Exploring Interaction Between Bank Lending and Housing Prices in Korea



Similar documents
Air passenger departures forecast models A technical note

The Impact of Interest Rate Shocks on the Performance of the Banking Sector

THE PROPERTY MARKET AND THE MACRO-ECONOMY

Mortgage Loan Approvals and Government Intervention Policy

TEMPORAL CAUSAL RELATIONSHIP BETWEEN STOCK MARKET CAPITALIZATION, TRADE OPENNESS AND REAL GDP: EVIDENCE FROM THAILAND

Relationship between Commodity Prices and Exchange Rate in Light of Global Financial Crisis: Evidence from Australia

THE RELATIONSHIP BETWEEN MORTGAGE MARKETS AND HOUSE PRICES: DOES FINANCIAL INSTABILITY MAKE THE DIFFERENCE?

DEPARTMENT OF ECONOMICS CREDITOR PROTECTION AND BANKING SYSTEM DEVELOPMENT IN INDIA

FORECASTING DEPOSIT GROWTH: Forecasting BIF and SAIF Assessable and Insured Deposits

Vol 2014, No. 10. Abstract

Working Papers. Cointegration Based Trading Strategy For Soft Commodities Market. Piotr Arendarski Łukasz Postek. No. 2/2012 (68)

The U.S. Housing Crisis and the Risk of Recession. 1. Recent Developments in the U.S. Housing Market Falling Housing Prices

THE IMPACT OF EXCHANGE RATE VOLATILITY ON BRAZILIAN MANUFACTURED EXPORTS

THE U.S. CURRENT ACCOUNT: THE IMPACT OF HOUSEHOLD WEALTH

Testing The Quantity Theory of Money in Greece: A Note

Identifying a Credit Channel of Monetary Policy Transmission and Empirical Evidence for Germany

THE EFFECTS OF BANKING CREDIT ON THE HOUSE PRICE

The relationships between stock market capitalization rate and interest rate: Evidence from Jordan

The Effect of Housing on Portfolio Choice. July 2009

Causes of Inflation in the Iranian Economy

Econometric Modelling for Revenue Projections

Developments in the Residential Housing Market: House Prices, Credit and Consumption Interrelation Empirical Evidence, the Albanian Case

Implied volatility transmissions between Thai and selected advanced stock markets

Stress-testing testing in the early warning system of financial crises: application to stability analysis of Russian banking sector

ANALYSIS OF EUROPEAN, AMERICAN AND JAPANESE GOVERNMENT BOND YIELDS

Jim Gatheral Scholarship Report. Training in Cointegrated VAR Modeling at the. University of Copenhagen, Denmark

THE IMPACT OF MACROECONOMIC FACTORS ON NON-PERFORMING LOANS IN THE REPUBLIC OF MOLDOVA

What drives housing price dynamics: cross-country evidence 1

The Approach of the Banking Regulator

Executive Summary. Abstract. Heitman Analytics Conclusions:

Macroprudential Policies in Korea

Reading the balance of payments accounts

Examining the Relationship between ETFS and Their Underlying Assets in Indian Capital Market

The price-volume relationship of the Malaysian Stock Index futures market

Discussion of Gertler and Kiyotaki: Financial intermediation and credit policy in business cycle analysis

Stock market booms and real economic activity: Is this time different?

FINANCIALISATION AND EXCHANGE RATE DYNAMICS IN SMALL OPEN ECONOMIES. Hamid Raza PhD Student, Economics University of Limerick Ireland

A Study on the Relationship between Korean Stock Index. Futures and Foreign Exchange Markets

Can we rely upon fiscal policy estimates in countries with a tax evasion of 15% of GDP?

