195 research outputs found
Provably Good Solutions to the Knapsack Problem via Neural Networks of Bounded Size
The development of a satisfying and rigorous mathematical understanding of
the performance of neural networks is a major challenge in artificial
intelligence. Against this background, we study the expressive power of neural
networks through the example of the classical NP-hard Knapsack Problem. Our
main contribution is a class of recurrent neural networks (RNNs) with rectified
linear units that are iteratively applied to each item of a Knapsack instance
and thereby compute optimal or provably good solution values. We show that an
RNN of depth four and width depending quadratically on the profit of an optimum
Knapsack solution is sufficient to find optimum Knapsack solutions. We also
prove the following tradeoff between the size of an RNN and the quality of the
computed Knapsack solution: for Knapsack instances consisting of items, an
RNN of depth five and width computes a solution of value at least
times the optimum solution value. Our results
build upon a classical dynamic programming formulation of the Knapsack Problem
as well as a careful rounding of profit values that are also at the core of the
well-known fully polynomial-time approximation scheme for the Knapsack Problem.
A carefully conducted computational study qualitatively supports our
theoretical size bounds. Finally, we point out that our results can be
generalized to many other combinatorial optimization problems that admit
dynamic programming solution methods, such as various Shortest Path Problems,
the Longest Common Subsequence Problem, and the Traveling Salesperson Problem.Comment: A short version of this paper appears in the proceedings of AAAI 202
Stochastic scheduling on unrelated machines
Two important characteristics encountered in many real-world scheduling problems are heterogeneous machines/processors and a certain degree of uncertainty about the actual sizes of jobs. The first characteristic entails machine dependent processing times of jobs and is captured by the classical unrelated machine scheduling model.The second characteristic is adequately addressed by stochastic processing times of jobs as they are studied in classical stochastic scheduling models. While there is an extensive but separate literature for the two scheduling models, we study for the first time a combined model that takes both characteristics into account simultaneously. Here, the processing time of job on machine is governed by random variable , and its actual realization becomes known only upon job completion. With being the given weight of job , we study the classical objective to minimize the expected total weighted completion time , where is the completion time of job . By means of a novel time-indexed linear programming relaxation, we compute in polynomial time a scheduling policy with performance guarantee . Here, is arbitrarily small, and is an upper bound on the squared coefficient of variation of the processing times. We show that the dependence of the performance guarantee on is tight, as we obtain a lower bound for the type of policies that we use. When jobs also have individual release dates , our bound is . Via , currently best known bounds for deterministic scheduling are contained as a special case
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