Inicio  /  Algorithms  /  Vol: 14 Par: 9 (2021)  /  Artículo
ARTÍCULO
TITULO

The Power of Human?Algorithm Collaboration in Solving Combinatorial Optimization Problems

Tapani Toivonen and Markku Tukiainen    

Resumen

Many combinatorial optimization problems are often considered intractable to solve exactly or by approximation. An example of such a problem is maximum clique, which?under standard assumptions in complexity theory?cannot be solved in sub-exponential time or be approximated within the polynomial factor efficiently. However, we show that if a polynomial time algorithm can query informative Gaussian priors from an expert poly(n) times, then a class of combinatorial optimization problems can be solved efficiently up to a multiplicative factor ?, where ? is arbitrary constant. In this paper, we present proof of our claims and show numerical results to support them. Our methods can cast new light on how to approach optimization problems in domains where even the approximation of the problem is not feasible. Furthermore, the results can help researchers to understand the structures of these problems (or whether these problems have any structure at all!). While the proposed methods can be used to approximate combinatorial problems in NPO, we note that the scope of the problems solvable might well include problems that are provable intractable (problems in EXPTIME).

 Artículos similares

       
 
Diego Arnone, Michele Cacioppo, Mariano Giuseppe Ippolito, Marzia Mammina, Liliana Mineo, Rossano Musca and Gaetano Zizzo    
The electrical power system is evolving in a way that requires new measures for ensuring its secure and reliable operation. Demand-side aggregation represents one of the more interesting ways to provide ancillary services by the coordinated management of... ver más
Revista: Applied Sciences

 
Weerapat Pookkaman and Taweesak Samanchuen    
Cannabis is increasingly accepted by medical organizations for medicinal and research purposes. A traceability system is required for monitoring and controlling the use of cannabis. This work aimed to investigate the relationship between critical success... ver más

 
Cong Xie, Oluwasanmi Koyejo and Indranil Gupta    
Distributed machine learning is primarily motivated by the promise of increased computation power for accelerating training and mitigating privacy concerns. Unlike machine learning on a single device, distributed machine learning requires collaboration a... ver más
Revista: Algorithms

 
Zhanjun Hao, Guowei Wang and Xiaochao Dang    
Casualties caused by people trapped in cars have been common in recent years. Despite a variety of solutions, complex detection devices need to be arranged, or privacy is poor. Since device-free Wi-Fi sensing has attracted much attention due to its simpl... ver más
Revista: Applied Sciences

 
Alessio Faccia, Vishal Pandey and Charu Banga    
Open Innovation (OI) models have been studied in many fields. However, the challenges and opportunities of a possible OI paradigm application in external auditing have been under-researched. Recent corporate scandals are currently triggering changes and ... ver más