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Academic Entrepreneurs: Social Learning and Participation in University Technology Transfer. Janet Bercovitz University of Illinois Maryann Feldman University of Georgia. Changing Environment for University-Industry Relationships.
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Academic Entrepreneurs:Social Learning and Participation inUniversity Technology Transfer Janet Bercovitz University of Illinois Maryann Feldman University of Georgia
Changing Environment for University-Industry Relationships • Universities Have Long Served as a Source of Scientific and Technical Knowledge • Recent Environmental Changes. . . • Emergence of New Technology Platforms • Greater Knowledge-Based Competition • Legislative Mandate -- Bayh-Dole Act of 1980 • Greater Budgetary Uncertainty • Have Catalyzed a Shift in Emphasis • Open Dissemination of Knowledge • Commercialization of Academic Discoveries
Inventor is a Faculty Member Eureka Moment! Faculty Files Invention Disclosure Federal requirement Low cost procedure, 0n-line forms Technology Transfer Office Evaluates Is it new? Useful? Non-obvious? If yes, then patent If Patent, then the Desired Outcomes Licenses Licensing revenues Start-up companies We care about outcomes, but they are predicated on faculty disclosing inventions University Technology-Transfer Process
Results are Not Uniform • Overall, a significant increase in the level and formalization of knowledge transfer activities at the university-industry interface • However, there remains great variation in technology transfer activity across and within universities • Why do some entities perform better than others? • Not resources • Not organizational initiatives • Not incentives
Fundamental Question • How Do Organizations (Places) Change? • Change as an emergent rather than calculated phenomenon • Collective rather than individual process • Individual in context • Localized learning? • non-pecuniary sharing of information • Groups of individual agents as conduits for organizational change • Social Actors in the Geography of Innovation
Seemingly Straightforward It’s the law Articulated university goal Just about anything can be disclosed But, In Practice, Has Proven Difficult Only a subset of research with commercial potential is disclosed Perceived Barriers Basic research is not amenable (wrong) Risk of publication delays (wrong) Just not appropriate == older norms of science Invention Disclosure Measures Adoption of Change to Entrepreneurial Behavior Getting Faculty Invention Disclosures
Disclosures are Differentially Concentrated within Medical School Department
Central Research Question • What factors influence an individual faculty member’s disclosure decision? • Technical Opportunity? • Financial Incentives? • Social Imprinting? • Social Learning? • What happens when individuals face dissonant situations? • Lack of alignment • Symbolic behavior • Academic Entrepreneurship to study organizational change • Understand Individual decision making in context
Imprinting & Entrepreneurial Activity • Training Effects • An Individual is Shaped by the Norms and Values Prevalent: • In Key Social Institutions (Schein, 1985; DiMaggio and Powell, 1983) • During Formative Stages of Career Development (Ryder, 1965) Training Institution Active in Tech-Transfer H1 (+) Likelihood of Disclosure Completed Training Recently H2 (+)
Social Learning & Entrepreneurial Activity • Individuals Learn How to Behave in Organizations by Observing the Behavior of Referent Others (Bandura, 1986) • Leaders • Build/Define Culture • Act as Role-Model • Peers • Information Source • Influence Decisions Leader is Active in Tech-Transfer H3 (+) Likelihood of Disclosure Peers are Active In Tech-Transfer H4 (+)
Data • Observation – Individual Faculty Member • Duke University and Johns Hopkins University • Both late entrants in technology transfer • Strong Medical Schools • Same financial incentives at time under consideration • Fifteen Matched Medical School Departments • Basic, Nexus, and Clinical Departments • Departmental fixed effects • Research is expected from all faculty members • 1779 Individuals • Administrative Records • Technology Transfer Office Database • ISI Publications
PROBIT Model • Two Period Model • Dependent Variable • Three-Year Window: Academic Years 1996-1998 • Disclosure Activity Dummy Variable • Independent Variables • Independent variable = individual characteristics and local context • Activity in Previous Five-Year Window: Academic Years 1991 – 1995 • Controls
Control Variables • Quality • Individual NIH Awards • Departmental NIH Awards • Number of Prior Disclosures • Inventive Capacity • Boundary Spanning • Dual Degree • Number of ISI publications • Non-US Degree • Type of Department (clinical omitted) • Nexus Service Department • Basic Science Department • Academic Rank (Associate Professor omitted) • Full Professor • Assistant Professor • University dummy variable
The Likelihood of DisclosingIncreases • Each additional publication + 0.1%. • Strong Local Peer Effects • 1% increase in the percentage of faculty disclosing within the relevant cohort increases the probability of an individual disclosing by 12%. • Training Matters • Pro Tech Transfer Institution +4% for every 10 patents • Stanford + 27% • Dual Training (MD/PhD) +4% • Chairman influence weakest • Chair active +4% (weakly significant)
Selection or Socialization? • Department Chairs with a History of Disclosing were No More Likely to Hire Individuals “Predisposed” to Disclosing than Non-Active Chairs • Robustness Checks • Departmental Fixed Effects • Number of Disclosures
Dissonant Situations What happens when training and current work environment provide mixed signals? H5: When individuals are faced with a situation where their individual training norms are not congruent with the localized social norms in their work environment, they conform to local norms.
