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Title: Sin t


1
Mergers and Innovation in Big Pharma Carmine
Ornaghi University of Southampton Toulouse,
January 2008
2
Outline
1 - MAs and Innovation Limitations of the
Literature 2 - Objectives of this Work 3 -
Theoretical Insights 4 - Empirical Models 5 -
Data and Variables 6 - Main Findings 7 - Mergers
and Innovation A Competition Policy perspective
3
1. Mergers and Innovation Limitations of the
Literature
  • Empirical studies on MAs have found
    contradictory results about their effects on
    firms performance economists are still divided
    on whether mergers enhance economic efficiency or
    increase market power or neither of the two (e.g.
    managers interests).
  • Main features of most of these studies
  • Based on data of different industries.
  • Focused on assessing the short-run effects on
    sales and profits (Guegler et all., 2003) and
    market value abnormal returns around the
    announcement day (Fuller et all., 2002).

4
1. Mergers and Innovation Limitations of the
Literature
  • Limitations of this literature
  • Recent empirical findings show the existence of
    industry clustering in merger activity (Andrade
    et al., 2001) mergers as a response to exogenous
    changes in industry structure ? Cross-industry
    studies can give inconclusive results.
  • The post-merger performance of the merged
    entities is likely to depend on the relatedness
    of the merging parties ? Hardly considered in the
    literature.
  • In RD intensive industry, relevant dimension of
    competition is innovation rather than price ?
    Short-run analysis on sales and profits is not
    suitable.

5
2 - Objectives of the Work
  • This work tries to overcome these limitations by
    studying the effects of MAs on innovation in a
    single industry.
  • Analysis conducted for the case of large mergers
    in the Pharmaceutical Industry
  • Research questions
  • Do mergers have a positive effect on the
    innovative ability of the firms involved, as
    their proponents often claim?
  • (2) Is there any relationship between the ex-ante
    technological and product relatedness of merging
    parties and the ex-post effects?

6
3 Theoretical Insights Effects of MAs on
Research
  • MAs affect optimal RD through different
    channels
  • Avoidance of duplication of fixed costs (eg.
    library, labs, ) ? decrease in RD inputs
  • Economies of scope and knowledge synergies ?
    increase in RD inputs and outputs
  • Internalization of spillovers, reduction in the
    number of competitors and higher barriers to
    entry ? increase of RD inputs and outputs
  • But knowledge is embodied in scientists and
    mergers usually imply a reduction of the
    employees. Moreover, cultural dissonances might
    disrupt innovation outcomes ? decrease in RD
    output
  • It is not possible to define clear predictions on
    the net effects of these forces Empirical
    evidence is needed

7
3 Theoretical Insights Technology and Product
Relatedness
  • Most of the effects above are driven by forces
    whose magnitude depends on the ex-ante technology
    relatedness (TR) of the merged parties (e.g.
    synergies due to cross fertilization of ideas or
    elimination of useless duplication).
  • Product relatedness (PR) might also have an
    indirect effect on innovation through changes in
    the market equilibria for approved drugs
  • An empirical questions arise
  • Can TR and PR explain differences in post-merger
    results of consolidated companies and competitors?

8
4 Empirical Model
  • To access the effects of mergers (up to 3 years
    after the deal), I use a dummy variable model
  • where the dependent variable measures the
    percentage change in RD inputs/outputs, M0, M1,
    M2 and M3 are dummy variables that take on value
    of 1 if the firm goes through a merger in period
    t, in period t-1 (i.e. one-year ago), in t-2 or
    in t-3, respectively. T is a complete set of time
    dummies for the period 1988-2004.
  • M0 represent a difference-in-difference estimate
    of the changes in Y due to the merger, and the
    other dummies assess whether there are lagged
    effects of consolidation in the following years.

9
4 Empirical Model Problem of Endogeneity
  • Endogeneity of the merger decision can lead to a
    (spurious) correlation between the merger dummies
    and the outcome for reasons unrelated to the
    causal effect we are interested.
  • Example It has been found that firms with
    important drugs coming off patents are more
    likely to pursue a merger. As patent expirations
    affect future revenues, we would find a negative
    correlation between mergers and growth of
    revenues even in the absence of a causal effect
    of the first on the second.
  • I account for the selection problems in two
    ways
  • Propensity score each acquirer and target is
    matched with firms with the closest probability
    of merging
  • Technological relatedness exogenous
    technological shocks are likely to hit firms with
    similar research activities

10
4 Empirical Model Relatedness
  • To assess the role of TR and PR in post-merger
    effects, I estimate the model

where ?(Xß) is the inverse Mills ratio which
controls for selection problems (Heckman
two-step procedure).
11
5 Data and Variables
  • New dataset containing publicly traded
    pharmaceutical firms constructed using three main
    data sources
  • - Financial Data (sales, stock market values, RD
    expenditures) from Compustat and Osiris
  • - Patents Data from the US Patent Office (patent
    class and citation)
  • Merger transactions data for 1988-2004 from
    Mergers Year Book.
  • All observations double checked and completed
    with sources in the internet (mainly, web pages
    of firms and www.sec.gov)
  • Our sample represents the universe of big pharma
    companies (excluding large generic producers such
    as Teva or Mylan) and the consolidations that
    they have been involved

12
5 Data and Variables
  • Technological and Product Relatedness
  • Correlation of Patent Classes (PatCr) Jaffe
    (1986)
  • A similar measure has been constructed for
    Product Classes
  • Overlapping between Cited Patents

BA (BT) is the set of Patents cited by the
patent portfolio of acquirer (target)
13
6 Main Empirical Findings
  • EFFECTS OF MERGERS (DUMMY VARIABLE MODEL)
  • Negative signs for RD inputs, output and
    productivity.
  • Market value growth below the other non-merging
    firms.
  • Results similar when accounting for endogeneity
    and selectivity issues (only the negative sign
    for Market Value growth is no longer
    statistically significant)

14
6 Main Empirical Findings
  • THE ROLE OF TECHNOLOGICAL RELATEDNESS
  • Results suggest that product relatedness has a
    positive effect on post-merger outcomes while
    technological relatedness seems to have
    detrimental impact
  • Most interesting finding concerns the change in
    stock market value positive and statistically
    significant coefficient for PR and negative and
    statistically significant coefficient for TR.

15
7 - Competition Policy Implications
  • Efficiencies are easy to promise, yet may be
    difficult to deliver''. Lawrence White
  • Our results cast some doubts on the actual
    materialisation of the efficiency gains in RD
    commonly claimed by merging firms to defend
    consolidations.
  • Mergers between firms with large technological
    relatedness are found to deliver worse outcomes.
  • The importance of the questions here analysed and
    the difficulty involved in the empirical analysis
    impose extreme cautions in drawing any radical
    conclusions for competition policy.
  • Relate ex-post effects to ex-ante characteristics
    is an important task for future research agenda.
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