Title: Review of Production Economics
1- Review of Production Economics
2Agenda
- Introduction
- Production Functions
- Cost Functions
- Revenue Functions
- Profit Functions
- Distance Functions
- Econometric Estimation of Production Functions
3Introduction
- Assumptions
- Single period
- prices are known with certainty
4Agenda
- Introduction
- Production Functions
- Cost Functions
- Revenue Functions
- Profit Functions
- Distance Functions
- Econometric Estimation of Production Functions
5Production Functions
- Consider a firm that uses N inputs to produce a
single output - Technological possibilities can be summarized in
a production function - Properties
- Nonnegative
- Weak Essentiality
- Nondecreasing in X
- Concave in X
-
6Single Input Production Function
7Multiple input case
8Multiple input case
9Quantities of Interest
- Production function has to be twice-continuously
differentiable, the we can calculate the - Marginal Product
- Marginal rate of technical substitution
- Output elasticity
- Direct Elasticity of Substitution
10Marginal Product and Marginal Rate of Technical
Substitution
- Marginal Product
- Marginal Rate of Technical Substitution
- Implicit function how much of is
required to produce a fixed output when we use
certain amounts of the other inputs - Measures the slope of an isoquant
11Output Elasticity and Direct Elasticity of
Substitution
- Output Elasticity
- Direct Elasticity of Substitution
- DES measures the percentage change in the input
ratio relative to the percentage change in the
MRTS - Measures he curvature of the isoquant
12Elasticities of Substitution
- MRTS ? slope of an isoquant
- DES ? curvature of an isoquant
- DES 0 no substitution is possible
- MRTS perfect substitutes
- Einscannen Bild 2.4
13AES and MES
- Allen partial elasticity of substitution (AES)
and Morishima elasticity of substitution are long
run elasticities - ? Allow all input to vary
- DES is a short term elasticity because it
measures substitutability between two inputs
while holding the others fixed. - DES AES in the two input case.
-
14Returns to scale
- Marginal product
- Measures the output response when one input is
varied and all other inputs are hold fix. - When all inputs are varied simultaneously CRS,
DRS and IRS - When kgt1
- DRS
- CRS
- IRS
15Returns to scale
- DRS
- If a proportionate increase in all inputs results
in a less than proportionate increase in output - CRS
- If a proportionate increase in all inputs results
in the same proportionate increase in output - CRS
- If a proportionate increase in all inputs results
in a more than proportionate increase in output
16Elasticity of scale
- Elasticity of scale (total elasticity of
production) - Where E is the output elasticity
- The production function exhibits locally DRS, CRS
or IRS as the elasticities of scale is less than,
equal to or greater than 1.
17An Example
- Cobb Douglas production function with two inputs
18An Example
19Duality production
- Output supply curve, Labor input demand, Capital
input demand , Profit maximization - Cost minimization
- Normal case in PSM
- Easier
- Input Demand Function
- First order derivatives with respect to
quantities and the Lagrange parameter - Marginal input demand functions
20Agenda
- Introduction
- Production Functions
- Cost Functions
- Revenue Functions
- Profit Functions
- Distance Functions
- Econometric Estimation of Production Functions
21Cost Functions
- Firms decide on the mix of inputs they wish to
use in order to minimize costs - No influence on input prices, perfectly
competitive - With T as the transformation function
- Where w is a vector of input prices.
