SlideShare a Scribd company logo
1 of 1
Download to read offline
Learning Financial Shocks and the Great Recession
Patrick A. Pintus Jacek Suda
Banque de France Narodowy Bank Polski
Financial Crisis and RE
• 2007-08 US financial crisis reinforced interest in
relaxing rational expectations assumption.
• Who had a decent approximation of crisis
probability at the end of the “Great Moderation”?
• Assumption that agents know probability
distributions rather strong!
Leverage ratio
0.7
0.8
0.9
1
1.1
1.2
1.3
1.4
US Household Leverage Ratio 1980Q1-2010Q3
0.4
0.5
0.6
1980Q1
1984Q1
1988Q1
1992Q1
1996Q1
2000Q1
2004Q1
2008Q1
• 1996-2006 decade witnessed huge rise in housing
prices index.
• By the end of 2008 household leverage ratio rose
from about 0.64 to about 1.26!
• This is in stark contrasts with flat leverage during
1980-1995 period.
What we do
• Allow agents’ perception about the structure of
the economy to evolve over time.
• Study how financial shocks affect the
macroeconomy when perceptions updated in
real time.
Adaptive learning
Consider linearized expectational system:
Xt = AXt−1 + BE∗
t−1[Xt] + CE∗
t [Xt+1] + N + Dξt,
• Under REE, E∗
t = Et,
Xt = Mre
Xt−1 + Hre
+ Gre
ξt,
where Mre
solves
Mre
= [I8 − CMre
]−1
[A + BMre
].
• Under learning, agents are econometricians:
• Agents’ perception of the equilibrium law of motion (PLM)
Xt = MXt−1 + H + Gξt,
• has the same VAR(1) structure as RE equilibrium, but
• admits M = Mre
, H = Hre
, G = Gre
.
• Agents use PLM to form expectations
EτXτ+1 = Mτ−1Xτ + Hτ−1
• Actual low of motion (ALM)
[I8 − CMt−1]Xt = [A + BMt−2]Xt−1 + CHt−1 + BHt−2 + N + Dξt.
• Agents update their “beliefs” by estimating a VAR(1).
• Assume recursive updating of the perceived law of motion
Mt = Mt−1 + νtR−1
t Xt−1(Xt − Mt−1Xt−1)
Rt = Rt−1 + νt(Xt−1Xt−1 − Rt−1)
• OLS/RLS if νt = 1/t,
• constant gain if νt = ν.
• REE: PLM and ALM coincide.
How we do it
• Use RBC model with collateral constraint:
• variant of Kiyotaki and Moore (1997).
• Replace rational expectations (RE) with
adaptive learning.
• Calibrate the model using US data from
1996Q1-2008Q4 period.
• Focus on financial shocks driving leverage:
• a large temporary negative shock to leverage in 2008Q4,
Representative agent
max E∗
0
∞
t=0
βt
Ct − ψN1+χ
t
1+χ
1−σ
− 1
1 − σ
,
• E∗
t denotes expectations at time t.
• Budget constraint:
Ct+Kt+1−(1−δ)Kt+TtQt(Lt+1−Lt)+(1+R)Bt = Bt+1+AKα
t Lγ
t N1−α−γ
t
• exogenous interest rate (SOE)
Borrowing constraint and leverage
Agents face borrowing constraint
˜ΘtE∗
t [Qt+1]Lt+1 ≥ (1 + R)Bt+1,
where
˜Θt ≡ Θt



E∗
t [Qt+1]
Q



ε
.
• leverage can respond to changes in the land price
• ε > 0 agrees with evidence in Mian and Sufi (2011)
• Θt is exogenous and subject to random shocks
log Θt = (1 − ρθ) log Θ + ρθ log Θt−1 + ξt.
Learning process
⇐=linearized expectational system with
Xt ≡ (ct, qt, λt, φt, bt, kt, θt, τt)
• E∗
t = Et: agents “beliefs” given by PLM and
updated with constant gain learning.
• Model is E-stable, i.e. limt→∞ Mt → Mre
.
• Expectations may differ from RE.
Experiment
• Assume that, in the decade preceding 2008Q4,
agents have learned the economy and
• the associated matrix in PLM is M2008Q4,
• agents’ beliefs about ρθ is reflected in matrix M2008Q4.
• Key equation: AR(1) process for leverage:
• RE corresponds to OLS estimates for 1975-2010 for ρθ,
ρθ = 0.976, ¯Θ = 0.88.
• Agents’ initial beliefs given by 2008Q4 CG estimates,
ρCG
θ = 0.9904 for νt = 0.004.
2000 2005 2010
0.970
0.975
0.980
0.985
0.990
CG and OLS estimates of persistence of leverage
What we find
• Agents gradually learn the economy.
• Learning amplifies effects of leverage shocks by
a factor of 2.5–3 (relative to RE).
• Magnitude of the recession also depends on the
level of leverage.
• Macro-prudential policies enforcing counter-
cyclical leverage have stabilizing effect.
Impulse response functions
10 20 30 40 50 60
Time
3.0
2.5
2.0
1.5
1.0
0.5
Output
• A −5% leverage shock, observed in 2008Q4, causes:
• fall in output by 3.3%, in consumption by 3.6%, and in
capital stock by about 5%,
• severe deleveraging (3× larger under learning).
• Response of economy leads to overshooting.
• Effect of leverage shocks larger in economies that
are more levered.
• Key: land price variations in borrowing constraint.
• Countercyclical leverage dampens responses to
financial shocks.
Great Recession
• Learning model predicts Great Recession and a
significant boom prior to that.
• Magnitude of recession almost matches data
(4.7% between 2007Q3 and 2010Q1)
Procedure
• Feed RE and learning models with
• calibrated iid land price shocks to match observed prices,
• estimated innovations/shocks to leverage.
2000 2002 2004 2006 2008 2010
80
60
40
20
0
Land Price Deviations From 2007Q4
2000 2002 2004 2006 2008 2010
0.05
0.00
0.05
Innovations OLS and CG
• Let agents update their beliefs, Ht and Mt
• H0 = HRE
and M0 = MRE
2000 2002 2004 2006 2008 2010
4
2
0
2
4
Output Response Over Time Deviations From 2007Q4

