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The credit-to-GDP gap and complementary

indicators for macroprudential policy: Evidence from the UK

Julia Giese, Henrik Andersen, Oliver Bush, Christian Castro, Marc Farag and Sujit Kapadia

Federal Reserve Bank of Cleveland/Office for Financial Research

conference: Financial Stability Analysis

31st May 2013

The views given in this presentation are those of the authors and not necessarily those of the Bank of England or any other institution. 1

Outline

• Background: the UK’s macroprudential framework

• The credit-to-GDP gap

• Challenges for the credit-to-GDP gap and complementary indicators

• A univariate framework for evaluating these indicators

• Future work

2

Role of the Financial Policy Committee (FPC)

• FPC set up to take a top-down macroprudential view

• Mandate to “remove or reduce systemic risks with a view to enhancing and protecting the resilience of the UK financial system”

- cannot act “in a way that would in its opinion be likely to have a significant adverse effect on the capacity of the financial sector to contribute to the growth of the UK economy in the medium or long term”

- secondary objective to support the economic policy of the Government, including its objectives for growth and employment

3

FPC’s powers

General Recommendations

• eg to HM Treasury over regulatory perimeter

Comply or Explain Recommendations

• Better suited for tackling structural, cross-sectional risks

Directions

• Binding instructions on the countercyclical capital buffer and sectoral capital requirements

4

PRA and FCA

Countercyclical capital buffer (CCB)

• Part of Basel III framework

• Additional temporary capital buffer applied at an aggregate level

– Home authority sets CCB rate for domestic lending

– Other countries set national CCB rate for overseas lending

– Mandatory reciprocity in EU up to 2.5% RWAs

5

• Serve two broad purposes

– Internally: Starting point for analysis, consistency of decision-making

– Externally: Transparency, accountability, predictability

But not meant as a substitute for judgment: limited knowledge about regime; trade-off between rules and discretion

• Which indicators?

– Basel III: Credit-GDP gap

– Complements to the credit-to-GDP gap

Core indicators to guide decision making

6

• Secondary banking crisis (1973Q4 to 1975Q4)

– Credit growth fell from 29% to 8% p.a.; distress limited to ‘fringe’ institutions

• Small banks’ crisis (1990Q3 to 1994Q2)

– Credit growth fell from 15% to 4% p.a.; distress limited to small banks

• Global financial crisis (2007Q3 onwards)

– Credit growth fell from 13% to 0% p.a.; widespread distress

UK banking crises 1965 onwards

7

Credit-to-GDP gap

8

-20

-10

0

10

20

30

1965 1971 1977 1983 1989 1995 2001 2007

Broad private non-financial credit-to-GDP gap

Narrow private non-financial credit-to-GDP gap

Per cent of GDP

Empirical challenges: Data revisions

9

-30

-20

-10

0

10

20

30

2004 2005 2006 2007 2008 2009 2010 2011 2012

Initial gap Latest gapPer cent of

GDP

Initial and revised estimates of the credit-to-GDP gap

• Edge and Meisenzahl (2011) question reliability of credit gap in real time

• But they find that data revisions are not material in the US

• The same is true for the UK: revisions are auto-correlated, so they affect both ratio and trend and gap is less affected

Empirical challenges: Choice of trend

10

Credit-to-GDP gaps calculated with one- and two-sided HP filter

• Edge and Meisenzahl (2011) also argue against the one-sided HP filter

• Evidence for the UK shows that the choice of trend matters

• But this does not mean that policy errors result: the one-sided gap still appears to have informational content

-20

-15

-10

-5

0

5

10

15

20

25

30

1965 1971 1977 1983 1989 1995 2001 2007

One-sided filter

Two-sided filter Per cent of GDP

Empirical challenges: Definition of credit

11

Broad and narrow credit-to-GDP gap (including intra-financial)

• We need to consider what we would like to count in the credit series

• For the UK, intra-financial lending is important

• While there might be double-counting, intra-financial activities add to complexities in the system

-40

-30

-20

-10

0

10

20

30

40

50

60

1965 1971 1977 1983 1989 1995 2001 2007

Broad private credit-to-GDP gap

Narrow private credit-to-GDP gap

Per cent of GDP

Complements: Levels matter

12

Household debt-to-income and PNFC debt-to-profit ratios

• The level of credit ratios may also matter

• Deleveraging from a high level might be more painful than from a low level

• Evidence in Arcand et al (2012) and Cecchetti and Kharroubi (2012) points to inverse U-shape relation between economic growth and financial system growth

0

100

200

300

400

500

600

0

40

80

120

160

200

1963 1970 1977 1984 1991 1998 2005 2012

Household debt, per cent of household income (right-hand scale)

PNFC debt, per cent of gross operating surplus (left-hand scale) Per centPer cent

Complements: Sources of credit

13

UK banks’ leverage and loan to deposit ratio

0

10

20

30

40

50

60

70

60 66 72 78 84 90 96 02 08

Interquartile range (RHS)

Max-Min range (RHS)

Median (RHS)

%

0.0

0.5

1.0

1.5

2.0

2.5

3.0

1964 1970 1976 1982 1988 1994 2000 2006 2012

Sterling lending to deposit ratio Ratio

Complements: Quality of credit

14

House price indicators and lending spreads

0

20

40

60

80

100

120

140

160

180

1987 1991 1995 1999 2003 2007 2011

House price-to-rent ratio

Commercial property price-to-rent ratio

Index, 1987-2006average = 100

0

50

100

150

200

250

300

350

400

1997 2000 2003 2006 2009 2012

Blended UK mortgage spread

Blended UK corporate lending spread

Basis points

Complements: Release phase

15

Flow measures of credit and banks’ funding spreads

-30

-20

-10

0

10

20

30

40

1964 1970 1976 1982 1988 1994 2000 2006 2012

Nominal credit growth (b)