- Search over all technically feasible input-output
combinations and find the input quantities that
minimize the cost of producing the output vector
q -
22An Example
- Cobb Douglas production function with two inputs
- Minimize the function with respect to x1
23Conditional Input Demand Functions
24Final Cost Function
- All Cobb Douglas Functions are self dual (cost
function and production function have the same
functional form) - Nondecreasing and linearly homogeneous in prices
and nondecreasing in output - Nonnegative, Nondecreasing in w, Nondecreasing
in q, Homogeneity, Concave in w -
25Cost Minimization
26Deriving Conditional Input Demand Equations
- When we have more than a few inputs or less
tractable production functions - More common to derive conditional input demand
equations by working back from well behaved cost
functions - Shepards Lemma says
- Once a well behaved cost function has been
specified or estimated econometrically we can
obtain the conditional input demand equations. -
27Shepards Lemma
- Cost function defined
- Econometric estimation
- ? Input demand function
- First order derivatives with respect to prices
- Symmetry Condition
- EXAMPLE see Coelli
- Primal approach
- Dual approach
28Demonstration
- Cost Function
- First order derivatives with respect to prices
- Equations are identical to the input demand
equations - Nonnegative
- Nonincreasing in w
- Nondecreasing in q
- Homogeneity
- Symmetry
29Economies of Scale and Scope
- Measures of returns to scale are available in the
multi-output case, can be defined in terms of the
cost function. - Overall scale economies
- Cost savings from producing different numbers of
output (economies of scope) -
c(w,qm) denotes the cost of producing the m th
output only, and c(w,qM-m) denotes the cost
of producing all outputs except the mth
output
30Analysis of Cost Elasticities
- Source Berichmann Public Transport
- Short-run given area variable labor
- INPUT Employees, capital, energy
- OUTPUT Bus kilometer and others
- Analysis of Cost Elasticity µ(C)
- if MCgt(lt)AC, µ is bigger (smaller) than one
31Different Types of Cost Elasticities (I)
- A) Economies of Scale
- 1-Output SE1-µ(C) mu(C)lt1
- Multi-Output with j1,, n Outputs
- B) Economies of Densitiy
- C(w,y,T) T fixed factor of traffic
density, e.g. km Network size - Return to Traffic Density (RTS)
- with y Output N Network density k unit
colum vector - C) Economies of Capital Stock Utilization
- CC(w,y,k_fixed)
- Returns to utilization (RTU)
-
- with C is the cost function k unit colum
vector - if gt1 it is better to use capital more
intensively
32Different Types of Cost Elasticities (I)
- D) Economies of Scope
- Y(y1,,yn)
- Y decomposed into the two vectors Yx,Yn-X
- Degree-of-Scope-Economics (DSC)
- E) Economies of Network
- Return-to-Network Scale (RTN)
- If RTN gt 1 there are positive network effects
- with j1,,N network variables, e.g. routes
33Agenda
- Introduction
- Production Functions
- Cost Functions
- Revenue Functions
- Profit Functions
- Distance Functions
- Econometric Estimation of Production Functions
34Revenue Functions
- Cost Functions determine the minimum cost of
producing a given output vector q. - Revenue Function determine the maximum revenue
obtained form a given input vector x - Maximizing revenue mirrors the problem of
minimizing cost - Both variants of the profit function
- Micro economics cost function are widely used
- Macro economics revenue function
35Revenue Maximization problem
- Multiple input, multiple output
- r(p,x) max pq such that t(q,x) 0
- p is a vector of output prices over which the
firm has no influence - properties nonnegative, nondecreasing in p,
nondecreasing in x, convex in p, homogen
36Example
- Maximizing revenue subject to the technology
constraint - Cobb Douglas production function with two inputs
- Revenue maximization problem
- Because there is only one output, technology
defines the short run conditional output supply
function
37Revenue Function
- Nondecreasing in prices and input quantities
- Conditional output supply function
- Differentiating the revenue function with respect
to outputs
38Agenda
- Introduction
- Production Functions
- Cost Functions
- Revenue Functions
- Profit Functions
- Distance Functions
- Econometric Estimation of Production Functions
39Profit Functions
- Cost and Revenue Function how firms use input
and output price information to choose levels of
either inputs or outputs, but not both - Choose inputs and outputs simultaneously
Profit Functions - Decision in order to maximize Profit (Revenue
Cost) - Maximum profit varies with p and w
40Example
- Production Function, Cobb Douglas
-
41Input Demand Function
- Substituting this result back into the production
function yields the output supply function - And the profit function
- Nonnegative
- Nondecreasing in p
- Nonincreasing in w
- Homogeneity
- Convex in (p,w)
- Generalizations of the properties of cost and
revenue functions
42Profit Maximizing Solution
- -
- Single output case
- With the first order condition
- LMR LMC
- Long run profit maximizing level of output is the
level that equates long run marginal revenue with
long run marginal cost.
43Input Demand and Output Supply Equations
- Shepards Lemma, obtain conditional demand
equations directly from the cost function,
without having solved an optimization problem - General case for profit function Hotellings
Lemma
44Illustration
-
- Applying Hotellings Lemma
-
45Hotellings Lemma
- Used to establish the following properties of the
input demand and output supply functions - With regard to x
- Nonnegative
- Nonincreasing
- homogen
- symmetry
- With regard to y
- - nonnegative
- nondecreasing
- homogen
- symmetry
46Hotellings Lemma
- Hotellings Lemma Production Function
- First order derivatives with respect to prices
-
- Due to symmetry condition Youngs Theorem
-
47Agenda
- Introduction
- Production Functions
- Cost Functions
- Revenue Functions
- Profit Functions
- Distance Functions
- Econometric Estimation of Production Functions
48Efficiency Measurement using stochastic frontiers
Distance Functions
- Multi-output Production and Distance Function
- Output Distance Function
- Input Distance Function
- Use of Distance Functions
49Multi-output Production and Distance Functions
- Single output production function
- Cobb Douglas and Translog
- To accommodate multiple output situations
- Specify a multi-output production function The
Distance Function
Is a function, d h(x,y), that measures the
efficiency wedge for a firm in a multi-input,
multi-output production context. It is thus a
generalization of the concept of the production
frontier
50Multi-input multi-output production technology
- Technology set S is then defined as
- X non negative K1 input vector
- Y non negative M1 output vector
- Set of all input output vectors (x,y) such that x
produce y
51Distance Functions
- Allow one to describe a multi-input, multi-output
production technology, without the need to
specify a behavioral objective (cost
minimization, profit maximization) - May specify both
- Input Distance Function
- Output Distance Function
52Output Distance Function
- Maximal proportional expansion of the output
vector, given an input vector! - Production technology defined by the set S,
equivalently defined using output sets, P(x) - Properties inaction is possible, non zero output
levels cannot be produced from zero levels of
inputs, strong disposability of outputs, strong
disposability of inputs, P(x) is closed, bounded
and convex.