More Related Content

Similar to Poster on Learning financial shocks and the Great Recession

Presentation on Bad Beta, Good Beta
Presentation on Bad Beta, Good BetaPresentation on Bad Beta, Good Beta
Presentation on Bad Beta, Good BetaMichael-Paul James
 
Expected shortfall.ppt
Expected shortfall.pptExpected shortfall.ppt
Expected shortfall.pptssusera9e4681
 
The dangers of policy experiments Initial beliefs under adaptive learning
The dangers of policy experiments Initial beliefs under adaptive learningThe dangers of policy experiments Initial beliefs under adaptive learning
The dangers of policy experiments Initial beliefs under adaptive learningGRAPE
 
Estimating Financial Frictions under Learning
Estimating Financial Frictions under LearningEstimating Financial Frictions under Learning
Estimating Financial Frictions under LearningGRAPE
 
Estimating Financial Frictions under Learning
Estimating Financial Frictions under LearningEstimating Financial Frictions under Learning
Estimating Financial Frictions under LearningGRAPE
 
Persistent Slowdowns, Expectations and Macroeconomic Policy
Persistent Slowdowns, Expectations and Macroeconomic PolicyPersistent Slowdowns, Expectations and Macroeconomic Policy
Persistent Slowdowns, Expectations and Macroeconomic PolicySuomen Pankki
 
Deputy Governor Seppo Honkapohja: Pessimism and Persistent Slowdowns: How Can...
Deputy Governor Seppo Honkapohja: Pessimism and Persistent Slowdowns: How Can...Deputy Governor Seppo Honkapohja: Pessimism and Persistent Slowdowns: How Can...
Deputy Governor Seppo Honkapohja: Pessimism and Persistent Slowdowns: How Can...Suomen Pankki
 
Juan Carlos Cuestas. The Great (De)leveraging in the GIIPS countries. Foreign...
Juan Carlos Cuestas. The Great (De)leveraging in the GIIPS countries. Foreign...Juan Carlos Cuestas. The Great (De)leveraging in the GIIPS countries. Foreign...
Juan Carlos Cuestas. The Great (De)leveraging in the GIIPS countries. Foreign...Eesti Pank
 
Financial Amplification, regulation and long-term lending
Financial Amplification, regulation and long-term lending Financial Amplification, regulation and long-term lending
Financial Amplification, regulation and long-term lending ADEMU_Project
 
A Model of the Twin Ds: Optimal Default and Devaluation
A Model of the Twin Ds: Optimal Default and DevaluationA Model of the Twin Ds: Optimal Default and Devaluation
A Model of the Twin Ds: Optimal Default and DevaluationADEMU_Project
 
Goal-based_wealth_management_benchmarks_-_20230312.pdf
Goal-based_wealth_management_benchmarks_-_20230312.pdfGoal-based_wealth_management_benchmarks_-_20230312.pdf
Goal-based_wealth_management_benchmarks_-_20230312.pdfKarén Chaltikian
 
Income and substitution effects of estate taxation
Income and substitution effects of estate taxationIncome and substitution effects of estate taxation
Income and substitution effects of estate taxationwarawut ruankham
 
Eco 202 ch 35 monetary fiscal aggregate demand
Eco 202 ch 35 monetary fiscal aggregate demand Eco 202 ch 35 monetary fiscal aggregate demand
Eco 202 ch 35 monetary fiscal aggregate demand Gale Pooley
 

Similar to Poster on Learning financial shocks and the Great Recession (20)

Presentation on Bad Beta, Good Beta
Presentation on Bad Beta, Good BetaPresentation on Bad Beta, Good Beta
Presentation on Bad Beta, Good Beta
 