On the long run relationship between gold and silver prices A note

Residential Mortgage Finance and Housing Markets in Russia February 9, Britt Gwinner The World Bank

Electricity Demand for Sri Lanka: A Time Series Analysis

Co-movements of NAFTA trade, FDI and stock markets

Non-Performing Loans: Affecting Factor for the Sustainability of Vietnam Commercial Banks

Comment On: Reducing Foreclosures by Christopher Foote, Kristopher Gerardi, Lorenz Goette and Paul Willen

The First Home Buyer Grant and house prices in Australia

2015 Survey of Credit Underwriting Practices

INTERTEMPORAL SOLVENCY AND PUBLIC DEBT: EVIDENCE FROM BRAZIL

Household debt and consumption in the UK. Evidence from UK microdata. 10 March 2015

Exchange Rates and Foreign Direct Investment

Tests of Changes in the Elasticity of the Demand for M2 and Policy Implications: The Case of Four Asian Countries

EXPORT INSTABILITY, INVESTMENT AND ECONOMIC GROWTH IN ASIAN COUNTRIES: A TIME SERIES ANALYSIS

Determinants of Stock Market Performance in Pakistan

A Decomposition of the Increased Stability of GDP Growth

Stock Market Volatility and the Business Cycle

Should Central Banks Respond to Movements in Asset Prices? By Ben S. Bernanke and Mark Gertler *

An Approach to Stress Testing the Canadian Mortgage Portfolio

Unit Labor Costs and the Price Level

The Impact of Surplus Liquidity

Central Bank of Ireland Macro-prudential policy for residential mortgage lending Consultation Paper CP87

Discussion of Current Account Imabalances in the Southern Euro Area: Causes, Consequences, and Remedies. Massimiliano Pisani (Bank of Italy)

How Important Is the Stock Market Effect on Consumption?

Why Did House Prices Drop So Quickly?

An Empirical Study on the Relationship between Stock Index and the National Economy: The Case of China

Modelling Monetary Policy of the Bank of Russia

Examining the effects of exchange rates on Australian domestic tourism demand: A panel generalized least squares approach

Transcription:

Exploring Interaction Between Bank Lending and Housing Prices in Korea A paper presented at the Housing Studies Association Conference 2012: How is the Housing System Coping? 18 20 April University of York 20 th April 2012 Jun Ho Jeong Kangwon National University

1. Introduction Existing theoretical work A close correlation between bank lending and housing prices has been established. A collateral effect, wealth effect and balance sheet effect have been identified to explain a close linkage between bank borrowing and housing prices (e.g. Bernanke and Gertler, 1989; Goodhart and Hofmann, 2007) The credit condition could affect asset valuation reflecting the credit constraints on housing prices (e.g. Yamashita, 2007) This two-way causality may result in mutually reinforcing cycles in credit and housing markets.

1. Introduction Existing empirical work Empirical work is scare and its results are mixed - Collyns and Sehadji (2001): a contemporaneous causal linkage from credit growth to housing price changes in Hong Kong, Singapore and Korea and Thailand - Gerlach and Peng (2005): a short and long-term causality from property market to bank lending - Goodhart and Hofmann (2007); Oikarinen (2009) : a two way causality in 18 developed countries and Finland respectively. However, most of the studies have focused on a single equation setting except for Gerlach and Peng (2005), suffering from the endogeneity bias leading not to understanding the direction of causality between the two in a proper way.

1. Introduction Aims of this work Given the Korean contexts such as rapid financial liberalization and deregulation since the 1997 financial crisis, an extraordinarily unbalanced asset portfolio with a two-third of real estates in total household assets and a surge in housing prices in the 2000s, This work attempts to fill the gap by empirically exploring the pattern of causality between bank lending and housing prices based upon a long-term and short-term analysis. It also examines to what extent new policy measures such as the ceiling constraints of LTV and DTI have contributed to a reduction in housing prices and bank loans.

2. Data and Stylized Facts Housing Price, Bank Loan to Household, Interest Rate and GDP 3.000 2.500 2.000 1.500 1.000 0.500 0.000-0.500-1.000-1.500-2.000-2.500 Real GDP Real Bank Loan to Household Real Apartment Price Real Interest 1993 1995 1997 1999 2001 2003 2005 2007 2009 Note: 1) Bank Household credit is the sum of CBs, SBs and NBFCs. 2) Normalized Housing prices declined during 1993 and 1998, but rose rapidly thereafter until late 2006. Household borrowing and output appear more stable than housing prices. Interest rates have continued to declined except for the 1998 financial crisis, but a little bit increase after 2005.

