2010/10 | LEM Working Paper Series | |
Measuring Industry Relatedness and Corporate Coherence |
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Giulio Bottazzi, Davide Pirino |
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Keywords | ||
corporate coherence; relatedness; null model analysis; patent data
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JEL Classifications | ||
C1, D2, L2
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Abstract | ||
Since the seminal work of Teece et al. (1994) firm diversification has
been found to be a non-random process. The hidden deterministic nature
of the diversification patterns is usually detected comparing expected
(under a null hypothesys) and actual values of some
statistics. Nevertheless the standard approach presents two big
drawbacks, leaving unanswered several issues. First, using the
observed value of a statistics provides noisy and nonhomogeneous
estimates and second, the expected values are computed in a specific
and privileged null hypothesis that implies spurious random
effects. We show that using Monte Carlo p-scores as measure of
relatedness provides cleaner and homogeneous estimates. Using the NBER
database on corporate patents we investigate the effect of assuming
different null hypotheses, from the less unconstrained to the fully
constrained, revealing that new features in firm diversification
patterns can be catched if random artifacts are ruled out.
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