Expected shortfall.ppt
Expected shortfall.pptExpected shortfall.ppt
Expected shortfall.ppt
 
The dangers of policy experiments Initial beliefs under adaptive learning
The dangers of policy experiments Initial beliefs under adaptive learningThe dangers of policy experiments Initial beliefs under adaptive learning
The dangers of policy experiments Initial beliefs under adaptive learning
 
Estimating Financial Frictions under Learning
Estimating Financial Frictions under LearningEstimating Financial Frictions under Learning
Estimating Financial Frictions under Learning
 
Estimating Financial Frictions under Learning
Estimating Financial Frictions under LearningEstimating Financial Frictions under Learning
Estimating Financial Frictions under Learning
 
Ch2_slides.ppt
Ch2_slides.pptCh2_slides.ppt
Ch2_slides.ppt
 
Persistent Slowdowns, Expectations and Macroeconomic Policy
Persistent Slowdowns, Expectations and Macroeconomic PolicyPersistent Slowdowns, Expectations and Macroeconomic Policy
Persistent Slowdowns, Expectations and Macroeconomic Policy
 
Deputy Governor Seppo Honkapohja: Pessimism and Persistent Slowdowns: How Can...
Deputy Governor Seppo Honkapohja: Pessimism and Persistent Slowdowns: How Can...Deputy Governor Seppo Honkapohja: Pessimism and Persistent Slowdowns: How Can...
Deputy Governor Seppo Honkapohja: Pessimism and Persistent Slowdowns: How Can...
 
Juan Carlos Cuestas. The Great (De)leveraging in the GIIPS countries. Foreign...
Juan Carlos Cuestas. The Great (De)leveraging in the GIIPS countries. Foreign...Juan Carlos Cuestas. The Great (De)leveraging in the GIIPS countries. Foreign...
Juan Carlos Cuestas. The Great (De)leveraging in the GIIPS countries. Foreign...
 
Financial Amplification, regulation and long-term lending
Financial Amplification, regulation and long-term lending Financial Amplification, regulation and long-term lending
Financial Amplification, regulation and long-term lending
 
Ch10 slides
Ch10 slidesCh10 slides
Ch10 slides
 
A Model of the Twin Ds: Optimal Default and Devaluation
A Model of the Twin Ds: Optimal Default and DevaluationA Model of the Twin Ds: Optimal Default and Devaluation
A Model of the Twin Ds: Optimal Default and Devaluation
 
Goal-based_wealth_management_benchmarks_-_20230312.pdf
Goal-based_wealth_management_benchmarks_-_20230312.pdfGoal-based_wealth_management_benchmarks_-_20230312.pdf
Goal-based_wealth_management_benchmarks_-_20230312.pdf
 
Exercises.pptx
Exercises.pptxExercises.pptx
Exercises.pptx
 
Income and substitution effects of estate taxation
Income and substitution effects of estate taxationIncome and substitution effects of estate taxation
Income and substitution effects of estate taxation
 
Martín Uribe - Universidad de Columbia.
Martín Uribe - Universidad de Columbia.Martín Uribe - Universidad de Columbia.
Martín Uribe - Universidad de Columbia.
 
Ch8 slides
Ch8 slidesCh8 slides
Ch8 slides
 
Ch8_slides.ppt
Ch8_slides.pptCh8_slides.ppt
Ch8_slides.ppt
 
Tom Griffiths
Tom GriffithsTom Griffiths
Tom Griffiths
 
Eco 202 ch 35 monetary fiscal aggregate demand
Eco 202 ch 35 monetary fiscal aggregate demand Eco 202 ch 35 monetary fiscal aggregate demand
Eco 202 ch 35 monetary fiscal aggregate demand
 

More from GRAPE

Gender board diversity and firm performance: evidence from European data
Gender board diversity and firm performance: evidence from European dataGender board diversity and firm performance: evidence from European data
Gender board diversity and firm performance: evidence from European dataGRAPE
 
Demographic transition and the rise of wealth inequality
Demographic transition and the rise of wealth inequalityDemographic transition and the rise of wealth inequality
Demographic transition and the rise of wealth inequalityGRAPE
 
(Gender) tone at the top: the effect of board diversity on gender inequality
(Gender) tone at the top: the effect of board diversity on gender inequality(Gender) tone at the top: the effect of board diversity on gender inequality
(Gender) tone at the top: the effect of board diversity on gender inequalityGRAPE
 
Gender board diversity spillovers and the public eye
Gender board diversity spillovers and the public eyeGender board diversity spillovers and the public eye
Gender board diversity spillovers and the public eyeGRAPE
 
Wage Inequality and women's self-employment
Wage Inequality and women's self-employmentWage Inequality and women's self-employment
Wage Inequality and women's self-employmentGRAPE
 
Contracts with Interdependent Preferences (2)
Contracts with Interdependent Preferences (2)Contracts with Interdependent Preferences (2)
Contracts with Interdependent Preferences (2)GRAPE
 
