Search Results for author: Elliot Anshelevich

Found 6 papers, 0 papers with code

Optimizing Multiple Simultaneous Objectives for Voting and Facility Location

no code implementations7 Dec 2022 Yue Han, Christopher Jerrett, Elliot Anshelevich

In particular, we show that for any such pair of objectives, it is always possible to choose an outcome which simultaneously approximates both objectives within a factor of $1+\sqrt{2}$, and give a precise characterization of how this factor improves as the two objectives being optimized become more similar.

Awareness of Voter Passion Greatly Improves the Distortion of Metric Social Choice

no code implementations25 Jun 2019 Ben Abramowitz, Elliot Anshelevich, Wennan Zhu

Previous work has often assumed that only ordinal preferences of the voters are known (instead of their true costs), and focused on minimizing distortion: the quality of the chosen candidate as compared with the best possible candidate.

Truthful Mechanisms for Matching and Clustering in an Ordinal World

no code implementations13 Oct 2016 Elliot Anshelevich, Shreyas Sekar

We study truthful mechanisms for matching and related problems in a partial information setting, where the agents' true utilities are hidden, and the algorithm only has access to ordinal preference information.

Clustering

Randomized Social Choice Functions Under Metric Preferences

no code implementations23 Dec 2015 Elliot Anshelevich, John Postl

We determine the quality of randomized social choice mechanisms in a setting in which the agents have metric preferences: every agent has a cost for each alternative, and these costs form a metric.

Blind, Greedy, and Random: Ordinal Approximation Algorithms for Matching and Clustering

no code implementations17 Dec 2015 Elliot Anshelevich, Shreyas Sekar

Using our algorithms for matching as a black-box, we also design new approximation algorithms for other closely related problems: these include a a 3. 2-approximation for the problem of clustering agents into equal sized partitions, a 4-approximation algorithm for Densest k-subgraph, and a 2. 14-approximation algorithm for Max TSP.

Clustering

Computing Stable Coalitions: Approximation Algorithms for Reward Sharing

no code implementations27 Aug 2015 Elliot Anshelevich, Shreyas Sekar

Consider a setting where selfish agents are to be assigned to coalitions or projects from a fixed set P. Each project k is characterized by a valuation function; v_k(S) is the value generated by a set S of agents working on project k. We study the following classic problem in this setting: "how should the agents divide the value that they collectively create?".

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