利用Web挖掘技术预测用户访问基于Web的电子学习系统的智能系统

V. Sathiyamoorthi
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引用次数: 6

摘要

在这个互联网时代,随着参与者之间的互动不断增加,数据的规模增长如此之快,以至于我们在不久的将来可以获得的信息将是不可预测的。对这些数据进行建模和可视化是数据分析领域中具有挑战性的任务之一。因此,商业智能是公司可以使用数据来提高业务和运营效率的方式,而数据分析则涉及在对数据采取行动之前改进从数据中提取智能的方法。因此,建议的工作侧重于数据分析的当前挑战及其在社交媒体上的应用,如Facebook、Twitter、博客、电子商务、电子服务等。在所有可能的交互中,电子商务、电子教育和电子服务已被确定为分析技术的重要领域。因此,本文主要关注机器学习技术在这些e-X领域的实践和研究。利用实时数据集对所提出的系统进行了实证分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Intelligent System for Predicting a User Access to a Web Based E-Learning System Using Web Mining
In this Internet era, with ever-increasing interactions among participants, the size of the data is increasing so rapidly such that the information available to us in the near future is going to be unpredictable. Modeling and visualizing such data are one of the challenging tasks in the data analytics field. Therefore, business intelligence is the way in which a company can use data to improve business and operational efficiency whereas data analytics involves improving ways of making intelligence out of that data before acting on it. Thus, the proposed work focuses on prevailing challenges in data analytics and its application on social media like Facebook, Twitter, blogs, e-commerce, e-service and so on. Among all of the possible interactions, e-commerce, e-education, and e-services have been identified as important domains for analytics techniques. So, it focuses on machine learning technique in improving practice and research in such e-X domains. Empirical analysis is done to show the performance of proposed system using real-time datasets.
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