Matthias Buehlmaier
Dr. Matthias BUEHLMAIER
金融學
BBA(IBGM) Programme Director
Principal Lecturer

2219 4177

KK 1106

Academic & Professional Qualification

  • Ph.D. in Finance, Vienna Graduate School of Finance (WU Vienna), Austria
  • M.S. in Mathematics, Texas A&M University-College Station, USA
  • Vordiplom in Applied Mathematics (“Wirtschaftsmathematik”), Ulm University, Germany

Biography

Matthias Buehlmaier is a principal lecturer in finance and the BBA(IBGM) program director at HKU Business School, University of Hong Kong (HKU).

Please visit his website www.buehlmaier.net for more comprehensive information.

He has been a Visiting Fellow at the University of Cambridge at Hughes Hall and Cambridge Judge Business School via the Doris Zimmern HKU-Cambridge Hughes Hall Fellowship. Moreover, he has been a Visiting Scholar at the Department of Finance, Regensburg University. Since April 2020 he is an Advance HE Fellow.

His research has appeared in the Review of Financial Studies (Oxford University Press), the Review of Finance, and is featured in the Harvard Law School Forum on Corporate Governance and Financial Regulation.

He is a winner of several teaching and research awards, e.g. the Outstanding Teaching Award and the Teaching Innovation Award granted by HKU, three Faculty Outstanding Teaching Awards, the inaugural Faculty Teaching Innovation Award, the Hong Kong Asian Capital Markets Research Price from the HKSFA, and the Stephan Koren Prize, to name a few.

The first university course worldwide (to the best of his knowledge) on the topic of text analytics and natural language processing (NLP) in finance and fintech was developed and taught by him in 2018, with new iterations of the course taught every subsequent year.

He graduated with distinction from the Portfolio Management Program at the ISK Research Institute for Capital Markets, Austria, where he managed a successful stock portfolio.

In addition to his academic endeavors, he is excited about staying in contact with industry practitioners, regulators, and policy makers. Feel free to reach out if you would like to discuss topics related to his interests listed above, e.g. in relation to teaching, research, speaking engagements, consulting, applied industry projects, collaboration, or other knowledge exchange activities with business, government, or the public.

Furthermore, if you are looking for talended students for internships or placements, he would be pleased to connect you with HKU Business School students.

Teaching

Research Interest

  • Investment management and investment strategies with a focus on quantamental, quantitative, or data-driven approaches
  • Asset pricing, market efficiency, and price discovery
  • Corporate finance, in particular mergers & acquisitions (M&A)
  • Financial market stability, financial “bubbles,” cycles, and crises
  • Data science and big data in finance
  • Machine learning and artificial intelligence (AI) in finance
  • Text analytics and natural language processing (NLP) in finance, e.g. textual analysis of financial media, social media, or company filings
  • Bayesian data analysis
  • Predictive analytics and forecasting
  • Fintech and wealthtech

Selected Publications

  • Financial Media, Price Discovery, and Merger Arbitrage. Review of Finance, forthcoming. (With Josef Zechner)
    Winning paper of the Hong Kong Asian Capital Markets Research Prize 2013 of the Hong Kong Society of Financial Analysts (HKSFA) and the CFA Institute
  • Should Investors Join the Index Revolution? Evidence from Around the World. Journal of Asset Management, 21(3) (2020), 192-218. (With Kit Pong Wong)
  • Are Financial Constraints Priced? Evidence from Textual Analysis. Review of Financial Studies, 31(7) (2018): 2693-2728. (With Toni M. Whited)
    Second Prize at CQAsia 2014 Academic Competition
  • Debt, Equity, and Information. Journal of Mathematical Economics, 50 (2014): 54-62.

Awards and Honours

Service to the University/ Community