Data Mining-based Real-Time User-centric Recommender System for Nigerian Tourism Industry

Olatunji Timothy Ogbeye, Felix Ola Aranuwa, O. Oriola, Alaba Olu Akingbesote, Ayokunle Olalekan Ige
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Abstract

The tourism information system in Nigeria is not novel. What is novel is the need to develop reliable real-time recommender systems that can adequately aid tourists in their decisions. Several researchers have proposed various models. However, there are still issues about the applicability, effectiveness, efficiency, and reliability of the existing recommenders in the Nigerian tourism sector. This work is aimed at developing an improved model for real-time tourism recommender in Nigeria based on a data mining model. The objectives include the development of a data mining model for real-time reliable user-centric tourism recommendation and evaluation of the recommender system. To achieve these, a supervised machine learning-based classifier is modelled. The classifier system is evaluated using four thousand (4,000) datasets acquired from online and physical Nigerian tourism sources. Nine machine learning algorithms are compared during the testing process based on accuracy and other standard performance metrics. Experimental results show that the PART algorithm outperforms all other algorithms with an accuracy of 91.65%, F-Measure of 0.917, true positive rate of 0.913, the false-positive rate of 0.029, and the precision of 0.917, and recall of 0.917. In terms of efficiency, it also records the least time-to-model of 0.02 seconds. The rules generated from this algorithm are incorporated into the design of a prototype to test the recommender. The usefulness and efficiency scores based on test cases involving 20 participants prove that the recommender system would be a veritable tool for tourism in Nigeria.
基于数据挖掘的尼日利亚旅游业实时用户中心推荐系统
尼日利亚的旅游信息系统并不新鲜。新颖之处在于需要开发可靠的实时推荐系统,以充分帮助游客做出决定。几位研究人员提出了各种模型。然而,在尼日利亚旅游部门,现有的推荐人的适用性、有效性、效率和可靠性仍然存在问题。这项工作的目的是在数据挖掘模型的基础上开发一个改进的尼日利亚实时旅游推荐模型。目标包括为实时可靠的以用户为中心的旅游推荐和评价推荐系统开发数据挖掘模型。为了实现这些,我们对基于监督机器学习的分类器进行了建模。分类器系统使用从在线和实体尼日利亚旅游来源获得的4000(4,000)个数据集进行评估。在测试过程中,根据准确性和其他标准性能指标对九种机器学习算法进行比较。实验结果表明,PART算法的准确率为91.65%,F-Measure为0.917,真阳性率为0.913,假阳性率为0.029,精密度为0.917,召回率为0.917,优于所有其他算法。在效率方面,它还记录到模型的最短时间为0.02秒。将该算法生成的规则整合到原型设计中,以测试推荐器。基于20个参与者的测试案例的有用性和效率分数证明,推荐系统将是尼日利亚旅游业的一个名副其实的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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