Empathy in risky choices on behalf of others
Empathy in risky choices on behalf of othersEmpathy in risky choices on behalf of others
Empathy in risky choices on behalf of othersGRAPE
 
Contracts with Interdependent Preferences
Contracts with Interdependent PreferencesContracts with Interdependent Preferences
Contracts with Interdependent PreferencesGRAPE
 
Tone at the top: the effects of gender board diversity on gender wage inequal...
Tone at the top: the effects of gender board diversity on gender wage inequal...Tone at the top: the effects of gender board diversity on gender wage inequal...
Tone at the top: the effects of gender board diversity on gender wage inequal...GRAPE
 
Gender board diversity spillovers and the public eye
Gender board diversity spillovers and the public eyeGender board diversity spillovers and the public eye
Gender board diversity spillovers and the public eyeGRAPE
 
The European Unemployment Puzzle: implications from population aging
The European Unemployment Puzzle: implications from population agingThe European Unemployment Puzzle: implications from population aging
The European Unemployment Puzzle: implications from population agingGRAPE
 
ENTIME_GEM___GAP.pdf
ENTIME_GEM___GAP.pdfENTIME_GEM___GAP.pdf
ENTIME_GEM___GAP.pdfGRAPE
 
POSTER_EARHART.pdf
POSTER_EARHART.pdfPOSTER_EARHART.pdf
POSTER_EARHART.pdfGRAPE
 
Boston_College Slides.pdf
Boston_College Slides.pdfBoston_College Slides.pdf
Boston_College Slides.pdfGRAPE
 
Presentation_Yale.pdf
Presentation_Yale.pdfPresentation_Yale.pdf
Presentation_Yale.pdfGRAPE
 
Presentation_Columbia.pdf
Presentation_Columbia.pdfPresentation_Columbia.pdf
Presentation_Columbia.pdfGRAPE
 
Presentation.pdf
Presentation.pdfPresentation.pdf
Presentation.pdfGRAPE
 
Presentation.pdf
Presentation.pdfPresentation.pdf
Presentation.pdfGRAPE
 
Presentation.pdf
Presentation.pdfPresentation.pdf
Presentation.pdfGRAPE
 
Slides.pdf
Slides.pdfSlides.pdf
Slides.pdfGRAPE
 

More from GRAPE (20)

Gender board diversity and firm performance: evidence from European data
Gender board diversity and firm performance: evidence from European dataGender board diversity and firm performance: evidence from European data
Gender board diversity and firm performance: evidence from European data
 
Demographic transition and the rise of wealth inequality
Demographic transition and the rise of wealth inequalityDemographic transition and the rise of wealth inequality
Demographic transition and the rise of wealth inequality
 
(Gender) tone at the top: the effect of board diversity on gender inequality
(Gender) tone at the top: the effect of board diversity on gender inequality(Gender) tone at the top: the effect of board diversity on gender inequality
(Gender) tone at the top: the effect of board diversity on gender inequality
 
Gender board diversity spillovers and the public eye
Gender board diversity spillovers and the public eyeGender board diversity spillovers and the public eye
Gender board diversity spillovers and the public eye
 
Wage Inequality and women's self-employment
Wage Inequality and women's self-employmentWage Inequality and women's self-employment
Wage Inequality and women's self-employment
 
Contracts with Interdependent Preferences (2)
Contracts with Interdependent Preferences (2)Contracts with Interdependent Preferences (2)
Contracts with Interdependent Preferences (2)
 
Empathy in risky choices on behalf of others
Empathy in risky choices on behalf of othersEmpathy in risky choices on behalf of others
Empathy in risky choices on behalf of others
 
Contracts with Interdependent Preferences
Contracts with Interdependent PreferencesContracts with Interdependent Preferences
Contracts with Interdependent Preferences
 
Tone at the top: the effects of gender board diversity on gender wage inequal...
Tone at the top: the effects of gender board diversity on gender wage inequal...Tone at the top: the effects of gender board diversity on gender wage inequal...
Tone at the top: the effects of gender board diversity on gender wage inequal...
 
Gender board diversity spillovers and the public eye
Gender board diversity spillovers and the public eyeGender board diversity spillovers and the public eye
Gender board diversity spillovers and the public eye
 
The European Unemployment Puzzle: implications from population aging
The European Unemployment Puzzle: implications from population agingThe European Unemployment Puzzle: implications from population aging
The European Unemployment Puzzle: implications from population aging
 
ENTIME_GEM___GAP.pdf
ENTIME_GEM___GAP.pdfENTIME_GEM___GAP.pdf
ENTIME_GEM___GAP.pdf
 
POSTER_EARHART.pdf
POSTER_EARHART.pdfPOSTER_EARHART.pdf
POSTER_EARHART.pdf
 
Boston_College Slides.pdf
Boston_College Slides.pdfBoston_College Slides.pdf
Boston_College Slides.pdf
 
