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首页> 外文期刊>International Review of Research in Open and Distributed Learning >A generic framework for extraction of knowledge from social web sources (social networking websites) for an online recommendation system
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A generic framework for extraction of knowledge from social web sources (social networking websites) for an online recommendation system

机译:从社交网络资源(社交网站)中提取知识以用于在线推荐系统的通用框架

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Mining social web data is a challenging task and finding user interest for personalized and non-personalized recommendation systems is another important task. Knowledge sharing among web users has become crucial in determining usage of web data and personalizing content in various social websites as per the user’s wish. This paper aims to design a framework for extracting knowledge from web sources for the end users to take a right decision at a crucial juncture. The web data is collected from various web sources and structured appropriately and stored as an ontology based data repository. The proposed framework implements an online recommender application for the learners online who pursue their graduation in an open and distance learning environment. This framework possesses three phases: data repository, knowledge engine, and online recommendation system. The data repository possesses common data which is attained by the process of acquiring data from various web sources. The knowledge engine collects the semantic data from the ontology based data repository and maps it to the user through the query processor component. Establishment of an online recommendation system is used to make recommendations to the user for a decision making process. This research work is implemented with the help of an experimental case study which deals with an online recommendation system for the career guidance of a learner. The online recommendation application is implemented with the help of R-tool, NLP parser and clustering algorithm.This research study will help users to attain semantic knowledge from heterogeneous web sources and to make decisions.
机译:挖掘社交Web数据是一项具有挑战性的任务,而对于个性化和非个性化推荐系统寻找用户兴趣是另一项重要任务。网络用户之间的知识共享对于确定网络数据的使用以及根据用户的意愿个性化各种社交网站中的内容已经变得至关重要。本文旨在设计一个框架,以从网络资源中提取知识,以便最终用户在关键时刻做出正确的决定。从各种Web来源收集Web数据,并对其进行适当的结构化并存储为基于本体的数据存储库。提议的框架为在开放和远程学习环境中毕业的在线学习者实现了在线推荐应用程序。该框架分为三个阶段:数据存储库,知识引擎和在线推荐系统。数据存储库拥有公共数据,这些数据是通过从各种Web来源获取数据的过程获得的。知识引擎从基于本体的数据库中收集语义数据,并通过查询处理器组件将其映射到用户。建立在线推荐系统用于向用户提出建议,以进行决策。这项研究工作是在一个实验案例研究的帮助下进行的,该案例研究了一个在线推荐系统,用于学习者的职业指导。在线推荐应用是借助R工具,NLP解析器和聚类算法实现的。本研究将帮助用户从异构Web来源获得语义知识并做出决策。

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