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9/12/18 1 4. Estimating Demand from Market Data Reading: Boardman, Chapter 4 1. Introduction Need to measure social surplus. These are found as areas under demand and supply curves. Triangles, trapezoids and so forth. Curves are usually unknown, so we need to find ways to estimate them and, in then, calculate the triangles. Here we look at some common ways of estimating demand.

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Page 1: 04 Estimating Demand

9/12/18

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4. Estimating Demand from Market Data

Reading:➝Boardman, Chapter 4

1. Introduction

➝Need to measure social surplus. These are found as areas under demand and supply curves. Triangles, trapezoids and so forth.

➝Curves are usually unknown, so we need to find ways to estimate them and, in then, calculate the triangles.

➝Here we look at some common ways of estimating demand.

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2. One Point Plus Slope or Elasticity

➝Usually know one point (current price & quantity).

➝ If you can get the slope from existing studies or using a plausible estimate and you are willing to assume linearity (impose structure), it is a simple to estimate demand

➝ Same is true if you get the elasticity. In this case you can estimate a linear or constant elasticity demand curve

➝ See next slide

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2. Extrapolating from a Few Points

➝You know a few points of p,q from historic data and you try to “fit ” a line through these points.

Known data points

➝Comments• Sensitivity to functional form• Controlling for other factors• Validity of measures from only 2 points• Extrapolating beyond ‘relevant range’

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3. Many Points Econometrics

➝Cross-Sectional or Time-Series data on p,q

price

quantity

( ; )Estimted demandq f p β=

➝Regress q on p, or fit a line to this scatter of points. You’d have something like the red linear regression or blue non-linear regression

price

quantity

( ; )Estimted demandq f p β=

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➝Use the estimated line in your analysis➝ Types of data

• individual vs. aggregate• time series (annual/monthly) vs. cross sectional• examples: electricity, farm crops, water, consumer goods galore,

automobiles, oil, minerals markets, traffic, computers, wine ……➝Major econometric issues

➥Omitted variable bias

➥Autocorrelation in time series data

( , , , )own substq f p p y d=

➥Identification Problem: Are you estmating a deamnd curve or a supply curve when you estimate the relationship between p and q?➥The ideal case. (Rain example. Cross sectional stories.) Shifting

supply is sketching out a demand curve.

Stable demand curve

Shifting supply curves

price

quantity

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» But it could have been supply that was sketched out

price

quantity

➥Trouble and likely outcome is that you observe price and quantity relationships that get both shifts.

➥Simultaneous equations/instrumental variables

price

quanity