2. Data and Stylized Facts Annualized Growth Rates of Housing Price and Bank Credit 0.600 0.500 0.400 0.300 0.200 0.100 0.000-0.100-0.200-0.300-0.400-0.500 Real Bank Loan to Household (%) Real Apartment Price (%) 1993 1995 1997 1999 2001 2003 2005 2007 2009 Since the 1998 financial crisis, price change in housing has been closely interrelated with credit growth in household.

2. Data and Stylized Facts A Share of Mortgage Loans in Total Household Borrowing 95.0 % of CB and SBs Loans in Total Loans to Household 90.0 % of Security against Housing in CBs and SBs Loans to Household 85.0 80.0 75.0 70.0 65.0 60.0 55.0 50.0 1993 1995 1997 1999 2001 2003 2005 2007 2009 The ratio of residential mortgage loans accounted for about 60% and has been stable for CBs and SBs loans to household.

2. Data and Stylized Facts Regulatory Change in Housing Finance (1) Housing Finance before the 1997 Financial Crisis Most of real estate development and investment related sectors were classified into the credit control sector. The top 10 chaebol was demanded to self-finance the purchase of real estates even for normal business activities as much as possible. Bank lending was banned for the construction and purchase of home with over 100m 2 per household. - Residential mortgage finance was very limited due to the large part of money channeling to the corporate sector Thus, real estate market was insulated from the formal financial market. - The housing finance of the formal financial sector accounted for only 38.4% in the total housing finance (Kim et al, 2002).

2. Data and Stylized Facts Regulatory Change in Housing Finance (2) Housing Finance after the 1997 Financial Crisis The designation of the real estate development and investment related sectors as the credit control sector were revised and the regulation of bank loans to household was lessened. - The amendment of the real estate trust law, the introduction of ABS, MBS and REIT etc. were carried out. The business strategy of financial corporations has moved from the corporate financing segment to the consumer one since the 1997 financial crisis. Thus, the constraints of bank loans to household on the supply side have been removed due to the financial deregulation since the 1997 financial crisis.

2. Data and Stylized Facts Regulatory Change in Housing Finance (2) Financial restrictions on bank Lending due to housing booms during the 2000s The introduction of the upper limit of LTV ratio from 60% to 40% and that of DTI to 40% were carried out respectively on September 2002 and August 2005, depending on the local conditions. The stability of housing financial market has been undertaken by the LTV and DTI regulations respectively leading to the reduction of the impact of housing price shocks and of income shocks. - DTI as an ex ante measure of financial consumer s protection constraining over-borrowing beyond its economic affordability, but LTV as that of reducing an ex post loss of financial corporations. Real estate related financial regulations have moved from LTV focused measures to DTI ones since 2005..

3. Empirical Results Methodology for long-run relationships A standard model for the long-run movements of bank lending is that: The co-integrating VAR model is as follows: δτ ε The above model can be reformulated in vector error correction form, and the below model will be estimated by the Johansen methodology

3. Empirical Results Long-run Analysis Augmented Dickey-Fuller unit root test results Variables Level 1st difference Real GDP 2.994 (T) 5.401** (C) Real bank loan to household 2.378 (T) 2.984* (C) Real apartment price 2.224 (T) 4.279** (C) Permits authorized for residential building construction (units) 3.108* (C) Real interest rate 2.999 (T) 5.161** (C) Employment rate 2.690 (C) 4.647** (C) Notes: 1) T and C indicate whether the test regression includes a time trend and a constant (T), and only a constant (C). 2) * and ** denote significance at the 5% and 1% level respectively. All of the time series except for the authorized permits of residential building variable are integrated of order one.

