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Secondary Transaction Costs in Bonds

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New car dealer comparison. Comparison to equity markets. 6. Important Issues ... 5 and -7 bps versus two comparison samples, both statistically significant. ... – PowerPoint PPT presentation

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Title: Secondary Transaction Costs in Bonds


1
Secondary Transaction Costs in Bonds
  • Larry Harris

2
Formal Disclaimer
  • The Securities and Exchange Commission, as a
    matter of policy, disclaims responsibility for
    any private publication or statement by any of
    its employees.
  • The views expressed herein are those of the
    author and do not necessarily reflect the views
    of the Commission or of the authors colleagues
    upon the staff of the Commission.

3
Secondary Bond Markets
  • Corporate bonds.
  • Municipal bonds.
  • Government bonds.

4
Bond Market Characteristics
  • Many securities.
  • Infrequently traded.
  • Almost no contemporaneous price transparency.
  • Almost no quotes.

5
The Main Policy Issue
  • How does market opacity affect liquidity?
  • New car dealer comparison.
  • Comparison to equity markets.

6
Important Issues
  • What are secondary transaction costs in the bond
    markets?
  • What determines these costs?
  • How does bond complexity affect these costs?

7
The Research Program
  • Examine all municipal (MSRB) and corporate
    (TRACE) bond trades.
  • Measure average transaction costs for each bond.
  • Identify cross-sectional determinants of these
    costs.
  • Identify how costs change when bond trades become
    more transparent.

8
The Samples
9
The MRSB Sample
  • Broker-dealers report all municipal bond trades
    to the MRSB.
  • Price, time, size, dealer, customer side.
  • Our one-year sample periodNovember 1999
    October 2000.
  • These data are now available on the next day on
    the Internet.

10
The TRACE Sample
  • Broker-dealers report all corporate bond trades
    to the NASD.
  • Price, time, size, dealer, customer side.
  • Our one-year sample periodJanuary 2003
    December 2003.

11
MRSB Sample Selection (from Section 3.1)
Deleted Unknown securities Derivatives Varia
ble rate bonds Missing data Unidentified cost
Pricing errors regressions
12
TRACE Sample Selection (from Table 1)
Same deletion criteria as applied to the MSRB
sample.
13
MSRB Bond Characteristics
14
TRACE Bond Characteristics(from Table 2)
15
MSRB Characteristics (from Table 1, Panel B)
Credit Quality
16
TRACE Characteristics (from Table 1, Panel B)
Credit Quality
17
Municipal Bond Complexity Features
  • Callable
  • Sinking fund
  • Extraordinary call
  • Nonstandard interest payment frequency
  • Nonstandard interest accrual method
  • Credit enhanced

18
MSRB Characteristics (from Table 1, Panel D)
Bond Complexity
19
MRSB Transparency
  • During most of the sample period, bond trades
    were made public on the next day if the bond
    traded four times.
  • Transparency and trade activity therefore are
    correlated.

20
Corporate Transparency
  • NYSE ABS bond trades are completely transparent.
  • Trades for TRACE-transparent bonds were reported
    with a 45 minute lag.
  • Bonds have been made TRACE-transparent based on
    credit quality and original issue size (IOS).

21
TRACE-Transparent Bonds
  • Throughout 2003 All bonds rated A and above
    with original issue sizegt1B.
  • March 1, 2003 All bonds rated A and above with
    100MgtOISgtB.
  • April 14, 2003 120 bonds rated BBB with
    stratified original issue sizes.

22
2003 Corporate Transparency (from Table 1, Panel
D)
23
Transaction Cost Measurement Methods
24
Benchmark Methods
  • Most transaction cost measures require price
    benchmarks.
  • Quotes
  • Average price Warga and others
  • Closing or opening prices
  • Without benchmarks, we must use econometric
    methods.

25
Econometric Approaches
  • Bid/ask bounce is due to transaction costs.
  • Measure the bounce.
  • The Roll Serial covariance spread estimator.
  • Regression methods useful when we know the side
    trade initiators (customers) are on.

26
A Constructive Introduction to Our Econometric
Method
27
Price and Value
  • Log Price Log Value /- trade cost
  • Let Qt indicate with values 1, or -1 whether
    trade t was initiated by a customer buyer or
    seller.

28
Add Interdealer Trades
  • Let It indicate with values 1 or 0 whether trade
    t was an interdealer trade.
  • Set Qt to 0 for interdealer trades.
  • Let dt be the unknown interdealer price impact.

29
Let Cost Vary with Size
  • An average response function plus a random error.

30
Bond Transaction Returns
  • Log price change between trades t and s produces
    a regression equation. (The trades need not be
    in order.)

31
Model Value Returns
  • Bond value returns have drift, common, and
    idiosyncratic components.
  • Random in bond-specific value.

32
The Cost Function
  • Municipal bonds
  • Corporate bonds

33
The Regression Model
  • Combining terms gives

34
The Error Term
  • has variance
  • where Dts 0, 1, or 2 counts the interdealer
    trades among trades t and s.

35
Estimation Strategy
  • Estimate the model without the indices for each
    bond.
  • Adjust prices to remove trade costs.
  • Use repeat sales methods to compute the indices.
  • Involves weighted regressions.
  • Re-estimate the model with the indices.

36
Weighted Least Squares
  • Estimate the model with OLS for each bond.
  • Use pooled constrained WLS to regress the squared
    residuals on independent variables to estimate
    the variance components.
  • Re-estimate the model with WLS.
  • Iterate until convergence.

37
Cost Estimates
  • Estimated cost for a given size is
  • The estimate error variance is

38
Mean Cost Estimates
  • Compute weighted means across bonds. For
    weights, use estimates of the precision of the
    cost estimate (inverse estimator error variance).
  • The data thus tell us where the information is.

