We study the problem of sorting under incomplete information, when queries are used to resolve uncertainties. Each of n data items has an unknown value, which is known to lie in a given interval. We can pay a query cost to learn the actual value, and we may allow an error threshold in the sorting. The goal is to find a nearly-sorted permutation by performing a minimum-cost set of queries. We show that an offline optimum query set can be found in polynomial time, and that both oblivious and adaptive problems have simple query-competitive algorithms. The query-competitiveness for the oblivious problem is n for uniform query costs, and unbounded for arbitrary costs; for the adaptive problem, the ratio is 2. We then present a unified adaptive s...
Suppose that given is a collection of $n$ elements where $d$ of them are \emph{defective}. We can qu...
We investigate the problem of determining a set S of k indistinguishable integers in the range [1, n...
This paper focuses on competitive function evaluation in the context of computing with priced inform...
We study the problem of sorting under incomplete information, when queries are used to resolve uncer...
In computing with explorable uncertainty, one considers problems where the values of some input elem...
The area of computing with uncertainty considers problems where some information about the input ele...
We study problems with stochastic uncertainty information on intervals for which the precise value c...
We study problems with stochastic uncertainty data on intervals for which the precise value can be q...
We study problems with stochastic uncertainty data on intervals for which the precise value can be q...
We present a framework for computing with input data specified by intervals, representing uncertaint...
We consider robust knapsack problems where item weights are uncertain. We are allowed to query an it...
Considering the model of computing under uncertainty where element weights are uncertain but can be ...
Given a hypergraph with uncertain node weights following known probability distributions, we study t...
We study how to utilize (possibly erroneous) predictions in a model for computing under uncertainty ...
Binary search finds a given element in a sorted array with an optimal number of log n queries. Howev...
Suppose that given is a collection of $n$ elements where $d$ of them are \emph{defective}. We can qu...
We investigate the problem of determining a set S of k indistinguishable integers in the range [1, n...
This paper focuses on competitive function evaluation in the context of computing with priced inform...
We study the problem of sorting under incomplete information, when queries are used to resolve uncer...
In computing with explorable uncertainty, one considers problems where the values of some input elem...
The area of computing with uncertainty considers problems where some information about the input ele...
We study problems with stochastic uncertainty information on intervals for which the precise value c...
We study problems with stochastic uncertainty data on intervals for which the precise value can be q...
We study problems with stochastic uncertainty data on intervals for which the precise value can be q...
We present a framework for computing with input data specified by intervals, representing uncertaint...
We consider robust knapsack problems where item weights are uncertain. We are allowed to query an it...
Considering the model of computing under uncertainty where element weights are uncertain but can be ...
Given a hypergraph with uncertain node weights following known probability distributions, we study t...
We study how to utilize (possibly erroneous) predictions in a model for computing under uncertainty ...
Binary search finds a given element in a sorted array with an optimal number of log n queries. Howev...
Suppose that given is a collection of $n$ elements where $d$ of them are \emph{defective}. We can qu...
We investigate the problem of determining a set S of k indistinguishable integers in the range [1, n...
This paper focuses on competitive function evaluation in the context of computing with priced inform...