We investigate the problem of designing optimal classifiers in the "strategic classification" setting, where the classification is part of a game in which players can modify their features to attain a favorable classification outcome (while incurring some cost). Previously, the problem has been considered from a learning-theoretic perspective and from the algorithmic fairness perspective. Our main contributions include - Showing that if the objective is to maximize the efficiency of the classification process (defined as the accuracy of the outcome minus the sunk cost of the qualified players manipulating their features to gain a better outcome), then using randomized classifiers (that is, ones where the probability of a given feature vecto...
In this paper, we consider problems involvinga central commander that must assign a pool of availabl...
Abstract The human ability for random-sequence generation (RSG) is limited but improves in a competi...
In repeated games with Nash equilibria in mixed strategies, players optimize by playing randomly. Pl...
AbstractThe strategyproof classification problem deals with a setting where a decision maker must cl...
International audienceWe consider the problem of finding optimal classifiers in an adversarial setti...
Abstract Strategies in repeated games can be classified as towhether or not they use memory and/or r...
Strategies in repeated games can be classified as to whether or not they use memory and/or randomiza...
Consider a binary decision making process where a single machine learning classifier replaces a mult...
I study strategy-proof assignment mechanisms where the agents reveal their preference rankings over ...
International audienceThis paper studies the optimization of strategies in the context of possibly r...
Many bioinformatics algorithms can be understood as binary classifiers. They are usually compared us...
In this dissertation, we explore two fundamental sets of inference problems arising in machine learn...
Contest outcomes often involve some mix of skill and chance. In three essays, I vary the sources of ...
I study strategy-proof assignment mechanisms where the agents reveal their preference rankings over ...
International audienceWe investigate the emergence of rationality in repeated games where, at each i...
In this paper, we consider problems involvinga central commander that must assign a pool of availabl...
Abstract The human ability for random-sequence generation (RSG) is limited but improves in a competi...
In repeated games with Nash equilibria in mixed strategies, players optimize by playing randomly. Pl...
AbstractThe strategyproof classification problem deals with a setting where a decision maker must cl...
International audienceWe consider the problem of finding optimal classifiers in an adversarial setti...
Abstract Strategies in repeated games can be classified as towhether or not they use memory and/or r...
Strategies in repeated games can be classified as to whether or not they use memory and/or randomiza...
Consider a binary decision making process where a single machine learning classifier replaces a mult...
I study strategy-proof assignment mechanisms where the agents reveal their preference rankings over ...
International audienceThis paper studies the optimization of strategies in the context of possibly r...
Many bioinformatics algorithms can be understood as binary classifiers. They are usually compared us...
In this dissertation, we explore two fundamental sets of inference problems arising in machine learn...
Contest outcomes often involve some mix of skill and chance. In three essays, I vary the sources of ...
I study strategy-proof assignment mechanisms where the agents reveal their preference rankings over ...
International audienceWe investigate the emergence of rationality in repeated games where, at each i...
In this paper, we consider problems involvinga central commander that must assign a pool of availabl...
Abstract The human ability for random-sequence generation (RSG) is limited but improves in a competi...
In repeated games with Nash equilibria in mixed strategies, players optimize by playing randomly. Pl...