The Knowledge Grid Based Intelligent Electronic Commerce Recommender Systems

Pingfeng Liu, G. Nie, Donglin Chen, Zhichao Fu
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引用次数: 14

Abstract

Centralized recommender systems can not resolve the contradiction between high recommendation quality and timely response, as well as that between limited recommendation range and ever rich information on the Web. Distributed recommender systems are expected to improve the recommendation quality while maintaining high performance. Large-scale distributed recommendation involves the coordination of various heterogeneous resources which are located on different nodes and need to be represented uniformly and organized normally into the resource space so that a semantically interactive environment can be formed. In this paper the recommendation task is defined as a knowledge based workflow and the knowledge grid is exploited as the platform for knowledge sharing and knowledge service which provides the functions of knowledge discovery, knowledge fusion and knowledge based workflow definition. The rationale of the knowledge grid based intelligent electronic recommender systems (KGBIECRS) is discussed and the service oriented architecture of the knowledge grid is presented. The knowledge grid depends on the semantic grid as the semantically interactive platform to intelligently coordinate the heterogeneous resources on the grid so that the recommendation task submitted by the knowledge grid as a knowledge based workflow can be performed intelligently and adaptively. How to implement the system is also discussed. Finally an example of travel recommendation is given to elaborate the recommendation process.
基于知识网格的智能电子商务推荐系统
集中式推荐系统无法解决高推荐质量与及时响应之间的矛盾,以及有限的推荐范围与Web上日益丰富的信息之间的矛盾。分布式推荐系统被期望在保持高性能的同时提高推荐质量。大规模分布式推荐涉及到分布在不同节点上的各种异构资源的协调,这些资源需要被统一地表示和组织到资源空间中,从而形成语义交互环境。本文将推荐任务定义为基于知识的工作流,利用知识网格作为知识共享和知识服务的平台,提供了知识发现、知识融合和基于知识的工作流定义等功能。讨论了基于知识网格的智能电子推荐系统(KGBIECRS)的基本原理,提出了面向服务的知识网格体系结构。知识网格依靠语义网格作为语义交互平台,智能地协调网格上的异构资源,使知识网格提交的推荐任务作为一个基于知识的工作流能够智能地、自适应地执行。并对系统的实现进行了讨论。最后以旅游推荐为例,阐述了推荐过程。
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