1,359 research outputs found
Convex Combinatorial Optimization
We introduce the convex combinatorial optimization problem, a far reaching
generalization of the standard linear combinatorial optimization problem. We
show that it is strongly polynomial time solvable over any edge-guaranteed
family, and discuss several applications
Abstracting Fairness: Oracles, Metrics, and Interpretability
It is well understood that classification algorithms, for example, for
deciding on loan applications, cannot be evaluated for fairness without taking
context into account. We examine what can be learned from a fairness oracle
equipped with an underlying understanding of ``true'' fairness. The oracle
takes as input a (context, classifier) pair satisfying an arbitrary fairness
definition, and accepts or rejects the pair according to whether the classifier
satisfies the underlying fairness truth. Our principal conceptual result is an
extraction procedure that learns the underlying truth; moreover, the procedure
can learn an approximation to this truth given access to a weak form of the
oracle. Since every ``truly fair'' classifier induces a coarse metric, in which
those receiving the same decision are at distance zero from one another and
those receiving different decisions are at distance one, this extraction
process provides the basis for ensuring a rough form of metric fairness, also
known as individual fairness. Our principal technical result is a higher
fidelity extractor under a mild technical constraint on the weak oracle's
conception of fairness. Our framework permits the scenario in which many
classifiers, with differing outcomes, may all be considered fair. Our results
have implications for interpretablity -- a highly desired but poorly defined
property of classification systems that endeavors to permit a human arbiter to
reject classifiers deemed to be ``unfair'' or illegitimately derived.Comment: 17 pages, 1 figur
Preference-Informed Fairness
We study notions of fairness in decision-making systems when individuals have
diverse preferences over the possible outcomes of the decisions. Our starting
point is the seminal work of Dwork et al. which introduced a notion of
individual fairness (IF): given a task-specific similarity metric, every pair
of individuals who are similarly qualified according to the metric should
receive similar outcomes. We show that when individuals have diverse
preferences over outcomes, requiring IF may unintentionally lead to
less-preferred outcomes for the very individuals that IF aims to protect. A
natural alternative to IF is the classic notion of fair division, envy-freeness
(EF): no individual should prefer another individual's outcome over their own.
Although EF allows for solutions where all individuals receive a
highly-preferred outcome, EF may also be overly-restrictive. For instance, if
many individuals agree on the best outcome, then if any individual receives
this outcome, they all must receive it, regardless of each individual's
underlying qualifications for the outcome.
We introduce and study a new notion of preference-informed individual
fairness (PIIF) that is a relaxation of both individual fairness and
envy-freeness. At a high-level, PIIF requires that outcomes satisfy IF-style
constraints, but allows for deviations provided they are in line with
individuals' preferences. We show that PIIF can permit outcomes that are more
favorable to individuals than any IF solution, while providing considerably
more flexibility to the decision-maker than EF. In addition, we show how to
efficiently optimize any convex objective over the outcomes subject to PIIF for
a rich class of individual preferences. Finally, we demonstrate the broad
applicability of the PIIF framework by extending our definitions and algorithms
to the multiple-task targeted advertising setting introduced by Dwork and
Ilvento
Simple Doubly-Efficient Interactive Proof Systems for Locally-Characterizable Sets
A proof system is called doubly-efficient if the prescribed prover strategy can be implemented in polynomial-time and the verifier\u27s strategy can be implemented in almost-linear-time.
We present direct constructions of doubly-efficient interactive proof systems for problems in P that are believed to have relatively high complexity. Specifically, such constructions are presented for t-CLIQUE and t-SUM. In addition, we present a generic construction of such proof systems for a natural class that contains both problems and is in NC (and also in SC). The proof systems presented by us are significantly simpler than the proof systems presented by Goldwasser, Kalai and Rothblum (JACM, 2015), let alone those presented by Reingold, Rothblum, and Rothblum (STOC, 2016), and can be implemented using a smaller number of rounds
A qualitative exploration of whether lesbian and bisexual women are 'protected' from sociocultural pressure to be thin
Heterosexual women in Western cultures are known to experience body image concerns, dieting and disordered eating as a result of intense social pressures to be thin. However, it is theorised that lesbian and bisexual women belong to a subculture that is ‘protective’ of such demands. Fifteen non-heterosexual women were interviewed about their experiences of social pressure. Thematic analysis of their accounts suggests that such theorising may be inaccurate, because these lesbian and bisexual women did not feel ‘protected’ from social pressures and experienced body dissatisfaction. While they might attempt to resist thin idealisation, resistance is not centred around their sexuality
Hard Properties with (Very) Short PCPPs and Their Applications
We show that there exist properties that are maximally hard for testing, while still admitting PCPPs with a proof size very close to linear. Specifically, for every fixed ?, we construct a property P^(?)? {0,1}^n satisfying the following: Any testing algorithm for P^(?) requires ?(n) many queries, and yet P^(?) has a constant query PCPP whose proof size is O(n?log^(?)n), where log^(?) denotes the ? times iterated log function (e.g., log^(2)n = log log n). The best previously known upper bound on the PCPP proof size for a maximally hard to test property was O(n?polylog(n)).
As an immediate application, we obtain stronger separations between the standard testing model and both the tolerant testing model and the erasure-resilient testing model: for every fixed ?, we construct a property that has a constant-query tester, but requires ?(n/log^(?)(n)) queries for every tolerant or erasure-resilient tester
Book Review: Homoplot: The Coming-Out Story and Gay, Lesbian and Bisexual Identity
Review of Homoplot: The Coming-Out Story and Gay, Lesbian and Bisexual Identity by Esther Saxe
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