Counting Briberies in Elections
Data Skeptic20 Nov 2020

Counting Briberies in Elections

Niclas Boehmer, second year PhD student at Berlin Institute of Technology, comes on today to discuss the computational complexity of bribery in elections through the paper "On the Robustness of Winners: Counting Briberies in Elections."

Links Mentioned:
https://www.akt.tu-berlin.de/menue/team/boehmer_niclas/

Works Mentioned:
"On the Robustness of Winners: Counting Briberies in Elections." by Niclas Boehmer, Robert Bredereck, Piotr Faliszewski. Rolf Niedermier

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