IPO Valuation in the New and Old economies

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IPO Valuation in the New and Old economies

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Title: IPO Valuation in the New and Old economies


1
IPO Valuation in the New and Old economies
  • Sanjai Bhagat
  • Srinivasan Rangan
  • University of Colorado at Boulder

2
Outline
  • Motivation
  • Research Questions
  • Prior Literature
  • Model Specification
  • Sample and Data
  • Results
  • Conclusions

3
Motivation
  • The second half of the 1990s, which witnessed
    several significant innovations in the technology
    sector and the rise of the internet sector, has
    been labeled as the new economy period.
  • In the new economy period (or boom period),
    equity values, especially those of initial public
    offering (IPO) firms, reached unprecedented
    heights and outpaced fundamentals
  • This has prompted several commentators to raise
    questions about whether traditional valuation
    methods remain valid for IPOs.

4
Motivation
  • Early profitability is not the key to value in a
    company like this (Inktomi).
  • Jerry Kennelly, Chief Financial Officer of
    Inktomi Inc (1999)
  • But valuations are just as often based on gut
    feel. As one entrepreneur told me, Its as if
    everybody just settles on a number that they are
    comfortable with.
  • Gove (2000)

5
Motivation
  • Were traditional value-relevant variables such as
    income and book value of equity valued
    differently in the boom period relative to an
    earlier time period for IPO firms?
  • Also beginning from March 2000, the stock market
    in general took a dive (crash period). So the
    other question is How did these variables fare
    in the crash period?
  • In this paper, we seek to provide descriptive
    evidence on shifts in the IPO valuation function
    in the boom period and crash period relative to a
    more stable period the late 1980s.

6
Motivation
  • Another question that we consider is whether
    investment bankers and first-day investors agree
    on their valuations of different variables.
  • We conduct this analysis by regresssing first-day
    market values on offer values and other
    variables.
  • If the two sets of individuals agree with each
    other, the coefficient on offer value should
    equal one and the coefficient on other variables
    should equal zero.

7
Motivation
  • Why is this important/interesting?
  • Separate fact from fiction/anecdotes
  • Fills gaps in the IPO valuation literature
  • Stimulate further research into what factors
    drove the shifts in the valuation function

8
Discounted Cashflow Valuation
  • where,
  • n Life of the asset
  • CFt Cashflow in period t
  • r Discount rate reflecting the riskiness of the
    estimated cashflows

9
Research Questions
  • Were the following variables valued differently
    by investment bankers and first-day investors in
    the boom and crash periods relative the second
    half of the 1980s?
  • Income
  • Book value of equity
  • Sales
  • RD
  • Industry price-to-sales ratios
  • Insider retention
  • Were the valuation of these variables different
    for tech firms, internet firms, and loss firms?

10
Priors / Expectations
  • Based on anecdotes, we expected that income would
    be valued less in the boom period relative to the
    1980s
  • Based on anecdotes, we expected that sales would
    be valued more in the boom period relative to the
    1980s
  • We had no priors on how things would change in
    the crash period and so we let the data speak.
  • We also expected insider retention to be valued
    more in the boom period relative to the 1980s
    (substitution)
  • For technology and internet firms, we expected
    income and sales to be less valuable and insider
    retention to be more valuable (substitution)
  • For loss firms, we expected income to be valued
    less (Hayn (1995) and Basu (1997)) and insider
    retention to be valued more (substitution).

11
Prior Literature
  • Valuation of ownership
  • Leland and Pyle (1977)
  • Downes and Heinkel (1982)
  • Ritter (1984)
  • Feltham, Hughes, and Simunic (1991)
  • Valuation of financial information
  • Klein (1996)
  • Kim and Ritter (1999)
  • Beatty, Riffe, and Thompson (2000)

12
Prior Literature
  • Valuation of internet IPOs
  • Hand (2000)
  • Bartov, Mohanram, and Seethamraju (2002)
  • Inter-temporal changes in the valuation function
  • Core, Guay, and Buskirk (2003)
  • Demers and Lev (2001)
  • Keating, Lys, and Magee (2003)

13
Prior Literature
  • How do we extend the literature?
  • First, sample periods of most prior studies of
    IPO valuation do not cover the late nineties,
    2000, and 2001.
  • Second, none of the prior studies share our
    research focus, which is to examine
    inter-temporal shifts in the IPO valuation
    function.
  • Third, with the exception of BRT, sample sizes in
    prior studies are small or based on one industry,
    the internet, and hence limit the
    generalizability of their conclusions.

14
Prior Literature
  • Fourth, while prior studies have examined the
    determinants of the first-day closing value, they
    have not modeled this value conditional on the
    offer value.
  • Fifth, prior research has examined ownership
    retention by pre-IPO shareholders only as an
    aggregate signal we extend this research by
    studying the value implications of the ownership
    of four classes of shareholders CEOs, other
    officers and directors, venture capitalists, and
    other five percent blockholders.

15
Model Specification
  • Dependent variable choices
  • Price-to-earnings ratios or Price-to-sales ratios
  • Price per share
  • Offer value in millions of dollars
  • Logarithm of Offer value
  • Independent variables (expected signs)
  • Year -1 Income before extraordinary items and RD
    ()
  • Year -1 Book value of equity ()
  • Year -1 Sales ()
  • Year -1 RD ()
  • Pre-IPO Industry median price-to-sales ratio ()
  • Post-IPO insider retention ()

16
Model Specification
  • Basic Model

OV Offer value INCBRD Income before
extraordinary items and RD in year 1 BV
Book value equity at the end of year 1 SALES
Sales for year 1 RD Research and development
costs in year 1 INDPS Median industry
price-to-sales comparable of recent
IPOs INSRET Percentage of the post-IPO firm
owned by pre-offering shareholders.
17
Model Specification
  • Measuring Median Industry price-to-sales ratio
  • Based on five most recent IPOs within the last
    two years from the same four digit SIC code
  • Multiplied by Sales of Firm
  • RD add back.
  • Using RD stock instead annual RD in year -1
    does not change results.

