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A hybrid quantum-induced swarm intelligence clustering for the urban trip recommendation in smart city

机译:混合量子诱导群智能聚类在智慧城市中的城市出行推荐

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The development of internet technologies has brought digital services to the hands of common man. In the selection process of relevant digital services to the active target user, recommender systems have proved its efficiency as a successful decision support tool. Among many successful techniques incorporated to generate recommendations, collaborative filtering has been widely used to make similarity-based predictions for the recommendation of the relevant list of items to the users. As an advancement, utilizing clustering mechanisms with collaborative filtering for grouping similar users as clusters can enhance the efficiency of the recommendation generated. Though many clustering mechanisms have been employed to group similar users in the existing works, incorporation of bio-inspired clustering has yet to be explored for the generation of optimal recommendations. In this paper, a novel user clustering approach based on Quantum-behaved Particle Swarm Optimization (QPSO) has been proposed for the collaborative filtering based recommender system. The proposed recommendation approach has been evaluated on real-world large-scale datasets of Yelp and TripAdvisor for hit-rate, precision, recall, f-measure, and accuracy. The obtained results illustrate the advantageous performance of proposed approach over its peer works of recent times. We have also developed a new mobile recommendation framework XplorerVU for the urban trip recommendation in smart cities, to evaluate the proposed recommendation approach and the real-time implementation details of the mobile application in the smart-cities are also presented. The evaluation results prove the usefulness of the generated recommendations and depict the users’ satisfaction on the proposed recommendation approach.
机译:互联网技术的发展将数字服务带到了普通人的手中。在为活动目标用户选择相关数字服务的过程中,推荐系统已证明其作为成功的决策支持工具的效率。在用于生成推荐的许多成功技术中,协作过滤已被广泛用于对用户推荐相关项目列表进行基于相似度的预测。作为一项进步,利用具有协同过滤功能的聚类机制将相似的用户分组为聚类可以提高所生成推荐的效率。尽管在现有工作中已经采用了许多聚类机制来对相似的用户进行分组,但是尚未探索结合生物启发式聚类以生成最佳推荐。本文针对基于协同过滤的推荐系统,提出了一种基于量子行为粒子群优化(QPSO)的用户聚类新方法。建议的推荐方法已经在Yelp和TripAdvisor的真实世界大型数据集上进行了命中率,准确性,召回率,f量度和准确性的评估。获得的结果说明了所提出的方法相对于其最近的同行工作所具有的优越性能。我们还针对智能城市中的城市出行推荐开发了新的移动推荐框架XplorerVU,以评估建议的推荐方法,并介绍了智能城市中移动应用程序的实时实现细节。评估结果证明了所生成推荐的有用性,并描述了用户对所提出的推荐方法的满意度。

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