Presentation_Yale.pdf
Presentation_Yale.pdfPresentation_Yale.pdf
Presentation_Yale.pdf
 
Presentation_Columbia.pdf
Presentation_Columbia.pdfPresentation_Columbia.pdf
Presentation_Columbia.pdf
 
Presentation.pdf
Presentation.pdfPresentation.pdf
Presentation.pdf
 
Presentation.pdf
Presentation.pdfPresentation.pdf
Presentation.pdf
 
Presentation.pdf
Presentation.pdfPresentation.pdf
Presentation.pdf
 
Slides.pdf
Slides.pdfSlides.pdf
Slides.pdf
 

Recently uploaded

Booking open Available Pune Call Girls Shivane 6297143586 Call Hot Indian Gi...
Booking open Available Pune Call Girls Shivane  6297143586 Call Hot Indian Gi...Booking open Available Pune Call Girls Shivane  6297143586 Call Hot Indian Gi...
Booking open Available Pune Call Girls Shivane 6297143586 Call Hot Indian Gi...Call Girls in Nagpur High Profile
 
Booking open Available Pune Call Girls Wadgaon Sheri 6297143586 Call Hot Ind...
Booking open Available Pune Call Girls Wadgaon Sheri  6297143586 Call Hot Ind...Booking open Available Pune Call Girls Wadgaon Sheri  6297143586 Call Hot Ind...
Booking open Available Pune Call Girls Wadgaon Sheri 6297143586 Call Hot Ind...Call Girls in Nagpur High Profile
 
TEST BANK For Corporate Finance, 13th Edition By Stephen Ross, Randolph Weste...
TEST BANK For Corporate Finance, 13th Edition By Stephen Ross, Randolph Weste...TEST BANK For Corporate Finance, 13th Edition By Stephen Ross, Randolph Weste...
TEST BANK For Corporate Finance, 13th Edition By Stephen Ross, Randolph Weste...ssifa0344
 
Pooja 9892124323 : Call Girl in Juhu Escorts Service Free Home Delivery
Pooja 9892124323 : Call Girl in Juhu Escorts Service Free Home DeliveryPooja 9892124323 : Call Girl in Juhu Escorts Service Free Home Delivery
Pooja 9892124323 : Call Girl in Juhu Escorts Service Free Home DeliveryPooja Nehwal
 
Solution Manual for Principles of Corporate Finance 14th Edition by Richard B...
Solution Manual for Principles of Corporate Finance 14th Edition by Richard B...Solution Manual for Principles of Corporate Finance 14th Edition by Richard B...
Solution Manual for Principles of Corporate Finance 14th Edition by Richard B...ssifa0344
 
The Economic History of the U.S. Lecture 26.pdf
The Economic History of the U.S. Lecture 26.pdfThe Economic History of the U.S. Lecture 26.pdf
The Economic History of the U.S. Lecture 26.pdfGale Pooley
 
High Class Call Girls Nagpur Grishma Call 7001035870 Meet With Nagpur Escorts
High Class Call Girls Nagpur Grishma Call 7001035870 Meet With Nagpur EscortsHigh Class Call Girls Nagpur Grishma Call 7001035870 Meet With Nagpur Escorts
High Class Call Girls Nagpur Grishma Call 7001035870 Meet With Nagpur Escortsranjana rawat
 
WhatsApp 📞 Call : 9892124323 ✅Call Girls In Chembur ( Mumbai ) secure service
WhatsApp 📞 Call : 9892124323  ✅Call Girls In Chembur ( Mumbai ) secure serviceWhatsApp 📞 Call : 9892124323  ✅Call Girls In Chembur ( Mumbai ) secure service
WhatsApp 📞 Call : 9892124323 ✅Call Girls In Chembur ( Mumbai ) secure servicePooja Nehwal
 
Top Rated Pune Call Girls Viman Nagar ⟟ 6297143586 ⟟ Call Me For Genuine Sex...
Top Rated  Pune Call Girls Viman Nagar ⟟ 6297143586 ⟟ Call Me For Genuine Sex...Top Rated  Pune Call Girls Viman Nagar ⟟ 6297143586 ⟟ Call Me For Genuine Sex...
Top Rated Pune Call Girls Viman Nagar ⟟ 6297143586 ⟟ Call Me For Genuine Sex...Call Girls in Nagpur High Profile
 
The Economic History of the U.S. Lecture 20.pdf
The Economic History of the U.S. Lecture 20.pdfThe Economic History of the U.S. Lecture 20.pdf
The Economic History of the U.S. Lecture 20.pdfGale Pooley
 
Log your LOA pain with Pension Lab's brilliant campaign
Log your LOA pain with Pension Lab's brilliant campaignLog your LOA pain with Pension Lab's brilliant campaign
Log your LOA pain with Pension Lab's brilliant campaignHenry Tapper
 