53Output Distance Function
- Output distance function is defined on the output
set, P(x) - Properties of d0
- Non decreasing in y and increasing in x
- Linearly homogeneous in y
- If y belongs to the production possibility set of
x then the distance is - Distance is equal to unity if y belongs to the
frontier of the production possibility set
54Output Distance Function and Production
Possibility Set
B
Y2
C
A
PPC-P(x)
y1
Y1
55Input Distance Function
- Characterizes the production technology by
looking at a minimal proportional contraction of
the input vector given an output vector - Defined on the input set L(y)
- L(y) represents set of all input vectors x which
can produce output vector y
56Distance Function Specification (Coelli (1998),
p. 66)
x2
A
L(x)
x2A
B
C
Isoq- L(x)
x1A
x1
57Use of Distance Function
- Can be used to define a variety of Index Numbers
-
- (Malmquist Index)
- Can also directly estimated by either econometric
(SFA) or mathematical programming methods (DEA) - Estimated distance functions have been used
seeking measures of shadow prices.
58Agenda
- Introduction
- Production Functions
- Cost Functions
- Revenue Functions
- Profit Functions
- Distance Functions
- Econometric Estimation of Production Functions
59Production cost and Profit Functions
- Overview of econometric methods for estimating
economic relationship. - A single dependent variable in a function of
one or more explanatory variables (Production
function, Cost function) - y f(x1, x2, , xn)
- Specify algebraic form
- Common functional forms (flexible, linear in
parameters, regular, parsimonious,
60Some Common Functional Forms
61Accounting for Technological change
- Economic relationship may vary over time
- Account for technological change time trend
- Linear
- Cobb
- -Douglas
- Translog
62Time Trend
- Implicit assumptions about the nature of
technological change - Percentage change in y in each period due to
technological change - Derivative of lny with respect to t
- linear
- Cobb-
- Douglas
- Translog
63Neutral and Non-neutral Technical Change
64Estimate Distance Functions using Econometric
Methods
- Specify translog functional form, estimate
unknown parameters of the distance function - Input distance function in log form
- Impose homogeneity of degree one in inputs
- We obtain
- Function to estimate, ML or COLS, Frontier 4.1
65Input Distance Function Specification(Coelli
(2002), p. 12 sq.)
- The original Translog Form of an Input
Distance-Function with M outputs and K inputs and
D as distance function value is given by - Restrictions required for homogeneity of degree
1 in inputs are - And those for symmetry are
-
- The level of inefficiency can be estimated from a
stochastic frontier production function of the
form y f(x)v-u, where v is the error term
(assumed to be N0, s ) and u is the one-sided
inefficiency term. The level of efficiency is
estimated by exp(-u)). Consequently, lnD0i-ui.
66Input Distance Function Specification(Coelli
(2002), p. 12 sq.)
- Imposing the homogeneity restrictions (by
dividing the whole equation by an optional input)
results in - Where lnDI can be interpreted as inefficiency
term (ui) - given the stochastic error (vi) this model is
formulated in the common SFA form and can be
estimated with conventional SFA software. - For estimation purposes, the negative sign on the
dependent variable can be ignored. This results
in the signs of the estimated coefficient being
reversed.
67Input Distance Function Estimation(based on
Coelli (2002), p. 13 and Bjorndal (2002), p. 8)
- For for I (i 1, 2, , I) firms, this
econometric specification with lnDi -ui, in its
normalized form is expressed by - For estimation the sign of the explained variable
is not of importance. If one uses lnx1 rather
than lnx1, the estimated coefficients are
reversed. However this is more consistent with
the expected signs of conventional production
functions (Coelli and Perelman 1996). Further it
provides a convenient means of qualitatively
assessing the model. As for the Error Component
Model in SFA, a distribution for ui has to be
assumed. Again normal distribution truncated at
zero, uj N (µ,s2) and a half-normal
distribution truncated at zero, uj N (0, s2)
are most common.