Developed High Scale Bagging Algorithm for E-Tourism Advising System

Rula A. Hamid, M. Croock
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Abstract

Filtering huge amounts of data is a very critical issue with the explosion of data over the web and cloud storage. A need to classify and sort these data is linked to that issue to facilitate data management and database building for various applications. Machine learning techniques are the most suitable to deal with such big data. One of the applications that can be implemented in machine learning is a tourist advising system that harvests data from tourism sites and aggregates different types of data about them (humidity, temperature, distance from user’s country, etc…) and classifies them. These data should be updated constantly, since the system provides real-time decision based on real-time data, where they are used later on by a bagging system to provide the user with suggested tourism sites with percentage to how suitable these sites according to the preferences submitted in addition to some other criteria.
开发了面向电子旅游咨询系统的大规模套袋算法
随着网络和云存储数据的爆炸式增长,过滤大量数据是一个非常关键的问题。需要对这些数据进行分类和排序,以促进各种应用程序的数据管理和数据库构建。机器学习技术最适合处理这样的大数据。其中一个可以在机器学习中实现的应用是旅游咨询系统,该系统从旅游站点收集数据,并汇总有关它们的不同类型的数据(湿度、温度、与用户国家的距离等),并对它们进行分类。这些数据应不断更新,因为该系统根据实时数据提供实时决策,这些决策稍后由套袋系统使用,向用户提供建议的旅游地点,以及根据提交的偏好以及其他一些标准,这些地点的适合程度的百分比。
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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