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Thorsten Leo Beck (World Bank)

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M. Habibur Rahman (Bangladesh Bank) Financial Development Economic ... and facts identifying the causative factors behind financial development in Bangladesh ... – PowerPoint PPT presentation

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Title: Thorsten Leo Beck (World Bank)


1
Financial DevelopmentEconomic Growth Nexus A
Case Study of Bangladesh
  • By
  • Thorsten Leo Beck (World Bank)
  • and
  • M. Habibur Rahman (Bangladesh Bank)

Preliminary Draft Comments and
Suggestions are Welcome
2
Plan of the Presentation
  • Two parts
  • One Existing literature on Finance-Growth debate
    followed by a sophisticated econometric analysis
    to establish the view that financial development
    is an important factor for economic growth in
    Bangladesh
  • Two Analysis of figures and facts identifying
    the causative factors behind financial
    development in Bangladesh

3
Motivation (Finance-Growth Debate)
  • Why some countries are developed and some are not
    is a MYSTERIOUS question for development
    economists
  • Better infrastructure, institutions, technology,
    more capital could be the possible answer
  • But again one can pose another question why they
    are better?

4
Motivation..cont.
  • The Role of Financial Intermediation that
    facilitate most of the ingredients for economic
    growth seems to be very important factors in
    newly emerging economies
  • The intention, therefore, is to investigate the
    role of Financial Development on capital
    formation and economic growth in light of
    Bangladesh economy

5
From Market Frictions to Economic Growth A
Theoretical Approach to Finance and Growth
6
(No Transcript)
7
LiteratureFinance to Growth
  • Goldsmiths (1969) paper on 35 countries is the
    first empirical study that investigates
    finance-growth link
  • King-Levine (1993a), Levine (1997 1999),
    Levine-Zervos (1998), Rajan-Zingales (1998),
    Beck-Levine-Loayza (2000)

8
LiteratureFinance to Growth
  • Theoretical papers, such as Bencivenga-Smith
    (1991), Diamond (1984), and Williamson (1996
    1998) explain various channels through which
    financial development could contribute positively
    to economic growth

9
LiteratureFinance to Growth
  • Studies based on time series technique, such as
    Demetriades-Hussein (1996), Hansson-Jonung
    (1997), Luintel-Khan (1999), and Shan et al.
    (2001) are dominated with the evidence of
    bi-directional causality.

10
LiteratureEconomic growth to financial
development
  • Other studies, such as Deveraux-Smith (1994),
    Jappelli-Pagano (1994), Singh (1997),
    Arestis-Demetriades (1997) and Singh-Weisse
    (1998) including Robinson (1952) argue that
    financial development may not always promote
    economic growth.
  • They show that depending on the stage of
    development economic growth may promote financial
    development. To the contrary of the previous
    literature they argue that economic development
    generates additional demand for financial
    services and hence establishes a more developed
    financial sector. According to their view
    economic growth leads and financial development
    follows.

11
LiteratureFinance-Growth Joint Evaluation
  • Some other papers, however, including Gurley-Shaw
    (1955), Greenwood-Jovanovic (1990), Galetovic
    (1996), Geenwood-Smith (1997), and
    Bencivenga-Smith (1998) observe inextricable link
    between financial development and economic
    growth. They experience both way causality
    between financial development and economic
    growth. They predict joint evolution of the real
    and financial sectors during the growth process.
    They argue that at the initial stage of economic
    development finance follows economy. After a
    certain threshold level when financial
    intermediaries emerge, economy starts to get
    benefit from the financial sectors.

12
Objective
  • The main objective of this study is to
    investigate the causal relationship between
    financial development and economic growth in
    Bangladesh, particularly the long-run impact of
    financial development on capital formation and
    per capita income.
  • A system of equations based on the hypothesis
    that financial development has long-run impact on
    investment and per capita income is specified and
    estimated using Blanchard-Quahs (1989) technique
    of structural vector autoregressions (SVARs).

13
Objective
  • To examine the short-run dynamics among the
    variables in the system, however, the impulse
    response functions (IRFs) and variance
    decomposition (VDCs) are computed based on
    Cholesky factorization where the standard errors
    for VDCs are computed through 1000 Monte Carlo
    simulations.
  • To substantiate the causal link among the various
    indicators of financial development, investment
    and income per capita a graphical presentation
    has also been used.

14
An Overview of Financial Development in
Bangladesh
  • As financial development lacks any precise
    definitions, following the practice of existing
    literature King-Levine (1993a and 1993b), Levine
    (1997 and 1999), and Levine-Zervos (1998) some
    indicators of financial development may be used
    for effective policy formulation, implementation
    and evaluation.
  • Accordingly, three alternative indicators of
    financial development, such as domestic credit to
    the private sector by banks to GDP ratio, total
    deposits to GDP ratio and broad money (M2) to GDP
    ratio for Bangladesh economy have been used.

