首页> 外文会议>2014 IEEE 11th International conference on e-business engineering >Practice of Taipei Tour Planning System Based on Attribute Classification and Time Saver Algorithm
【24h】

Practice of Taipei Tour Planning System Based on Attribute Classification and Time Saver Algorithm

机译:基于属性分类和省时算法的台北市旅游计划系统的实践

获取原文
获取原文并翻译 | 示例

摘要

As the Metro network has better coverage and connectivity, Taipei city which has been known for its wide variety of cuisines and snacks now offers much convenience for tourists and backpackers. Most tour information providing or scheduling software in the market provides basic query or search functions, but their output is fixed and lack of customized recommendation based on tourists' personal characteristics. If travelers have no prior knowledge of their target destination, they may be flooded by information from guidebooks or the Internet and have trouble in making arrangements. Therefore the study makes a practice on tour scheduling recommendation based on two popular classification models -- Logistic Regression and KNN. Meanwhile, a time saver algorithm is proposed to offer an efficient and reasonable route for travelers with suggested spots. The classification models offer recommendations with accuracy rate of 74.5% and 63.5%, respectively. And routes organized by time savor algorithm outperform that by other algorithms in terms of rationality from the opinions of our questionnaire respondents. This prototype system is implemented by integration of MS Excel spreadsheet, Visual Basic for Applications and R-Excel to offer better usability and expandability with the cost of only Excel itself.
机译:由于地铁网络具有更好的覆盖范围和连通性,以各种美食和小吃而闻名的台北市现在为游客和背包客提供了很多便利。市场上大多数旅游信息提供或计划软件都提供基本的查询或搜索功能,但是其输出是固定的,并且缺乏基于游客个人特征的定制推荐。如果旅行者不了解其目标目的地,可能会被指南或互联网上的信息所淹没,难以安排行程。因此,本研究基于两种流行的分类模型-Logistic回归和KNN对旅游行程推荐进行了实践。同时,提出了一种节省时间的算法,为有建议景点的旅行者提供一种有效,合理的路线。分类模型提供的建议准确率分别为74.5%和63.5%。从我们的问卷受访者的观点来看,在时间方面,用时间品尝算法组织的路线要优于其他算法。通过集成MS Excel电子表格,Visual Basic for Applications和R-Excel来实现此原型系统,以仅使用Excel本身的成本即可提供更好的可用性和可扩展性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号