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Transcript
Volatility in agricultural
commodity markets:
Click to edit Master subtitle style
Towards some policy
responses
Carmel Cahill
Trade and Agriculture Directorate
20/10/10
OECD
FAO, ROME, October 13th 2010
Index
1.
Food Price Spikes: Causes
2.
Policy responses
3.
Was Financial Speculation to Blame?
4.
Conclusion
Part 1
food price spikes:
causes
Real Commodity Prices
Food and Agricultural
1970 - 2009
1/20
(indices, 2002=1)
Source: IMF, International Financial Statistics, 2009.
Food Crop Prices
co-movement
2004 - 2010
2/20
(indices, 2005=100)
Source: OECD-FAO Agricultural Outlook 2010-2019
Cereal Commodities
Nominal Annualised Historic Volatility
1957 - 2010
3/20
Source: OECD-FAO Agricultural Outlook 2010-2019
Overview
Temporary /Short-term Long-term factors
Factors
Unknown or uncertain
factors
Weather problems,
Drought
Increase in use of
agricultural feedstocks for
bio-fuels
•Speculation on commodity
derivative markets
•Hoarding
Export restrictions
Increase in demand for food Effects of climate change
and animal feed from
Water scarcity
emerging countries
Exchange rate fluctuations Historically low stock levels Technology, Yields
4/20
Is volatility likely to increase?
•
•
•
•
•
•
5/20
De-regulating reforms
Low stocks
Links to energy
markets
Production moving to
less resilient areas
Climate change
increasing the
frequency of extreme
event
Speculation
•
•
•
New technologies
increasing
resilience
More open trade
leading to less thin
markets
Better information
flows
OECD/FAO Price Projections
World Prices in real Terms
Percentage change relative to 1997-2006
160
140
2007 -08 average
2010 -19 average
120
100
80
60
40
20
0
-20
6/20
Source: OECD-FAO Agricultural Outlook 2010-2019
Objectives
•
•
•
7/20
Help the most severely affected
consumers cope with high prices
Help producers cope with low,
uncertain and excessively volatile prices
Allow market signals to reflect
underlying supply and demand
conditions
One size will not fit all
Measures
8/20
Actors
•
Prevention
•
International
•
Readiness
•
Governments
•
Resilience
•
Individuals
Part 2
Policy response
International Level
Short Term
•
Emergency response capacity:
–
–
More stable and predictable financing framework
Financial mechanisms for the poorest
net importing countries
Longer term
•
•
•
9/16
Export Restrictions
Information systems and transparency especially
(especially stocks)
DDA: the risk of excessive volatility associated with
« thin » markets will be reduced
National Level
Short Term
•
In the short-term, targeted emergency measures,
safety nets for the most vulnerable
Longer term
•
•
•
10/16
Develop stockholding mechanisms with welldefined operational rules
Re-think biofuels policies
Invest in agriculture to improve productivity and
resilience
Producer Risk
Integrate volatility into a wider
risk management strategy
•
•
•
•
11/20
Diversification at the enterprise and household level
Smoothing mechanisms – save in good years with the
help of the tax system, or tailored schemes
Use market instruments – futures, insurance
Catastrophic situations call for government
intervention, but with well defined conditions and
terms
Three Risk Layers
12/16
Layer
Catastrophic Market
Risk
Retention
Frequency
Low
Medium
High
Damage
High
Medium
Low
Examples
Floods and Droughts Specific perils (hail,
larger price
variations) with
potential for market
instruments
Normal weather
variations and
changes in market
conditions
Three Risk Layers
Different Policy Implications
Risk Retention
Probabilit
y
Cat. Marke
t
Distribution of farm income
1717
13/16
Part 3
Was financial speculation to
blame?
Was Financial Speculation to
Blame?
Arguments For
•
•
•
14/16
Deregulation in the US in 2000 in
important (commodity
derivatives)markets.
Huge increase in commodity index
investment – non-traditional investors.
Rapidity of the price increases and
subsequent falls
Was Financial Speculation to
Blame?
Arguments Against
Many plausible and well documented, other
contributory factors:
•
supply and demand shocks,
−
exchange rates
−
low stocks
−
hoarding
−
inelastic supply and demand)
−
Evidence
from other commodities,
Other factors
−
•
exchanges.
•
15/16
other
Preliminary evidence (Irwin and Shaw).
Part 4
Conclusion
One man’s meat is another
man’s poison
•
•
•
•
16/16
Multiple factors affecting multiple actors in very
different ways
An incomplete understanding of the past and
much uncertainty about the future
Known needs can only be met by a resilient and
responsive sector exposed to market signals
So one size fits all solutions cannot work
OECD Trade and Agriculture
www.oecd.org/agriculture
Contact
[email protected]