44 research outputs found
??-Completeness of Stationary Nash Equilibria in Perfect Information Stochastic Games
We show that the problem of deciding whether in a multi-player perfect information recursive game (i.e. a stochastic game with terminal rewards) there exists a stationary Nash equilibrium ensuring each player a certain payoff is ??-complete. Our result holds for acyclic games, where a Nash equilibrium may be computed efficiently by backward induction, and even for deterministic acyclic games with non-negative terminal rewards. We further extend our results to the existence of Nash equilibria where a single player is surely winning. Combining our result with known gadget games without any stationary Nash equilibrium, we obtain that for cyclic games, just deciding existence of any stationary Nash equilibrium is ??-complete. This holds for reach-a-set games, stay-in-a-set games, and for deterministic recursive games
Depth Reduction for Circuits with a Single Layer of Modular Counting Gates
We consider the class of constant depth AND/OR circuits augmented with
a layer of modular counting gates at the bottom layer, i.e circuits. We show that the following
holds for several types of gates : by adding a gate of type at
the output, it is possible to obtain an equivalent randomized depth 2
circuit of quasipolynomial size consisting of a gate of type at
the output and a layer of modular counting gates, i.e circuits. The types of gates we consider are modular
counting gates and threshold-style gates. For all of these, strong
lower bounds are known for (deterministic)
circuits
The Big Match in Small Space
In this paper we study how to play (stochastic) games optimally using little
space. We focus on repeated games with absorbing states, a type of two-player,
zero-sum concurrent mean-payoff games. The prototypical example of these games
is the well known Big Match of Gillete (1957). These games may not allow
optimal strategies but they always have {\epsilon}-optimal strategies. In this
paper we design {\epsilon}-optimal strategies for Player 1 in these games that
use only O(log log T ) space. Furthermore, we construct strategies for Player 1
that use space s(T), for an arbitrary small unbounded non-decreasing function
s, and which guarantee an {\epsilon}-optimal value for Player 1 in the limit
superior sense. The previously known strategies use space {\Omega}(logT) and it
was known that no strategy can use constant space if it is {\epsilon}-optimal
even in the limit superior sense. We also give a complementary lower bound.
Furthermore, we also show that no Markov strategy, even extended with finite
memory, can ensure value greater than 0 in the Big Match, answering a question
posed by Abraham Neyman
Computational Complexity of Computing a Quasi-Proper Equilibrium
We study the computational complexity of computing or approximating a
quasi-proper equilibrium for a given finite extensive form game of perfect
recall. We show that the task of computing a symbolic quasi-proper equilibrium
is -complete for two-player games. For the case of zero-sum
games we obtain a polynomial time algorithm based on Linear Programming. For
general -player games we show that computing an approximation of a
quasi-proper equilibrium is -complete.Comment: Full version of paper to appear at the 23rd International Symposium
on Fundamentals of Computation Theory (FCT 2021
On the complexity of Pareto-optimal and envy-free lotteries
We study the classic problem of dividing a collection of indivisible
resources in a fair and efficient manner among a set of agents having varied
preferences. Pareto optimality is a standard notion of economic efficiency,
which states that it should be impossible to find an allocation that improves
some agent's utility without reducing any other's. On the other hand, a
fundamental notion of fairness in resource allocation settings is that of
envy-freeness, which renders an allocation to be fair if every agent (weakly)
prefers her own bundle over that of any other agent's bundle. Unfortunately, an
envy-free allocation may not exist if we wish to divide a collection of
indivisible items. Introducing randomness is a typical way of circumventing the
non-existence of solutions, and therefore, allocation lotteries, i.e.,
distributions over allocations have been explored while relaxing the notion of
fairness to ex-ante envy freeness.
We consider a general fair division setting with agents and a family of
admissible -partitions of an underlying set of items. Every agent is endowed
with partition-based utilities, which specify her cardinal utility for each
bundle of items in every admissible partition. In such fair division instances,
Cole and Tao (2021) have proved that an ex-ante envy-free and Pareto-optimal
allocation lottery is always guaranteed to exist. We strengthen their result
while examining the computational complexity of the above total problem and
establish its membership in the complexity class PPAD. Furthermore, for
instances with a constant number of agents, we develop a polynomial-time
algorithm to find an ex-ante envy-free and Pareto-optimal allocation lottery.
On the negative side, we prove that maximizing social welfare over ex-ante
envy-free and Pareto-optimal allocation lotteries is NP-hard.Comment: 22 page