VIP Call Girls Service Dilsukhnagar Hyderabad Call +91-8250192130
VIP Call Girls Service Dilsukhnagar Hyderabad Call +91-8250192130VIP Call Girls Service Dilsukhnagar Hyderabad Call +91-8250192130
VIP Call Girls Service Dilsukhnagar Hyderabad Call +91-8250192130Suhani Kapoor
 
02_Fabio Colombo_Accenture_MeetupDora&Cybersecurity.pptx
02_Fabio Colombo_Accenture_MeetupDora&Cybersecurity.pptx02_Fabio Colombo_Accenture_MeetupDora&Cybersecurity.pptx
02_Fabio Colombo_Accenture_MeetupDora&Cybersecurity.pptxFinTech Belgium
 
Instant Issue Debit Cards - High School Spirit
Instant Issue Debit Cards - High School SpiritInstant Issue Debit Cards - High School Spirit
Instant Issue Debit Cards - High School Spiritegoetzinger
 
VIP Call Girls LB Nagar ( Hyderabad ) Phone 8250192130 | ₹5k To 25k With Room...
VIP Call Girls LB Nagar ( Hyderabad ) Phone 8250192130 | ₹5k To 25k With Room...VIP Call Girls LB Nagar ( Hyderabad ) Phone 8250192130 | ₹5k To 25k With Room...
VIP Call Girls LB Nagar ( Hyderabad ) Phone 8250192130 | ₹5k To 25k With Room...Suhani Kapoor
 
06_Joeri Van Speybroek_Dell_MeetupDora&Cybersecurity.pdf
06_Joeri Van Speybroek_Dell_MeetupDora&Cybersecurity.pdf06_Joeri Van Speybroek_Dell_MeetupDora&Cybersecurity.pdf
06_Joeri Van Speybroek_Dell_MeetupDora&Cybersecurity.pdfFinTech Belgium
 
20240429 Calibre April 2024 Investor Presentation.pdf
20240429 Calibre April 2024 Investor Presentation.pdf20240429 Calibre April 2024 Investor Presentation.pdf
20240429 Calibre April 2024 Investor Presentation.pdfAdnet Communications
 

Recently uploaded (20)

Booking open Available Pune Call Girls Shivane 6297143586 Call Hot Indian Gi...
Booking open Available Pune Call Girls Shivane  6297143586 Call Hot Indian Gi...Booking open Available Pune Call Girls Shivane  6297143586 Call Hot Indian Gi...
Booking open Available Pune Call Girls Shivane 6297143586 Call Hot Indian Gi...
 
Booking open Available Pune Call Girls Wadgaon Sheri 6297143586 Call Hot Ind...
Booking open Available Pune Call Girls Wadgaon Sheri  6297143586 Call Hot Ind...Booking open Available Pune Call Girls Wadgaon Sheri  6297143586 Call Hot Ind...
Booking open Available Pune Call Girls Wadgaon Sheri 6297143586 Call Hot Ind...
 
TEST BANK For Corporate Finance, 13th Edition By Stephen Ross, Randolph Weste...
TEST BANK For Corporate Finance, 13th Edition By Stephen Ross, Randolph Weste...TEST BANK For Corporate Finance, 13th Edition By Stephen Ross, Randolph Weste...
TEST BANK For Corporate Finance, 13th Edition By Stephen Ross, Randolph Weste...
 
Pooja 9892124323 : Call Girl in Juhu Escorts Service Free Home Delivery
Pooja 9892124323 : Call Girl in Juhu Escorts Service Free Home DeliveryPooja 9892124323 : Call Girl in Juhu Escorts Service Free Home Delivery
Pooja 9892124323 : Call Girl in Juhu Escorts Service Free Home Delivery
 
(Vedika) Low Rate Call Girls in Pune Call Now 8250077686 Pune Escorts 24x7
(Vedika) Low Rate Call Girls in Pune Call Now 8250077686 Pune Escorts 24x7(Vedika) Low Rate Call Girls in Pune Call Now 8250077686 Pune Escorts 24x7
(Vedika) Low Rate Call Girls in Pune Call Now 8250077686 Pune Escorts 24x7
 
Solution Manual for Principles of Corporate Finance 14th Edition by Richard B...
Solution Manual for Principles of Corporate Finance 14th Edition by Richard B...Solution Manual for Principles of Corporate Finance 14th Edition by Richard B...
Solution Manual for Principles of Corporate Finance 14th Edition by Richard B...
 