18
Model Specification
  • We substitute aggregate insider retention with
    ownership levels of four categories of owners
  • CEO
  • Officers Directors
  • Venture Capitalists
  • Other 5 Blockholders
  • We also examine the impact of changes in
    percentage ownership around the IPO.
  • We include sales growth as an additional proxy
    for growth prospects and our results are
    unchanged.

19
Model Specification
  • Our main research goal is to test for
    inter-temporal shifts in the valuation function.
  • Therefore, we expand the basic model by adding
    binary dummy variables for the boom period and
    the crash period.
  • We also construct dummies for loss firms,
    technology firms, internet firms and for
    interactions of these dummies with the six basic
    variables.

20
Model Specification
  • Expanded Model

21
Model Specification
  • Boom 1 if the offer date is during
    1/1997-3/2000, and 0 otherwise.
  • Crash 1 if the offer date is during
    4/2000-12/2001, and 0 otherwise.
  • Loss 1 if income before extraordinary items is
    negative, and 0 otherwise.
  • Tech 1 if a firm belongs a technology
    industry, and 0 otherwise.
  • Internet 1 if a firm belongs to an internet
    industry, and 0 otherwise.

22
Model Specification
  • Logarithmic specification
  • Hand (2000) and Ye and Finn (2000), Beatty,
    Riffe, and Thompson (2001).
  • Reduces heteroscedasticity and influence of
    outliers
  • L(W) loge(1W) when W gt 0 in millions
  • L(W) -loge(1-W) when W lt 0 in millions.
  • The transformation is monotone and one-to-one and
    ensures that L(W) is defined when W is zero or
    close to zero.
  • Is the best model based on Box-Cox analysis.

23
Model Estimation
  • Robust regression
  • OLS is justified by the fact that it is best
    linear unbiased estimate of linear model
    coefficients, and the overall best estimate when
    regression residuals are normally distributed.
  • Additionally, if residuals are normally
    distributed we have convenient access to a
    distribution theory for inference.
  • However, when residuals are non-normal, OLS is no
    longer the most efficient estimator.
  • In contrast to OLS which estimates the
    conditional mean, quantile regression estimates
    the conditional median.
  • It is less sensitive to outliers in the dependent
    variable.
  • It may be more efficient than OLS.

24
Sample and Data
  • Eighties Nineties
  • Initial Sample non-financial companies,
  • firm-commitment offerings, US companies,
  • not units, not spinoffs, not LPs,
  • proceeds gt 5 million 718
    1,381
  • Delete misclassifications 51
    64
  • Delete not listed on Compustat
    26 0
  • Delete dual-class IPOs 0 87
  • No prospectuses 2 10
  • Final sample 633
    1,222
  • Final sample with data for all variables
    (1855-230) 1,625 IPOs

25
Sample and Data
  • Data sources
  • Financial Data (years -1,-2,-3) prospectuses
  • Ownership data prospectuses
  • Offer date, offer price, shares issued SDC
  • Shares Outstanding Ljungqvist and Wilhelm
    (2003), prospectuses
  • Stock price and return data CRSP
  • Industry comparables COMPUSTAT
  • Industry classification Loughran and Ritter
    (2003)
  • In process of collecting data on cash flows, age,
    underwriter reputation, long-term debt.

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Results Offer Values
  • For profitable non-tech firms in the 1980s
  • income, sales, RD, industry price-to-sales
    ratios, and insider retention are positively
    related to offer values
  • book value of equity is unrelated to offer value
    of equity.
  • Income is valued more in the boom period, for
    tech firms, and internet firms (contrary to
    expectation). Valuation of income has remained
    stable across the boom and crash periods.
  • Income of loss firms is valued negatively.

31
Results Offer Values
  • In the boom period, sales were valued less in the
    boom period relative to the 1980s (contrary to
    expectation). Coefficients on sales are lower
    for tech and internet firms Sales became more
    valuable in the crash period.
  • Consistent with expectation, insider retention is
    valued higher in the boom period, for tech firms,
    for internet firms, and for loss firms.

32
Results Market Values
  • In regressions of first-day market values
    conditional on offer values we find that
  • Except for sales and RD in the crash period,
    investment bankers and first-day investors tend
    to value financial and growth variables similarly
  • In general, first-day investors and investment
    bankers tend to disagree about the value
    relevance of insider retention. For example, for
    profitable non-tech firms first-day investors
    value insider retention less by 1.65 million
  • Value differential became smaller in the boom
    period relative to the 1980s
  • First-day investors assign a lower valuation than
    do investment bankers for tech firms, for
    internet firms, and for loss firms.

33
Conclusions
  • Shifts in firm characteristics contributed to
    shifts in offer values in recent times.
  • We also find evidence of parameter variation for
    several financial variables across time-periods
    and industries.
  • Detailed information on ownership structure is
    incrementally useful in explaining IPO values
    (compared to one aggregate number).
  • We believe the analysis of first-day market
    values conditional on offer values is a fruitful
    way to understanding differences between
    investment banker and market assessments of IPO
    prospects.
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