Report NEP-MIC-2021-04-19
This is the archive for NEP-MIC, a report on new working papers in the area of Microeconomics. Jing-Yuan Chiou issued this report. It is usually issued weekly.Subscribe to this report: email, RSS, or Mastodon, or Bluesky.
Other reports in NEP-MIC
The following items were announced in this report:
- Raphaela Hennigs, 2019, "Conflict Prevention by Bayesian Persuasion," Working Papers, Max Planck Institute for Tax Law and Public Finance, number tax-mpg-rps-2019-16_1, Sep.
- Philippe Choné & Laurent Linnemer & Thibaud Vergé, 2021, "Double Marginalization and Vertical Integration," CESifo Working Paper Series, CESifo, number 8971.
- Stefano Barbieri & Kai A. Konrad & David A. Malueg, 2019, "Preemption contests between groups," Working Papers, Max Planck Institute for Tax Law and Public Finance, number tax-mpg-rps-2019-09, May.
- Makoto Watanabe & Jidong Zhou, 2020, "Multiproduct Intermediaries," Cowles Foundation Discussion Papers, Cowles Foundation for Research in Economics, Yale University, number 2263, Nov.
- Bo Chen & Marco Serena, 2020, "Bid Caps and Disclosure Policies," Working Papers, Max Planck Institute for Tax Law and Public Finance, number tax-mpg-rps-2020-08, Jun.
- Mariann Ollar & Antonio Penta, 2021, "A network solution to robust implementation: The case of identical but unknown distributions," Economics Working Papers, Department of Economics and Business, Universitat Pompeu Fabra, number 1776, Apr.
- Francis Bloch & Kalyan Chatterjee & Bhaskar Dutta, 2021, "Attack and Interception in Networks," Working Papers, Ashoka University, Department of Economics, number 57, Apr.
- Thomas Phelan & Alexis Akira Toda, 2021, "Optimal Epidemic Control in Equilibrium with Imperfect Testing and Enforcement," Papers, arXiv.org, number 2104.04455, Apr, revised Oct 2022.
- Stefano Barbieri & Marco Serena, 2020, "Fair Representation in Primaries: Heterogeneity and the New Hampshire Effect," Working Papers, Max Planck Institute for Tax Law and Public Finance, number tax-mpg-rps-2020-07, Jun.
- Mira Frick & Ryota Iijima & Yuhta Ishii, 2020, "Belief Convergence under Misspecified Learning: A Martingale Approach," Cowles Foundation Discussion Papers, Cowles Foundation for Research in Economics, Yale University, number 2235R, May, revised Mar 2021.
- Stefano Barbieri & Marco Serena, 2020, "Winner's Effort Maximization in Large Contests," Working Papers, Max Planck Institute for Tax Law and Public Finance, number tax-mpg-rps-2020-13, Sep.
- Matthew Kovach, 2021, "Conservative Updating," Papers, arXiv.org, number 2102.00152, Jan.
- Marco F. Boretto & Fausto Cavalli & Ahmad Naimzada, 2021, "Characterization of Nash equilibria in Cournotian oligopolies with interdependent preferences," Working Papers, University of Milano-Bicocca, Department of Economics, number 463, Mar, revised Mar 2021.
- Bharat Goel & Arijit Sen, 2019, "Contests with Supporters," Working Papers, Max Planck Institute for Tax Law and Public Finance, number tax-mpg-rps-2019-08, May.
- Marco F. Boretto & Fausto Cavalli & Ahmad Naimzada, 2021, "Comparative statics and centrality measures in oligopolies with interdependent preferences," Working Papers, University of Milano-Bicocca, Department of Economics, number 464, Mar, revised Mar 2021.
- Mohammad Abbas Rezaei, 2021, "Optimal Design of Limited Partnership Agreements," Papers, arXiv.org, number 2104.07049, Apr.
- Kai A. Konrad, 2019, "Attacking and Defending Multiple Valuable Secrets in a Big Data World," Working Papers, Max Planck Institute for Tax Law and Public Finance, number tax-mpg-rps-2019-05, May.
- Johannes Hörner & Nicolas Lambert, 2021, "Motivational Ratings," Working Papers, HAL, number hal-03187510, Apr.
- Marcel Nutz & Yuchong Zhang, 2021, "Reward Design in Risk-Taking Contests," Papers, arXiv.org, number 2102.03417, Feb, revised Nov 2021.
- Changxia Ke & Florian Morath & Anthony Newell & Lionel Page, 2021, "Too Big to Prevail: The Paradox of Power in Coalition Formation," CESifo Working Paper Series, CESifo, number 8980.
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