3. Empirical Results Co-integration Analysis (1994:1-2009:2) Lags Johansen trace test r=0 r 1 r 2 r 3 3 64.189 ** 21.413 7.638 2.292 β and α vectors β (SE) α (SE) Real bank loan 1.000 0.164 0.028 Real GDP 1.399 (0.113) Real interest rate 0.063 (0.007) 6.700 2.541 Real housing price 0.173 (0.071) LR test for weak exogeneity of Y and P Χ 2 (2)=3.121 p value=0.210 Diagnostics Autocorrelation Heteroskedasticity Normality 18.919 275.535 44.179 ** Notes: 1) Autocorrelation is based on a Lagrange Multiplier test up to order 4, Heteroskedasticity on a White s test, and normality on a Jarque-Berra test. 2) All tests refer to the system as a whole. 3) * and ** denote significance at the 5% and 1% level respectively. There is a single long-run relationship between housing prices, bank loans, interest rates and GDP during the sample period. - The long-run income elasticity of credit lager than one could be due to a result of financial liberalization since the 1997 financial crisis.

3. Empirical Results Short-run Dynamic Relationships (1) Dynamic movement of credit growth ΔL t OLS (white) (t value) Hausman test (t value) ΔL t 2 0.363 (6.860) 0.360 (6.547) ΔY 0.327 (2.368) 0.379 (2.414) ΔP t 0.312 (6.610) 0.253 (3.060) ΔP t 3 0.137 (2.543) 0.158 (2.707) (ΔRI t 1 ΔRI t 2 ) 0.007 ( 5.096) 0.007 ( 5.172) CI t 1 0.137 ( 10.622) 0.141 ( 10.877) C 0.010 (3.734) 0.009 (3.541) res 0.123 (1.127) Adj R 2 0.867 0.868 Autocorrelation 0.595 0.506 Heteroskedasticity 0.316 0.281 Normality 4.179 3.377 Note: Autocorrelation is based on a Breusch-Godfrey Serial Correlation LM test up to order 3, Heteroskedasticity on a White s test, and normality on a Jarque-Berra test.

3. Empirical Results Dynamic movement of credit growth A general-to-specific approach was used in deriving the parsimonious model beginning with a model with four lags of dependent variables. An error correction term is highly significant, indicating that excess bank loans decrease credit growth in the next period. A change in real interest rates was significant at lag 1 and lag 2 but have reverse signs, and then the model was re-estimated, showing a negative sign for credit growth. To tackle the potential endogeneity, a Hausman test was carried out, showing the consistent OLS estimates. Thus, movements in housing prices appear to have played a significant role in increasing credit growth.

3. Empirical Results Short-run Dynamic Relationships (2) Dynamic movements of housing price changes ΔP t 2SLS (t value) OLS (white) (t value) ΔP t 1 0.364 3.230 0.376 3.440 ΔY 0.638 3.832 0.714 6.245 ΔL 0.134 0.592 ΔL t 3 0.155 1.954 0.179 2.288 ΔRI t 1 0.006 2.879 0.007 5.328 ΔEmp t 2 1.363 2.981 1.189 3.608 ΔUnit t 2 0.047 3.314 0.050 3.614 Regime dummy 0.017 1.106 0.024 2.652 C 0.027 1.311 0.037 3.615 Adj R 2 0.608 0.618 Autocorrelation 1.668 2.045 Heteroskedasticity 0.266 0.461 Normality 56.998 *** 59.087 *** Notes: 1) Autocorrelation is based on a Breusch-Godfrey Serial Correlation LM test up to order 3, Heteroskedasticity on a White s test, and normality on a Jarque-Berra test. 2) *** denotes significance at the 1% level.

3. Empirical Results Dynamic movement of housing price changes The parsimonious model was derived from fitting a model of four lags of the dependent variables, with three variables being added and the potential endogeneity bias being tackled. The interest rate variable is significant as expected with a negative sign. Unlike a conventional expectation, the housing permit unit and employment rate variables show opposite signs. - With regard to the first, the housing market during the 2000s seems to have worked as an asset market unlike general commodity markets. - In the case of the employment rate variable, it could be due to either the speculative wait and see strategy resulting from an excessive rise in housing prices in a short term, or an employment rise in a large part from non-regular jobs leading to a reduction in housing investment.