Veritas Interim Report 1 January–31 March 2024
Veritas Interim Report 1 January–31 March 2024Veritas Interim Report 1 January–31 March 2024
Veritas Interim Report 1 January–31 March 2024
 
The Economic History of the U.S. Lecture 26.pdf
The Economic History of the U.S. Lecture 26.pdfThe Economic History of the U.S. Lecture 26.pdf
The Economic History of the U.S. Lecture 26.pdf
 
High Class Call Girls Nagpur Grishma Call 7001035870 Meet With Nagpur Escorts
High Class Call Girls Nagpur Grishma Call 7001035870 Meet With Nagpur EscortsHigh Class Call Girls Nagpur Grishma Call 7001035870 Meet With Nagpur Escorts
High Class Call Girls Nagpur Grishma Call 7001035870 Meet With Nagpur Escorts
 
WhatsApp 📞 Call : 9892124323 ✅Call Girls In Chembur ( Mumbai ) secure service
WhatsApp 📞 Call : 9892124323  ✅Call Girls In Chembur ( Mumbai ) secure serviceWhatsApp 📞 Call : 9892124323  ✅Call Girls In Chembur ( Mumbai ) secure service
WhatsApp 📞 Call : 9892124323 ✅Call Girls In Chembur ( Mumbai ) secure service
 
Top Rated Pune Call Girls Viman Nagar ⟟ 6297143586 ⟟ Call Me For Genuine Sex...
Top Rated  Pune Call Girls Viman Nagar ⟟ 6297143586 ⟟ Call Me For Genuine Sex...Top Rated  Pune Call Girls Viman Nagar ⟟ 6297143586 ⟟ Call Me For Genuine Sex...
Top Rated Pune Call Girls Viman Nagar ⟟ 6297143586 ⟟ Call Me For Genuine Sex...
 
The Economic History of the U.S. Lecture 20.pdf
The Economic History of the U.S. Lecture 20.pdfThe Economic History of the U.S. Lecture 20.pdf
The Economic History of the U.S. Lecture 20.pdf
 
Commercial Bank Economic Capsule - April 2024
Commercial Bank Economic Capsule - April 2024Commercial Bank Economic Capsule - April 2024
Commercial Bank Economic Capsule - April 2024
 
Log your LOA pain with Pension Lab's brilliant campaign
Log your LOA pain with Pension Lab's brilliant campaignLog your LOA pain with Pension Lab's brilliant campaign
Log your LOA pain with Pension Lab's brilliant campaign
 
VIP Call Girls Service Dilsukhnagar Hyderabad Call +91-8250192130
VIP Call Girls Service Dilsukhnagar Hyderabad Call +91-8250192130VIP Call Girls Service Dilsukhnagar Hyderabad Call +91-8250192130
VIP Call Girls Service Dilsukhnagar Hyderabad Call +91-8250192130
 
02_Fabio Colombo_Accenture_MeetupDora&Cybersecurity.pptx
02_Fabio Colombo_Accenture_MeetupDora&Cybersecurity.pptx02_Fabio Colombo_Accenture_MeetupDora&Cybersecurity.pptx
02_Fabio Colombo_Accenture_MeetupDora&Cybersecurity.pptx
 
Instant Issue Debit Cards - High School Spirit
Instant Issue Debit Cards - High School SpiritInstant Issue Debit Cards - High School Spirit
Instant Issue Debit Cards - High School Spirit
 
VIP Call Girls LB Nagar ( Hyderabad ) Phone 8250192130 | ₹5k To 25k With Room...
VIP Call Girls LB Nagar ( Hyderabad ) Phone 8250192130 | ₹5k To 25k With Room...VIP Call Girls LB Nagar ( Hyderabad ) Phone 8250192130 | ₹5k To 25k With Room...
VIP Call Girls LB Nagar ( Hyderabad ) Phone 8250192130 | ₹5k To 25k With Room...
 
06_Joeri Van Speybroek_Dell_MeetupDora&Cybersecurity.pdf
06_Joeri Van Speybroek_Dell_MeetupDora&Cybersecurity.pdf06_Joeri Van Speybroek_Dell_MeetupDora&Cybersecurity.pdf
06_Joeri Van Speybroek_Dell_MeetupDora&Cybersecurity.pdf
 
20240429 Calibre April 2024 Investor Presentation.pdf
20240429 Calibre April 2024 Investor Presentation.pdf20240429 Calibre April 2024 Investor Presentation.pdf
20240429 Calibre April 2024 Investor Presentation.pdf
 

