope=0 is necessary but not sufficient condition for a maximum Minimum, f’(x)=0 too f’(x)=0 too, but it is a point of inflexion
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5 One Independent Variable x y (Local) maximum Slope = 0 x f’(x) Slope of f’(x) is zero x0x0 x0x0
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6 One Independent Variable
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7 Two Independent Variables x x* z* y A
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8 Two Independent Variable
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9 Constrained Optimization f(x,z)=25, better but not feasible F(x,z)=0 f(x,z)=20 x z contours
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10 Constrained Optimization (cont’d)
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11 Constrained Optimization (cont’d)
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12 Lagrange’s method Lagange’s method introduces a third variable called the Lagrangian multiplier (λ) that allows us to treat the problem as if an unconstrained one.
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13 Lagrange’s method (cont’d)
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14 Lagrange’s method
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15 The Farmer’s Problem
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16 The Farmer’s Problem (cont’d)
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17 Envelope theorem
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18 Envelope theorem (Cont’d) The total derivative of the maximum value of y with respect to α is just equal to the partial derivative of y with respect to α, evaluated at the optimal choice of the x i ’s. This is called envelope theorem!
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19 Envelope theorem (cont’d)
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20 Envelope theorem (cont’d)
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