3. Empirical Results Regulatory Change and Credit Growth Regulatory Change and Credit Growth (1) ΔL t Model 1 (t value) Model 2 (t value) ΔL t 2 0.360 (6.905) 0.305 (5.803) ΔY 0.342 (2.437) 0.323 (2.612) ΔP t 0.317 (6.887) 0.343 (5.716) ΔP t 3 0.148 (2.682) 0.282 (4.633) (ΔRI t 1 ΔRI t 2 ) 0.007 ( 5.050) 0.007 ( 5.577) CI t 1 0.132 ( 8.819) 0.137 ( 10.819) C 0.010 (3.890) 0.013 (5.207) Regime*CI( 1) 0.027 ( 0.778) Regime*ΔPt 0.109 ( 1.198) Regime*ΔPt 3 0.226 ( 3.732) Adj R 2 0.866 0.878 AR 0.627 0.700 H 0.289 0.249 N 3.533 9.335***

3. Empirical Results Regulatory Change and Credit Growth (2) ΔL t Model 3 (t value) Model 4 (t value) Model 5 (t value) ΔL t-2 0.350 (6.487) 0.360 (6.233) 0.314 (5.554) ΔY 0.329 (2.513) 0.314 (2.285) 0.322 (2.556) ΔP t 0.308 (6.180) 0.338 (5.938) 0.340 (5.612) ΔP t-3 0.214 (3.912) 0.133 (1.860) 0.278 (4.503) (ΔRI t-1 -ΔRI t-2 ) 0.008 ( 5.362) 0.007 ( 4.910) 0.008 ( 5.424) CI t-1 0.141 ( 11.157) 0.133 ( 9.965) 0.138 ( 10.753) C 0.010 (4.225) 0.010 (3.753) 0.012 (4.911) Policy1*ΔPt 0.101 ( 0.887) 0.139 ( 1.114) Policy1*ΔPt-3 0.184 ( 2.854) 0.249 ( 3.634) Policy2*ΔPt 0.092 ( 0.918) 0.103 ( 0.999) Policy2*ΔPt-3 0.005 ( 0.065) 0.164 ( 2.166) Adj-R 2 0.873 0.864 0.874 AR 0.510 0.515 0.687 H 0.213 0.174 0.236 N 7.826** 4.085 9.975

3. Empirical Results Policy intervention and its impact on bank lending Using a dummy to capture the regime shift around 2002, its impact on banking lending are explored. - According to the intensity of policy intervention into the real estate financial market, the Policy1 indicates the introductory period of LTV from 2002: 4 to 2005: 2 and the Policy2 denotes the introduction of DTI as well as LTV from 2005: 3 to 2009: 2. The dummy series is significant especially for 3 lag of housing price, meaning that bank lending decreases credit growth in the next three period. Due to this lagged relation between housing price and bank loan changes, the Policy2 indicating the period of more intensified policy intervention would be insignificant But, when including both the Policy1 and 2, both are significant for 3 lag of housing prices, leading to a reduction in housing price in the next three period.

4. Summary and Conclusion The contemporaneous interaction between credit growth and bank lending to household in Korea seems to arise from banking lending responding to housing prices, although the past value of lending could predict the future value of housing price vice versa in a significant way. The sensibility of credit to housing prices reduced since the introduction of financial constraints on banking loans such as LTV and DTI making banks tighten credit standards. The regulatory change in the early and mid-200s played a significant role in stabilizing financial and real estate markets. The boom and bust cycle of the housing market in the 2000 s could be due to a change in expectations about economic uncertainty leading to demand for property, given its highly inelastic supply, and then a large increase in price, but this hypothesis could not be plausible without financial deregulations resulting an increase in financial accessibility.