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An interactive preference-guided firefly algorithm for personalized tourist itineraries

机译:一种用于个性化旅游行程的互动优先引导萤火虫算法

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The present research proposes an interactive optimization framework to aid tourists to organize their trip by generating personalized walking itineraries among several Points of Interest (POIs). The solution of the multi-objective Prize-Collecting Vehicle Routing Problem (MO-PCVRP) is used to simulate this tourist trip design problem. The objectives of the proposed formulation are the minimization of the total distance walked among selected POIs, the minimization of a fixed cost related to the number of the created itineraries, and the maximization of the total satisfaction gained by visiting the selected POIs. The optimization of the MO-PCVRP is conducted by the proposed Preference-Guided Firefly Algorithm (PGFA), which allows for preferences articulated by a decision-maker (DM) to guide the search. The PGFA is incorporated into an interactive framework, where a DM provides his/her preferential information, progressively during the optimization process, by ranking a small representative set of Pareto optimal solutions. The DM's articulated preferences are elicited utilizing a preference disaggregation method, the UTASTAR, which results in a preference model, which is ultimately used to guide the search towards the DM's Region of Interest (ROI) in the Pareto front. The effectiveness and robustness of the proposed interactive PGFA framework are demonstrated over experimental scenarios. (C) 2020 Elsevier Ltd. All rights reserved.
机译:本研究提出了一个互动优化框架,以帮助游客通过在几个兴趣点(POI)之间产生个性化的行走行程来组织他们的旅行。多目标奖励车辆路由问题(Mo-PCVRP)的解决方案用于模拟此旅游旅行设计问题。所提出的制定的目标是最小化选定的POI之间的总距离,最小化与所产生的行程数量相关的固定成本,以及通过访问所选的POI获得的总满意度的最大化。 Mo-PCVRP的优化由所提出的偏好引导的萤火虫算法(PGFA)进行,其允许由决策者(DM)阐述的偏好来指导搜索。 PGFA被纳入交互式框架,其中DM通过排序在优化过程中逐步提供他/她的优先信息,通过排名一组小代表性的Pareto最佳解决方案。利用偏好分类方法,uTastar引发DM的铰接偏好,这导致偏好模型,这最终用于指导帕累托前面的DM感兴趣区域(ROI)的搜索。拟议的互动PGFA框架的有效性和稳健性在实验场景上证明。 (c)2020 elestvier有限公司保留所有权利。

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