Open AccessProceedings Article
Statistical Cost Sharing
Eric Balkanski,Umar Syed,Sergei Vassilvitskii +2 more
- 01 Mar 2017
Vol. 30, pp 6221-6230
TL;DR: In this paper, the cost sharing problem for cooperative games is studied in the setting where the cost function C is not available via oracle queries, but must instead be learned from samples drawn from a distribution, represented as tuples (S, C(S)), for different subsets S of players.
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Abstract: We study the cost sharing problem for cooperative games in situations where the cost function C is not available via oracle queries, but must instead be learned from samples drawn from a distribution, represented as tuples (S, C(S)), for different subsets S of players. We formalize this approach, which we call statistical cost sharing, and consider the computation of the core and the Shapley value. Expanding on the work by Balcan et al, we give precise sample complexity bounds for computing cost shares that satisfy the core property with high probability for any function with a non-empty core. For the Shapley value, which has never been studied in this setting, we show that for submodular cost functions with curvature bounded curvature kappa it can be approximated from samples from the uniform distribution to a sqrt{1 - kappa} factor, and that the bound is tight. We then define statistical analogues of the Shapley axioms, and derive a notion of statistical Shapley value and that these can be approximated arbitrarily well from samples from any distribution and for any function.
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Citations
A Marketplace for Data: An Algorithmic Solution
Anish Agarwal,Munther A. Dahleh,Tuhin Sarkar +2 more
- 17 Jun 2019
TL;DR: In this paper, the authors propose a data marketplace, a robust real-time matching mechanism to efficiently buy and sell training data for machine learning tasks, and propose a new notion of "fairness" required for cooperative games with freely replicable goods.
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A Marketplace for Data: An Algorithmic Solution
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Axiomatic Characterization of Data-Driven Influence Measures for Classification
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- 17 Jul 2019
TL;DR: Monotone influence measures (MIM) as discussed by the authors is a family of numerical influence measures that, given a labeled dataset and a specific datapoint ∼x, assign a numeric value φi(∼x) to every feature i, corresponding to how altering i's value would influence the outcome for ∼x.
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References
Theory of Games and Economic Behavior
TL;DR: In this article, the authors show that the maximization of individual wealth is not an ordinary problem in variational calculus, because the individual does not control, and may even be ignorant of, some of the variables.
10.4K
A Value for n-person Games
Lloyd S. Shapley
- 18 Mar 1952
TL;DR: In this paper, an examination of elementary properties of a value for the essential case is presented, which is deduced from a set of three axioms, having simple intuitive interpretations.
•Book
Understanding Machine Learning: From Theory To Algorithms
Shai Shalev-Shwartz,Shai Ben-David +1 more
- 01 Jan 2015
TL;DR: The aim of this textbook is to introduce machine learning, and the algorithmic paradigms it offers, in a principled way in an advanced undergraduate or beginning graduate course.
Contributions to the Theory of Games.
TL;DR: The description for this book, Contributions to the Theory of Games (AM-40), Volume IV, will be forthcoming.
2.4K