移动OLAP的上下文个性化推荐系统

Rezoug Nachida, N. Fahima
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引用次数: 1

摘要

主要的缺点和处理设备(小的存储空间,小尺寸的显示屏,中断连接到WLAN等)往往不兼容查询和浏览信息的需要,从大量的数据中提取,可通过网络访问。新兴的OLAP数据库系统的一个关键特征是将它们与移动设备一起使用。为了克服这一问题,本文提出了一种基于多智能体架构(MASCARS)的移动OLAP上下文推荐系统(CARS)。该系统首先从OLAP服务器的日志数据文件中提取用户配置文件。为此,我们使用了一种预测和解释算法的变体。然后,这些概要文件形成一个知识库。这个知识库将用于自动生成一个规则库(ACE),用于根据查询类型和用户首选项为数据集的属性分配权重。将推导出在CARS中使用的最佳请求序列。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A contextual personalized recommander system for mobile OLAP
The main drawbacks and handled devices (small storage space, small size of the display screen, discontinuance of the connection to the WLAN etc) are often incompatible with the need of querying and browsing information extracted from enormous amounts of data which are accessible through the network. A key characteristic of emerging OLAP database systems will be to use them with mobile device. To overcome this we investigate in this paper to propose a contextual recommender system (CARS) for mobile OLAP based on multi-agent architecture called (MASCARS). This system extracts first the user profile from the log data file of OLAP server. For this we use a variant of prediction and explanation algorithms. These profiles then form a knowledge base. This knowledge base will be used to generate automatically a rule base (ACE), for assigning weights to the attributes of data cubes by type of query and user preferences. The best sequence of requests will be deduced for using in CARS.
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