39
Results
40
Mean Estimated Municipal Transaction Costs
(Figure 1)
41
Mean Estimated Corporate Transaction Costs
(Figure 1)
42
Alternative Cost Functions(Municipal Figure 2)
43
By Trading Activity (Munis)
44
By Trading Activity (Corps)
45
By Credit Quality (Munis)
46
By Credit Quality (Corps)
47
By Issue Size (Munis)
48
By Issue Size (Corps)
49
By Bond Complexity (Munis)
50
By Time Since Issuance (Munis)
51
By Time To Maturity (Munis)
52
By Transparency (Corps)
53
Cross-sectional Regressions
54
Cross-sectional Regressions
  • Cross-sectional regression analyses help isolate
    effects by disentangling conflicting effects.
  • Dependent variable Average bond transaction
    cost estimate for a representative trade size.
  • Estimate the models with WLS.

55
Information Considerations
  • The dependent variable observations are noisy
    estimates for which we have estimates of the
    estimator error variances.
  • The model should have an independent, equal
    variance error term.

56
Regression Weights
  • Obtain OLS residuals.
  • Regress OLS squared residuals on a constant and
    on the error variances to obtain predicted
    variances.
  • Use the inverse of the predicted variances as
    weights for the WLS analysis.

57
Regressors
  • Inverse Price
  • Fixed costs (clearing?)
  • Credit Rating Index
  • Complexity Features
  • Age/Maturity Features
  • Size/Scale Features

58
Municipal Results From Table 3, 100,000 Trade
Size
59
Inverse Price and Credit Rating Coefficients
60
A Quick Digression
  • Credit is missing for 18 percent of the bonds. We
    set the credit quality index to 0 and the missing
    credit dummy to 1.
  • The missing credit coefficient should equal the
    average (missing) credit quality index times the
    credit quality index coefficient.
  • The implied average credit quality index is 47
    2.1 22.

61
Complexity Coefficients(in bps)
62
Age/Maturity Coefficients
63
Size/Scale Coefficients
64
Other Municipal Results (From Table 3)
  • Generally similar results for other trade sizes.
  • However, some evidence that institutional
    investors are less adversely affected by
    instrument complexity than retail investors.

65
Corporate ResultsFrom Table 5, 100,000 Trade
Size
66
Credit Rating Coefficients(in bps)
67
Additional Risk Coefficients
68
Maturity and Age Coefficients
69
Size Coefficients
70
Some Complexity Coefficients(in bps)
71
Transparency Coefficients(in bps)
72
Corporate Cost Determinants (From Table 5)
  • Generally similar results for other trade sizes.
  • Transparency has the least effect in the smallest
    and largest trade sizes.

73
Time-series Analysis of Corporate Transparency
74
Transparency Changes
  • All 3,004 bonds rated A and up with
    100Mltoriginal issue sizelt1B became
    TRACE-transparent on March 1, 2003.
  • A size-stratified sample of 120 intermediate
    sized BBB rated bonds became transparent on April
    14.
  • What happened to costs?

75
Samples
76
Time-series Method
  • For each sample, use a regression model to
    estimate a different pooled average cost response
    function for each day.
  • Simultaneously estimate a common factor return
    using repeat sales index estimation method.

77
Sketch of Time-series Model
78
Difference of Differences Comparison Method
  • On each day, compute difference in costs between
    the March 1 sample and the three control samples.
  • Compare the average cost differences before and
    after March 1.
  • Use time-series sample variances to construct
    t-statistics.

79
Results for 100K Trade Size(from Table 6)
80
More Results
  • Similar results for other trade sizes.
  • Similar, but smaller, results for the 120 BBB
    bonds.
  • -5 and -7 bps versus two comparison samples, both
    statistically significant.

81
Learning about Transparency
82
Diffusion of Impact
  • The results underestimate the long run benefits
    of transparency because many were unaware that
    prices were available.
  • Obtaining last trade prices wasand is
    stilldifficult.
  • These observations probably explain why the BBB
    effect is smaller.

83
A Back of the Envelope Calculation
  • Cross-sectional effect at 100K trade size -3.8
    bps for TRACE-transparent and -3.5 for
    ABS-listed.
  • Time-series effect -10, -11, -15 bps for versus
    various comparisons for the March 1 bonds, and -5
    and -7 for the BBB bonds.
  • Safe to say minimum -5 bps.

84
A Back of the Envelope Calculation
  • About 2 trillion 2003 volume in non-transparent
    corporate bonds.
  • 5 bps of 2 trillion is one billion dollars.
  • The estimate is not unrealistic in comparison to
    total dealing profits.

85
Conclusion
86
Summary
  • Municipal and corporate bonds are expensive to
    trade.
  • Retail investors, and perhaps even issuers, could
    benefit if issuers issued simpler bonds.
  • Studies such as this one are essential inputs
    into the regulatory process.

87
A Final Perspective
  • A corporate bond can be hedged by a portfolio of
    Treasury bonds and the issuers stock.
  • Both trade in fully price-transparent markets!

88
An Important Additional Argument
  • Fair valuation of bond funds will be improved by
    greater transparency.

89
Progress
  • As of October 1, trades in 17,000 corporate bonds
    are available for dissemination within 30
    minutes.
  • 99 percent of all corporate issues will be
    TRACE-transparent with a 15-minute lag by July
    2005.
  • Starting in January 2005, all trades in municipal
    issues will available in real time with a
    15-minute lag.

90
Some Predictions
  • Retail interest in bonds will surge.
  • New trading systems will emerge.
  • Volumes will increase.
  • Dealers will continue to make moneyperhaps
    morebut it will be more difficult.

91
Time for more sunshine!
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