15
An Overview of Financial Development
  • Domestic credit to the private sector as a
    percent of GDP (denoted by cr_y) is one of the
    popular indicators of financial development.
  • The second indicator of financial development is
    total deposits (demand plus time) as a percent of
    GDP (denoted by dep_y) which is relatively
    broader measure of financial development as it
    includes all the liquid liabilities of the
    financial system excluding currency.
  • A third indicator, broad money as a percent of
    GDP (denoted by m2_y) is basically the liquid
    liabilities of the financial system in Bangladesh
    that includes currency plus demand and
    interest-bearing liabilities of financial
    intermediaries.

16
An Overview of Financial Development
Period lr cr_y dep_y m2_y i_y y_pcap
1976-1980 11.09 6.59 14.86 19.03 10.44 160.0
1981-1985 13.68 13.67 20.23 24.54 10.51 192.0
1986-1990 14.71 19.08 24.75 28.67 13.87 242.0
1991-1995 13.90 16.58 23.07 26.68 17.93 283.0
1996-2000 13.83 23.17 26.7 31.01 21.51 353.0
2001-2005 12.33 28.83 35.08 40.02 22.63 395.0
17
An Overview of Financial Development
  • It has been observed from the Table that the
    average credit, deposit and broad money to GDP
    ratios increased substantially respectively from
    6.6 percent, 14.9 percent and 19.0 percent in
    1976-1980 to respectively 28.8 percent 35.01
    percent and 40.0 percent in 2001-2005.
  • Investment as a percent of GDP and per capita
    income (in current USD) also display a similar
    pattern and move broadly together reflecting a
    close association among financial development,
    investment and per capita income during the
    period

18
An Overview of Financial Development
19
An Overview of Financial Development
20
An Overview of Financial Development
21
An Overview of Financial Development
22
An Overview of Financial Development
  • The scatter-plots of the three indicators of
    financial development vis-à-vis investment as
    well as per capita income strongly supports the
    co-movement of financial development and economic
    activity.
  • Besides, almost a linear relationship is also
    observed in a scatter-plots between
    investment-GDP ratio and per capita income.

23
Methodology
  • Structural macroeconometric models, such as the
    Klein interwar model, the Brooking model, the BEA
    model, the St. Louis model and the Taylor model
    that are based on hundreds of equations are
    replaced by the vector autoregressions (VARs).
    The problem of identification and endogeneity are
    associated with these structural macroeconometric
    models which can easily be overcome by the VARs
    approach (Simss 1980)

24
Methodology
  • Because it does not impose any a priori
    restrictions and is based on reduced form
    equations, it is difficult to reconcile VARs with
    economic theory and to provide any meaningful
    interpretations of the estimated parameters
  • In order to overcome the above difficulties with
    the standard unrestricted VARs some studies, such
    as Bernanke (1986), Blanchard-Watson (1986) and
    Sims (1986) come up with a structural VARs
    (SVARs) model that allows contemporaneous
    structural restrictions

25
Methodology
  • As the objective of this paper is to investigate
    long-run relationship between financial
    development and economic growth in Bangladesh, a
    Blanchard-Quah (1989) type of long-run structural
    model is estimated
  • To examine the short-run dynamics among the
    variables in the system, however, the impulse
    response functions (IRFs) and variance
    decomposition (VDCs) are computed based on
    Cholesky factorization

26
Methodology

27
Methodology
  • The restrictions stated in previous slide have
    some interesting implications regarding financial
    development-economic growth relationship
  • it asserts financial development has long-run
    effect on investment and per capita income
  • Income per capita, on the other hand, has no
    long-run effect on financial development.

