Title: Impact of New Technologies
1Economic impact of agricultural biotechnology in
the European Union Transgenic sugar beet and
maize
Dissertationes de Agricultura, No. 713, Jozef
Heuts-auditorium, Landbouwinstituut, Faculteit
Bio-ingenieurswetenschappen, Katholieke
Universiteit Leuven, 1 September 2006, 1600pm
Matty Demont Promoter Prof. E. Tollens Jury
President Prof. G. Volckaert Jury Members Prof.
E. Mathijs Prof. J. Swinnen Prof. J.
Vanderleyden Prof. J. Wesseler
2IntroductionAgBiotech adoption in the world
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
3IntroductionAgBiotech adoption in the world
- Most of the recent agbiotech innovations have
been developed by private sector - Therefore, the central focus of societal interest
is not on the ROR of RD, but on distribution of
gains among stakeholders in the technology
diffusion chain
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
4IntroductionAgBiotech adoption in the world
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
5IntroductionAgBiotech adoption in the world
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
Upstream
Downstream
6IntroductionAgBiotech adoption in the world
- Upstream private sector is highly consolidated
- Existence of market power and extraction of
monopoly rents
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
7IntroductionAgBiotech adoption in the world
- Alston, Norton Pardey (1995) (ANP)
- Moschini Lapan (1997)
- Widely used in agbiotech impact literature
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
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10IntroductionAgBiotech adoption in the world
- Farmers capture sizeable gains
- Size and distribution of welfare effects of the
first generation of GE crops are function of - 1. Adoption rate
- 2. Crop
- 3. Biotech trait
- 4. Geographical region
- 5. Year
- 6. National policies (Ch.1) and IPR protection
- 7. Assumptions and underlying dataset (Ch.4)
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
11Upstream Average 37
12IntroductionAgBiotech adoption in the world
- However, benefit sharing seems to follow a
general rule of thumb - 1/3 upstream vs. 2/3 downstream
- This rule of thumb seems to be valid for both
industrial and developing countries
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
13IntroductionAgBiotech adoption in the EU
- De facto moratorium on GM crops October 1998
May 2004 (Syngenta Bt 11 maize) - 1998-2002 Adoption stagnated at 25,000 ha Bt
maize in Spain, doubled afterwards - 2006 5 Bt maize growing EU Member States Spain,
Portugal, France, Czech Republic, Germany - De facto moratorium implies a cost to society
deadweight cost or benefits foregone of GM crops
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
14IntroductionAgBiotech adoption in the EU
- We need to know this cost in ex post, but also
for future decisions in ex ante
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
15IntroductionHypotheses
- The first generation of agbiotech innovations
could and can significantly contribute to
productivity and welfare in EU agriculture - The largest share of total welfare creation is
captured downstream (farmers, processors,
manufacturers, distributors and consumers) - Conventional benefit-cost analysis cannot capture
uncertainty and potential irreversibility
regarding environmental effects. It can be
extended by a real option approach to assess
maximum tolerable levels of irreversible
environmental costs that justify a release of
these innovations in the EU
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
16IntroductionHypotheses
- 4. Some of the variability of welfare estimates
reported in literature can be explained by the
modeling of supply shift in conventional
equilibrium displacement models
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
17IntroductionCase studies
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
18IntroductionCase studies
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
19IntroductionCase studies
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
20IntroductionCase studies
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
21IntroductionHerbicide tolerant (HT) sugar beet
in EU-15
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
22IntroductionBt Bacillus thuringiensis maize
in Spain
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
23MethodologyHerbicide tolerant (HT) sugar beet
in EU-15
- Farm level analysis
- - assume standard HT replacement programs
- - compare costs with observed programs
- - assume technology pricing (see data)
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
24MethodologyHerbicide tolerant (HT) sugar beet
in EU-15
- Aggregation to the global level through standard
methodologies - - Alston, Norton Pardey (1995) (ANP)
- - 3 regions EU, ROW beet, ROW cane
- - Dynamic world price behaviour
- - Moschini, Lapan Sobolevsky (2000) (MLS)
- - Former EUs CMO sugar
- - Technology spillovers included
- - Non-spatial no intra-EU trade flows
- - Disaggregated supply 16 prod. blocks
- - Aggregate EU demand
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
25MethodologyHerbicide tolerant (HT) sugar beet
in EU-15
- Real option approach (Wesseler Weichert, 1999)
decision to release GM crops in EU is one under
flexibility, irreversibility, and uncertainty - Neo-classical decision criterion benefits
costs - Include an additional safety factor to take
into account uncertainty irreversibility - Decision criterion benefits gt costs by a factor,
the so-called hurdle rate (estimated through
historical gross margin series) - Calculate break-even points maximum tolerable
costs
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
26MethodologyBt Bacillus thuringiensis maize in
Spain
- Farm level analysis
- - standard damage abatement function
- - damage stochastic (lognormal)
- - calibrated on real corn borer damage data
- Aggregation to national level
- - Alston, Norton Pardey (1995) (ANP)
- - small, open economy
- - Oehmke Crawford (2002) Qaim (2003) (OCQ)
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
27Data