Real credit growth (c)

Percentage points

0

50

100

150

200

250

300

350

0

100

200

300

400

500

600

700

1972 1980 1988 1996 2004 2012

Three-month UK interbank spread (right-hand scale)

Senior CDS premia (left-hand scale)

Basispoints

Basispoints

• Univariate non-parametric approach (building on e.g. Kaminsky and Reinhart, 1999, Schularick and Taylor, 2012)

– Signal ratio at the minimum noise ratio (for policymakers that dislike type II errors)

– Noise ratio at the maximum signal ratio (for policymakers that dislike type I errors)

– Area under the receiver operator characteristic curve (AUROC) (which summarizes the informational content without taking a stand on policymaker preferences)

Framework for comparing indicators

16

• Each observation of the indicator classified as one of: – Good signal

– Type I error

– Type II error

– Good silence

• Signal ratio = Good signals / (Good signals + Type I errors)

• Noise ratio = Type II errors / (Type II errors + Good silences)

• Weighting scheme applied to Good signals and Type I errors

Classification

17

ROC curve

18

0.0

0.1

0.2

0.3

0.4

0.5

0.6

0.7

0.8

0.9

1.0

0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1

Sign

al r

atio

Noise ratio

ROC curve for useful indicator

ROC curve for useless indicator

Noise ratio at signal-maxmising threshold

Signal ratio at noise-minimisingthreshold

AUROC (yellow area)

• Used recursive bootstrap for significance tests – Indicator modeled as AR(p) process where p was chosen using BIC

– Residuals scaled up by hat matrix

– Random sampling from residuals of AR(p) and coefficients from AR(p) used to construct bootstrap samples

– Significance statistics calculated by comparing actual NR/SR/AUROC with distribution of NR/SR/AUROC for bootstrapped series

• Where residuals are heteroskedastic, the recursive wild bootstrap was used – Same as above, except the residuals were kept in the same order but multiplied

by random draws from the Rademacher distribution (1 with p=0.5, -1 with p=-0.5)

Statistical significance

19

Results (1)

20

Ranking method AUROC

Indicator Threshold Signal ratio Threshold Noise ratio

AGGREGATE GAPS

Broad HH and PNFC credit gap 0.87* 12.5 0.39** -2.7 0.48**

Narrow HH and PNFC credit gap 0.84* 9.4 0.33** -1.4 0.44**

Broad HH, PNFC and OFC credit gap 0.79 22.9 0.41** -2.3 0.79*

Narrow HH, PNFC and OFC credit gap 0.87** 13.6 0.45** -2.3 0.51**

AGGREGATE GROWTH RATES

Nominal broad HH and PNFC credit growth 0.69 26.4 0.08 7.9 0.84

Nominal narrow HH and PNFC credit growth 0.71 24.2 0.08 8.6 0.73*

Nominal broad HH, PNFC and OFC credit growth 0.74 24.8 0.14 8.0 0.88

Nominal narrow HH, PNFC and OFC credit growth 0.73 25.5 0.14 8.9 0.69**

Real broad HH and PNFC credit growth 0.77 19.8 0.08 -1.6 0.95

Real narrow HH and PNFC credit growth 0.81** 17.8 0.21** -0.4 0.90

Real broad HH, PNFC and OFC credit growth 0.82** 17.2 0.35** -1.0 0.95

Real narrow HH, PNFC and OFC credit growth 0.79* 19.9 0.14 -0.4 0.93

Minimum noise ratio Maximum signal ratio

Results (2)

21

Ranking method AUROC

Indicator Threshold Signal ratio Threshold Noise ratio

OTHER INDICATORS

HH DTI gap 0.85* 15.7 0.50** -1.7 0.63

PNFC DTP gap 0.82* 68.6 0.00 -20.0 0.48**

OFC credit-to-GDP gap 0.60 23.5 0.21 -0.4 1.00

Current account deficit 0.67 3.9 0.18* -3.0 0.99

Loan-to-deposit ratio gap 0.78 0.1 0.32** 0.0 0.85

Leverage ratio 0.48 26.4 0.30** 12.2 1.00

Real house price gap 0.88** 33.7 0.21 -3.5 0.58**

Real commercial property price gap 0.83* 15.0 0.53*** -4.3 0.80

Real equity price gap 0.32 110.7 0.00 -34.8 0.98

Corporate bond spread 0.61 3.2 0.00 0.0 1.00

Minimum noise ratio Maximum signal ratio

• Ultimate goals (?): – A general equilibrium model of banking crises, consistent with the

empirical evidence on FSIs

– A (within model) policy rule as a cross-check to policy

• Intermediate goals (cross-country analysis, multivariate framework): – Why does the credit-to-GDP gap perform well as an early warning

indicator?

– To what extent do the other factors mentioned earlier matter (e.g. sources and quality of credit)?

– If the buffer is ‘on’ or ‘off’, how can we determine the thresholds of our FSIs at which this should occur?

Future work

22

• This paper gives a narrative of how the credit-to-GDP gap might be complemented by other indicators

• We provide evidence based on UK data on the signaling abilities of the credit-to-GDP gap and complementary indicators

• In future work we seek to test the narrative on a cross-country panel and to get a better understanding of thresholds given policymakers’ preferences

Conclusion

23

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