Traveling Salesman Problem for a Bidirectional Graph Using Dynamic Programming

Vivian Brian Lobo, Blety Babu Alengadan, Sehba Siddiqui, Annies Minu, N. Ansari
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引用次数: 3

Abstract

Traveling salesman problem (TSP) is studied as a combinatorial optimization problem—a problem that attempts to determine an optimal object from a finite set of objects—which is simple to state but difficult to solve. It is a nondeterministic polynomial-time hard problem, hence, exploration on developing algorithms for the TSP has focused on approximate methods above and beyond exact methods. The mission in the TSP is to determine the shortest (optimal) tour when a salesman travels across many cites. A major challenge is that the salesman must be able to minimize entire tour length. The solution to the TSP experiences eclectic applicability in various fields and thus advances the need for an effectual solution. There have been exertions heretofore to provide time efficient solutions (i.e., exact as well as approximate) for the TSP. Dynamic programming is an effective and powerful method that could be used to solve the TSP. Generally, for solving the TSP, a unidirectional path is provided (i.e., whether the salesman travels from city A to B or city B to A) in any input graph, and so, it becomes easier in determining the shortest tour. However, in our study, we have considered a situation where no directions are specified (i.e., the salesman can travel both from city A to B and from city B to A) in an input graph, and for such a graph (i.e., a bidirectional graph), we will determine the shortest tour using dynamic programming.
用动态规划求解双向图的旅行商问题
旅行商问题(TSP)是一个组合优化问题,即试图从有限的目标集合中确定一个最优目标的问题,它表述简单,但求解困难。这是一个不确定的多项式时间难题,因此,对TSP算法开发的探索主要集中在近似方法之上,而不是精确方法。TSP的任务是当销售人员穿越多个城市时,确定最短(最优)的行程。一个主要的挑战是,销售人员必须能够最小化整个行程的长度。TSP的解决方案在各个领域都有广泛的适用性,因此需要一个有效的解决方案。迄今为止,一直在努力为TSP提供省时的解决方案(即精确的和近似的)。动态规划是求解TSP的一种有效而有力的方法。一般来说,对于求解TSP,在任何输入图中都提供了单向路径(即销售员是从a城市到B城市还是从B城市到a城市),这样就更容易确定最短的行程。然而,在我们的研究中,我们考虑了在输入图中没有指定方向的情况(即推销员可以从a城市到B城市和从B城市到a城市),对于这样的图(即双向图),我们将使用动态规划确定最短行程。
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