利用蚁群算法为团体推荐最优行程

Parul Agarwal, Mayank Sourabh, Rishabh Sachdeva, Siddharh Sharma, S. Mehta
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引用次数: 1

摘要

旅游推荐是旅行商问题的一个特例。许多研究者对这一问题提出了接近最优的解决方案。然而,文献表明,旅游主要是推荐给特定的人,而不是一群人。本文提供了不同的算法方法来为人群提供接近最优的旅行。对于这类问题,找到小组中每个人的兴趣点(POI)是至关重要的。这个问题是相当复杂的,因为所有的人都应该从所获得的旅游中感到满意。本文采用穷举搜索、贪心算法、动态规划和蚁群优化四种算法来寻找最优线路。团体游的最优不仅是指最短路径(总成本),而且是指获得的每个人的满意值。满意度值是指在旅游过程中对团里每个人的喜欢或不喜欢程度。观察到,与其他算法相比,蚁群算法提供了更好的结果,即更好地结合了总成本值和满意度值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recommending Optimal Tour for Groups Using Ant Colony Optimization
Tour recommendation is one of the special cases of travelling salesman problem. Many researchers provided near optimal solution to this problem. However, literature shows that tours are mainly recommended to specific persons not to the group of people. This paper provides the different algorithmic approaches to give near optimal tours for the group of people. For such type of problem, it is essential to find the point of interest (POI) of each person in a group. The problem is quite intricate because all people of the group should be satisfied from the tour obtained. Four algorithmic implications are adopted in this work to find optimal tours-exhaustive search, greedy algorithm, dynamic programming and ant colony optimization (ACO). Optimal tour for group not only means shortest length path (total cost) but also satisfaction value of each person from tour obtained. Satisfaction value is a like or dislike of each person in a group from POIs considered in a tour. It was observed that ACO provide better results i.e. better combination of total cost value and satisfaction value as compared to other algorithms.
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