28
Preliminary data analysis
Variables (in natural log) without trend without trend without trend with trend with trend with trend Decision
Variables (in natural log) DF PP KPSS DF PP KPSS Decision
Rate Lending rate (lr) f Lending rate at 1st difference (dlr) f I(1) I(0) I(1) I(0) I(0) I(0) I(1) I(0) I(1) I(0) I(1) I(0) I(1) I(0)
Financial development Domestic credit to the private sector as a percent of GDP (cr_y) Total deposit as a percent of GDP (dep_y) Broad money as a percent of GDP (m2_y) I(0) I(0) I(1) I(0) I(0) I(1) I(1) I(1) I(1) I(0) I(0) I(0) I(0) I(0) I(0) I(0) I(0) I(0) I(0) I(0) I(0)
Investment Per capita gross fixed capital formation as a percent of GDP (i_y) I(1) I(0) I(1) I(1) I(0) I(0) I(0)
Income Per capita GDP at current USD (y_pcap) I(1) I(1) I(1) I(1) I(0) I(0) I(0)
Notes f without log, I(1) unit-root and I(0) stationary. Lag length for ADF tests are decided based on Akaikes information criterion (AIC). Maximum Bandwidth for PP and KPSS test are decided based on Newey-West (1994). All the tests are performed on the basis of 5 significance level. Notes f without log, I(1) unit-root and I(0) stationary. Lag length for ADF tests are decided based on Akaikes information criterion (AIC). Maximum Bandwidth for PP and KPSS test are decided based on Newey-West (1994). All the tests are performed on the basis of 5 significance level. Notes f without log, I(1) unit-root and I(0) stationary. Lag length for ADF tests are decided based on Akaikes information criterion (AIC). Maximum Bandwidth for PP and KPSS test are decided based on Newey-West (1994). All the tests are performed on the basis of 5 significance level. Notes f without log, I(1) unit-root and I(0) stationary. Lag length for ADF tests are decided based on Akaikes information criterion (AIC). Maximum Bandwidth for PP and KPSS test are decided based on Newey-West (1994). All the tests are performed on the basis of 5 significance level. Notes f without log, I(1) unit-root and I(0) stationary. Lag length for ADF tests are decided based on Akaikes information criterion (AIC). Maximum Bandwidth for PP and KPSS test are decided based on Newey-West (1994). All the tests are performed on the basis of 5 significance level. Notes f without log, I(1) unit-root and I(0) stationary. Lag length for ADF tests are decided based on Akaikes information criterion (AIC). Maximum Bandwidth for PP and KPSS test are decided based on Newey-West (1994). All the tests are performed on the basis of 5 significance level. Notes f without log, I(1) unit-root and I(0) stationary. Lag length for ADF tests are decided based on Akaikes information criterion (AIC). Maximum Bandwidth for PP and KPSS test are decided based on Newey-West (1994). All the tests are performed on the basis of 5 significance level. Notes f without log, I(1) unit-root and I(0) stationary. Lag length for ADF tests are decided based on Akaikes information criterion (AIC). Maximum Bandwidth for PP and KPSS test are decided based on Newey-West (1994). All the tests are performed on the basis of 5 significance level.
29
Empirical Results

30
Empirical Results
31
Empirical Results
Variance Decompositions of Financial Development Variance Decompositions of Financial Development Variance Decompositions of Financial Development Variance Decompositions of Financial Development Variance Decompositions of Financial Development
Time Horizon (Year) Explained by shocks in Explained by shocks in Explained by shocks in Explained by shocks in
Time Horizon (Year) Lending Rate Financial Development Investment Income per Capita
4 8 12 16 20 27.61 (-16.84) 52.89 (-17.81) 63.72 (-18.80) 70.36 (-19.54) 70.72 (-19.77) 40.57 (-19.77) 21.60 (-16.48) 18.84 (-17.16) 12.72 (-17.10) 14.63 (-17.72) 31.30 (-17.74) 20.17 (-16.43) 12.40 (-16.36) 11.15 (-16.54) 8.64 (-16.90) 0.52 (-3.75) 5.33 -(6.28) 5.04 (-6.15) 5.77 (-6.26) 6.01 (-5.92)
32
Empirical Results
2. Variance Decompositions of Investment 2. Variance Decompositions of Investment 2. Variance Decompositions of Investment 2. Variance Decompositions of Investment 2. Variance Decompositions of Investment
4 8 12 16 20 31.86 (-16.95) 43.29 (-17.84) 50.09 (-18.92) 62.32 (-19.59) 57.43 (-19.89) 2.02 (-14.64) 5.95 (-16.17) 14.15 (-16.75) 15.56 (-17.01) 28.07 (-17.84) 61.57 (-19.07) 45.68 (-18.21) 31.19 (-17.60) 17.73 (-17.41) 10.56 (-17.38) 4.54 (-5.01) 5.08 (-5.91) 4.57 (-5.50) 4.40 (-5.71) 3.94 (-5.73)
33
Empirical Results
3. Variance Decompositions of Income per Capita 3. Variance Decompositions of Income per Capita 3. Variance Decompositions of Income per Capita 3. Variance Decompositions of Income per Capita 3. Variance Decompositions of Income per Capita
4 8 12 16 20 13.92 (-16.54) 41.35 (-18.80) 66.24 (-19.64) 70.69 (-19.67) 65.60 (-20.14) 38.56 (-17.96) 28.39 (-17.04) 11.94 (-17.24) 14.13 (-17.32) 20.35 (-17.57) 33.56 (-16.22 19.56 (-16.14 15.14 (-16.46 8.94 (-16.86 8.34 (-17.00 13.96 (-6.90) 10.70 (-6.53) 6.68 (-5.94) 6.24 (-5.99) 5.71 (-5.92)
34
Summary and Conclusion
  • The graphical presentation as well as estimated
    coefficients of the long-run response matrix
    indicates that various indicators of financial
    development and investment have long-run impact
    on per capita income
  • The estimated results also support the argument
    that in the long-run financial development
    stimulates investment activities. The estimated
    coefficients of the long-run response matrix,
    however, do not provide any statistical evidence
    that the lending rate has any impact on financial
    development, investment or on per capita income

35
Summary and Conclusion
  • Regarding the short-run dynamics among the
    variables in the system, the results from IRFs
    indicate that both the financial development and
    investment have short-run impact on per capita
    income at the immediate year of initial shocks
  • The results from VDCs, on other hand, imply that
    all the variables in the system, such as lending
    rate, indicator of financial development and
    investment contain very useful information in
    predicting the future path of per capita income

36
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