An Effective Algorithm to Improve the Accuracy of Recommender System based on Comments using Classification Techniques in Data Mining

Asgarnezhad Asgarnezhad, Ali Naseer Kadhim alwali, Mhmood Hamid sahar alsaedi, Samer Alwan zaboon albwhusseinsarr
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Abstract

With the development of information systems, data has become one of the most important sources of organizations. Therefore, methods and techniques are needed to efficiently access data, share data, extract data from data, and use this information. By creating and expanding the Web and a significant increase in the volume of information and web development, the need for methods and techniques that can provide data efficiently and extract information from them is felt more than ever. Web mining is one of the areas of research that uses data mining techniques to automatically discover information from web services and documents. In fact, Web mining is a process of discovery of unknown and useful information from web data. Web mining methods are categorized into three types of web content exploration, exploration of Web structures, and exploration of the use of the Web, based on what type of data they are exploring. This research investigates the relationship between the idea of mining and other research fields and examines some of the previous methods used. Finally, a method is proposed based on two decision tree and machine model algorithms that will improve the results of the idea of mining. The results of the simulation of the proposed method were evaluated and compared with the previous methods. The results show that the proposed method has higher accuracy and speed
利用数据挖掘中的分类技术提高基于评论的推荐系统准确率的有效算法
随着信息系统的发展,数据已成为组织最重要的信息来源之一。因此,需要有效地访问数据、共享数据、从数据中提取数据以及使用这些信息的方法和技术。通过创建和扩展Web,以及信息量和Web开发的显著增加,人们比以往任何时候都更需要能够有效地提供数据并从中提取信息的方法和技术。Web挖掘是使用数据挖掘技术从Web服务和文档中自动发现信息的研究领域之一。实际上,Web挖掘是一个从Web数据中发现未知和有用信息的过程。根据所探索的数据类型,Web挖掘方法可分为三种类型:Web内容探索、Web结构探索和Web使用探索。本研究调查了采矿思想与其他研究领域之间的关系,并考察了以前使用的一些方法。最后,提出了一种基于两种决策树和机器模型算法的方法,提高了挖掘思想的结果。对所提方法的仿真结果进行了评价,并与已有方法进行了比较。结果表明,该方法具有较高的精度和速度
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