Poster on Learning financial shocks and the Great Recession

  • 1. Learning Financial Shocks and the Great Recession Patrick A. Pintus Jacek Suda Banque de France Narodowy Bank Polski Financial Crisis and RE • 2007-08 US financial crisis reinforced interest in relaxing rational expectations assumption. • Who had a decent approximation of crisis probability at the end of the “Great Moderation”? • Assumption that agents know probability distributions rather strong! Leverage ratio 0.7 0.8 0.9 1 1.1 1.2 1.3 1.4 US Household Leverage Ratio 1980Q1-2010Q3 0.4 0.5 0.6 1980Q1 1984Q1 1988Q1 1992Q1 1996Q1 2000Q1 2004Q1 2008Q1 • 1996-2006 decade witnessed huge rise in housing prices index. • By the end of 2008 household leverage ratio rose from about 0.64 to about 1.26! • This is in stark contrasts with flat leverage during 1980-1995 period. What we do • Allow agents’ perception about the structure of the economy to evolve over time. • Study how financial shocks affect the macroeconomy when perceptions updated in real time. Adaptive learning Consider linearized expectational system: Xt = AXt−1 + BE∗ t−1[Xt] + CE∗ t [Xt+1] + N + Dξt, • Under REE, E∗ t = Et, Xt = Mre Xt−1 + Hre + Gre ξt, where Mre solves Mre = [I8 − CMre ]−1 [A + BMre ]. • Under learning, agents are econometricians: • Agents’ perception of the equilibrium law of motion (PLM) Xt = MXt−1 + H + Gξt, • has the same VAR(1) structure as RE equilibrium, but • admits M = Mre , H = Hre , G = Gre . • Agents use PLM to form expectations EτXτ+1 = Mτ−1Xτ + Hτ−1 • Actual low of motion (ALM) [I8 − CMt−1]Xt = [A + BMt−2]Xt−1 + CHt−1 + BHt−2 + N + Dξt. • Agents update their “beliefs” by estimating a VAR(1). • Assume recursive updating of the perceived law of motion Mt = Mt−1 + νtR−1 t Xt−1(Xt − Mt−1Xt−1) Rt = Rt−1 + νt(Xt−1Xt−1 − Rt−1) • OLS/RLS if νt = 1/t, • constant gain if νt = ν. • REE: PLM and ALM coincide. How we do it • Use RBC model with collateral constraint: • variant of Kiyotaki and Moore (1997). • Replace rational expectations (RE) with adaptive learning. • Calibrate the model using US data from 1996Q1-2008Q4 period. • Focus on financial shocks driving leverage: • a large temporary negative shock to leverage in 2008Q4, Representative agent max E∗ 0 ∞ t=0 βt Ct − ψN1+χ t 1+χ 1−σ − 1 1 − σ , • E∗ t denotes expectations at time t. • Budget constraint: Ct+Kt+1−(1−δ)Kt+TtQt(Lt+1−Lt)+(1+R)Bt = Bt+1+AKα t Lγ t N1−α−γ t • exogenous interest rate (SOE) Borrowing constraint and leverage Agents face borrowing constraint ˜ΘtE∗ t [Qt+1]Lt+1 ≥ (1 + R)Bt+1, where ˜Θt ≡ Θt    E∗ t [Qt+1] Q    ε . • leverage can respond to changes in the land price • ε > 0 agrees with evidence in Mian and Sufi (2011) • Θt is exogenous and subject to random shocks log Θt = (1 − ρθ) log Θ + ρθ log Θt−1 + ξt. Learning process ⇐=linearized expectational system with Xt ≡ (ct, qt, λt, φt, bt, kt, θt, τt) • E∗ t = Et: agents “beliefs” given by PLM and updated with constant gain learning. • Model is E-stable, i.e. limt→∞ Mt → Mre . • Expectations may differ from RE. Experiment • Assume that, in the decade preceding 2008Q4, agents have learned the economy and • the associated matrix in PLM is M2008Q4, • agents’ beliefs about ρθ is reflected in matrix M2008Q4. • Key equation: AR(1) process for leverage: • RE corresponds to OLS estimates for 1975-2010 for ρθ, ρθ = 0.976, ¯Θ = 0.88. • Agents’ initial beliefs given by 2008Q4 CG estimates, ρCG θ = 0.9904 for νt = 0.004. 2000 2005 2010 0.970 0.975 0.980 0.985 0.990 CG and OLS estimates of persistence of leverage What we find • Agents gradually learn the economy. • Learning amplifies effects of leverage shocks by a factor of 2.5–3 (relative to RE). • Magnitude of the recession also depends on the level of leverage. • Macro-prudential policies enforcing counter- cyclical leverage have stabilizing effect. Impulse response functions 10 20 30 40 50 60 Time 3.0 2.5 2.0 1.5 1.0 0.5 Output • A −5% leverage shock, observed in 2008Q4, causes: • fall in output by 3.3%, in consumption by 3.6%, and in capital stock by about 5%, • severe deleveraging (3× larger under learning). • Response of economy leads to overshooting. • Effect of leverage shocks larger in economies that are more levered. • Key: land price variations in borrowing constraint. • Countercyclical leverage dampens responses to financial shocks. Great Recession • Learning model predicts Great Recession and a significant boom prior to that. • Magnitude of recession almost matches data (4.7% between 2007Q3 and 2010Q1) Procedure • Feed RE and learning models with • calibrated iid land price shocks to match observed prices, • estimated innovations/shocks to leverage. 2000 2002 2004 2006 2008 2010 80 60 40 20 0 Land Price Deviations From 2007Q4 2000 2002 2004 2006 2008 2010 0.05 0.00 0.05 Innovations OLS and CG • Let agents update their beliefs, Ht and Mt • H0 = HRE and M0 = MRE 2000 2002 2004 2006 2008 2010 4 2 0 2 4 Output Response Over Time Deviations From 2007Q4