Figure 1: Alignment between training norms and localized social norms
Localized Learning Trumps Training • Individuals are most responsive to local cohort pressures • If not trained with entrepreneurial expectations, local cohort can catalyze • If trained with entrepreneurial expectations, local cohort can suppress • If neither training nor local pressure then entrepreneurship is a rare event • Localized learning is a knowledge source for entrepreneurship
Symbolic versus Substantive Adoption Just enough to seem to be in compliance but not as much as might be done, ceteris paribus N = 169 Symbolic Individuals N = 136 Individuals H6: Symbolic compliers will respond to different influences than substantive adopters.
Symbolic vs. Substantive Adoption Participants • Probit Model • Dependent Variable = Disclosure Filed (0, 1) • Same Basic Specification • Substantive Adoption Disclosures • Local Peer Effect is Stronger • Symbolic Disclosures • Stronger Chair Effect • NIH is positive and statistically significant
How to Change an Organization • Creating Entrepreneurial Organizations & Promoting Organizational Change • Requires Understanding and Management of both Individual Motivations and Departmental Composition • Individual decisions influenced by relevant others • Sub-unit composition and dynamics are key • Not just about leaders • Not about hiring individuals with • Appropriate training • Prior experience • Critical mass of symbolic participants • Enforcement of rules and incentives • Traction for creating local cohort • Keep these individuals together then culture changes
Organizing for Entrepreneurial Success • Academic Entrepreneurship is a team sport • 40% Individual Efforts; 60% Team Efforts • Compared to linked academic publications the number of inventors on a disclosure is less than half the number of authors on a paper. • Ave. publication team size is 5.33 (sd = 1.81) • Ave. disclosure team is size 2.11 (sd = 1.31) • Solo efforts • Publications = 3% of all inventors’ papers • Disclosures = 40% of disclosures
Broader Use of Disclosure Data • Studying Disclosure Teams • Same 2 Prominent East Coast Universities with Medical Schools • From 1988 to 1998 – July 1, 1988 to June 30, 1999 • Data from Tech Transfer Offices • 2340 Disclosures Filed • 4942 Unique Individual participated, all academic departments plus outsiders • Configurations change • Augmented with • Web of Science/ISI Publication data • Patent data • Probit Model • Dependent variables = relevant outcomes = patent, license, Royalty $
All in One: Hypotheses & Results • Technical Diversity: Two Competing Influences • Diversity in Knowledge is Key for Innovation (+) • But Diversity Raises Coordination Costs (-) • We find Diverse Teams are Less Productive • But Team Experience Matters: The Negative effect is Reduced as the Team Gains Experience Together • Organizational Diversity • Diverse Networks Gives Access to Resources (+) • Having an Industry Team Member Matters • Leadership Effect • The Experience of the Leader Matters Directly (+) • Learning Effects beyond specific team configuration
What we are doing now • Power Relationship • Stars (Scientist) and their Constellations • The Great Person or the Great Team • Apprenticeship System • Reconfigurations of teams • Over trials, do teams become • Larger or smaller • More homogenous or more diverse • More successful • Stay tuned