- Ex ante (HT sugar beet in the EU-15)
- - No adoption of the new technology
- - No farm level impact data, only field trials
- - Assumptions 1. Yield impact
- 2. Technology pricing
- - Sources expert opinions, literature, economic
theory, national surveys, Eurostat - - Stochastic simulation
- Ex post (Bt maize in Spain)
- - Scarce data sources
- - Data mining (e.g. corn borer damage)
- - Sources literature, national surveys
- - Stochastic simulation
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
28Results
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
29Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
30Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
31Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
32Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
33Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
34Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
35Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
36Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
37Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
38Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
39ResultsHerbicide tolerant (HT) sugar beet in
the EU-15
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
40ResultsHerbicide tolerant (HT) sugar beet in
the EU-15
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
41ResultsBt Bacillus thuringiensis maize in
Spain
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
42ResultsBt Bacillus thuringiensis maize in
Spain
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
43ResultsBt Bacillus thuringiensis maize in
Spain
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
44Model evaluation
- 5 methods of supply shift calculation
- CIR Change in Revenue
- ANP Alston, Norton Pardey (1995)
- ANP1 ANP with supply elasticity 1
- OCQ Oehmke Crawford (2002) Qaim (2003)
- MLS Moschini, Lapan Sobolevsky (2000)
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
45Model evaluation
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
46Model evaluation
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
But if ? 0 ? ANP ANP1 OCQ
47Model evaluation
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
48Model evaluation
- ANP method seems not robust at first sight
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
49Model evaluation
- Lets have a look at the differences between the
- 5 methods
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
50Model evaluation
- No systematic differences between the models when
fed with stochastic market data, except between
ANP1 and OCQ
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
51Model evaluation
- Thus, if we are only interested in the mean
- value, given stochastic market data, model choice
- does not matter
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
52Model evaluation
- In other words
- Data uncertainty gt model uncertainty
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
53Model evaluation
- Not surprisingly, supply elasticity plays a major
role in ANP sensitivity
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
54Model evaluation
- Lets have a look at the variance comparisons
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
55Model evaluation
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
56Model evaluation
- ANP is significantly less robust than CIR, OCQ
and MLS, but not ANP1 - ? the ANP vs. ANP1 discussion on supply
elasticity is irrelevant, given stochastic data
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
57Model evaluation
- ANP is significantly less robust than CIR, OCQ
and MLS, but not ANP1 - OCQ and MLS significantly more robust and hence
preferred methods
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
58Model evaluation
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
59Model evaluation
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
60Model evaluation
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
61Conclusions
- The first generation of agbiotech innovations
could and can significantly contribute to
productivity and welfare in EU agriculture - The largest share of total welfare creation is
captured downstream (farmers, processors,
manufacturers, distributors and consumers) - Conventional benefit-cost analysis cannot capture
uncertainty and potential irreversibility
regarding environmental effects. It can be
extended by a real option approach to assess
maximum tolerable levels of irreversible
environmental costs that justify a release of
these innovations in the EU
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
62Conclusions
- Some of the variability of welfare estimates
reported in literature can be explained by the
modeling of supply shift in conventional
equilibrium displacement models - Recommend simplified and transparent model in
combination with stochastic data mining - The real question is whether we want to produce
information or whether we want to produce a model
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
63Conclusions
- The crippling flaw in much environmental and
natural resource economics is that most
practitioners believe that the models we build
offer a clear and plausibly reliable mapping
into propositions about the world of facts they
presume to depict. All models are wrong, but some
are more wrong than others - (Bromley, 2005, p. 29).
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
64Acknowledgements
- Parents
- Siska De Borger
- Prof. E. Tollens, promotor
- Prof. G. Volckaert, jury president
- Jury Members Prof. E. Mathijs, Prof. J.
Vanderleyden, Prof. J. Swinnen Prof. J.
Wesseler - Josée Verlaenen, Godelieve Vanzavelberg, Odette
Moria - Collegues Centre Agr. Food Economics
- VIB, K.U.Leuven, European Commission, Monsanto
- Experts (zie p. ii, iii) co-authors
- Audience
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements
65MethodologyHerbicide tolerant (HT) sugar beet
in EU-15
?PSEU b a d c ? 0 ?CSEU 0
66MethodologyBt Bacillus thuringiensis maize in
Spain
Introduction Methodology Data Results Model
evaluation Conclusions Acknowledgements