Many combinatorial optimization problems are often considered intractable to solve exactly or by approximation. An example of such problem is maximum clique which -- under standard assumptions in complexity theory -- cannot be solved in sub-exponential time or be approximated within polynomial factor efficiently. 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 in expectation up to a multiplicative factor $\epsilon$ where $\epsilon$ is arbitrary constant. While our proposed methods are merely theoretical, they cast new light on how to approach solving these problems that have been usually considered intractable.
翻译:许多组合优化问题通常被认为难以准确解决或近似解决,其中的一个例子是最大分类,根据复杂理论的标准假设,在亚消耗时间或综合系数范围内无法有效解决。我们表明,如果多数值时间算法可以向专家(美元(n)倍)询问高斯信息丰富的前科,那么一组组合优化问题就可以有效解决,期望在美元(epsilon)是任意不变的多倍化因数($\epsilon$)上达到倍增因数($\epslon$ ) 。虽然我们建议的方法只是理论性的,但它们给如何解决通常被视为难以解决的问题带来了新的启示。